{"index":{"version":"0.5.12","fields":[{"name":"title","boost":10},{"name":"keywords","boost":15},{"name":"body","boost":1}],"ref":"url","documentStore":{"store":{"./":["65","个实践任务,涵盖了《机器学习》中的前十章内容,并已在南京大学投入使用。","体验整套机器学习实训课程。该课程是与南京大学合作共建的实训课程,总共有","本资料主要介绍一些机器学习的入门知识,例如什么是机器学习,常见的机器学习算法原理,常用的模型性能评估指标,怎样快速入门sklearn等内容。","简介","若想更加全面,系统的学习机器学习相关知识,可以输入链接:https://www.educoder.net/paths/194"],"machine_learning.html":["\"experience\"","\"performance\"。","0.96","1","5","class","comput","e","e.\"","experi","experience指的根据历史数据总结归纳出规律的过程,即学习过程,或模型的训练过程。模型这个词看上去很高大上,其实我们可以把他看成是一个函数。例如:现在想用机器学习来识别图片里的是香蕉还是苹果,那么机器学习所的事情就是得到一个比较好的函数,当我们输入一张香蕉图片时,能得到识别结果为香蕉的输出,当我们输入一张苹果图片时,能得到识别结果为苹果的输出。","improv","k","k−1","learn","measur","p,","perform","performance指的是模型的性能。对于不同的任务,我们有不同的衡量模型性能的标准。例如分类时可能会根据模型的准确率,精准率,召回率,auc等指标来衡量模型的好坏,回归时会看看模型的mse,rmse,r2","program","respect","score等指标,回归时会以fm指数,db指数等指标来衡量聚类的效果怎么样。对各种性能指标感兴趣可以阅读模型评估指标章节。","t","t,","task","。然后您可能觉得哎呀,我的模型很厉害了,但其实并不然,因为这样的验证集让您的模型的性能有了误解。那有没有更加公正的验证算法性能的方法呢?有,那就是k","不甜","个⼦数据集来训练模型。在这","个不重合的⼦数据集,然后我们做","乌黑","什么是机器学习","但如果仅仅是从训练集中抽取一小部分作为验证集的话,有可能会让我们对模型的性能有一种偏见或者误解。","假如现在有一些水果的图片作为训练集(无标签),现在想要机器学习算法能够根据训练集中的图片将这些图片进行归类,但是并不知道这些类别是什么。像这样的任务我们称为聚类任务。","假如现在有一些苹果、西瓜和香蕉的图片作为训练集(有标签),现在想要机器学习算法能够根据新的测试图片来分辨出该图片中的是苹果、西瓜还是香蕉。像这样的任务我们称为分类任务。","假如现在有一些苹果的售价数据作为训练集(有标签),现在想要机器学习算法能够根据新的测试图片来分辨出该图片中的苹果能卖多少钱。像这样的任务我们称为回归任务。","假设我们收集了一份西瓜数据:","其实欠拟合与过拟合的区别和我们生活中学生考试的例子很像。如果一个学生在平时的练习中题目的正确率都不高,那么说明这个学生可能基础不牢或者心思没花在学习上,所以这位学生可能欠缺基础知识或者智商可能不太高或者其他种种原因,像这种情况可以看成是欠拟合。那如果这位学生平时练习的正确率非常高,但是他不怎么灵光,喜欢死记硬背,只会做已经做过的题,一碰到没见过的新题就不知所措了。像这种情况可以看成时是过拟合。","分类","和","回归","因此,这份数据是一个有4个样本,3个特征的训练集,训练集的标签是“甜不甜”。","在k","在真实业务中,我们可能没有真正意义上的测试集,或者说不知道测试集中的数据长什么样子。那么我们怎样在没有测试集的情况下来验证我们的模型好还是不好呢?这个时候就需要验证集了。","声音","并假设现在已经使用机器学习算法根据这份数据的特点训练出了一个很厉害的模型,成为了一个挑瓜好手,只需告诉它这个西瓜的色泽,纹理和声音就能告诉你这个西瓜甜不甜。","当我们的模型过于简单,很可能会导致欠拟合。如果模型过于复杂,就很可能会导致过拟合。","我们通常将这种喂给机器学习算法来训练模型的数据称为训练集,用来让机器学习算法预测的数据称为测试集。","折交叉验证。","折交叉验证中,我们把原始训练数据集分割成","折交叉验证!","指的是机器学习所需要完成的任务。机器学习能够完成的任务主要有:分类、回归、聚类。","最好的情况下,我们的模型应该不管在训练集上还是测试集上,它的性能都不错。但是有的时候,我们的模型在训练集上的性能比较差,那么这种情况我们称为欠拟合。那如果我们的模型在训练集上的性能好到爆炸,但在测试集上的性能却不尽人意,那么这种情况我们称为过拟合。","机器学习常用术语","机器学习概述","机器学习的定义有很多种,但是最准确的定义是:\"a","模糊","欠拟合与过拟合","次在验证集上的性能求平均。","次模型训练和验证。每⼀次,我们使⽤⼀个⼦数据集验证模型,并使⽤其它","次训练和验证中,每次⽤来验证模型的⼦数据集都不同。最后,我们对这","比如我们现在要对手写数字进行识别,那么我就可能会训练一个分类模型。但可能模型对于数字","浑浊","清晰","清脆","甜","甜不甜","的值由我们自己来指定,如以下为","的样本,然后用验证集测试完后得到的准确率为","的识别准确率比较低","纹理","细心的您可能注意到了,分类和回归问题的训练集中都是带有标签的。也就是说数据已经告诉了机器学习算法我这条数据的答案是这个,那条数据的答案是那个,就像有老师在监督学生做题目一样,一看到学生做错了就告诉他题目做错了,看到学生做对了就鼓励他。所以用来解决分类和回归问题的机器学习算法又称为监督学习。而像用来解决聚类问题的机器学习算法又称为无监督学习。","聚类","至于这样一个函数(模型)里面长什么样子,这就与具体的机器学习算法有关了。对机器学学习算法感兴趣可以阅读常见机器学习算法章节。","色泽","训练集中的所有行称为样本。由于我们的挑瓜好手需要的西瓜信息是色泽、纹理和声音,所以此训练集中每个样本的前3列称为特征。挑瓜好手给出的结果是甜或不甜,所以最后1列称为标签。","训练集,测试集,样本,特征","这个定义除了非常押韵之外,还体现了机器学习的几个关键点,即:\"task\",","那么是什么原因导致了欠拟合和过拟合呢?","那么验证集从何而来,很明显,我们可以从训练集中抽取一小部分的数据作为验证集,用来验证我们模型的性能。","青绿","验证集与交叉验证",",而验证集中没多少个数字为"],"algorithm.html":["常见机器学习算法","本章主要介绍一些常见的机器学习算法(模型)的原理,理解模型的原理对于以后使用一些机器学习库实现业务功能时是有好处的。"],"kNN.html":[")。","),假设与我离得最近的","+","...","0.8","1","1.19","1.2","1.33","1.5","11","11.2","13","14","15","15.2","2","23.3","37.6","4","4.2","5","5.8","6","7","7.7","8","9","9.5",":","=","k","knn","knn算法其实是众多机器学习算法中最简单的一种,因为该算法的思想完全可以用","knn算法解决分类问题","knn算法解决回归问题","个字来概括:“近朱者赤,近墨者黑”。","个样本(","个样本与我的总距离和属于文艺青年的","个样本与我的总距离进行比较。然后选择总距离最小的标签作为预测结果。在这个例子中预测结果为文艺青年(宅男的总距离为","个样本的标签值加起来再算个平均,而不是投票。例如离待预测样本最近的","个样本的标签和距离如下:","个样本的标签如下:","个样本的标签进行统计,并将票数最多的标签作为预测结果即可。如上表中,宅男是","假设我在这个样本空间中用黄圈表示,如下图所示:","假设现在有这样的一个样本空间(由样本组成的一个空间),该样本空间里有宅男和文艺青年这两个类别,其中红圈表示宅男,绿圈表示文艺青年。如下图所示:","其实构建出这样的样本空间的过程就是knn算法的训练过程。可想而知knn算法是没有训练过程的,所以knn算法属于懒惰学习算法。","可以看出宅男和文艺青年的比分是","在使用knn算法解决回归问题时的思路和解决分类问题的思路基本一致,只不过预测标签值是多少的的时候是将距离最近的","宅男","很明显,刚刚我们使用knn算法解决了一个分类问题,那knn算法能解决回归问题吗?当然可以!","所以待预测样本的标签为:(1.2+1.5+0.8+1.33+1.19)/5=1.204","文艺青年","时与我离得最近的样本如下:","是一个超参数,需要自己设置,一般默认为","最后只需要对这","标签","样本编号","注意:有的时候可能会有票数一致的情况,比如","然后找出与我距离最小的","现在使用knn算法来鉴别一下我是宅男还是文艺青年。首先需要计算我与样本空间中所有样本的距离。假设计算得到的距离表格如下:","票,所以我是宅男。","票,文艺青年是","距离","近朱者赤近墨者黑",",文艺青年的总距离为",",那么可以尝试将属于宅男的"],"linear_regression.html":["(h_\\theta(x)","(i)y​(​^​​i)表示的是预测房价)。","(i)y​(​^​​i),那么线性回归的损失函数j(θ)j(\\theta)j(θ)就是:","*","0","100","1000","10000","=","\\frac{\\parti","\\hat","alpha","b(参数)的情况下,我随便给一个","gradient","j(\\theta)=\\frac{1}{2}\\sum^m_{i=1}(h_\\theta(x^i)","j(\\theta_j)}{\\theta_j}","j(θ)=12∑i=1m(hθ(xi)−yi)2","j(θ)=​2​​1​​∑​i=1​m​​(h​θ​​(x​i​​)−y​i​​)​2​​","jjj","k(参数)和","low","n","ok。现在我们知道了梯度的方向是函数增长最快的方向,那我在梯度前面取个负号(反方向),那不就是函数下降最快的方向了么。所以,梯度下降它的本质就是更新权重的时候是沿着梯度的反方向更新。好比下面这个图,假如我是个瞎子,然后莫名其妙的来到了一个山谷里。现在我要做的事情就是走到山谷的谷底。因为我是瞎子,所以我只能一点一点的挪。要挪的话,那我肯定是那我的脚在我四周扫一遍,觉得哪里感觉起来更像是在下山那我就往哪里走。然后这样循环反复一发我最终就能走到山谷的谷底。","theta","x","y","y)x_j","y\\hat{^{(i)}})^2∑​i=1​m​​(y​(i)​​−y​​(i)​​​^​​)​2​​(其中y(i)y(i)y(i)表示的是实际房价,y(^i)i","y^i)^2","y^i)^2j(θ)=​2​​1​​∑​i=1​m​​(h​θ​​(x​i​​)−y​i​​)​2​​,其中θ\\thetaθ为线性回归的解。使用梯度下降来求解,最关键的一步是算梯度(也就是算偏导),通过计算可知第$j$个权重的偏导为:","α\\alphaα","​θ​j​​​​∂j(θ​j​​)​​=(h​θ​​(x)−y)x​j​​。","∂j(θj)θj=(hθ(x)−y)xj","个权重。如果靠瞎猜权重的话。应该这辈子都猜不中了。所以找权重的找个套路来找,这个套路就是梯度。梯度其实就是让函数值为","个权重,10000","个特征就对应着","为:j(θ)=12∑i=1m(hθ(xi)−yi)2j(\\theta)=\\frac{1}{2}\\sum^m_{i=1}(h_\\theta(x^i)","也就是说我如果一直朝着最终的那个方向努力的话,理论上来说我就能以最快的速度成为郊区王者。","什么是梯度下降","什么是线性回归","从理论上来说,这式子满足线性系统的性质(至于线性系统是什么,可以查阅相关资料,这里就不多做赘述了,不然没完没了)。您可能会觉得疑惑,这一节要说的是线性回归,我说个这么","位朋友来找这条直线就可能找出","使用梯度下降求解线性回归的解","其实梯度下降不是一个机器学习算法,而是一种基于搜索的最优化方法。因为很多算法都没有正规解的,所以需要通过一次一次的迭代来找到找到一组参数能让我们的损失函数最小。损失函数的大概套路可以参看这个图:","喏,其实找直线的过程就是在做线性回归,只不过这个叫法更有高大上而已。","如果假设h(θ)(x)h_{(\\theta)}(x)h​(θ)​​(x)表示当权重为θ\\thetaθ,输入为xxx时计算出来的y(^i)i","当θ\\thetaθ更新好了之后,就相当于得到了一个线性回归模型。也就是说只要将数据放到模型中进行计算就能得到预测输出了。","循环干的事情就相当于我下山的时候在迈步子,代码里的","循环若干次","怎样计算出线性回归的解?","我们知道线性回归的损失函数","我都能通过这个方程算出","或者这样","所以很自然的可以想到,使用梯度下降求解线性回归的解的流程如下:","所以说,梯度下降的作用是不断的寻找靠谱的权重是多少。","所以,梯度下降的伪代码如下:","损失函数","时其中各个变量的偏导所组成的向量,而且梯度方向是使得函数值增长最快的方向。","最简单的回归算法","来。而且呢,这个式子是线性的,为什么呢?因为从直觉上来说,你都知道,这个式子的函数图像是条直线。","然后呢,线性回归就是要找一条直线,并且让这条直线尽可能地拟合图中的数据点。","然后把每条小竖线的长度加起来就等于我们现在通过这条直线预测出的房价与实际房价之间的差距。那每条小竖线的长度的加和怎么算?其实就是欧式距离加和,公式为:∑i=1m(y(i)−y(i)^)2\\sum_{i=1}^m(y^{(i)}","现在您应该已经弄明白了一个事实,那就是我只要找到一组参数(也就是线性方程每一项上的系数)能让我的损失函数的值最小,那我这一组参数就能最好的拟合我现在的训练数据。ok,那怎么来找到这一组参数呢?其实有两种套路,一种就是用大名鼎鼎的梯度下降,其大概思想就是根据每个参数对损失函数的偏导来更新参数。另一种是线性回归的正规方程解,这名字听起来高大上,其实本质就是根据一个固定的式子计算出参数。由于正规方程解在数据量比较大的时候时间复杂度比较高,所以在这一部分中,主要聊聊怎样使用梯度下降的方法来更新参数。","现在我们已经知道了梯度下降就是用来找权重的,那怎么找权重呢?瞎猜?不可能的。。这辈子都不可能猜的。想想都知道,权重的取值范围可以看成是个实数空间,那","直线方程干啥?其实,说白了,线性回归就是在","种直线来,比如这样","线性回归","线性回归是什么意思?我们可以拆字释义。回归肯定不用我多说了,那什么是线性呢?我们可以回忆一下初中时学过的直线方程:y=k∗x+by=k*x+by=k∗x+b","维空间中找一个形式像直线方程一样的函数来拟合数据而已。比如说,我现在有这么一张图,横坐标代表房子的面积,纵坐标代表房价。","计算当前参数theta对损失函数的梯度","这个式子表达的是,当我知道","这个性质怎么理解呢?举个栗子。假如我是个想要成为英雄联盟郊区王者的死肥宅,然后要成为郊区王者可能有这么几个因素,一个是英雄池的深浅,一个是大局观,还有一个是骚操作。他们对我成为王者来说都有一定的权重。如图所示,每一个因素的箭头都有方向(也就是因素对于我成为王者的偏导的方向)和长度(偏导的值的大小)。然后在这些因素的共同作用下,我最终会朝着一个方向来训练(好比物理中分力和合力的关系),这个时候我就能以最快的速度向郊区王者更进一步。","这个欧氏距离加和其实就是用来量化预测结果和真实结果的误差的一个函数。在机器学习中称它为损失函数(说白了就是计算误差的函数)。那有了这个函数,我们就相当于有了一个评判标准,当这个函数的值越小,就越说明我们找到的这条直线越能拟合我们的房价数据。所以说啊,线性回归就是通过这个损失函数做为评判标准来找出一条直线。","这样","那如果让","那既然是找直线,那肯定是要有一个评判的标准,来评判哪条直线才是最好的。ok,道理我们都懂,那咋评判呢?其实只要算一下实际房价和我找出的直线根据房子大小预测出来的房价之间的差距就行了。说白了就是算两点的距离。当我们把所有实际房价和预测出来的房价的差距(距离)算出来然后做个加和,我们就能量化出现在我们预测的房价和实际房价之间的误差。例如下图中我画了很多条小数线,每一条小数线就是实际房价和预测房价的差距(距离)。","高端点叫学习率,实际上就是代表我下山的时候步子迈多大。值越小就代表我步子迈得小,害怕一脚下去掉坑里。值越大就代表我胆子越大,步子迈得越大,但是有可能会越过山谷的谷底。"],"logistic_regression.html":["#","#loss","&","(0,1)(0,1)(0,1)","(1","(wx+b)​p​^​​=σ(wx+b)。","/","0","0.30.30.3","0.30.30.3(也就是说类别","0.30.30.3);情况b:现在有个样本的真实类别是","0.40.40.4","0.5","0.60.60.6(也就是说类别","0.70.70.7","0.70.70.7(也就是说类别","0.90.90.9","000","10%10\\%10%","111","111,但是模型预测出来该样本是类别","222","30%30\\%30%,而","40%40\\%40%。","8):","90%90\\%90%","=","\\end{cases}​y​^​​={​0​1​​​​p​^​​0.5​​p​^​​>0.5​​(其中y^\\hat","\\hat","\\infty,+\\infty)(−∞,+∞)","\\infty,+\\infty)(−∞,+∞)的实数转换成(0,1)(0,1)(0,1)的概率值的需求。因此逻辑回归在预测时可以看成p^=1/(1+e−wx+b)\\hat","\\infty,+\\infty)(−∞,+∞),如果能够将值域为(−∞,+∞)(","\\infty−∞时函数值趋近于000,当ttt趋近于+∞+\\infty+∞时函数值趋近于111。可见sigmoidsigmoidsigmoid函数的值域是(0,1)(0,1)(0,1),满足我们要将(−∞,+∞)(","b","baseline模型,以方便后期更好的挖掘业务相关信息或提升模型性能。","bbb","cost=","cost=−ylog(p^)−(1−y)log(1−p^)","cost=−ylog(​p​^​​)−(1−y)log(1−​p​^​​)","costcostcost","cur_it","def","dj(theta,","epsilon=1","except:","float('inf')","gradient_descent(x_b,","initial_theta","initial_theta,","j(theta,","len(y)","leraning_rate,","n_iters=1e4,","np.sum(y*np.log(y_hat)+(1","p","p)","p=1/(1+e^{","p=\\sigma","p=f(x)​p​^​​=f(x)。若得到了样本xxx属于标签111的概率后,很自然的就能想到当p^>0.5\\hat","p>0.5​p​^​​>0.5时xxx属于标签111,否则属于标签","p>0.5​p​^​​>0.5时预测为一种类别,否则预测为另一种类别。","p^=σ(wx+b)\\hat","p^\\hat","p​p​^​​","p​p​^​​。从另外一个角度来说,假设现在有一个样本的真实类别为","return","self._sigmoid(x_b.dot(theta))","sigmoidsigmoidsigmoid","sigmoid函数","theta","try:","t}σ(t)=1/1+e​−t​​。函数图像如下图所示:","www","wx+b})​p​^​​=1/(1+e​−wx+b​​),如果p^>0.5\\hat","x_b,","x_b.t.dot(self._sigmoid(x_b.dot(theta))","xxx","y","y)","y)*np.log(1","y):","y)log(1","y)x(​y​^​​−y)x。","y,","y=\\begin{cases}","y=wx+b​y​^​​=wx+b","y_hat","y_hat))","ylog(\\hat","y​y​^​​为样本","y​y​^​​的值域是(−∞,+∞)(","σ\\sigmaσ","。不过y^\\hat","。所以从这个角度来看,逻辑回归的损失函数与","。所以就有y^={0p^0.51p^>0.5\\hat","两种情况哪种情况的误差更大?很显然,情况","中模型认为样本是类别","什么是逻辑回归","从sigmoidsigmoidsigmoid函数的图像可以看出当ttt趋近于−∞","代表恶性肿瘤)。","代表良性肿瘤,111","使用回归的思想进行分类","假设现在又有两种情况,情况a:","其实就是接下来要介绍的sigmoidsigmoidsigmoid函数。","函数的公式为:σ(t)=1/1+e−t\\sigma(t)=1/1+e^{","到","和","和标签","在预测样本属于哪个类别时取决于算出来的p^\\hat","当一看到“回归”这两个字,可能会认为逻辑回归是一种解决回归问题的算法,然而逻辑回归是通过回归的思想来解决二分类问题的算法。","当然逻辑回归的损失函数不仅仅与","情况","所代表的含义是根据业务决定的,比如在癌细胞识别中可以使","所以逻辑回归梯度下降的代码如下:","所以逻辑回归的损失函数如下,其中","批量梯度下降","有","有关。","有关,它还与真实类别有关。假设现在有两种情况,情况","来拟合样本数据,线性回归的输出为y^=wx+b\\hat","根据模型预测出的标签结果,标签","现在有个样本的真实类别是","由于概率是","的可能性为","的可能性只有","的实数转换成","的实数,所以逻辑回归若只需要计算出样本所属标签的概率就是一种回归算法,若需要计算出样本所属标签,则就是一种二分类算法。","的概率为","的概率值的话问题就解决了。要解决这个问题很自然地就能想到将线性回归的输出作为输入,输入到另一个函数中,这个函数能够进行转换工作,假设函数为","的概率是","的话,就意味着这个模型认为当前样本的类别有","的误差更大!因为情况","知道了逻辑回归的损失函数之后,逻辑回归的训练流程就很明显了,就是寻找一组合适的","秒钟,ab","秒钟,ab两种情况哪种情况的误差更大?很显然,一样大!","算theta对loss的偏导","表示损失函数的值,$y$","表示样本的真实类别:","逻辑回归","逻辑回归大体思想","逻辑回归是属于机器学习里面的监督学习,它是以回归的思想来解决分类问题的一种非常经典的二分类分类器。由于其训练后的参数有较强的可解释性,在诸多领域中,逻辑回归通常用作","逻辑回归的损失函数","那么逻辑回归中样本所属标签的概率怎样计算呢?其实和线性回归有关系,学习了线性回归的话肯定知道线性回归就是训练出一组参数","那么问题来了,回归的算法怎样解决分类问题呢?其实很简单,逻辑回归是将样本特征和样本所属类别的概率联系在一起,假设现在已经训练好了一个逻辑回归的模型为f(x)f(x)f(x),模型的输出是样本xxx的标签是111的概率,则该模型可以表示成p^=f(x)\\hat",");情况",");请您再思考",");请您思考",",但是模型预测出来该样本是类别",",使得损失值最小。找到这组参数后模型就确定下来了。怎么找?很明显,用梯度下降,而且不难算出梯度为:(y^−y)x(\\hat",",则逻辑回归在预测时可以看成",",有",",模型预测样本为类别",",转换后的概率为",":现在有个样本的真实类别是"],"decision_tree.html":["(","(1/5)log(1/5)","(10/15)log(10/15)=0.9182","(2/7)log(2/7)","(3/8)log(3/8)","(4/15)*活跃度为低的熵=0.6776","(4/4)*log(4/4)","(4/5)log(4/5)=0.7219","(5/15)活跃度为中的熵","(5/7)log(5/7)=0.8631","(5/8)log(5/8)=0.9543","(6/15)活跃度为高的熵","(6/6)*log(6/6)=0","(7/15)性别为女的熵=0.0064","(8/15)性别为男的熵","0","0.50.50.5","000","0=0","111","111,其他的数值以此类推)","151515","222","29),我就会认为这个人没有买过车。所以呢,关键问题就是怎样来构造决策树了。","333","5/15)log(5/15)","5/155/155/15","555","888","\\sum_{i=1}^np_ilogp_ih(x)=−∑​i=1​n​​p​i​​logp​i​​","a)g(d,a)","aaa","ddd","g(d,a)g(d,","h(d|a)g(d,a)=h(d)−h(d∣a)。","h(y∣x)h(y|x)h(y∣x)","i=1,2,...,n;","i=1,2,...,np(x=x​i​​)=p​i​​,i=1,2,...,n。","id3算法","id3算法其实就是依据特征的信息增益来构建树的。具体套路就是从根节点开始,对节点计算所有可能的特征的信息增益,然后选择信息增益最大的特征作为节点的特征,由该特征的不同取值建立子节点,然后对子节点递归执行上面的套路直到信息增益很小或者没有特征可以继续选择为止。","j=1,2,...,m","labellabellabel","labellabellabel。","logloglog","ok,现在已经知道了什么是熵,什么是条件熵。接下来就可以看看什么是信息增益了。所谓的信息增益就是表示我已知条件","p(x=x_i,","p(x=xi,y=yj)=pij,i=1,2,...,n;j=1,2,...,m","p(x=x​i​​,y=y​j​​)=p​ij​​,i=1,2,...,n;j=1,2,...,m","xxx","y=y_j)=p_{ij},","yyi","。所以这个时候树是这样的:","。(因为这种情况下我随机变量的不确定性是最低的),那如果我的概率是","。(就像扔硬币,你永远都猜不透你下次扔到的是正面还是反面,所以它的不确定性非常高)。所以呢,熵越大,不确定性就越高。","一开始我们已经算过信息增益最大的是活跃度,所以决策树的根节点是活跃度","个是不流失,五五开。所以可以考虑随机选个结果当输出了。性别为女的用户中有全部都流失,所以性别为女时输出是流失。所以呢,树就成了这样:","个是流失,111","中计算每个特征的信息增益,然后看哪个最大就选哪个作为当前节点。然后继续重复刚刚的步骤来构建决策树。","为","为底):h(x)=−∑i=1npilogpih(x)=","也就是五五开的时候,我的熵是最大也就是","什么是决策树","从这个公式也可以看出,如果我概率是","但是活跃度为中的时候就不一定流失了,所以这个时候就可以把活跃度为低和为高的数据屏蔽掉,屏蔽掉之后","其实这样一种脑回路的形式就是我们所说的决策树。所以从图中能看出决策树是一个类似于人们决策过程的树结构,从根节点开始,每个分枝代表一个新的决策事件,会生成两个或多个分枝,每个叶子代表一个最终判定所属的类别。很明显,如果我现在已经构造好了一颗决策树的话,现在我得到一条数据(男,","决策树","决策树构流程","决策树说白了就是一棵能够替我们做决策的树,或者说是我们人的脑回路的一种表现形式。比如我看到一个人,然后我会思考这个男人有没有买车。那我的脑回路可能是这样的:","发生的前提下,事件","发生的熵是多少的话,这种熵我们叫它条件熵。条件熵","后能得到信息","在信息论和概率统计中呢,为了表示某个随机变量的不确定性,就借用了热力学的一个概念叫熵。如果假设","在我们实际情况下,我们要研究的随机变量基本上都是多随机变量的情况,所以假设有随便量(x,y),那么它的联合概率分布是这样的:","好了,决策树构造好了。从图可以看出决策树有一个非常好的地方就是模型的解释性非常强!!很明显,如果现在来了一条数据(男,","如果看到这一堆公式可能会懵逼,那不如举个栗子来看看信息增益怎么算。假设我现在有这一个数据表,第一列是性别,第二列是活跃度,","对训练集","当然条件熵的一个性质也熵的性质一样,我概率越确定,条件熵就越小,概率越五五开,条件熵就越大。","性别为女的熵=","性别为男的熵=","性别的信息增益=总的熵","总熵=","或者是","所以信息增益如果套上机器学习的话就是,如果把特征","整个id3算法其实主要就是围绕着信息增益来的,所以要弄清楚id3算法的流程,首先要弄清楚什么是信息增益,但要弄清楚信息增益之前有个概念必须要懂,就是熵。所以先看看什么是熵。","是一个有限个取值的离散型随机变量的话,很显然它的概率分布或者分布律就是这样的:p(x=xi)=pi,i=1,2,...,np(x=x_i)=p_i,","是以","最接近人类思维的分类算法","最接近人类思维的算法","有了概率分布后,则这个随机变量","条数据当成训练集来继续算哪个特征的信息增益最高,很明显算完之后是性别这个特征,所以这时候树变成了这样:","条数据,接着把这","条是","条样本里面","条里有","条,3/83/83/8","条,然后这","构造决策树时会遵循一个指标,有的是按照信息增益来构建,这种叫id3算法,有的是信息增益比来构建,这种叫c4.5算法,有的是按照基尼系数来构建的,这种叫cart算法。在这里主要介绍一下id3算法。","活跃度为中的熵=","活跃度为低的熵=","活跃度为高的熵=","活跃度的信息增益=总的熵","然后发现训练集中的数据表示当我活跃度低的时候一定会流失,活跃度高的时候一定不流失,所以可以先在根节点上接上两个叶子节点。","熵、条件熵、信息增益","现在有了总的熵和条件熵之后我们就能算出性别和活跃度这两个特征的信息增益了。","的不确定性。条件熵的计算公式是这样的:h(y∣x)=∑i=1npih(y∣x=xi)h(y|x)=\\sum^n_{i=1}p_ih(y|x=x_i)h(y∣x)=∑​i=1​n​​p​i​​h(y∣x=x​i​​)。","的不确定性的减少程度。就好比,我在玩读心术。您心里想一件东西,我来猜。我已开始什么都没问你,我要猜的话,肯定是瞎猜。这个时候我的熵就非常高对不对。然后我接下来我会去试着问你是非题,当我问了是非题之后,我就能减小猜测你心中想到的东西的范围,这样其实就是减小了我的熵。那么我熵的减小程度就是我的信息增益。","的信息增益记为","的意思是性别为男的样本有","的意思是总共有","的时候,我的熵就是","的条件下随机变量","的样本有","的熵的计算公式就是(pspsps:这里的","的计算公式就是:g(d,a)=h(d)−h(d∣a)g(d,a)=h(d)","的话,那么","第三列是客户是否流失的","表示随机变量","这时候呢,数据集里没有其他特征可以选择了(总共就两个特征,活跃度已经是根节点了),所以就看我性别是男或女的时候那种情况最有可能出现了。此时性别为男的用户中有","这样看上去可能会懵,不如用刚刚的数据来构建一颗决策树。","那信息增益算出来之后有什么意义呢?回到读心术的问题,为了我能更加准确的猜出你心中所想,我肯定是问的问题越好就能猜得越准!换句话来说我肯定是要想出一个信息增益最大的问题来问你,对不对?其实id3算法也是这么想的。id3算法的思想是从训练集","那如果我想知道在我事件","那如果我要算性别和活跃度这两个特征的信息增益的话,首先要先算总的熵和条件熵。(","高)的话,输出会是不流失。"],"random_forest.html":["$bagging$","(特征数量)。","0.0030.0030.003","0.0560.0560.056","0.3150.3150.315","0.330.330.33","0.7490.7490.749","100100100","101010","111","1−1","202020","2\\epsilon)^2)","333","505050","555","\\epsilon)^k\\epsilon","\\frac{1}{2}t(1","\\leq","^{t","aaa","aggreg","bag","bagging在预测时非常简单,就是投票!比如现在有","bagging方法如何训练","bagging方法如何预测","bagging训练过程如下图所示:","bagging预测过程如下图所示:","bbb","bootstrap","ccc","exp(","f(x))=\\epsilonp(h​i​​(x)≠f(x))=ϵ。","f(x))=\\sum_{k=0}^{t/2}c_t^k(1","h(x)=sign(∑i=1thi(x))h(x)=sign(\\sum_{i=1}^th_i(x))h(x)=sign(∑​i=1​t​​h​i​​(x))。","hi(x)h_i(x)h​i​​(x)","iii","kkk","k}","log2log2log2","mmm","p(h(x)\\neq","p(h(x)≠f(x))=∑k=0t/2ctk(1−ϵ)kϵt−k≤exp(−12t(1−2ϵ)2)","p(h(x)≠f(x))=∑​k=0​t/2​​c​t​k​​(1−ϵ)​k​​ϵ​t−k​​≤exp(−​2​​1​​t(1−2ϵ)​2​​)","p(hi(x)≠f(x))=ϵp(h_i(x)\\neq","ttt","xxx","−1","。从结果可以看出,村民的数量越大,那么投票后犯错的错误率就越小。这也是bagging性能强的原因之一。","个分类器的训练数据集。","个分类器认为属于","个分类器认为当前样本属于","个分类器(随便什么分类器),那么就重复","个分类器,在boosting中,111","个分类器,有","个村民认为","个村民,h(x)h(x)h(x)","个村民,每个村民的错误率为","个特征中随机选取","个特征构成训练数据子集,然后将这个子集作为训练集扔给决策树去训练。其中","个特征,从这","个采样集分别作为","什么是bag","代表不是狼人,","代表是狼人),f(x)f(x)f(x)","假设有","假设训练数据集有","号分类器的训练,而在bagging中,分类器可以同时进行训练,当所有分类器训练完成之后,整个bagging的训练过程就结束了。","号分类器训练完成之后才能开始222","在训练时的特点就是随机有放回采样和并行。","基学习器:bagging的基学习器可以是任意学习器,而随机森林则是以决策树作为基学习器。","如果我们将每个村民看成是一个分类器,那么每个村民的任务就是二分类,假设","并行:","方法如此有效呢,举个例子。狼人杀我相信您应该玩过,在天黑之前,村民们都要根据当天所发生的事和别人的发现来投票决定谁可能是狼人。","方法的核心思想就是三个臭皮匠顶个诸葛亮。如果使用","既然有决策树,那有没有用多棵决策树组成森林的算法呢?有!那就是随机森林。随机森林是一种叫bagging的算法框架的变体。所以想要理解随机森林首先要理解bagging。","是","是一种算法,bag","是不是狼人(","是并行式集成学习方法。大名鼎鼎的随机森林算法就是在","是集成学习中的学习框架,","条数据中随机取一条数据放入采样集,然后将其返回,让下一次采样有机会仍然能被采样。然后重复","条数据的采样集,该采样集作为","条样本数据,每次从这","根据上式可知,如果","根据狼人杀的规则,村民们需要投票决定天黑前谁是狼人,也就是说如果有超过半数的村民投票时猜对了,那么这一轮就猜对了。那么假设现在有","次,就能得到拥有","此随机有放回采样,构建出","现在假设每个村民都是有主见的人,对于谁是狼人都有自己的想法,那么他们的错误率也是相互独立的。那么根据hoeffding不等式可知,h(x)h(x)h(x)","的众多分类器中的一个作为训练数据集。假设有","的取值一般为","的基础上修改的算法。","的英文缩写,刚接触的您不要误认为","的错误率为:","真正的身份(是不是狼人),ϵ\\epsilonϵ","类的票数最高)。","类(因为","类,111","类,那么bagging的结果会是","群众的力量是伟大的","表示","表示为村民判断错误的错误率。则有","表示投票后最终的结果,则有","表示第","解决分类问题,就是将多个分类器的结果整合起来进行投票,选取票数最高的结果作为最终结果。如果使用","解决回归问题,就将多个回归器的结果加起来然后求平均,将平均值作为最终结果。","这样的改动通常会使得随机森林具有更加强的泛化性,因为每一棵决策树的训练数据集是随机的,而且训练数据集中的特征也是随机抽取的。如果每一棵决策树模型的差异比较大,那么就很容易能够解决决策树容易过拟合的问题。","那么","随机属性选择:假设原始训练数据集有","随机有放回采样:","随机森林","随机森林是bagging的一种扩展变体,随机森林的训练过程相对与bagging的训练过程的改变有:",",那么投票的错误率为",";如果"],"kMeans.html":["(1,1)(1,1)(1,1)","(1.5,1.5)(1.5,1.5)(1.5,1.5)。","1.随机初始k个样本,作为类别中心。","2.对每个样本将其标记为距离类别中心最近的类别。","3.将每个类别的质心更新为新的类别中心。","4.重复步骤2、3,直到类别中心的变化小于阈值。","iii","jjj","k","kmean","mean","means是属于机器学习里面的非监督学习,通常是大家接触到的第一个聚类算法,其原理非常简单,是一种典型的基于距离的聚类算法。距离指的是每个样本到质心的距离。那么,这里所说的质心是什么呢?","means来聚类时需要首先定义参数k,k的意思是我想将数据聚成几个类别。假设k=3,就是将数据划分成3个类别。接下来就可以开始k","means算法流程","means算法的流程了。","means算法的流程了,流程如下:","mmm","nnn","x","xijx_i^jx​i​j​​","个样本的第","个样本,每个样本有","个特征,则它们的质心为:cmass=(∑j=1mx1jm,∑j=1mx2jm,...,∑j=1mxnjm)cmass=(\\frac{\\sum_{j=1}^mx_1^j}{m},\\frac{\\sum_{j=1}^mx_2^j}{m},...,\\frac{\\sum_{j=1}^mx_n^j}{m})cmass=(​m​​∑​j=1​m​​x​1​j​​​​,​m​​∑​j=1​m​​x​2​j​​​​,...,​m​​∑​j=1​m​​x​n​j​​​​)。","个特征,用","使用k","其实,质心指的是样本每个特征的均值所构成的一个坐标。举个例子:假如有两个数据","则这两个样本的质心为","同样的,如果一份数据有","和(2,2)(2,2)(2,2)","来表示第","物以类聚人以群分","知道什么是质心后,就可以看看k","表示类别的中心,数据点的颜色代表不同的类别):","过程示意图如下(其中"],"AGNES.html":["#c中簇的数量","#c为聚类结果","#假设数据集为d,想要聚成的簇的数量为k","#将每个样本看成一个簇","1","1.1","1.2","1.5","2","2.2","2.3","2.5","23.3","3","3,","3.3","3.3。","3.5","3.6","3]","3],","4","4],","4]]。","5","5],","6.9","7.1","=",">","[1,","[2,","[2],","[3],","[4],","[5]]","[5]]。","[]","agn","agnes(d,","agnes算法","c","c.append(d)","c=[[1,","c=[[1],","d","d:","def","i,z\\in","i}\\sum_{z\\in","j","j}dist(x,","j}dist(x,z)d​min​​=max​x∈i,z∈j​​dist(x,z)","j}dist(x,z)d​min​​=min​x∈i,z∈j​​dist(x,z)","k):","k:","len(c)","q","q=len(c)","return","z)d​min​​=​∣c​i​​∣∣c​j​​∣​​1​​∑​x∈i​​∑​z∈j​​dist(x,z)","。","一开始,每个样本都看成是一个簇(","与簇","个簇中哪两个簇之间的最小距离最小,我们发现","个西瓜,聚成了两类,一类是小西瓜,另一类是大西瓜。","中只有两个簇了,达到了我们的预期目标(想要聚成两类),所以算法停止。算法停止后会发现,我们已经将","中样本的数量,则平均距离为:dmin=1∣ci∣∣cj∣∑x∈i∑z∈jdist(x,z)d_{min}=\\frac{1}{|c_i||c_j|}\\sum_{x\\in","为什么需要距离","举个例子,现在先要将西瓜数据聚成两类,数据如下表所示:","以距离为尺","伪代码如下:","体积","假设使用簇间最小距离来度量两个簇之间的远近,从表中可以看出","假设给定簇cic_ic​i​​与cjc_jc​j​​,∣ci∣,∣cj∣|c_i|,|c_j|∣c​i​​∣,∣c​j​​∣分别表示簇","假设给定簇cic_ic​i​​与cjc_jc​j​​,则最大距离为:dmin=maxx∈i,z∈jdist(x,z)d_{min}=max_{x\\in","假设给定簇cic_ic​i​​与cjc_jc​j​​,则最小距离为:dmin=minx∈i,z∈jdist(x,z)d_{min}=min_{x\\in","号样本看成是","号簇),假设簇的集合为","号簇与","号簇合并,那么此时簇的集合","号簇和","号簇的最小距离最小,因此我们要进行合并,合并之后","号簇的簇间最小距离最小。因此需要将","号簇,","号簇,...,","如果将整个聚类过程中的合并,与合并的次序可视化出来,就能看出为什么说","寻找距离最小的两个簇a和b","将a和b合并,并修改c","平均距离","平均距离描述的是两个簇之间样本的平均距离。例如下图中圆圈和菱形分别代表两个簇,计算两个簇之间的所有样本之间的欧式距离并求其平均值。","所以","是自底向上的层次聚类算法了。","最大距离","最大距离描述的是两个簇之间距离最远的两个样本所对应的距离。例如下图中圆圈和菱形分别代表两个簇,两个簇之间离得最远的样本的欧式距离为","最小距离","最小距离描述的是两个簇之间距离最近的两个样本所对应的距离。例如下图中圆圈和菱形分别代表两个簇,两个簇之间离得最近的样本的欧式距离为","然后继续看这","算法中可根据具体业务选择其中一种距离作为度量标准。","算法前需要先理解一些距离准则。","算法是一种聚类算法,最初将每个对象作为一个簇,然后这些簇根据某些距离准则被一步步地合并。两个簇间的相似度有多种不同的计算方法。聚类的合并过程反复进行直到所有的对象最终满足簇数目。所以理解","算法是一种自底向上聚合的层次聚类算法,它先会将数据集中的每个样本看作一个初始簇,然后在算法运行的每一步中找出距离最近的两个簇进行合并,直至达到预设的簇的数量。","算法是一种自底向上聚合的层次聚类算法,它先会将数据集中的每个样本看作一个初始簇,然后在算法运行的每一步中找出距离最近的两个簇进行合并,直至达到预设的簇的数量。所以agnes算法需要不断的计算簇之间的距离,这也符合聚类的核心思想(物以类聚,人以群分),因此怎样度量两个簇之间的距离成为了关键。","算法流程","簇的最小距离最小,因此我们要进行合并,合并之后","编号","衡量两个簇之间的距离通常分为最小距离、最大距离和平均距离。在","距离准则","距离的计算","这个时候","重量",",则最大距离为",",则最小距离为"],"metrics.html":["本章主要介绍分类,回归以及聚类时常用的模型性能评估指标。","模型评估指标"],"classification_metrics.html":["0","0.001","0.08","0.1","0.111","0.12","0.13","0.14","0.2","0.21","0.24","0.26","0.3","0.31111","0.35","0.37","0.4","0.41","0.42","0.51","0.53","0.56","0.7","0.71","0.74667","0.8","0.82","0.92","0.93","0.999","1","100","10000","12","2","22","3","3/5","4","40","4]。又因表格中真是类别为","5","8","80","9978","\\frac{2(2+1)}{2}}{2*2}=0.75","\\frac{m(m+1)}{2}}{m*n}","auc","auc=(2+4)−2(2+1)22∗2=0.75","auc=\\frac{(2+4)","auc=\\frac{\\sum_{i","auc=​2∗2​​(2+4)−​2​​2(2+1)​​​​=0.75。","auc=​m∗n​​∑​iepositiveclass​​rank​i​​−​2​​m(m+1)​​​​","auc=∑iepositiveclassranki−m(m+1)2m∗n","auc。","b","c","characterist","class}rank_i","curve)描述的","d","f1","f1=2∗precision∗recallprecision+recal","f1=\\frac{2*precision*recall}{precision+recall}","f1=​precision+recall​​2∗precision∗recall​​","fals","fn","fp","fpr","fpr=\\frac{fp}{fp+tn}","fpr=fpfp+tn","fpr=​fp+tn​​fp​​","fpr(fals","m","n","negtiv","negtive)。在不同的分类阈值下,模型所对应的","oper","posit","precisioin=\\frac{tp}{tp+fp}","precisioin=tptp+fp","precisioin=​tp+fp​​tp​​","rank","rank=[2,","ranki","rate)与","rate)之间关系的曲线。","recall=\\frac{tp}{fn+tp}","recall=tpfn+tp","recall=​fn+tp​​tp​​","roc","roc曲线","roc曲线(receiv","score","score来作为性能度量指标了。","tn","tp","tpr","tpr=\\frac{tp}{tp+fn}","tpr=tptp+fn","tpr=​tp+fn​​tp​​","tpr(true","true","。","。假设该模型在不同的分类阈值下其对应的","。其公式如下:","。如果该模型的分类边界向左或者向右移动的话,模型所对应的精准率和召回率如下图所示:","。您认为这样的系统的预测性能好不好呢?","。所以","。然后将上表中的文字替换掉,混淆矩阵如下:","上一关中提到了精准率变高,召回率会变低,精准率变低,召回率会变高。那如果想要同时兼顾精准率和召回率,这个时候就可以使用f1","与","个人被预测成患有癌症,那么其中有","个患有癌症的病人使用这个系统进行癌症检测,系统能够检测出","个模型的各种性能可以看出,模型c的精准率和召回率都比较高,因此它的","中的一些值作为模型的分类阈值。若模型认为当前数据是","为","为2。所以根据","为2,n","为真实类别为","为蓝色):","为黄色,模型","举个例子,现有预测概率与真实类别的表格如下所示(其中","之间也存在关系。假设有这么一组数据,菱形代表","也会增大。所以","也会越低。这与精准率和召回率之间的关系刚好相反。并且,模型的分类阈值一但改变,就有一组对应的","也会越高,","也比较高。而其他模型的精准率和召回率要么都比较低,要么一个低一个高,所以它们的","人是患有癌症的。也就是说,召回率越高,那么我们感兴趣的对象成为漏网之鱼的可能性越低。","人是真的患有癌症。也就是说,精准率越高,那么癌症检测系统预测某人患有癌症的可信度就越高。","从上图可知,模型的精准率变高,召回率会变低,精准率变低,召回率会变高。","从上述","从图中可以看出,当模型的","从计算出的召回率可以看出,假设有","代表了真实类别为","但预测成了","作为横轴,","作为纵轴,将上面的表格以折线图的形式画出来就是","假如现在有一个人本身已经患有癌症,但是他自己不知道自己患有癌症。这个时候用我的癌症检测系统检测发现他没有得癌症,那很显然我这个系统已经把他给坑了(耽误了治疗)。","假如癌症检测系统的混淆矩阵如下:","假设有这么一组数据,菱形代表","假设模型","假设现在有模型","其中","准确度的缺陷","准确度这个概念相信对于大家来说肯定并不陌生,就是正确率。例如模型的预测结果与数据真实结果如下表所示:","分类性能评估指标","分类模型性能评估指标","则该系统的召回率=8/(8+2)=0.8。","则该系统的精准率=8/(8+12)=0.4","到","却预测成了","只有编号为","召回率","召回率(recall)指的是我们关注的事件发生了,并且模型预测正确了的比值,其计算公式如下:","可以看作是模型准确率和召回率的一种加权平均,它的最大值是","和","和模型","和精准率与召回率一样,","和编号为","因此","如下图所示(竖线代表分类阈值,模型会将竖线左边的数据分类成","如下表所示:","如果将正确看成是","如果我们把这些结果组成如下矩阵,则该矩阵就成为混淆矩阵。","小于","就是召回率。所以","并且预测正确的数量占真实类别为","并且预测错了的数量占真实类别为","当","很明显模型的","很明显,当","很明显,连小朋友都能算出来该模型的准确度为","您可能会觉得,哇,这么高的准确度!这个系统肯定很牛逼!但是我们知道,一般年轻人患癌症的概率非常低,假设患癌症的概率为","想要得到公式中的","想进一步的考量分类模型的性能如何,可以使用其他的一些性能指标,例如精准率和召回率。但这些指标计算的基础是混淆矩阵。","所以模型分类性能越好,混淆矩阵中非对角线上的数值越小。","所对应的","才会比较高。这也是","排序后的表格中,真实类别为","描述的是模型预测","描述的模型预测","时的预测准确度,其计算公式如下:","时,模型的性能应该是最好的,因为模型并没有在预测的时候犯错误。即如下混淆矩阵:","是统计学中用来衡量二分类模型精确度的一种指标。它同时兼顾了分类模型的准确率和召回率。f1","曲线与横轴所围成的面积越大,模型的分类性能就越高。而","曲线如下图所示(其中模型","更高。由由于随着","条。因此","条健康信息数据中,只有","条数据来进行测试,其中有","条数据的真实类别是","条的类别是患有癌症,其他的类别都是健康)。","条,negtiv","样本的比例。","样本的比例。而","正确的数量","比模型","比较低。","混淆矩阵","混淆矩阵中每个格子所代表的的意义也很明显,意义如下:","现在需要训练一个模型对数据进行分类,假如该模型非常简单,就是在数据上画一条线作为分类边界。模型认为边界的左边是","现在需要训练一个逻辑回归的模型对数据进行分类,假如将从","的","的低","的增大,","的性能好,因为模型","的性能比模型","的数据排在第","的数据有","的数据,并且编号为","的数量。","的数量;","的样本数量。","的样本数量,","的样本点额预测概率从小到大排序后,该预测概率排在第几。","的概率为","的概率小于分类阈值则分类为","的精准率为","的计算公式可知:","的计算公式如下:","的计算公式您可能有点眼熟,没错!就是召回率的计算公式。也就是说","的面积称为","看到这里您应该已经体会到了,一个分类模型如果光看准确度是不够的,尤其是对这种样本极度不平衡的情况(","看成是","真实\\预测","真实类别","真实结果","精准率","精准率(precision)指的是模型预测为","精准率与召回率之间的关系","继续以癌症检测系统为例,癌症检测系统的输出不是有癌症就是健康,这里为了方便,就用","编号","能够同时兼顾精准率和召回率的原因。","若将","表示","表示健康。假设现在拿","表示患有癌症,","表示真实类别是","越低","越高","越高,模型的二分类性能就越强。","较低时所对应的","这个值表示癌症检测系统的预测结果中如果有","这也说明了只有当模型的精准率和召回率都比较高时","那么准确对越高就能说明模型的分类性能越好吗?非也!举个例子,现在我开发了一套癌症检测系统,只要输入你的一些基本健康信息,就能预测出你现在是否患有癌症,并且分类的准确度为","那么模型","都等于","错误的数量","预测","预测概率","预测结果","(假设分类阈值为","):",",",",召回率为",",右边是",",否则就分类为",",圆形代表",",它们的",",就需要将预测概率从小到大排序,排序后如下:",",最小值是0",",有",",模型认为这条数据是",",竖线右边的分类成",",系统预测的类别也是",",编号为",",那么其实我这个癌症检测系统只要一直输出您没有患癌症,准确度也可能能够达到",",那么模型",",那么模型就认为这条数据是",",错误看成是",",预测结果也是",",预测结果是",",预测结果是negtiv"],"regression_metrics.html":["0","0.1","0~1","1","1m∑i=1m(yi−pi)2","1m∑i=1m∣yi−pi∣","3","4","5","\\frac{1}{m}\\sum_{i=1}^m(y^i","\\frac{1}{m}\\sum_{i=1}^m|y^i","\\frac{\\sum_i(p^i","\\leq1r​2​​≤1,当我们的模型不犯任何错误时,取最大值","\\sqrt{\\frac{1}{m}\\sum_{i=1}^m(y^i","aboslut","error),公式如下:","error)叫做均方误差,其实就是线性回归的损失函数。公式如下:","error)均方根误差,公式如下:","l1","mae","mae(mean","mean","mse","mse(mean","p^i)^2","p^i)^2}","p^i|","r","r2=1−∑i(pi−yi)2∑i(ymeani−yi)2","r2≤1r^2","r^2=1","rmse","rmse(root","r​2​​=1−​∑​i​​(y​mean​i​​−y​i​​)​2​​​​∑​i​​(p​i​​−y​i​​)​2​​​​","squar","squard","y^i)^2}","y^i)^2}{\\sum_i(y_{mean}^i","​m​​1​​∑​i=1​m​​(y​i​​−p​i​​)​2​​","​m​​1​​∑​i=1​m​​∣y​i​​−p​i​​∣","√​​m​​1​​∑​i=1​m​​(y​i​​−p​i​​)​2​​​​​","。","。如果是负数,则考虑非线性相关。很直观,而且不同模型一样的。那么线性回归有没有这样的衡量标准呢?","上面的几种衡量标准针对不同的模型会有不同的值。比如说预测房价","个样本的真实标签,pip^ip​i​​表示模型对第","个样本的预测标签。线性回归的目的就是让损失函数最小。那么模型训练出来了,我们在测试集上用损失函数来评估模型就行了。","之类的。没有什么可读性,到底多少才算好呢?不知道,那要根据模型的应用场景来。","之类的。那么预测身高就可能是","之间,最高百分之百。最低","例如:要做房价预测,每平方是万元,我们预测结果也是万元。那么差值的平方单位应该是千万级别的。那我们不太好描述自己做的模型效果。怎么说呢?我们的模型误差是多少千万?于是干脆就开个根号就好了。我们误差的结果就跟我们数据是一个级别的了,在描述模型的时候就说,我们模型的误差是多少万元。","其中yiy^iy​i​​表示第","其中ymeany_{mean}y​mean​​表示所有测试样本标签值的均值。为什么这个指标会有刚刚我们提到的性能呢?我们分析下公式:","其实分子表示的是模型预测时产生的误差,分母表示的是对任意样本都预测为所有标签均值时产生的误差,由此可知:","其实就是mse开个根号。有什么意义呢?其实实质是一样的。只不过用于数据更好的描述。","回归性能评估指标","回归模型性能评估指标","如果为负数,则说明我们训练出来的模型还不如基准模型,此时,很有可能我们的数据不存在任何线性关系。","就是这么一个指标,公式如下:","当我们的模型性能跟基模型性能相同时,取","看看分类算法的衡量标准就是正确率,而正确率又在","虽然不作为损失函数,确是一个非常直观的评估指标,它表示每个样本的预测标签值与真实标签值的","距离。","那么误差单位就是万元。数子可能是",",",",0.6"],"cluster_metrics.html":["(db指数)以及","0","1","1)}","1)}=\\frac{2}{3}randi=​6∗(6−1)​​2∗(2+8)​​=​3​​2​​。","10","10)^2})/3=0.94281","10)^2}+\\sqrt{(7","10)^2}+\\sqrt{(8","10)^2}=7.67391","11","11)^2}=2.828","1][0,1],值越大说明聚类性能越好,假设mmm为样本数量,公式如下:","1][0,1],值越大说明聚类性能越好,公式如下:","2","2)(1,2)(因为111号样本与222号样本的参考簇都为000,聚类簇都为000),(5,6)(5,","2)^2+(4","2)^2}=1.414","2.67)^2+(3","2.67)^2+(4","3","3)(1,3)(因为111号样本与333号样本的聚类簇不同,但参考簇都为000),(2,3)(2,","3)(2,3)(因为222号样本与333号样本的聚类簇不同,但参考簇都为000),(4,5)(4,","3.67)^2})/3=0.628539","3.67)^2}+\\sqrt{(2","3.67)^2}+\\sqrt{(3","4","4)(1,4)(因为111号样本与444号样本的参考簇不同,聚类簇也不同),(1,5)(1,","4)(2,4)(因为222号样本与444号样本的参考簇不同,聚类簇也不同),(2,5)(2,","4)(3,4)(因为333号样本与444号样本的参考簇不同,但聚类簇都为111)。总共有111个样本对满足bbb,因此b=1b=1b=1。","5","5)(1,5)(因为111号样本与555号样本的参考簇不同,聚类簇也不同),(1,6)(1,","5)(2,5)(因为222号样本与555号样本的参考簇不同,聚类簇也不同),(2,6)(2,","5)(3,5)(因为333号样本与555号样本的参考簇不同,聚类簇也不同),(3,6)(3,","5)(4,5)(因为444号样本与555号样本的聚类簇不同,但参考簇都为111),(4,6)(4,","6","6)(1,6)(因为111号样本与666号样本的参考簇不同,聚类簇也不同),(2,4)(2,","6)(2,6)(因为222号样本与666号样本的参考簇不同,聚类簇也不同),(3,5)(3,","6)(3,6)(因为333号样本与666号样本的参考簇不同,聚类簇也不同)。总共有888个样本对满足ddd,因此d=8d=8d=8。","6)(4,6)(因为444号样本与666号样本的聚类簇不同,但参考簇都为111)。总共有444个样本对满足ccc,因此c=4c=4c=4。","6)(5,6)(因为555号样本与666号样本的参考簇都为111,聚类簇都为222)。总共有222个样本对满足aaa,因此a=2a=2a=2。","6)^2+(4","7","7)^2+(10","7)^2+(11","7)^2+(3.67","7)^2+(9","8","8)^2+(9","9","9)^2}=5.831","\\frac{(4+3+4)}{3})=(2.67,3.67)","\\frac{(9+10+11)}{3})=(7,10)","\\lambda^*_i=\\lambda^*_j,","\\lambda^*_i=\\lambda^*_j,i","\\lambda^*_i\\neq\\lambda^*_j,","\\mu_1=(\\frac{(3+2+3)}{3},","\\mu_2)=\\sqrt{(2.67","\\mu_2=(\\frac{(6+7+8)}{3},","\\mu_j)d​c​​(μ​i​​,μ​j​​)代表第iii个簇的中心点与第jjj个簇的中心点的距离。","\\neq","a=|\\{(x_i,","a=∣{(xi,xj)∣λi=λj,λi∗=λj∗,ij}∣","a=∣{(x​i​​,x​j​​)∣λ​i​​=λ​j​​,λ​i​∗​​=λ​j​∗​​,ij}∣","avg(c1)=((3−2.67)2+(4−3.67)2+(2−2.67)2+(3−3.67)2+(3−2.67)2+(4−3.67)2)/3=0.628539","avg(c2)=((6−7)2+(9−10)2+(7−7)2+(10−10)2+(8−7)2+(11−10)2)/3=0.94281","avg(c_1)=(\\sqrt{(3","avg(c_2)=(\\sqrt{(6","avg(c​1​​)=(√​(3−2.67)​2​​+(4−3.67)​2​​​​​+√​(2−2.67)​2​​+(3−3.67)​2​​​​​+√​(3−2.67)​2​​+(4−3.67)​2​​​​​)/3=0.628539","avg(c​2​​)=(√​(6−7)​2​​+(9−10)​2​​​​​+√​(7−7)​2​​+(10−10)​2​​​​​+√​(8−7)​2​​+(11−10)​2​​​​​)/3=0.94281","b=|\\{(x_i,","b=∣{(xi,xj)∣λi=λj,λi∗≠λj∗,ij}∣","b=∣{(x​i​​,x​j​​)∣λ​i​​=λ​j​​,λ​i​∗​​≠λ​j​∗​​,ij}∣","bouldin","c=|\\{(x_i,","c=∣{(xi,xj)∣λi≠λj,λi∗=λj∗,ij}∣","c=∣{(x​i​​,x​j​​)∣λ​i​​≠λ​j​​,λ​i​∗​​=λ​j​∗​​,ij}∣","coefficient(jc系数)、fowlk","d=|\\{(x_i,","d=∣{(xi,xj)∣λi≠λj,λi∗≠λj∗,ij}∣","d=∣{(x​i​​,x​j​​)∣λ​i​​≠λ​j​​,λ​i​∗​​≠λ​j​∗​​,ij}∣","d_c(\\mu_1,","d_{min}(c_1,c_2)=\\sqrt{(3","davi","dbi","dbi=1k∑i=1kmax(avg(ci)+avg(cj)dc(μi,μj)),i≠j","dbi=1k∑i=1kmax(avg(ci)+avg(cj)dc(μi,μj))=0.204765","dbi=\\frac{1}{k}\\sum_{i=1}^kmax(\\frac{avg(c_i)+avg(c_j)}{d_c(\\mu_i,\\mu_j)}),","dbi=\\frac{1}{k}\\sum_{i=1}^kmax(\\frac{avg(c_i)+avg(c_j)}{d_c(\\mu_i,\\mu_j)})=0.204765","dbi=​k​​1​​∑​i=1​k​​max(​d​c​​(μ​i​​,μ​j​​)​​avg(c​i​​)+avg(c​j​​)​​),i≠j","dbi=​k​​1​​∑​i=1​k​​max(​d​c​​(μ​i​​,μ​j​​)​​avg(c​i​​)+avg(c​j​​)​​)=0.204765","db指数","db指数又称","db指数越小就越就意味着簇内距离越小同时簇间距离越大,也就是说db指数越小越好。","dc(μ1,μ2)=(2.67−7)2+(3.67−10)2=7.67391","di=min1≤i≤k{mini≠j(dmin(ci,cj)max1≤l≤kdiam(cl))}","di=min1≤i≤k{mini≠j(dmin(ci,cj)max1≤l≤kdiam(cl))}=2.061553","di=min_{1\\leq","di=min​1≤i≤k​​{min​i≠j​​(​max​1≤l≤k​​diam(c​l​​)​​d​m​​in(c​i​​,c​j​​)​​)}","di=min​1≤i≤k​​{min​i≠j​​(​max​1≤l≤k​​diam(c​l​​)​​d​m​​in(c​i​​,c​j​​)​​)}=2.061553","diam(c1)=(3−2)2+(4−2)2=1.414","diam(c2)=(6−8)2+(9−11)2=2.828","diam(c_1)=\\sqrt{(3","diam(c_2)=\\sqrt{(6","diam(c​1​​)=√​(3−2)​2​​+(4−2)​2​​​​​=1.414","diam(c​2​​)=√​(6−8)​2​​+(9−11)​2​​​​​=2.828","dmin(c1,c2)=(3−6)2+(4−9)2=5.831","dunn","dunn指数","dunn指数又称di,计算公式如下:","dunn指数越大意味着簇内距离越小同时簇间距离越大,也就是说dunn指数越大越好。","d​c​​(μ​1​​,μ​2​​)=√​(2.67−7)​2​​+(3.67−10)​2​​​​​=7.67391","d​min​​(c​1​​,c​2​​)=√​(3−6)​2​​+(4−9)​2​​​​​=5.831","fmi=\\sqrt{\\frac{a}{a+b}*\\frac{a}{a+c}}","fmi=aa+b∗aa+c","fmi=√​​a+b​​a​​∗​a+c​​a​​​​​","fm指数","fm指数根据上面所提到的aaa,bbb,ccc来计算,并且值域为[0,1][0,","i\\leq","index","index(fm指数)以及","index(dunn指数)。","index(rand指数)。","j","jaccard","jc=\\frac{a}{a+b+c}","jc=aa+b+c","jc=​a+b+c​​a​​","jc系数","jc系数根据上面所提到的aaa,bbb,ccc来计算,并且值域为[0,1][0,","j}(\\frac{d_min(c_i,c_j)}{max_{1\\leq","k=2","k}\\{min_{i\\neq","k}diam(c_l)})\\}","k}diam(c_l)})\\}=2.061553","l\\leq","mallow","rand","randi=2(a+d)m(m−1)","randi=\\frac{2(a+d)}{m(m","randi=​m(m−1)​​2(a+d)​​","rand指数","rand指数根据上面所提到的aaa和ddd来计算,并且值域为[0,1][0,","x_j)|\\lambda_i=\\lambda_j,","x_j)|\\lambda_i\\neq\\lambda_j,","μ1=((3+2+3)3,(4+3+4)3)=(2.67,3.67)","μ2=((6+7+8)3,(9+10+11)3)=(7,10)","μ​1​​=(​3​​(3+2+3)​​,​3​​(4+3+4)​​)=(2.67,3.67)","μ​2​​=(​3​​(6+7+8)​​,​3​​(9+10+11)​​)=(7,10)","个簇。","举个例子,参考模型给出的簇与聚类模型给出的簇划分如下:","举个例子,现在有666条西瓜数据{x1,x2,...,x6}\\{x_1,x_2,...,x_6\\}{x​1​​,x​2​​,...,x​6​​},这些数据已经聚类成了222个簇。","从表格可以看出:","体积","公式中的表达式其实很好理解,其中kkk代表聚类有多少个簇,dmin(ci,cj)d_{min}(c_i,c_j)d​min​​(c​i​​,c​j​​)代表第iii个簇中的样本与第jjj个簇中的样本之间的最短距离,diam(cl)diam(c_l)diam(c​l​​)代表第lll个簇中相距最远的样本之间的距离。","公式中的表达式其实很好理解,其中kkk代表聚类有多少个簇,μi\\mu_iμ​i​​代表第iii个簇的中心点,avg(ci)avg(c_i)avg(c​i​​)代表cic_ic​i​​第iii个簇中所有数据与第iii个簇的中心点的平均距离。dc(μi,μj)d_c(\\mu_i,","内部指标","内部指标通常使用","参考簇","因此刚刚的例子中,fmi=22+1∗22+4=418fmi=\\sqrt{\\frac{2}{2+1}*\\frac{2}{2+4}}=\\sqrt{\\frac{4}{18}}fmi=√​​2+1​​2​​∗​2+4​​2​​​​​=√​​18​​4​​​​​","因此刚刚的例子中,jc=22+1+4=27jc=\\frac{2}{2+1+4}=\\frac{2}{7}jc=​2+1+4​​2​​=​7​​2​​","因此刚刚的例子中,randi=2∗(2+8)6∗(6−1)=23randi=\\frac{2*(2+8)}{6*(6","因此有:","外部指标","外部指标通常使用","想要计算上述指标来度量聚类的性能,首先需要计算出aaa,ccc,ddd,eee。假设数据集e={x1,x2,...,xm}e=\\{x_1,x_2,...,x_m\\}e={x​1​​,x​2​​,...,x​m​​}。通过聚类模型给出的簇划分为c={c1,c2,...ck}c=\\{c_1,c_2,...c_k\\}c={c​1​​,c​2​​,...c​k​​},参考模型给出的簇划分为d={d1,d2,...ds}d=\\{d_1,d_2,...d_s\\}d={d​1​​,d​2​​,...d​s​​}。λ\\lambdaλ与λ∗\\lambda^*λ​∗​​分别表示ccc与ddd对应的簇标记,则有:","条西瓜数据{x1,x2,...,x6}\\{x_1,x_2,...,x_6\\}{x​1​​,x​2​​,...,x​6​​},这些数据已经聚类成了","满足bbb的样本对为(3,4)(3,","满足ddd的样本对为(1,4)(1,","簇","编号","聚类性能评估指标","聚类模型性能评估指标","聚类的性能度量大致分为两类:一类是将聚类结果与某个参考模型作为参照进行比较,也就是所谓的外部指标;另一类是则是直接度量聚类的性能而不使用参考模型进行比较,也就是内部指标。","聚类簇","还是这个例子,现在有","那么满足aaa的样本对为(1,2)(1,","那么满足ccc的样本对为(1,3)(1,","重量",",计算公式如下:"],"sklearn.html":["#","0","0.95。","0.96","1","10。","1797","2","2.1.","2.2.","5","5)","64","8*8","9]","=","[0,","acc","accuracy_scor","accuracy_score(y_test,","clf","clf.fit(x_train,","clf.predict(x_test)","cluster","dataset","datasets.load_digits()","digit","digits.data","digits.target","ensem","fit","float","hello","import","instal","k","kf","kf.split(x):","kfold","kfold(n_split","learn","learn(简记sklearn),是用","logisticregress","logisticregression()","mean_acc","n_estimators表示决策树的数量","pip","predict。fit函数需要训练集的特征和训练集的标签作为输入,predict函数需要测试集的特征作为输入。所以代码如下:","print(acc)","print(mean_acc/5)","py","python","randomforestclassifi","randomforestclassifier()","randomforestclassifier(n_estimators=50)","result","result)","rf","rf.fit(x_train,","rf.predict(x_test)","scikit","sklearn","sklearn.ensembl","sklearn.linear_model","sklearn.metr","sklearn.model_select","sklearn的安装","sklearn的目录结构","sklearn简介","test_index","test_index表示剩下的一份作为测试集的索引","test_size=0.2)","train_index,","train_index表示从5份中挑出来4份所拼出来的训练集的索引","train_test_split(x,","world","x","x[test_index],","x[train_index],","x_test,","x_train,","x_train表示训练集的特征,x_test表示测试集的特征,y_train表示训练集的标签,y_test表示测试集的标签","x表示特征,即1797行64列的矩阵","x,i","y","y,","y[test_index]","y[train_index]","y_test","y_train","y_train)","y_train,","y表示标签,即1797个元素的一维数组","。然后您可能觉得哎呀,我的模型很厉害了,但其实并不然,因为这样的测试集让您的模型的性能有了误解。那有没有更加公正的验证算法性能的方法呢?有,那就是k","。目录结构如下:","下面是使用随机森林识别手写数字的完整代码:","不重复抽样将整个数据集随机拆分成","个样本,每个样本包括","个特征,每个像素看成是一个特征,每个特征都是","中已经为我们准备好了一些比较经典且质量较高的数据集,其中就包括手写数字数据集。该数据集有","为我们提供了将数据划分成","了,所以","份","份作为测试集,剩下的","份作为训练集","份类","份,然后试图让每一份子集都能成为测试集,并循环","使用sklearn识别手写数字","使用sklearn进行机器学习","像素(实际上是一条样本有","其实从目录名字可以看出目录中的","写在前面","创建一个将数据集随机划分成5份","创建一个有50棵决策树的随机森林,","创建一个逻辑回归对象","加载手写数字数据集","即可。","可以实现数据预处理、分类、回归、降维、模型选择等常用的机器学习算法。基本上只需要知道一些","和安装其他第三方库一样简单,只需要在命令行中输入","和用来预测的函数","在划分训练集与测试集时会有这样的情况,可能模型对于数字","在每个训练集上训练后得到一个模型","完整代码如下:","实现的机器学习算法库。sklearn","导入kfold","导入好接口后,就可以创建随机森林对象了。随机森林对象有用来训练的函数","导入计算准确率的接口","将x,y划分成训练集和测试集,其中训练集的比例为80%,测试集的比例为20%","将整个数据集划分成5份","已经为我们提供了计算准确率的接口,使用代码如下:","建议查阅","得到","得到预测结果后,我们需要将其与测试集的真实答案进行比对,计算出预测的准确率。sklearn","想要使用这个数据很简单,代码如下:","想要识别手写数字,首先需要有数据。sklearn","或者","打印5折验证的平均准确率","打印准确率","折验证的大体思路是将整个数据集分成","折验证的流程如下:","折验证!","接下来不如通过一个实例来感受一下","接下来,可以使用机器学习算法来实现手写数字识别了,例如想要使用随机森林来进行识别,那么首先要导入随机森林算法接口。","提供的接口都封装在不同的目录下的不同的","数据之后,我们还需要将这些数据进行划分,划分成两个部分,一部分是训练集,另一部分是测试集。因为如果没有测试集的话,我们并不知道我们的手写数字识别程序识别得准不准。数据集划分代码如下:","整数的标签。比如下图的标签是","文件中,所以对","文件是干啥的。比如","是一款非常好用的","更好地验证算法性能","机器学习库。","次模型的性能的平均值作为性能的估计。一般来说","次,总后计算","次,这样每份都有一次机会作为测试集,其他机会作为训练集","此时您会发现我们短短的几行代码实现的手写数字识别程序的准确率高于","步","每一次挑选其中","用测试集测试,result为预测结果","用训练集训练","用这个模型在相应的测试集上测试,计算并保存模型的评估指标","由于是分类问题,所以导入的是randomforestclassifi","的","的值为","的基础语法知识就能学会怎样使用","的官方网站。","的强大。","的样本,然后用测试集测试完后得到的准确率为","的目录结构有一个大致的了解,有助于我们更加深刻地理解","的识别准确率比较低","目录下都是聚类算法接口,","目录下都是集成学习算法的接口。","类型的数值)的图像和一个","级教程,想要更加系统更加全面的学习","组测试结果的平均值作为算法性能的估计。","细心的您可能已经发现,不管使用哪种分类算法来进行手写数字识别,不同的只是创建的算法对象不一样而已。有了算法对象后,就可以fit,predict大法了。","而且我们不仅可以使用随机森林来实现手写数字识别,我们还可以使用别的机器学习算法实现,比如逻辑回归,代码如下:","计算","计算预测准确率","这是一个","重复第",",使用示例如下:",",而测试集中没多少个数字为",":"],"titanic/introduction.html":["1502","写在前面的话","名乘客丧生。","名乘客中有","怎样处理数据,使用什么样的机器学习模型并没有所谓的正确答案。这篇文章只是抛砖引玉,若您是刚刚接触数据科学,我相信这一篇不错的指引;若您已经是老手,我相信文中的一些技巧您肯定也用过,可以温故而知新;所以希望这篇文章对您或多或少的有所帮助。","泰坦尼克号数据集是目标是给出一个模型来预测某位泰坦尼克号的乘客在沉船事件中是生还是死。而且该数据集是一个非常好的数据集,能够让您快速的开始数据科学之旅。","泰坦尼克号的沉船事件是是历史上最臭名昭著的沉船事件之一。1912年4月15日,泰坦尼克在航线中与冰山相撞,2224","泰坦尼克生还问题简介","简介"],"titanic/EDA.html":["#","#data.corr()","0","0')","0.41","1","1')","1,","10","100%,","11","19%","1]","2","2')","20","200","29","3","3')","30","32","34%","35","38%","48%","5","50","63%,二等舱的生还率约为","75%","891","90%",">correl","[","_","ag","age,cabin","ax[0,0].set_title('no.","ax[0,1].set_title('mal","ax[0].set_title('far","ax[0].set_title('numb","ax[0].set_title('parch","ax[0].set_title('pclass","ax[0].set_title('sibsp","ax[0].set_title('surviv","ax[0].set_title('survived')","ax[0].set_title('survived=","ax[0].set_xticks(x1)","ax[0].set_ylabel('')","ax[0].set_ylabel('count')","ax[0].set_yticks(range(0,110,10))","ax[1,0].set_title('embark","ax[1,1].set_title('embark","ax[1].set_title('far","ax[1].set_title('parch","ax[1].set_title('pclass:surviv","ax[1].set_title('sex","ax[1].set_title('sex:surviv","ax[1].set_title('sibsp","ax[1].set_title('survived')","ax[1].set_title('survived=","ax[1].set_xticks(x2)","ax[1].set_yticks(range(0,110,10))","ax[2].set_title('far","b","baby,","boarded')","c","cabin","data.groupby('initial')['age'].mean()","data.groupby(['sex','survived'])['survived'].count()","data.head()","data.isnull().sum()","data.loc[(data.age.isnull())&(data.initial=='miss'),'age']=22","data.loc[(data.age.isnull())&(data.initial=='mr'),'age']=33","data.loc[(data.age.isnull())&(data.initial=='mrs'),'age']=36","data.loc[(data.age.isnull())&(data.initial=='other'),'age']=46","data:","data=data,split=true,ax=ax[0])","data=data,split=true,ax=ax[1])","data=pd.read_csv('./titanic/train.csv')","data['embarked'].fillna('s',inplace=true)","data['initial'].replace(['mlle','mme','ms','dr','major','lady','countess','jonkheer','col','rev','capt','sir','don'],['miss','miss','miss','mr','mr','mrs','mrs','other','other','other','mr','mr','mr'],inplace=true)","data['initial']=0","data['initial']=data.name.str.extract('([a","data['pclass'].value_counts().plot.bar(ax=ax[0])","data['survived'].value_counts().plot.pie(explode=[0,0.1],autopct='%1.1f%%',ax=ax[0],shadow=true)","data[['sex','survived']].groupby(['sex']).mean().plot.bar(ax=ax[0])","data[data['survived']==0].age.plot.hist(ax=ax[0],bins=20,edgecolor='black',color='red')","data[data['survived']==1].age.plot.hist(ax=ax[1],color='green',bins=20,edgecolor='black')","dead')","embark","embarked')","f,ax=plt.subplots(1,2,figsize=(18,8))","f,ax=plt.subplots(1,2,figsize=(20,10))","f,ax=plt.subplots(1,2,figsize=(20,8))","f,ax=plt.subplots(1,3,figsize=(20,8))","f,ax=plt.subplots(2,2,figsize=(20,15))","fare","femal","fig.set_size_inches(10,8)","fig.set_size_inches(5,3)","fig=plt.gcf()","hue=\"survived\",","import","matplotlib.pyplot","matrix","miss","mr","name","np","numpi","of:',data['age'].max(),'years')","of:',data['age'].min(),'years')","panda","parch","passeng","passengerid","pclass","pclass')","pd","plt","plt.close(2)","plt.show()","plt.subplots_adjust(wspace=0.2,hspace=0.5)","print('averag","print('highest","print('lowest","print('oldest","print('youngest","q","s","seaborn","sex","sex')","ship:',data['age'].mean(),'years')","sibsp","sibsp与parch,值为","sn","sns.barplot('parch','survived',data=data,ax=ax[0])","sns.barplot('sibsp','survived',data=data,ax=ax[0])","sns.countplot('embarked',data=data,ax=ax[0,0])","sns.countplot('embarked',hue='pclass',data=data,ax=ax[1,1])","sns.countplot('embarked',hue='sex',data=data,ax=ax[0,1])","sns.countplot('embarked',hue='survived',data=data,ax=ax[1,0])","sns.countplot('pclass',hue='survived',data=data,ax=ax[1])","sns.countplot('sex',hue='survived',data=data,ax=ax[1])","sns.countplot('survived',data=data,ax=ax[1])","sns.distplot(data[data['pclass']==1].fare,ax=ax[0])","sns.distplot(data[data['pclass']==2].fare,ax=ax[1])","sns.distplot(data[data['pclass']==3].fare,ax=ax[2])","sns.factorplot('embarked','survived',data=data)","sns.factorplot('parch','survived',data=data,ax=ax[1])","sns.factorplot('pclass','survived',col='initial',data=data)","sns.factorplot('pclass','survived',hue='sex',col='embarked',data=data)","sns.factorplot('pclass','survived',hue='sex',data=data)","sns.factorplot('sibsp','survived',data=data,ax=ax[1])","sns.heatmap(data.corr(),annot=true,cmap='rdylgn',linewidths=0.2)","sns.violinplot(\"pclass\",\"age\",","sns.violinplot(\"sex\",\"age\",","split","surviv","survived')","ticket","vs","was:',data['fare'].max())","was:',data['fare'].mean())","was:',data['fare'].min())","x1=list(range(0,85,5))","x2=list(range(0,85,5))","z]+)\\.')","za","、","、col","、don","、dr","、ladi","、major","、miss","、sir","。","一等舱和二等舱的女性的生还率几乎为","上流女性与生还率的关系","上船人数最多的口岸是","不过我们的年龄是有缺失值的,如果图简单,可以使用平均年龄来填充缺失的年龄。但是这样做并不合适,比如人家只是个","个兄弟姐妹,配偶在船上,或","个标签(survived)组成的。其中各个特征和标签的意义如下:","个父母的人来说,生还率还是比较高的。","个父母的生还率比较高,独自一人或者一个大家庭都在船上的生还率比较低。","个特征和","为一等舱,","为三等舱。既然船舱分三六九等,那么是不是越高级的舱,它的生还率越高呢?","为二等舱,","乘客id","了解了数据种各个属性的含义之后,我们可以看看这个数据集中有没有缺失值。","从前两次可视化结果可以看出,女性,上流人士成为了是否能够活下来的关键,那么上流女性(两者的结合)的生还率会不会很高呢?","从可视化结果可以看出:","从图上看会发现结果和上面的比较相似,父母在船上的船客有更大的生还机会。而且对于那些在船上有","从图中可以看出","从图中可以看出一个比较有趣的现象,船上的男人是比女人多了","从图中可以看出平均花费其实是二等舱的普遍消费水平,但是三等舱的人数是最多的,而三等舱的人群中花费人数最多的是","从图中可以看出数据是由","从图中可以看出泰坦尼克沉船事件中还是凶多吉少的。因为在","从图可以看出,如果一位船客是单独一个人上船旅游,没有兄弟姐妹而且是单身,那么他有大约","从热力图上可以看出这些特征之间没有太大的相关性,最高的也就","从这张图可以看出一等舱的女性(上流女性)的生还率非常高!几乎接近了百分之百!而且二等舱和三等舱的女性的生还率也远比男性的生还率高。这也验证了我们的猜测,在沉船后是优先女性和一等舱的船客的。","但生还率不是最高的。","儿童的数量随着船舱等级的增加而增加,10","兄弟姐妹父母爱人数量:有","兄弟姐妹的数量与生还率的关系","先把口岸和生还率的关系画出来。","则表示两个特征之间没有相关性(线性的)。","则表示完全负相关,若为","初窥","口岸上船的人中有很多都是三等舱的船客。","口岸上船的人是一等舱和二等舱船客吧。","口岸上船的,但是","口岸登记信息时漏了几位船客,所以不妨用","口岸的的生还率最低。这是因为","口岸:即使大多数一等舱的船客在","可以看出","可以看出从","号口岸。嗯,好像并没有什么线索,我们可以再深入一点。","号口岸上的船,","号口岸上的船,我们可以假设由于人多,所以在","号口岸上船并且是三等舱的,不管是男的还是女的,生还率都很低。金钱决定命运。。。","号口岸上船的人中有","号口岸上船的人大多数都是三等舱的船客。","号口岸上船的基本上都是三等舱船客。","号口岸上船的生还率最高,可能大部分","号口岸上船的生还率最高,最低的是","号口岸上船的男性几乎团灭,因为q","号口岸填充缺失值。","号口岸的基本上是三等舱的船客。","号口岸,而且在","名船客中,只有约","和","嗯,女性和小孩的生还率比较高。","填充完缺失值后,可以尝试可视化一下。","填充缺失口岸","填充缺失年龄","外国人的姓名和我们中国人的姓名不太一样,一般都会有","多人,但是女人生还的人数几乎是男人生还的人数的两倍,女人的存活率约为","多都是三等舱的船客。","如果现在两个特征高度相关或者完全相关,这就意味着这两个特征都包含高度相似的信息,并且信息的差异非常小,所以其中一个特征是多余的。在构建模型时,我们应该尽量消除这种多余的特征,因为这样能减少训练的时间,也可以在某种程度上缓解过拟合。","对于男性来说,年纪越大,生还率越低。","岁。这个还是符合常理的。接下来我们看看船舱等级,年龄和生还率的关系,以及性别,年龄和生还率的关系。","岁以下的小屁孩的生还率比较高,80","岁以下的小朋友存活率仿佛都还挺高的,跟船舱等级好像没有太大关系。","岁以下的小朋友的存活率比较高,15","岁显然是不合适的。那有没有能够更加准确地知道缺失的年龄是多少的方法呢?有!我们可以根据姓名来推断缺失的年龄,因为姓名中有很多类似","岁的小屁孩,但是你把人家强行改成","岁的年轻人存活率低。可能年轻人就是炮灰吧。","岁的老人活下来了。","岁的船客的存活率很高,而且对女性的生还率一如既往的高。","左右的人幸免于难,那么接下来尝试使用数据集中不同的特征,来看看他们的生还率有多少。其实这样一个过程我们可以看出大概有哪些类型的船客活了下来。","左右,因此平均","平均年龄快","年纪最大的是80岁的老爷爷或者老太太,最小的是刚出生的小","年龄与生还率的关系","年龄:10","当然,在eda之前先要加载数据,我们不妨先将训练集train.csv读到内存中,并看一看。","性别与生还率的关系","性别:女性的生还率高","总共3种类型:1(一等舱),2(二等舱),3(三等舱)","惊奇的发现,居然有人可以享受免费豪华邮轮!!!!","意义","我们可以看出:","我们首先可以看看训练集中有多少人活了下来。","或者","所以接下来用热力图对相关性系数进行可视化。","探索性数据分析(eda)","探索性数据分析(eda)说白了就是通过可视化的方式来看看数据中特征与特征之间,特征与目标之间的潜在关系,看看有什么有用的线索可以挖掘,例如哪些数据是噪声,有哪些特征的相关性比较低,后续可以造出哪些新的特征等。","接着可以根据前缀来填充缺失的年龄。","是否生还,1表示是,0表示否","有多少人活了下来","来自一等舱的","父母的数量与生还率的关系","特征","特征之间的相关性系数","现在能看出很多信息了:","生还数量直方图","生还比例饼图","由于大多数人都是从","登船口岸与生还率的关系","的数值变大。通常使用","的数值变大会导致特征","的数值变大;负相关指的是:如果特征","的数值变小会导致特征","的数值来表示两个特征之间的相关性,这个值称为相关性系数。若该系数为","的样子。所以","的生还率,生还率比较低。如果兄弟姐妹的数量变多,那么生还率还是呈下降趋势的。这其实挺合理的,因为如果是一个家庭在船上的话,可能会设法救他们而不是救自己,这样一来可能谁都救不了。","的花费是被有钱的大佬给提上去的。","相关性分为正相关与负相关,正相关指的是:如果特征","看上去好想女性船客的生还率高一些,我们不妨再可视化一下。","看了这么多特征对于生还的影响,可能有点懵,不妨先简单总结一下根据可视化结果所获得的信息。","看看data的前5行","等前缀,接着我们可以将这些前缀替换成","等特殊前缀。所以我们可以先提取姓名中的前缀。","简单总结一下","船客在船上所花的钱","船客姓名","船客年龄","船客性别:female,mal","船客登船的口岸:c,q,","船客的兄弟姐妹妻子丈夫的数量","船客的父母,孩子的数量","船客的船舱号","船票","船票类型与生还率的关系","船票类型分三个档次,其中","船票类型,","船舱等级:越有钱越容易活下来,头等舱的生还率最高,三等舱的生还率最低。","花费与生还率的关系","虽然有很多一等舱的土豪们基本上都是在","虽然说钱不是万能的,但从可视化结果可以看出,一等舱的生还率最高,大于为","这三个特征中有缺失值,我们需要处理这些缺失值。怎样处理呢?先不着急,我们可以先看看数据中有哪些信息可以挖掘。","这与女性是一等舱还是二等舱没啥关系。","这个特征应该是一个能够很好的区分一个人是否生还的特征。而且对于生还来说,好像是女士优先。","这四个类别,并统计这四个类别的平均年龄。","这样我们能够提取出诸如:capt","这样的前缀,所以我们可以根据姓名的前缀来填充缺失的年龄。","那么表示两个特征之间完全正相关,若为","首先可以先看一下训练集中船客的年龄的最值和均值。","首先,先看一下花费的最值和均值。","首先,看看不同性别的生还者数量。",",而且虽然三等舱的船客人数是最多的,但生还率确是最低的。所以不难看出,金钱地位还是很重要的,也许一等舱周围有比较多的救生设备。",",而男人的存活率约为"],"titanic/feature engerning.html":["0","1","16","32","4","ax[0].set_title('family_s","ax[1].set_title('alon","base","data.drop(['name','age','ticket','fare','cabin','passengerid'],axis=1,inplace=true)","data.loc[data.family_size==0,'alone']=1","data.loc[data['age']16)&(data['age']32)&(data['age']48)&(data['age']64,'age_band']=4","data.loc[data['fare']7.91)&(data['fare']14.454)&(data['fare']31)&(data['fare']","data['age_band']=0","data['alone']=0","data['embarked'].replace(['s','c','q'],[0,1,2],inplace=true)","data['family_size']=0","data['family_size']=data['parch']+data['sibsp']","data['fare_cat']=0","data['initial'].replace(['mr','mrs','miss','master','other'],[0,1,2,3,4],inplace=true)","data['sex'].replace(['male','female'],[0,1],inplace=true)","eda","f,ax=plt.subplots(1,2,figsize=(18,6))","model。所以我们可以考虑将年龄转换成年龄段。例如将年龄小于","plt.close(2)","plt.close(3)","plt.show()","sns.factorplot('age_band','survived',data=data,col='pclass')","sns.factorplot('alone','survived',data=data,ax=ax[1])","sns.factorplot('alone','survived',data=data,hue='sex',col='pclass')","sns.factorplot('family_size','survived',data=data,ax=ax[0])","survived')","tree","vs","人的家庭来说生还率也比较低。感觉,这可能也是一个比较好的特征,可以再深入的看一下。","什么是特征工程?其实每当我们拿到数据时,并不是所有的特征都是有用的,可能有许多冗余的特征需要删掉,或者根据","从图中可以很明显的看出,如果你是一个人,那么生还的几率比较低,而且对于人数大于","删掉没多大用处的特征","到","可以看出和我们之前","可以看出,除了三等舱的单身女性的生还率比非单身女性的生还率高外,单身并不是什么好事。","和年龄一样,花费也是一个连续性的数值特征,所以我们不妨将其离散化。","姓名:难道姓名和生死有关系?这也太玄乎了,我不信,所以把它删掉","家庭成员数量与是否孤身一人","将字符串特征转换为数值型特征","岁之间的置为","年龄是一个连续型的数值特征,有的机器学习算法对于连续性数值特征不太友好,例如决策树、随机森林等","年龄离散化","年龄:由于已经根据年龄生成了新的特征“年龄段”,所以这个特征也需要删除。","很明显,花费越多生还率越高,金钱决定命运。","我们可以看一下转换成年龄段后,年龄段与生还率的关系。","接下来我们来尝试对一些特征进行处理。","然后再可视化看一下","特征工程","由于家庭成员数量和是否孤身一人好想对于是否生还有影响,所以我们不妨添加新的特征。","由于我们的机器学习模型不支持字符串,所以需要将一些有用的字符串类型的特征转换成数值型的特征,比如:性别,口岸,姓名前缀。","的结果相符,年龄越大,生还率越低。","的结果,我们可以根据已有的特征来添加新的特征,这其实就是特征工程。","的船客置为","票:票这个特征感觉是一堆随机的字符串,所以删掉。","等。","船客id:id和生死应该没啥关系,所以删掉。","船舱:由于有很多缺失值,不好填充,所以可以考虑删掉。","花费离散化","花费:和年龄一样,删掉。",",16"],"titanic/fit and predict.html":["#let","'initial']","'initial'].replace(['mlle','mme','ms','dr','major','lady','countess','jonkheer','col','rev','capt','sir','don'],['miss','miss','miss','other','mr','mrs','mrs','other','other','other','mr','mr','mr'],inplace=true)","0.8275","=","axis=1)","clf","clf.fit(x_train,","clf.predict(x_test)","data.drop(['survived'],","data['survived']","extract","inplace=true)","predict","predict))","print(accuracy_score(y_test,","randomforestclassifier(n_estimators=10)","salut","test_data.drop(['survived'],","test_data.loc[(test_data.age.isnull())&(test_data.initial=='miss'),'age']=22","test_data.loc[(test_data.age.isnull())&(test_data.initial=='mr'),'age']=33","test_data.loc[(test_data.age.isnull())&(test_data.initial=='mrs'),'age']=36","test_data.loc[(test_data.age.isnull())&(test_data.initial=='other'),'age']=46","test_data.loc[:,","test_data.loc[test_data.family_size==1,'alone']=1","test_data.loc[test_data['age']16)&(test_data['age']32)&(test_data['age']48)&(test_data['age']64,'age_band']=4","test_data.loc[test_data['fare']7.91)&(test_data['fare']14.454)&(test_data['fare']31)&(test_data['fare']","test_data.name.str.extract('([a","test_data:","test_data=pd.read_csv('./titanic/test.csv')","test_data['age_band']=0","test_data['alone']=0","test_data['embarked'].fillna('s',","test_data['family_size']=0","test_data['family_size']=test_data['parch']+test_data['sibsp']+1","test_data['fare_cat']=0","test_data['initial']=0","test_data['survived']","x_test","x_train","y_test","y_train","y_train)","z]+)\\.',expand=false)","za","。","做好数据预处理后,可以将数据喂给我们的机器学习模型来进行训练和预测了。不过在构建模型之前,我们要使用处理训练集数据的方式来处理测试集。","构建模型进行预测","此时看到预测的准确率达到了","然后可以使用机器学习模型来训练并预测了,这里使用的是随机森林。"],"titanic/tuning.html":["#","0.8323","0.8525。","1%","10,","100,","15,","150,","20,","200],'max_depth':","25,","30]}","50,","=","[10,","[5,","axis=1)","clf","clf.fit(x_train,","clf.predict(x_test)","cv=5)","data.drop(['survived'],","data['survived']","grid_search","grid_search.fit(x_train,","gridsearchcv","gridsearchcv(randomforestclassifier(),","import","max_depth=5)","param_grid","param_grid,","predict","predict))","print(accuracy_score(y_test,","print(grid_search.best_params_)","print(grid_search.best_score_)","randomforestclassifier(n_estimators=50,","sklearn","sklearn.model_select","test_data.drop(['survived'],","test_data['survived']","x_test","x_train","y_test","y_train","y_train)","{'n_estimators':","为我们提供了网格搜索的接口,我们能很方便的进行网格搜索。","可以看到经过调参之后,我们的随机森林模型的性能提高到了","很多机器学习算法有很多可以调整的参数(即超参数),例如我们用的随机森林需要我们指定森林中有多少棵决策树,没棵决策树的最大深度等。这些超参数都或多或少的会影响这模型的性能。那么怎样才能找到合适的超参数,来让我们的模型性能达到比较好的效果呢?可以使用网格搜索!","想要调整的参数的字典,字典的key为参数名字,value为想要尝试参数值","打印最佳参数组合","打印最佳参数组合时模型的最佳性能","的准确率。然后我们使用最佳参数构造随机森林,并对测试集测试会发现,测试集的准确率达到了","网格搜索的意思其实就是遍历所有我们想要尝试的参数组合,看看哪个参数组合的性能最高,那么这组参数组合就是模型的最佳参数。","调参","采用5折验证的方式进行网格搜索,分类器为随机森林",",提升了接近"],"pingpong/what is reinforce learning.html":["(不基于模型)两大类。","(基于模型)和","agent","agent,他试图通过采取行动来操纵环境,并且从一个状态转变到另一个状态,当他完成任务时给高分(奖励),但是当他没完成任务时,给低分(无奖励)。这也是强化学习的核心思想。","alphago","base","based,能通过想象来预判断接下来将要发生的所有情况,然后选择这些想象情况中最好的那种,并依据这种情况来采取下一步的策略,这也就是围棋场上","free","free,这里的","gradient","gradient。在介绍该算法之前,我们先要明确一下这个雅达利乒乓球游戏中的环境状态是游戏画面,agent是我们操作的挡板,奖励是分数,动作是上或者下。","learning、sarsa、polici","model","q","不理解环境,环境给了什么就是什么,我们就把这种方法叫做","中,","中基于策略的一种算法,polici","什么是强化学习","像","只是","只是多了一道程序,为真实世界建模,也可以说他们都是","只能按部就班,一步一步等待真实世界的反馈,再根据反馈采取下一步行动。而","在强化学习中有很多算法,如果按类别划分可以划分成","在这里主要介绍一下","多出了一个虚拟环境,我们可以先在虚拟环境中尝试,如果没问题,再拿到现实环境中来。","如果我们的","它主要包含四个元素,agent、环境状态、行动、奖励,强化学习的目标就是获得最多的累计奖励。","就是用模型来表示环境,理解环境就是学会了用一个模型来代表环境,所以这种就是","并避免低分的行为。","强化学习是一类算法,是让计算机实现从一开始完全随机的进行操作,通过不断地尝试,从错误中学习,最后找到规律,学会了达到目的的方法。这就是一个完整的强化学习过程。让计算机在不断的尝试中更新自己的行为,从而一步步学习如何操自己的行为得到高分。","方法。","的强化学习,","的方法有很多,","能够超越人类的原因。","计算机就是","计算机有一位虚拟的裁判,这个裁判他不会告诉你如何行动,如何做决定,他为你做的事只有给你的行为打分,最开始,计算机完全不知道该怎么做,行为完全是随机的,那计算机应该以什么形式学习这些现有的资源,或者说怎么样只从分数中学习到我应该怎样做决定呢?很简单,只需要记住那些高分,低分对应的行为,下次用同样的行为拿高分,","让我们想象一下比赛现场:","都是从环境中得到反馈然后从中学习。而"],"pingpong/Policy Gradient.html":[",","...","...,","10","100","80%","=",">动作1",">动作2",">动作n",">反馈1",">反馈2",">反馈n)。那么每一个游戏序列(即每一把游戏)的反馈=反馈1+反馈2+...+反馈n。因此,若假设r(τ)r(\\tau)r(τ)表示游戏序列τ\\tauτ的反馈,则有:r(τ)=∑n=1nτnr(\\tau)=\\sum_{n=1}^n\\tau_nr(τ)=∑​n=1​n​​τ​n​​。",">状态2","\\approx","\\frac{1}{n}\\sum_{n=1}^nr(\\tau^n)","\\nabla","\\overline{r_\\theta}","\\sum_\\tau","\\tau=\\{s_1,","\\tau_2,","\\tau_{10}τ​1​​,τ​2​​,...,τ​10​​]。这","a_1,","a_2,","a_t,","actionπ(state)→action。","agent","gradient","gradient原理","gradient的核心思想","logp(\\tau^n|\\theta)","logp(\\tau^n|\\theta)∇logp(τ​n​​∣θ)。所以我们来看一下∇logp(τn∣θ)\\nabla","logp(\\tau^n|\\theta)∇logp(τ​n​​∣θ)应该怎么算。","logp(\\tau|\\theta)=\\sum_{t=1}^t\\nabla","logp(a_t|s_t,\\theta)","logp(τ∣θ)=∑t=1t∇logp(at∣st,θ)","logp(τ∣θ)=∑​t=1​t​​∇logp(a​t​​∣s​t​​,θ)","n","n(n很大很大)","ok,到这里,polici","p","p(\\tau|\\theta)=p(s_1)\\prod_{t=1}^tp(a_t|s_t,\\theta)p(\\tau_t,s_{t+1}|s_t,a_t)","p(\\tau|\\theta)=p(s_1)p(a_1|s_1,\\theta)p(r_1,s_2|s_1,a_1)p(a_2|s_2,\\theta)p(r_2,s_3|s_2,a_2)...","p(at∣st,θ)p(a_t|s_t,\\theta)p(a​t​​∣s​t​​,θ)其实就是我们神经网络根据环境状态预测出来的下一步的动作概率分布。","p(τ∣θ)=p(s1)p(a1∣s1,θ)p(r1,s2∣s1,a1)p(a2∣s2,θ)p(r2,s3∣s2,a2)...","p(τ∣θ)=p(s1)∏t=1tp(at∣st,θ)p(τt,st+1∣st,at)","p(τ∣θ)=p(s​1​​)p(a​1​​∣s​1​​,θ)p(r​1​​,s​2​​∣s​1​​,a​1​​)p(a​2​​∣s​2​​,θ)p(r​2​​,s​3​​∣s​2​​,a​2​​)...","p(τ∣θ)=p(s​1​​)∏​t=1​t​​p(a​t​​∣s​t​​,θ)p(τ​t​​,s​t+1​​∣s​t​​,a​t​​)","polici","r(\\tau)p(\\tau|\\theta)","r(\\tau)p(\\tau|\\theta)​r​θ​​​​​=∑​τ​​r(τ)p(τ∣θ)。这个公式看起来复杂,其实不难理解。","r_1,","r_2,","r_t\\}","rθ‾=∑τr(τ)p(τ∣θ)≈1n∑n=1nr(τn)","rθ‾≈1n∑n=1nr(τn)","s_2,","s_t,","τ={s1,a1,r1,s2,a2,r2,...,st,at,rt}","τ={s​1​​,a​1​​,r​1​​,s​2​​,a​2​​,r​2​​,...,s​t​​,a​t​​,r​t​​}","​r​θ​​​​​=∑​τ​​r(τ)p(τ∣θ)≈​n​​1​​∑​n=1​n​​r(τ​n​​)","​r​θ​​​​​≈​n​​1​​∑​n=1​n​​r(τ​n​​)","∇rθ‾≈1n∑n=1nr(τn)∇logp(τn∣θ)","∇​r​θ​​​​​≈​n​​1​​∑​n=1​n​​r(τ​n​​)∇logp(τ​n​​∣θ)","个游戏序列(游戏序列1,游戏序列2,游戏序列3,","个游戏序列[τ1,τ2,...,τ10\\tau_1,","个游戏序列中采样得到的。","个游戏序列就相当于从","中采样了","假设我们玩了","其实","函数π\\piπ其实可以看成是一个模型,那么想在无数次尝试中寻找出能让","动作是从一个概率分布中采样出来的。","又由于:","如果我们把整个乒乓球游戏所有可能出现的状态,动作,反馈组合起来看成是玩了","尽量拿高分的模型应该怎样来找呢?我相信您应该猜到了!没错!就是神经网络!","您会发现∑n=1nr(τn)\\sum_{n=1}^nr(\\tau^n)∑​n=1​n​​r(τ​n​​)很好算,只要把反馈全部加起来就完事了,难算的是∇logp(τn∣θ)\\nabla","我们可以将游戏画面传给神经网络作为输入,然后神经网络预测一下当前游戏画面下,下一步动作的概率分布。","所以就有:","所以我们游戏的总的反馈期望rθ‾\\overline{r_\\theta}​r​θ​​​​​可表示为:rθ‾=∑τr(τ)p(τ∣θ)\\overline{r_\\theta}=\\sum_\\tau","所以:","把乒乓球游戏,那么可能会有这样的一个统计结果。","把游戏打的好还是不好呢?也很明细,把","把游戏的所有反馈全部都加起来就好了。如果把这些反馈的和称为总反馈(总得分),那么就有总反馈(总得分)=第1把反馈1+第1把反馈2+...+第10把反馈m。也就是说总反馈越高越好。","把游戏,就会有","把游戏,就相当于得到了","把计算一次总反馈,那么这","把,每","既然总反馈一直会变,那么我们可以尝试换一种思路,即计算总反馈的期望,即总反馈的期望越高越好。那这个期望怎么算呢?","是通过神经网络来训练模型,该模型需要根据环境状态来预测出下一步动作的概率分布,并根据这个概率分布进行采样,将采样到的动作作为下一步的动作。","次τ\\tauτ。所以总反馈期望rθ‾\\overline{r_\\theta}​r​θ​​​​​又可以近似的表示为:","次的总反馈会不会是一模一样的呢?其实仔细想想会发现不会一摸一样,因为:","游戏序列n)。那么我们在玩游戏时所得到的游戏序列实际上就是从这","游戏的状态实时在变,所以环境状态不可能一直是一样的。","然后两边取logloglog会得到:","状态n","现在已经知道","由于rθ‾\\overline{r_\\theta}​r​θ​​​​​的值越大越好,所以我们可以使用梯度上升的方式来更新θ\\thetaθ。所以就有如下数学推导:","由于一个游戏序列τ\\tauτ是由多个状态,动作,反馈构成的,即:","的原理","的并不是每次都选取概率最高的动作,而是根据动作的概率分布进行采样。也就是说就算我预测出来的向上挪的概率为","的数学推导全部推导完毕了。我们不妨用一张图来总结一下","的核心思想非常简单,就是找一个函数π\\piπ,这个函数π\\piπ能够根据现在环境的状态(state)来产生接下来要采取的行动或者动作(action)。即π(state)→action\\pi(state)\\rightarrow","的算法流程。流程如下:","稍微整理一下可知:","细心的您可能会发现,如果每次取概率最高的动作作为下一步的动作,那不就成分类了么。其实","说到这,有一个问题需要弄清楚:假设总共玩了","那么为什么采样而不是直接选取概率最大的呢?因为这样很有灵性。可以想象一下,我们和别人下棋的时候,如果一直按照套路来下,那么对手很可能能够猜到我们下一步棋会怎么走,从而占据主动。如果我们时不时地不按套路出牌,但是这种不按套路的动作不会降低太多对于我们能够赢下这一局棋的几率。那么对手很可能会不知所措,主动权就掌握在我们手里。就像《天龙八部》中虚竹大破珍珑棋局时一样,可能有灵性一点,会有意想不到的效果。","那么会有一个灵魂拷问,就是怎样来鉴定我的神经网络是好还是坏呢?很显然,当然是赢的越多越好了!所以我们不妨假设,让计算机玩","那么怎样评价这","首先我们可以将每一把游戏看成一个游戏序列(状态1",",也不一定会向上挪。"],"pingpong/coding.html":["!=","#","#scale","#不要上面的记分牌","#从动作概率分布中采样","#从动作概率分布中采样,action=2表示往上挪,action=3表示往下挪","#前向传播","#将二维图压成一维的数组","'rb'))","(1.0","+","/","0","0.5,所以i是高为80,宽为80的单通道图","0]","1","1.0","109]","144]","2","::2,","=","==","_","action","aprob,","atari_pi","cur_x","cur_x为预处理后的游戏画面","d)","def","done,","env","env.render()","env.reset()","env.step(env.action_space.sample())","f","gradient玩乒乓球游戏","gym","gym.make(\"pong","gym.make('pong","gym即可。","h","h[h","https://github.com/kojoley/atari","i.astype(np.float).ravel()","i[35:195]","i[::2,","i[i","import","index","instal","model","model['w1']","model['w2']","none","np","np.dot(model['w1'],","np.exp(","np.random.randn(h)","np.random.randn(h,","np.random.uniform()","np.sqrt(d)","np.sqrt(h)","np.zeros(80*80)","np.zeros(d)","numpi","observ","observation,","pickl","pickle.load(open('save.p',","policy_forward(x)","policy_forward(x):","prepro(i):","prepro(observation)","prev_x","py/releas","relu","return","reward,","sigmoid","sigmoid(x):","true:","v0\")","v0')","x","x)","x))","x为帧差图","{}","。","一直渲染游戏画面","为我们提供了模拟游戏的环境。使得我们能够很方便地得到游戏的环境状态,并作出动作。想要安装","也很方便,只需在命令行中输入pip","使用polici","函数。","加载模型玩游戏","即可。","安装","将上一帧更新为当前帧","将当前帧更新为上一帧","开启乒乓球游戏环境","开启游戏","当安装好所需要的库之后,我们可以使用如下代码开始游戏:","得到帧差图","想要玩乒乓球游戏,首先得有乒乓球游戏。openai","搭建神经网络","是一张rgb的三通道图,而且我们的挡板怎么移动只跟挡板和球有关系,所以我们可以尝试将三通道图转换成一张二值化的图,其中挡板和球是","来实现雅达利环境的模拟。安装","游戏画面预处理","游戏的画面是逐帧组成的,如果我们将当前帧和上一帧的图像相减就能得到能够表示两帧之间的变化的帧差图,将这样的帧差图作为神经网络的输入的话会是个不错的选择。","由于env.step返回出来的","由于乒乓球游戏是雅达利游戏机上的游戏,所以需要安装","的","目标为1","神经网络中神经元的参数","神经网络可以根据自己的喜好来搭建,在这里我使用最简单的只有两层全连接层的网络模型来进行预测,由于我们挡板的动作只有上和下,所以最后的激活函数为","神经网络的前向传播,x为输入的帧差图","经过漫长的训练过程后,我们可以将训练好的模型加载进来开始玩游戏了。","背景赋值为0","训练神经网络","随机做动作,并得到做完动作之后的环境(observation),反馈(reward),是否结束(done)","随机初始化第一层的神经元参数,总共200个神经元","随机初始化第二层的神经元参数,总共200个神经元","非常简单,只要在命令行中输入pip",",背景是"],"recommand.html":["agn","https://www.educoder.net/shixuns/4awq25iv/challeng","https://www.educoder.net/shixuns/4fhemfr9/challeng","https://www.educoder.net/shixuns/aw9bxy75/challeng","https://www.educoder.net/shixuns/cbsfh3r5/challeng","https://www.educoder.net/shixuns/hl7wacq5/challeng","https://www.educoder.net/shixuns/k6fp4saq/challeng","https://www.educoder.net/shixuns/kz3fixv9/challeng","https://www.educoder.net/shixuns/qy9gozt8/challeng","https://www.educoder.net/shixuns/tw9up75v/challeng","https://www.educoder.net/shixuns/ya8h7utx/challeng","k","knn算法","mean","《机器学习》","也可通过扫码查看整套课程,二维码如下:","关于本书的实验与涉及的案例均可以在平台进行体验,名称与链接如下:","决策树","名称","实训推荐","模型评估与选择","泰坦尼克号生还预测","线性回归","绪论","逻辑回归","链接","随机森林"]},"length":24},"tokenStore":{"root":{"0":{"0":{"0":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.061611374407582936},"decision_tree.html":{"ref":"decision_tree.html","tf":0.014285714285714285}}},"docs":{}},"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904},"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991},"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.05132743362831858},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0273972602739726},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.019455252918287938},"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}},".":{"0":{"0":{"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"3":{"0":{"docs":{},".":{"0":{"0":{"3":{"0":{"docs":{},".":{"0":{"0":{"3":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"5":{"6":{"0":{"docs":{},".":{"0":{"5":{"6":{"0":{"docs":{},".":{"0":{"5":{"6":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"8":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}},"1":{"1":{"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}},"2":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"3":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"4":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}},"2":{"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"4":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"6":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}}},"3":{"0":{"docs":{},".":{"3":{"0":{"docs":{},".":{"3":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"(":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"类":{"docs":{},"别":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}},")":{"docs":{},";":{"docs":{},"情":{"docs":{},"况":{"docs":{},"b":{"docs":{},":":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"是":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}},"docs":{}}},"1":{"1":{"1":{"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}},"docs":{}},"docs":{}},"5":{"0":{"docs":{},".":{"3":{"1":{"5":{"0":{"docs":{},".":{"3":{"1":{"5":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"3":{"0":{"docs":{},".":{"3":{"3":{"0":{"docs":{},".":{"3":{"3":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.026490066225165563}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"5":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"7":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336}}},"4":{"0":{"docs":{},".":{"4":{"0":{"docs":{},".":{"4":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"docs":{}}},"docs":{}},"docs":{}}},"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"2":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336}}},"5":{"0":{"docs":{},".":{"5":{"0":{"docs":{},".":{"5":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}}},"docs":{}},"docs":{}}},"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"3":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"6":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"i":{"docs":{},"是":{"docs":{},"高":{"docs":{},"为":{"8":{"0":{"docs":{},",":{"docs":{},"宽":{"docs":{},"为":{"8":{"0":{"docs":{},"的":{"docs":{},"单":{"docs":{},"通":{"docs":{},"道":{"docs":{},"图":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}},"docs":{}},"docs":{}}}}},"docs":{}},"docs":{}}}}}}}}},"6":{"0":{"docs":{},".":{"6":{"0":{"docs":{},".":{"6":{"docs":{},"(":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"类":{"docs":{},"别":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}},"7":{"0":{"docs":{},".":{"7":{"0":{"docs":{},".":{"7":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"(":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"类":{"docs":{},"别":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}}}}}}}}},"docs":{}}},"docs":{}},"docs":{}}},"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"4":{"6":{"6":{"7":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}},"docs":{}},"9":{"0":{"docs":{},".":{"7":{"4":{"9":{"0":{"docs":{},".":{"7":{"4":{"9":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.008849557522123894}}},"8":{"2":{"7":{"5":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"3":{"2":{"3":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}},"docs":{}},"docs":{}},"5":{"2":{"5":{"docs":{},"。":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"docs":{}},"docs":{}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.008849557522123894}}},"9":{"0":{"docs":{},".":{"9":{"0":{"docs":{},".":{"9":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"docs":{}}},"docs":{}},"docs":{}}},"2":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"3":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"5":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"6":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669},"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},"9":{"9":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}},"docs":{}},"docs":{}},"docs":{}},"=":{"0":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"~":{"1":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}},"docs":{}},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"]":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}},"1":{"0":{"0":{"0":{"0":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}},"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.023809523809523808}}},"1":{"0":{"0":{"1":{"0":{"0":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.023809523809523808},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}},"%":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"1":{"0":{"1":{"0":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.019867549668874173}}},"docs":{}},"docs":{}},"docs":{}},"9":{"docs":{},"]":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.06382978723404255}},"%":{"1":{"0":{"docs":{},"\\":{"docs":{},"%":{"1":{"0":{"docs":{},"%":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"docs":{}},"docs":{}}}},"docs":{}},"docs":{}},")":{"docs":{},"^":{"2":{"docs":{},"}":{"docs":{},")":{"docs":{},"/":{"3":{"docs":{},"=":{"0":{"docs":{},".":{"9":{"4":{"2":{"8":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"+":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"7":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"8":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}}}}}}},"=":{"7":{"docs":{},".":{"6":{"7":{"3":{"9":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"1":{"1":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.04265402843601896},"decision_tree.html":{"ref":"decision_tree.html","tf":0.02857142857142857},"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"来":{"docs":{},"该":{"docs":{},"样":{"docs":{},"本":{"docs":{},"是":{"docs":{},"类":{"docs":{},"别":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}},"其":{"docs":{},"他":{"docs":{},"的":{"docs":{},"数":{"docs":{},"值":{"docs":{},"以":{"docs":{},"此":{"docs":{},"类":{"docs":{},"推":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.01680672268907563},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},".":{"2":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.01680672268907563}}},"docs":{}},")":{"docs":{},"^":{"2":{"docs":{},"}":{"docs":{},"=":{"2":{"docs":{},".":{"8":{"2":{"8":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}}},"2":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}}},"3":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.025210084033613446}}},"4":{"4":{"docs":{},"]":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},"5":{"0":{"2":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}},"docs":{},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"1":{"5":{"1":{"5":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}},".":{"2":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},"docs":{}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"6":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"7":{"9":{"7":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},"docs":{}},"docs":{}},"9":{"docs":{},"%":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338},"kNN.html":{"ref":"kNN.html","tf":0.01680672268907563},"AGNES.html":{"ref":"AGNES.html","tf":0.03205128205128205},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.06017699115044248},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.054474708171206226},"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.016666666666666666},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}},".":{"0":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}},"1":{"9":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"2":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815},"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"3":{"3":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},"docs":{}},"5":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815},"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"docs":{},"随":{"docs":{},"机":{"docs":{},"初":{"docs":{},"始":{"docs":{},"k":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},",":{"docs":{},"作":{"docs":{},"为":{"docs":{},"类":{"docs":{},"别":{"docs":{},"中":{"docs":{},"心":{"docs":{},"。":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}},"−":{"1":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"m":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"m":{"docs":{},"(":{"docs":{},"y":{"docs":{},"i":{"docs":{},"−":{"docs":{},"p":{"docs":{},"i":{"docs":{},")":{"2":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0273972602739726}}},"docs":{}}}}}}}},"∣":{"docs":{},"y":{"docs":{},"i":{"docs":{},"−":{"docs":{},"p":{"docs":{},"i":{"docs":{},"∣":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}},"docs":{}}}}},")":{"docs":{},"}":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"{":{"3":{"docs":{},"}":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"i":{"docs":{},"=":{"docs":{},"​":{"6":{"docs":{},"∗":{"docs":{},"(":{"6":{"docs":{},"−":{"1":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"∗":{"docs":{},"(":{"2":{"docs":{},"+":{"8":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"​":{"3":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}},"docs":{}}}},"docs":{}}}}}}},"docs":{}}},"docs":{}}}},"docs":{}}}}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}},"]":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"[":{"0":{"docs":{},",":{"1":{"docs":{},"]":{"docs":{},",":{"docs":{},"值":{"docs":{},"越":{"docs":{},"大":{"docs":{},"说":{"docs":{},"明":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"性":{"docs":{},"能":{"docs":{},"越":{"docs":{},"好":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"m":{"docs":{},"m":{"docs":{},"m":{"docs":{},"为":{"docs":{},"样":{"docs":{},"本":{"docs":{},"数":{"docs":{},"量":{"docs":{},",":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}}}},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"%":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"2":{"0":{"0":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"]":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"_":{"docs":{},"d":{"docs":{},"e":{"docs":{},"p":{"docs":{},"t":{"docs":{},"h":{"docs":{},"'":{"docs":{},":":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}},"2":{"0":{"2":{"0":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}},"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.028169014084507043}}}},"2":{"2":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991},"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"3":{"docs":{},".":{"3":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815},"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}},"docs":{}}},"5":{"docs":{},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"9":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},")":{"docs":{},",":{"docs":{},"我":{"docs":{},"就":{"docs":{},"会":{"docs":{},"认":{"docs":{},"为":{"docs":{},"这":{"docs":{},"个":{"docs":{},"人":{"docs":{},"没":{"docs":{},"有":{"docs":{},"买":{"docs":{},"过":{"docs":{},"车":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"呢":{"docs":{},",":{"docs":{},"关":{"docs":{},"键":{"docs":{},"问":{"docs":{},"题":{"docs":{},"就":{"docs":{},"是":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"来":{"docs":{},"构":{"docs":{},"造":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"了":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.04201680672268908},"AGNES.html":{"ref":"AGNES.html","tf":0.02564102564102564},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.024778761061946902},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.054474708171206226},"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}},"\\":{"docs":{},"e":{"docs":{},"p":{"docs":{},"s":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},")":{"docs":{},"^":{"2":{"docs":{},")":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"docs":{}}}}}}}}}}},".":{"1":{"docs":{},".":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"2":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},".":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"3":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"5":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"6":{"7":{"docs":{},")":{"docs":{},"^":{"2":{"docs":{},"+":{"docs":{},"(":{"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"4":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}},"docs":{}}}},"docs":{}}}},"docs":{}},"docs":{},"对":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"将":{"docs":{},"其":{"docs":{},"标":{"docs":{},"记":{"docs":{},"为":{"docs":{},"距":{"docs":{},"离":{"docs":{},"类":{"docs":{},"别":{"docs":{},"中":{"docs":{},"心":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},"。":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}}}}}}}},")":{"docs":{},"(":{"1":{"docs":{},",":{"2":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"2":{"2":{"2":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"0":{"0":{"0":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"0":{"0":{"0":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"5":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"5":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"docs":{}},"^":{"2":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}},"}":{"docs":{},"=":{"1":{"docs":{},".":{"4":{"1":{"4":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"3":{"0":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"%":{"3":{"0":{"docs":{},"\\":{"docs":{},"%":{"3":{"0":{"docs":{},"%":{"docs":{},",":{"docs":{},"而":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}},"docs":{}},"docs":{}}}},"docs":{}},"docs":{}},"]":{"docs":{},"}":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}},"2":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"3":{"3":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143},"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"4":{"docs":{},"%":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"5":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"7":{"docs":{},".":{"6":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},"docs":{}}},"8":{"docs":{},"%":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.02564102564102564},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.01415929203539823},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.03501945525291829},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.007142857142857143}},".":{"3":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},"5":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"6":{"7":{"docs":{},")":{"docs":{},"^":{"2":{"docs":{},"}":{"docs":{},")":{"docs":{},"/":{"3":{"docs":{},"=":{"0":{"docs":{},".":{"6":{"2":{"8":{"5":{"3":{"9":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"+":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"2":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}}}}}}}}},"docs":{}}}},"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"docs":{},"将":{"docs":{},"每":{"docs":{},"个":{"docs":{},"类":{"docs":{},"别":{"docs":{},"的":{"docs":{},"质":{"docs":{},"心":{"docs":{},"更":{"docs":{},"新":{"docs":{},"为":{"docs":{},"新":{"docs":{},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},"中":{"docs":{},"心":{"docs":{},"。":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}}}},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"]":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}}},"/":{"5":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}},")":{"docs":{},"(":{"1":{"docs":{},",":{"3":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"3":{"3":{"3":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"但":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"0":{"0":{"0":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"2":{"docs":{},",":{"3":{"docs":{},")":{"docs":{},"(":{"2":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"2":{"docs":{},",":{"3":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"2":{"2":{"2":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"3":{"3":{"3":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"但":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"0":{"0":{"0":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"4":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"4":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"docs":{}}},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"4":{"0":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"%":{"4":{"0":{"docs":{},"\\":{"docs":{},"%":{"4":{"0":{"docs":{},"%":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}},"docs":{}},"docs":{}}}},"docs":{}},"docs":{}}},"8":{"docs":{},"%":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.04201680672268908},"AGNES.html":{"ref":"AGNES.html","tf":0.019230769230769232},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.012389380530973451},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.027237354085603113},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}},".":{"2":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.01680672268907563}}},"docs":{},"重":{"docs":{},"复":{"docs":{},"步":{"docs":{},"骤":{"2":{"docs":{},"、":{"3":{"docs":{},",":{"docs":{},"直":{"docs":{},"到":{"docs":{},"类":{"docs":{},"别":{"docs":{},"中":{"docs":{},"心":{"docs":{},"的":{"docs":{},"变":{"docs":{},"化":{"docs":{},"小":{"docs":{},"于":{"docs":{},"阈":{"docs":{},"值":{"docs":{},"。":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}},"]":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"]":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},"。":{"docs":{},"又":{"docs":{},"因":{"docs":{},"表":{"docs":{},"格":{"docs":{},"中":{"docs":{},"真":{"docs":{},"是":{"docs":{},"类":{"docs":{},"别":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}},")":{"docs":{},"(":{"1":{"docs":{},",":{"4":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"4":{"4":{"4":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"1":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"2":{"docs":{},",":{"4":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"2":{"2":{"2":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"4":{"4":{"4":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"2":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"2":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"3":{"docs":{},",":{"4":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"3":{"3":{"3":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"4":{"4":{"4":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"但":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},")":{"docs":{},"。":{"docs":{},"总":{"docs":{},"共":{"docs":{},"有":{"1":{"1":{"1":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"满":{"docs":{},"足":{"docs":{},"b":{"docs":{},"b":{"docs":{},"b":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"b":{"docs":{},"=":{"1":{"docs":{},"b":{"docs":{},"=":{"1":{"docs":{},"b":{"docs":{},"=":{"1":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"docs":{}}}},"5":{"0":{"5":{"0":{"5":{"0":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}},"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"5":{"5":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.02142857142857143},"random_forest.html":{"ref":"random_forest.html","tf":0.013245033112582781}}},"docs":{}},"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669},"kNN.html":{"ref":"kNN.html","tf":0.04201680672268908},"AGNES.html":{"ref":"AGNES.html","tf":0.03205128205128205},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.011673151750972763},"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}},".":{"8":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.025210084033613446}}},"docs":{}},"/":{"1":{"5":{"5":{"docs":{},"/":{"1":{"5":{"5":{"docs":{},"/":{"1":{"5":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"5":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},"docs":{}},"docs":{}}},"docs":{}}}}}}},"docs":{}},"docs":{}},"]":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}},"(":{"1":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"5":{"5":{"5":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"1":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"2":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"2":{"2":{"2":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"5":{"5":{"5":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"2":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"2":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"3":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"3":{"3":{"3":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"5":{"5":{"5":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"3":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"3":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"4":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"4":{"4":{"4":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"5":{"5":{"5":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"但":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"4":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"4":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"docs":{}}}},"6":{"3":{"docs":{},"%":{"docs":{},",":{"docs":{},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"约":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}},"4":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},"5":{"docs":{"./":{"ref":"./","tf":0.2}}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.023346303501945526}},".":{"9":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"docs":{}},")":{"docs":{},"(":{"1":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"6":{"6":{"6":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"2":{"docs":{},",":{"4":{"docs":{},")":{"docs":{},"(":{"2":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"2":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"2":{"2":{"2":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"6":{"6":{"6":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},",":{"docs":{},"(":{"3":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},"(":{"3":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"3":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"3":{"3":{"3":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"6":{"6":{"6":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"也":{"docs":{},"不":{"docs":{},"同":{"docs":{},")":{"docs":{},"。":{"docs":{},"总":{"docs":{},"共":{"docs":{},"有":{"8":{"8":{"8":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"满":{"docs":{},"足":{"docs":{},"d":{"docs":{},"d":{"docs":{},"d":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"d":{"docs":{},"=":{"8":{"docs":{},"d":{"docs":{},"=":{"8":{"docs":{},"d":{"docs":{},"=":{"8":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"4":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"4":{"4":{"4":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"6":{"6":{"6":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"不":{"docs":{},"同":{"docs":{},",":{"docs":{},"但":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},")":{"docs":{},"。":{"docs":{},"总":{"docs":{},"共":{"docs":{},"有":{"4":{"4":{"4":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"满":{"docs":{},"足":{"docs":{},"c":{"docs":{},"c":{"docs":{},"c":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"c":{"docs":{},"=":{"4":{"docs":{},"c":{"docs":{},"=":{"4":{"docs":{},"c":{"docs":{},"=":{"4":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"5":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},"(":{"docs":{},"因":{"docs":{},"为":{"5":{"5":{"5":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"6":{"6":{"6":{"docs":{},"号":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"1":{"1":{"1":{"docs":{},",":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"簇":{"docs":{},"都":{"docs":{},"为":{"2":{"2":{"2":{"docs":{},")":{"docs":{},"。":{"docs":{},"总":{"docs":{},"共":{"docs":{},"有":{"2":{"2":{"2":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"满":{"docs":{},"足":{"docs":{},"a":{"docs":{},"a":{"docs":{},"a":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"a":{"docs":{},"=":{"2":{"docs":{},"a":{"docs":{},"=":{"2":{"docs":{},"a":{"docs":{},"=":{"2":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}},"docs":{}}},"docs":{}},"^":{"2":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}},"docs":{}}}},"7":{"5":{"docs":{},"%":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}},".":{"1":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"7":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.025210084033613446}}},"docs":{}},")":{"docs":{},"^":{"2":{"docs":{},"+":{"docs":{},"(":{"1":{"0":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"3":{"docs":{},".":{"6":{"7":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}}},"9":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}},"docs":{}}}},"8":{"0":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"%":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"8":{"8":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.014285714285714285}}},"docs":{}},"9":{"1":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.01680672268907563},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}},")":{"docs":{},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"^":{"2":{"docs":{},"+":{"docs":{},"(":{"9":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}},"docs":{}}},"*":{"8":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},"docs":{}}},"9":{"0":{"docs":{},"%":{"9":{"0":{"docs":{},"\\":{"docs":{},"%":{"9":{"0":{"docs":{},"%":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"docs":{}},"docs":{}}}},"docs":{}},"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"9":{"7":{"8":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.008849557522123894}}},"docs":{}},"docs":{}},"docs":{"kNN.html":{"ref":"kNN.html","tf":0.01680672268907563},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}},".":{"5":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.03361344537815126}}},"docs":{}},")":{"docs":{},"^":{"2":{"docs":{},"}":{"docs":{},"=":{"5":{"docs":{},".":{"8":{"3":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"]":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"docs":{},"个":{"docs":{},"实":{"docs":{},"践":{"docs":{},"任":{"docs":{},"务":{"docs":{},",":{"docs":{},"涵":{"docs":{},"盖":{"docs":{},"了":{"docs":{},"《":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"》":{"docs":{},"中":{"docs":{},"的":{"docs":{},"前":{"docs":{},"十":{"docs":{},"章":{"docs":{},"内":{"docs":{},"容":{"docs":{},",":{"docs":{},"并":{"docs":{},"已":{"docs":{},"在":{"docs":{},"南":{"docs":{},"京":{"docs":{},"大":{"docs":{},"学":{"docs":{},"投":{"docs":{},"入":{"docs":{},"使":{"docs":{},"用":{"docs":{},"。":{"docs":{"./":{"ref":"./","tf":0.2}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"⼦":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"来":{"docs":{},"训":{"docs":{},"练":{"docs":{},"模":{"docs":{},"型":{"docs":{},"。":{"docs":{},"在":{"docs":{},"这":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}},"不":{"docs":{},"重":{"docs":{},"合":{"docs":{},"的":{"docs":{},"⼦":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"我":{"docs":{},"们":{"docs":{},"做":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}},"字":{"docs":{},"来":{"docs":{},"概":{"docs":{},"括":{"docs":{},":":{"docs":{},"“":{"docs":{},"近":{"docs":{},"朱":{"docs":{},"者":{"docs":{},"赤":{"docs":{},",":{"docs":{},"近":{"docs":{},"墨":{"docs":{},"者":{"docs":{},"黑":{"docs":{},"”":{"docs":{},"。":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}},"样":{"docs":{},"本":{"docs":{},"(":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},"与":{"docs":{},"我":{"docs":{},"的":{"docs":{},"总":{"docs":{},"距":{"docs":{},"离":{"docs":{},"和":{"docs":{},"属":{"docs":{},"于":{"docs":{},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"的":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}},"进":{"docs":{},"行":{"docs":{},"比":{"docs":{},"较":{"docs":{},"。":{"docs":{},"然":{"docs":{},"后":{"docs":{},"选":{"docs":{},"择":{"docs":{},"总":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"小":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"作":{"docs":{},"为":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"。":{"docs":{},"在":{"docs":{},"这":{"docs":{},"个":{"docs":{},"例":{"docs":{},"子":{"docs":{},"中":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"为":{"docs":{},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"(":{"docs":{},"宅":{"docs":{},"男":{"docs":{},"的":{"docs":{},"总":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"值":{"docs":{},"加":{"docs":{},"起":{"docs":{},"来":{"docs":{},"再":{"docs":{},"算":{"docs":{},"个":{"docs":{},"平":{"docs":{},"均":{"docs":{},",":{"docs":{},"而":{"docs":{},"不":{"docs":{},"是":{"docs":{},"投":{"docs":{},"票":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"离":{"docs":{},"待":{"docs":{},"预":{"docs":{},"测":{"docs":{},"样":{"docs":{},"本":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"和":{"docs":{},"距":{"docs":{},"离":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}},"进":{"docs":{},"行":{"docs":{},"统":{"docs":{},"计":{"docs":{},",":{"docs":{},"并":{"docs":{},"将":{"docs":{},"票":{"docs":{},"数":{"docs":{},"最":{"docs":{},"多":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"作":{"docs":{},"为":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"即":{"docs":{},"可":{"docs":{},"。":{"docs":{},"如":{"docs":{},"上":{"docs":{},"表":{"docs":{},"中":{"docs":{},",":{"docs":{},"宅":{"docs":{},"男":{"docs":{},"是":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"第":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}},"真":{"docs":{},"实":{"docs":{},"标":{"docs":{},"签":{"docs":{},",":{"docs":{},"p":{"docs":{},"i":{"docs":{},"p":{"docs":{},"^":{"docs":{},"i":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"表":{"docs":{},"示":{"docs":{},"模":{"docs":{},"型":{"docs":{},"对":{"docs":{},"第":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}},"预":{"docs":{},"测":{"docs":{},"标":{"docs":{},"签":{"docs":{},"。":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"目":{"docs":{},"的":{"docs":{},"就":{"docs":{},"是":{"docs":{},"让":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"最":{"docs":{},"小":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"模":{"docs":{},"型":{"docs":{},"训":{"docs":{},"练":{"docs":{},"出":{"docs":{},"来":{"docs":{},"了":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"在":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"上":{"docs":{},"用":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"来":{"docs":{},"评":{"docs":{},"估":{"docs":{},"模":{"docs":{},"型":{"docs":{},"就":{"docs":{},"行":{"docs":{},"了":{"docs":{},"。":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"有":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}},"包":{"docs":{},"括":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}},"权":{"docs":{},"重":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"靠":{"docs":{},"瞎":{"docs":{},"猜":{"docs":{},"权":{"docs":{},"重":{"docs":{},"的":{"docs":{},"话":{"docs":{},"。":{"docs":{},"应":{"docs":{},"该":{"docs":{},"这":{"docs":{},"辈":{"docs":{},"子":{"docs":{},"都":{"docs":{},"猜":{"docs":{},"不":{"docs":{},"中":{"docs":{},"了":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"找":{"docs":{},"权":{"docs":{},"重":{"docs":{},"的":{"docs":{},"找":{"docs":{},"个":{"docs":{},"套":{"docs":{},"路":{"docs":{},"来":{"docs":{},"找":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"套":{"docs":{},"路":{"docs":{},"就":{"docs":{},"是":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"。":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"让":{"docs":{},"函":{"docs":{},"数":{"docs":{},"值":{"docs":{},"为":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"1":{"0":{"0":{"0":{"0":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}}},"特":{"docs":{},"征":{"docs":{},"就":{"docs":{},"对":{"docs":{},"应":{"docs":{},"着":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.023809523809523808}}}}}},"中":{"docs":{},"随":{"docs":{},"机":{"docs":{},"选":{"docs":{},"取":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}},"构":{"docs":{},"成":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"子":{"docs":{},"集":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"将":{"docs":{},"这":{"docs":{},"个":{"docs":{},"子":{"docs":{},"集":{"docs":{},"作":{"docs":{},"为":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"扔":{"docs":{},"给":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"去":{"docs":{},"训":{"docs":{},"练":{"docs":{},"。":{"docs":{},"其":{"docs":{},"中":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"从":{"docs":{},"这":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"则":{"docs":{},"它":{"docs":{},"们":{"docs":{},"的":{"docs":{},"质":{"docs":{},"心":{"docs":{},"为":{"docs":{},":":{"docs":{},"c":{"docs":{},"m":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"=":{"docs":{},"(":{"docs":{},"∑":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"m":{"docs":{},"x":{"1":{"docs":{},"j":{"docs":{},"m":{"docs":{},",":{"docs":{},"∑":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"m":{"docs":{},"x":{"2":{"docs":{},"j":{"docs":{},"m":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"∑":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"m":{"docs":{},"x":{"docs":{},"n":{"docs":{},"j":{"docs":{},"m":{"docs":{},")":{"docs":{},"c":{"docs":{},"m":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"=":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"m":{"docs":{},"x":{"docs":{},"_":{"1":{"docs":{},"^":{"docs":{},"j":{"docs":{},"}":{"docs":{},"{":{"docs":{},"m":{"docs":{},"}":{"docs":{},",":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"m":{"docs":{},"x":{"docs":{},"_":{"2":{"docs":{},"^":{"docs":{},"j":{"docs":{},"}":{"docs":{},"{":{"docs":{},"m":{"docs":{},"}":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"m":{"docs":{},"x":{"docs":{},"_":{"docs":{},"n":{"docs":{},"^":{"docs":{},"j":{"docs":{},"}":{"docs":{},"{":{"docs":{},"m":{"docs":{},"}":{"docs":{},")":{"docs":{},"c":{"docs":{},"m":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"=":{"docs":{},"(":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"x":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"x":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"x":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"。":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}}},"用":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}},"每":{"docs":{},"个":{"docs":{},"像":{"docs":{},"素":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"每":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"都":{"docs":{},"是":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}},"和":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"是":{"docs":{},"不":{"docs":{},"流":{"docs":{},"失":{"docs":{},",":{"docs":{},"五":{"docs":{},"五":{"docs":{},"开":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"可":{"docs":{},"以":{"docs":{},"考":{"docs":{},"虑":{"docs":{},"随":{"docs":{},"机":{"docs":{},"选":{"docs":{},"个":{"docs":{},"结":{"docs":{},"果":{"docs":{},"当":{"docs":{},"输":{"docs":{},"出":{"docs":{},"了":{"docs":{},"。":{"docs":{},"性":{"docs":{},"别":{"docs":{},"为":{"docs":{},"女":{"docs":{},"的":{"docs":{},"用":{"docs":{},"户":{"docs":{},"中":{"docs":{},"有":{"docs":{},"全":{"docs":{},"部":{"docs":{},"都":{"docs":{},"流":{"docs":{},"失":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"性":{"docs":{},"别":{"docs":{},"为":{"docs":{},"女":{"docs":{},"时":{"docs":{},"输":{"docs":{},"出":{"docs":{},"是":{"docs":{},"流":{"docs":{},"失":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"呢":{"docs":{},",":{"docs":{},"树":{"docs":{},"就":{"docs":{},"成":{"docs":{},"了":{"docs":{},"这":{"docs":{},"样":{"docs":{},":":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"流":{"docs":{},"失":{"docs":{},",":{"1":{"1":{"1":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}}}}},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}},"认":{"docs":{},"为":{"docs":{},"属":{"docs":{},"于":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.013245033112582781}}}},"当":{"docs":{},"前":{"docs":{},"样":{"docs":{},"本":{"docs":{},"属":{"docs":{},"于":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}},"(":{"docs":{},"随":{"docs":{},"便":{"docs":{},"什":{"docs":{},"么":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},")":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"就":{"docs":{},"重":{"docs":{},"复":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}},",":{"docs":{},"在":{"docs":{},"b":{"docs":{},"o":{"docs":{},"o":{"docs":{},"s":{"docs":{},"t":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"中":{"docs":{},",":{"1":{"1":{"1":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}},"村":{"docs":{},"民":{"docs":{},"认":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},",":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}},"每":{"docs":{},"个":{"docs":{},"村":{"docs":{},"民":{"docs":{},"的":{"docs":{},"错":{"docs":{},"误":{"docs":{},"率":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.026490066225165563}}}}}}}}}}}}}},"采":{"docs":{},"样":{"docs":{},"集":{"docs":{},"分":{"docs":{},"别":{"docs":{},"作":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}},"簇":{"docs":{},"中":{"docs":{},"哪":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"最":{"docs":{},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"小":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"发":{"docs":{},"现":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}}}}}}}}}}}}}}}}}}}},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"西":{"docs":{},"瓜":{"docs":{},",":{"docs":{},"聚":{"docs":{},"成":{"docs":{},"了":{"docs":{},"两":{"docs":{},"类":{"docs":{},",":{"docs":{},"一":{"docs":{},"类":{"docs":{},"是":{"docs":{},"小":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},",":{"docs":{},"另":{"docs":{},"一":{"docs":{},"类":{"docs":{},"是":{"docs":{},"大":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}},"人":{"docs":{},"被":{"docs":{},"预":{"docs":{},"测":{"docs":{},"成":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"其":{"docs":{},"中":{"docs":{},"有":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"的":{"docs":{},"病":{"docs":{},"人":{"docs":{},"使":{"docs":{},"用":{"docs":{},"这":{"docs":{},"个":{"docs":{},"系":{"docs":{},"统":{"docs":{},"进":{"docs":{},"行":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},",":{"docs":{},"系":{"docs":{},"统":{"docs":{},"能":{"docs":{},"够":{"docs":{},"检":{"docs":{},"测":{"docs":{},"出":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"各":{"docs":{},"种":{"docs":{},"性":{"docs":{},"能":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"c":{"docs":{},"的":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"都":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"它":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"兄":{"docs":{},"弟":{"docs":{},"姐":{"docs":{},"妹":{"docs":{},",":{"docs":{},"配":{"docs":{},"偶":{"docs":{},"在":{"docs":{},"船":{"docs":{},"上":{"docs":{},",":{"docs":{},"或":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}},"标":{"docs":{},"签":{"docs":{},"(":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},")":{"docs":{},"组":{"docs":{},"成":{"docs":{},"的":{"docs":{},"。":{"docs":{},"其":{"docs":{},"中":{"docs":{},"各":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"和":{"docs":{},"标":{"docs":{},"签":{"docs":{},"的":{"docs":{},"意":{"docs":{},"义":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"父":{"docs":{},"母":{"docs":{},"的":{"docs":{},"人":{"docs":{},"来":{"docs":{},"说":{"docs":{},",":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"还":{"docs":{},"是":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},"的":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},",":{"docs":{},"独":{"docs":{},"自":{"docs":{},"一":{"docs":{},"人":{"docs":{},"或":{"docs":{},"者":{"docs":{},"一":{"docs":{},"个":{"docs":{},"大":{"docs":{},"家":{"docs":{},"庭":{"docs":{},"都":{"docs":{},"在":{"docs":{},"船":{"docs":{},"上":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"低":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"docs":{},"(":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"1":{"docs":{},",":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"2":{"docs":{},",":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"3":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}},"[":{"docs":{},"τ":{"1":{"docs":{},",":{"docs":{},"τ":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"τ":{"1":{"0":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"docs":{}}}}}}},"docs":{}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}},"中":{"docs":{},"采":{"docs":{},"样":{"docs":{},"得":{"docs":{},"到":{"docs":{},"的":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}},"就":{"docs":{},"相":{"docs":{},"当":{"docs":{},"于":{"docs":{},"从":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}},"体":{"docs":{},"验":{"docs":{},"整":{"docs":{},"套":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"实":{"docs":{},"训":{"docs":{},"课":{"docs":{},"程":{"docs":{},"。":{"docs":{},"该":{"docs":{},"课":{"docs":{},"程":{"docs":{},"是":{"docs":{},"与":{"docs":{},"南":{"docs":{},"京":{"docs":{},"大":{"docs":{},"学":{"docs":{},"合":{"docs":{},"作":{"docs":{},"共":{"docs":{},"建":{"docs":{},"的":{"docs":{},"实":{"docs":{},"训":{"docs":{},"课":{"docs":{},"程":{"docs":{},",":{"docs":{},"总":{"docs":{},"共":{"docs":{},"有":{"docs":{"./":{"ref":"./","tf":0.2}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"积":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}},"本":{"docs":{},"资":{"docs":{},"料":{"docs":{},"主":{"docs":{},"要":{"docs":{},"介":{"docs":{},"绍":{"docs":{},"一":{"docs":{},"些":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"的":{"docs":{},"入":{"docs":{},"门":{"docs":{},"知":{"docs":{},"识":{"docs":{},",":{"docs":{},"例":{"docs":{},"如":{"docs":{},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},",":{"docs":{},"常":{"docs":{},"见":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"原":{"docs":{},"理":{"docs":{},",":{"docs":{},"常":{"docs":{},"用":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{},",":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"快":{"docs":{},"速":{"docs":{},"入":{"docs":{},"门":{"docs":{},"s":{"docs":{},"k":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{},"等":{"docs":{},"内":{"docs":{},"容":{"docs":{},"。":{"docs":{"./":{"ref":"./","tf":0.2}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"章":{"docs":{},"主":{"docs":{},"要":{"docs":{},"介":{"docs":{},"绍":{"docs":{},"一":{"docs":{},"些":{"docs":{},"常":{"docs":{},"见":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"(":{"docs":{},"模":{"docs":{},"型":{"docs":{},")":{"docs":{},"的":{"docs":{},"原":{"docs":{},"理":{"docs":{},",":{"docs":{},"理":{"docs":{},"解":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"原":{"docs":{},"理":{"docs":{},"对":{"docs":{},"于":{"docs":{},"以":{"docs":{},"后":{"docs":{},"使":{"docs":{},"用":{"docs":{},"一":{"docs":{},"些":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"库":{"docs":{},"实":{"docs":{},"现":{"docs":{},"业":{"docs":{},"务":{"docs":{},"功":{"docs":{},"能":{"docs":{},"时":{"docs":{},"是":{"docs":{},"有":{"docs":{},"好":{"docs":{},"处":{"docs":{},"的":{"docs":{},"。":{"docs":{"algorithm.html":{"ref":"algorithm.html","tf":1}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"分":{"docs":{},"类":{"docs":{},",":{"docs":{},"回":{"docs":{},"归":{"docs":{},"以":{"docs":{},"及":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"时":{"docs":{},"常":{"docs":{},"用":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{},"。":{"docs":{"metrics.html":{"ref":"metrics.html","tf":1}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"简":{"docs":{},"介":{"docs":{"./":{"ref":"./","tf":10},"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":10}}},"单":{"docs":{},"总":{"docs":{},"结":{"docs":{},"一":{"docs":{},"下":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"若":{"docs":{},"想":{"docs":{},"更":{"docs":{},"加":{"docs":{},"全":{"docs":{},"面":{"docs":{},",":{"docs":{},"系":{"docs":{},"统":{"docs":{},"的":{"docs":{},"学":{"docs":{},"习":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"相":{"docs":{},"关":{"docs":{},"知":{"docs":{},"识":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"输":{"docs":{},"入":{"docs":{},"链":{"docs":{},"接":{"docs":{},":":{"docs":{},"h":{"docs":{},"t":{"docs":{},"t":{"docs":{},"p":{"docs":{},"s":{"docs":{},":":{"docs":{},"/":{"docs":{},"/":{"docs":{},"w":{"docs":{},"w":{"docs":{},"w":{"docs":{},".":{"docs":{},"e":{"docs":{},"d":{"docs":{},"u":{"docs":{},"c":{"docs":{},"o":{"docs":{},"d":{"docs":{},"e":{"docs":{},"r":{"docs":{},".":{"docs":{},"n":{"docs":{},"e":{"docs":{},"t":{"docs":{},"/":{"docs":{},"p":{"docs":{},"a":{"docs":{},"t":{"docs":{},"h":{"docs":{},"s":{"docs":{},"/":{"1":{"9":{"4":{"docs":{"./":{"ref":"./","tf":0.2}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"将":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"\"":{"docs":{},"e":{"docs":{},"x":{"docs":{},"p":{"docs":{},"e":{"docs":{},"r":{"docs":{},"i":{"docs":{},"e":{"docs":{},"n":{"docs":{},"c":{"docs":{},"e":{"docs":{},"\"":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}},"p":{"docs":{},"e":{"docs":{},"r":{"docs":{},"f":{"docs":{},"o":{"docs":{},"r":{"docs":{},"m":{"docs":{},"a":{"docs":{},"n":{"docs":{},"c":{"docs":{},"e":{"docs":{},"\"":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}},"c":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.019230769230769232},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.007142857142857143}},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}},"}":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"k":{"docs":{},"_":{"docs":{},"i":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}},"f":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},".":{"docs":{},"f":{"docs":{},"i":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"d":{"docs":{},"i":{"docs":{},"c":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}},"u":{"docs":{},"s":{"docs":{},"t":{"docs":{},"e":{"docs":{},"r":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}},"o":{"docs":{},"m":{"docs":{},"p":{"docs":{},"u":{"docs":{},"t":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}},"s":{"docs":{},"t":{"docs":{},"=":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"−":{"docs":{},"y":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"docs":{},"p":{"docs":{},"^":{"docs":{},")":{"docs":{},"−":{"docs":{},"(":{"1":{"docs":{},"−":{"docs":{},"y":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"1":{"docs":{},"−":{"docs":{},"p":{"docs":{},"^":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"docs":{}}}}}}}}},"docs":{}}}}}},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"−":{"docs":{},"(":{"1":{"docs":{},"−":{"docs":{},"y":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"1":{"docs":{},"−":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}},"docs":{}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}},"c":{"docs":{},"o":{"docs":{},"s":{"docs":{},"t":{"docs":{},"c":{"docs":{},"o":{"docs":{},"s":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}},"e":{"docs":{},"f":{"docs":{},"f":{"docs":{},"i":{"docs":{},"c":{"docs":{},"i":{"docs":{},"e":{"docs":{},"n":{"docs":{},"t":{"docs":{},"(":{"docs":{},"j":{"docs":{},"c":{"docs":{},"系":{"docs":{},"数":{"docs":{},")":{"docs":{},"、":{"docs":{},"f":{"docs":{},"o":{"docs":{},"w":{"docs":{},"l":{"docs":{},"k":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}},"u":{"docs":{},"r":{"docs":{},"_":{"docs":{},"i":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}}},"x":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.0391304347826087}},"为":{"docs":{},"预":{"docs":{},"处":{"docs":{},"理":{"docs":{},"后":{"docs":{},"的":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"画":{"docs":{},"面":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}},"v":{"docs":{},"e":{"docs":{},")":{"docs":{},"描":{"docs":{},"述":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}},"c":{"docs":{},"c":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},".":{"docs":{},"a":{"docs":{},"p":{"docs":{},"p":{"docs":{},"e":{"docs":{},"n":{"docs":{},"d":{"docs":{},"(":{"docs":{},"d":{"docs":{},")":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}},"=":{"docs":{},"[":{"docs":{},"[":{"1":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.019230769230769232}}},"]":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}},"docs":{}}},"|":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"∣":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"i":{"docs":{},",":{"docs":{},"x":{"docs":{},"j":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"j":{"docs":{},",":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"∗":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"j":{"docs":{},"∗":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"h":{"docs":{},"a":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"e":{"docs":{},"r":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}},"a":{"docs":{},"b":{"docs":{},"i":{"docs":{},"n":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"v":{"docs":{},"=":{"5":{"docs":{},")":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"docs":{}}}},"e":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}},".":{"docs":{},"\"":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}},"x":{"docs":{},"p":{"docs":{},"e":{"docs":{},"r":{"docs":{},"i":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.02912621359223301}},"e":{"docs":{},"n":{"docs":{},"c":{"docs":{},"e":{"docs":{},"指":{"docs":{},"的":{"docs":{},"根":{"docs":{},"据":{"docs":{},"历":{"docs":{},"史":{"docs":{},"数":{"docs":{},"据":{"docs":{},"总":{"docs":{},"结":{"docs":{},"归":{"docs":{},"纳":{"docs":{},"出":{"docs":{},"规":{"docs":{},"律":{"docs":{},"的":{"docs":{},"过":{"docs":{},"程":{"docs":{},",":{"docs":{},"即":{"docs":{},"学":{"docs":{},"习":{"docs":{},"过":{"docs":{},"程":{"docs":{},",":{"docs":{},"或":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"。":{"docs":{},"模":{"docs":{},"型":{"docs":{},"这":{"docs":{},"个":{"docs":{},"词":{"docs":{},"看":{"docs":{},"上":{"docs":{},"去":{"docs":{},"很":{"docs":{},"高":{"docs":{},"大":{"docs":{},"上":{"docs":{},",":{"docs":{},"其":{"docs":{},"实":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"把":{"docs":{},"他":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},":":{"docs":{},"现":{"docs":{},"在":{"docs":{},"想":{"docs":{},"用":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"来":{"docs":{},"识":{"docs":{},"别":{"docs":{},"图":{"docs":{},"片":{"docs":{},"里":{"docs":{},"的":{"docs":{},"是":{"docs":{},"香":{"docs":{},"蕉":{"docs":{},"还":{"docs":{},"是":{"docs":{},"苹":{"docs":{},"果":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"所":{"docs":{},"的":{"docs":{},"事":{"docs":{},"情":{"docs":{},"就":{"docs":{},"是":{"docs":{},"得":{"docs":{},"到":{"docs":{},"一":{"docs":{},"个":{"docs":{},"比":{"docs":{},"较":{"docs":{},"好":{"docs":{},"的":{"docs":{},"函":{"docs":{},"数":{"docs":{},",":{"docs":{},"当":{"docs":{},"我":{"docs":{},"们":{"docs":{},"输":{"docs":{},"入":{"docs":{},"一":{"docs":{},"张":{"docs":{},"香":{"docs":{},"蕉":{"docs":{},"图":{"docs":{},"片":{"docs":{},"时":{"docs":{},",":{"docs":{},"能":{"docs":{},"得":{"docs":{},"到":{"docs":{},"识":{"docs":{},"别":{"docs":{},"结":{"docs":{},"果":{"docs":{},"为":{"docs":{},"香":{"docs":{},"蕉":{"docs":{},"的":{"docs":{},"输":{"docs":{},"出":{"docs":{},",":{"docs":{},"当":{"docs":{},"我":{"docs":{},"们":{"docs":{},"输":{"docs":{},"入":{"docs":{},"一":{"docs":{},"张":{"docs":{},"苹":{"docs":{},"果":{"docs":{},"图":{"docs":{},"片":{"docs":{},"时":{"docs":{},",":{"docs":{},"能":{"docs":{},"得":{"docs":{},"到":{"docs":{},"识":{"docs":{},"别":{"docs":{},"结":{"docs":{},"果":{"docs":{},"为":{"docs":{},"苹":{"docs":{},"果":{"docs":{},"的":{"docs":{},"输":{"docs":{},"出":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"(":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"c":{"docs":{},"e":{"docs":{},"p":{"docs":{},"t":{"docs":{},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}},"p":{"docs":{},"s":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"docs":{}}}}}}}},"r":{"docs":{},"r":{"docs":{},"o":{"docs":{},"r":{"docs":{},")":{"docs":{},",":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}},")":{"docs":{},"叫":{"docs":{},"做":{"docs":{},"均":{"docs":{},"方":{"docs":{},"误":{"docs":{},"差":{"docs":{},",":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"。":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}},"均":{"docs":{},"方":{"docs":{},"根":{"docs":{},"误":{"docs":{},"差":{"docs":{},",":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}},"n":{"docs":{},"s":{"docs":{},"e":{"docs":{},"m":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}},"v":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}},".":{"docs":{},"r":{"docs":{},"e":{"docs":{},"n":{"docs":{},"d":{"docs":{},"e":{"docs":{},"r":{"docs":{},"(":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}}}}}}}},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"(":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}},"s":{"docs":{},"t":{"docs":{},"e":{"docs":{},"p":{"docs":{},"(":{"docs":{},"e":{"docs":{},"n":{"docs":{},"v":{"docs":{},".":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"_":{"docs":{},"s":{"docs":{},"p":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},".":{"docs":{},"s":{"docs":{},"a":{"docs":{},"m":{"docs":{},"p":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},")":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}},"d":{"docs":{},"a":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.02857142857142857}}}}},"i":{"docs":{},"m":{"docs":{},"p":{"docs":{},"r":{"docs":{},"o":{"docs":{},"v":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}},"o":{"docs":{},"r":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.03398058252427184},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.009523809523809525},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.017391304347826087}}}}}}},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"_":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}},"d":{"docs":{},"e":{"docs":{},"x":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},"(":{"docs":{},"f":{"docs":{},"m":{"docs":{},"指":{"docs":{},"数":{"docs":{},")":{"docs":{},"以":{"docs":{},"及":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"(":{"docs":{},"d":{"docs":{},"u":{"docs":{},"n":{"docs":{},"n":{"docs":{},"指":{"docs":{},"数":{"docs":{},")":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"指":{"docs":{},"数":{"docs":{},")":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}},"s":{"docs":{},"t":{"docs":{},"a":{"docs":{},"l":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}}}},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"n":{"docs":{},";":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"p":{"docs":{},"(":{"docs":{},"x":{"docs":{},"=":{"docs":{},"x":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"n":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}},"d":{"3":{"docs":{},"算":{"docs":{},"法":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"依":{"docs":{},"据":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"来":{"docs":{},"构":{"docs":{},"建":{"docs":{},"树":{"docs":{},"的":{"docs":{},"。":{"docs":{},"具":{"docs":{},"体":{"docs":{},"套":{"docs":{},"路":{"docs":{},"就":{"docs":{},"是":{"docs":{},"从":{"docs":{},"根":{"docs":{},"节":{"docs":{},"点":{"docs":{},"开":{"docs":{},"始":{"docs":{},",":{"docs":{},"对":{"docs":{},"节":{"docs":{},"点":{"docs":{},"计":{"docs":{},"算":{"docs":{},"所":{"docs":{},"有":{"docs":{},"可":{"docs":{},"能":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"选":{"docs":{},"择":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"最":{"docs":{},"大":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"作":{"docs":{},"为":{"docs":{},"节":{"docs":{},"点":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"由":{"docs":{},"该":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"不":{"docs":{},"同":{"docs":{},"取":{"docs":{},"值":{"docs":{},"建":{"docs":{},"立":{"docs":{},"子":{"docs":{},"节":{"docs":{},"点":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"对":{"docs":{},"子":{"docs":{},"节":{"docs":{},"点":{"docs":{},"递":{"docs":{},"归":{"docs":{},"执":{"docs":{},"行":{"docs":{},"上":{"docs":{},"面":{"docs":{},"的":{"docs":{},"套":{"docs":{},"路":{"docs":{},"直":{"docs":{},"到":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"很":{"docs":{},"小":{"docs":{},"或":{"docs":{},"者":{"docs":{},"没":{"docs":{},"有":{"docs":{},"特":{"docs":{},"征":{"docs":{},"可":{"docs":{},"以":{"docs":{},"继":{"docs":{},"续":{"docs":{},"选":{"docs":{},"择":{"docs":{},"为":{"docs":{},"止":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"i":{"docs":{},"i":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391},"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}},",":{"docs":{},"z":{"docs":{},"\\":{"docs":{},"i":{"docs":{},"n":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}}}}}},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"z":{"docs":{},"\\":{"docs":{},"i":{"docs":{},"n":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}},"\\":{"docs":{},"l":{"docs":{},"e":{"docs":{},"q":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}},".":{"docs":{},"a":{"docs":{},"s":{"docs":{},"t":{"docs":{},"y":{"docs":{},"p":{"docs":{},"e":{"docs":{},"(":{"docs":{},"n":{"docs":{},"p":{"docs":{},".":{"docs":{},"f":{"docs":{},"l":{"docs":{},"o":{"docs":{},"a":{"docs":{},"t":{"docs":{},")":{"docs":{},".":{"docs":{},"r":{"docs":{},"a":{"docs":{},"v":{"docs":{},"e":{"docs":{},"l":{"docs":{},"(":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}},"[":{"3":{"5":{"docs":{},":":{"1":{"9":{"5":{"docs":{},"]":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{},":":{"docs":{},":":{"2":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"docs":{}}},"i":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}}}}},"k":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.04854368932038835},"kNN.html":{"ref":"kNN.html","tf":0.03361344537815126},"kMeans.html":{"ref":"kMeans.html","tf":0.08571428571428572},"sklearn.html":{"ref":"sklearn.html","tf":0.02669902912621359},"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"−":{"1":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}},"docs":{}},"n":{"docs":{},"n":{"docs":{"kNN.html":{"ref":"kNN.html","tf":5.008403361344538}},"算":{"docs":{},"法":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"其":{"docs":{},"实":{"docs":{},"是":{"docs":{},"众":{"docs":{},"多":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"中":{"docs":{},"最":{"docs":{},"简":{"docs":{},"单":{"docs":{},"的":{"docs":{},"一":{"docs":{},"种":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"该":{"docs":{},"算":{"docs":{},"法":{"docs":{},"的":{"docs":{},"思":{"docs":{},"想":{"docs":{},"完":{"docs":{},"全":{"docs":{},"可":{"docs":{},"以":{"docs":{},"用":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"解":{"docs":{},"决":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}},"回":{"docs":{},"归":{"docs":{},"问":{"docs":{},"题":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}},"(":{"docs":{},"参":{"docs":{},"数":{"docs":{},")":{"docs":{},"和":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}},"k":{"docs":{},"k":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.013245033112582781}}}},"}":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}},"\\":{"docs":{},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"\\":{"docs":{},"n":{"docs":{},"e":{"docs":{},"q":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}}}}}}}}},"d":{"docs":{},"i":{"docs":{},"a":{"docs":{},"m":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"docs":{},"l":{"docs":{},")":{"docs":{},"}":{"docs":{},")":{"docs":{},"\\":{"docs":{},"}":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"=":{"2":{"docs":{},".":{"0":{"6":{"1":{"5":{"5":{"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":5}}}}}},")":{"docs":{},":":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},":":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"=":{"2":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.023346303501945526}}},"docs":{}},"f":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}},".":{"docs":{},"s":{"docs":{},"p":{"docs":{},"l":{"docs":{},"i":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}},"o":{"docs":{},"l":{"docs":{},"d":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}},"(":{"docs":{},"n":{"docs":{},"_":{"docs":{},"s":{"docs":{},"p":{"docs":{},"l":{"docs":{},"i":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}},"l":{"1":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}},"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669},"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"(":{"docs":{},"简":{"docs":{},"记":{"docs":{},"s":{"docs":{},"k":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{},")":{"docs":{},",":{"docs":{},"是":{"docs":{},"用":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"、":{"docs":{},"s":{"docs":{},"a":{"docs":{},"r":{"docs":{},"s":{"docs":{},"a":{"docs":{},"、":{"docs":{},"p":{"docs":{},"o":{"docs":{},"l":{"docs":{},"i":{"docs":{},"c":{"docs":{},"i":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}},"n":{"docs":{},"(":{"docs":{},"y":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}}},"c":{"docs":{},")":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"_":{"docs":{},"r":{"docs":{},"a":{"docs":{},"t":{"docs":{},"e":{"docs":{},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"o":{"docs":{},"w":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}},"g":{"2":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"2":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"2":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}}}}},"docs":{}}}}},"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"i":{"docs":{},"c":{"docs":{},"r":{"docs":{},"e":{"docs":{},"g":{"docs":{},"r":{"docs":{},"e":{"docs":{},"s":{"docs":{},"s":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"(":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}},"p":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"^":{"docs":{},"n":{"docs":{},"|":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}},"∇":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"来":{"docs":{},"看":{"docs":{},"一":{"docs":{},"下":{"docs":{},"∇":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"n":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"\\":{"docs":{},"n":{"docs":{},"a":{"docs":{},"b":{"docs":{},"l":{"docs":{},"a":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}},"应":{"docs":{},"该":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"算":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"|":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"t":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"t":{"docs":{},"\\":{"docs":{},"n":{"docs":{},"a":{"docs":{},"b":{"docs":{},"l":{"docs":{},"a":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{},"_":{"docs":{},"t":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"docs":{},"t":{"docs":{},",":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}},"τ":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"t":{"docs":{},"=":{"1":{"docs":{},"t":{"docs":{},"∇":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"t":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"t":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}},"docs":{}}},"​":{"docs":{},"t":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∇":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}},"a":{"docs":{},"b":{"docs":{},"e":{"docs":{},"l":{"docs":{},"l":{"docs":{},"a":{"docs":{},"b":{"docs":{},"e":{"docs":{},"l":{"docs":{},"l":{"docs":{},"a":{"docs":{},"b":{"docs":{},"e":{"docs":{},"l":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.014285714285714285}},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}},"\\":{"docs":{},"l":{"docs":{},"e":{"docs":{},"q":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}},"m":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}},"e":{"docs":{},"a":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}}}},"n":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863},"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"s":{"docs":{},"是":{"docs":{},"属":{"docs":{},"于":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"里":{"docs":{},"面":{"docs":{},"的":{"docs":{},"非":{"docs":{},"监":{"docs":{},"督":{"docs":{},"学":{"docs":{},"习":{"docs":{},",":{"docs":{},"通":{"docs":{},"常":{"docs":{},"是":{"docs":{},"大":{"docs":{},"家":{"docs":{},"接":{"docs":{},"触":{"docs":{},"到":{"docs":{},"的":{"docs":{},"第":{"docs":{},"一":{"docs":{},"个":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"其":{"docs":{},"原":{"docs":{},"理":{"docs":{},"非":{"docs":{},"常":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"是":{"docs":{},"一":{"docs":{},"种":{"docs":{},"典":{"docs":{},"型":{"docs":{},"的":{"docs":{},"基":{"docs":{},"于":{"docs":{},"距":{"docs":{},"离":{"docs":{},"的":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{},"距":{"docs":{},"离":{"docs":{},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"到":{"docs":{},"质":{"docs":{},"心":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},",":{"docs":{},"这":{"docs":{},"里":{"docs":{},"所":{"docs":{},"说":{"docs":{},"的":{"docs":{},"质":{"docs":{},"心":{"docs":{},"是":{"docs":{},"什":{"docs":{},"么":{"docs":{},"呢":{"docs":{},"?":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"来":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"时":{"docs":{},"需":{"docs":{},"要":{"docs":{},"首":{"docs":{},"先":{"docs":{},"定":{"docs":{},"义":{"docs":{},"参":{"docs":{},"数":{"docs":{},"k":{"docs":{},",":{"docs":{},"k":{"docs":{},"的":{"docs":{},"意":{"docs":{},"思":{"docs":{},"是":{"docs":{},"我":{"docs":{},"想":{"docs":{},"将":{"docs":{},"数":{"docs":{},"据":{"docs":{},"聚":{"docs":{},"成":{"docs":{},"几":{"docs":{},"个":{"docs":{},"类":{"docs":{},"别":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"k":{"docs":{},"=":{"3":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"将":{"docs":{},"数":{"docs":{},"据":{"docs":{},"划":{"docs":{},"分":{"docs":{},"成":{"3":{"docs":{},"个":{"docs":{},"类":{"docs":{},"别":{"docs":{},"。":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"就":{"docs":{},"可":{"docs":{},"以":{"docs":{},"开":{"docs":{},"始":{"docs":{},"k":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"算":{"docs":{},"法":{"docs":{},"流":{"docs":{},"程":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}},"的":{"docs":{},"流":{"docs":{},"程":{"docs":{},"了":{"docs":{},"。":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}},",":{"docs":{},"流":{"docs":{},"程":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}},"_":{"docs":{},"a":{"docs":{},"c":{"docs":{},"c":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}}}}}}}}},"m":{"docs":{},"m":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.026490066225165563},"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}},"a":{"docs":{},"e":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0273972602739726}},"(":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}},"l":{"docs":{},"l":{"docs":{},"o":{"docs":{},"w":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}},"t":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"l":{"docs":{},"i":{"docs":{},"b":{"docs":{},".":{"docs":{},"p":{"docs":{},"y":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"r":{"docs":{},"i":{"docs":{},"x":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"x":{"docs":{},"_":{"docs":{},"d":{"docs":{},"e":{"docs":{},"p":{"docs":{},"t":{"docs":{},"h":{"docs":{},"=":{"5":{"docs":{},")":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"docs":{}}}}}}}}}},"s":{"docs":{},"e":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}},"(":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"r":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.014285714285714285}}},"o":{"docs":{},"d":{"docs":{},"e":{"docs":{},"l":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.21052631578947367},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"考":{"docs":{},"虑":{"docs":{},"将":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"转":{"docs":{},"换":{"docs":{},"成":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"段":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"将":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"小":{"docs":{},"于":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}},"[":{"docs":{},"'":{"docs":{},"w":{"1":{"docs":{},"'":{"docs":{},"]":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}},"2":{"docs":{},"'":{"docs":{},"]":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}},"docs":{}}}}}}}}},"p":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}},",":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}},"e":{"docs":{},"r":{"docs":{},"f":{"docs":{},"o":{"docs":{},"r":{"docs":{},"m":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.02912621359223301}},"a":{"docs":{},"n":{"docs":{},"c":{"docs":{},"e":{"docs":{},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"。":{"docs":{},"对":{"docs":{},"于":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"任":{"docs":{},"务":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"有":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"衡":{"docs":{},"量":{"docs":{},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"的":{"docs":{},"标":{"docs":{},"准":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"分":{"docs":{},"类":{"docs":{},"时":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"根":{"docs":{},"据":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},",":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},",":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},",":{"docs":{},"a":{"docs":{},"u":{"docs":{},"c":{"docs":{},"等":{"docs":{},"指":{"docs":{},"标":{"docs":{},"来":{"docs":{},"衡":{"docs":{},"量":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"好":{"docs":{},"坏":{"docs":{},",":{"docs":{},"回":{"docs":{},"归":{"docs":{},"时":{"docs":{},"会":{"docs":{},"看":{"docs":{},"看":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"m":{"docs":{},"s":{"docs":{},"e":{"docs":{},",":{"docs":{},"r":{"docs":{},"m":{"docs":{},"s":{"docs":{},"e":{"docs":{},",":{"docs":{},"r":{"2":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"docs":{},"o":{"docs":{},"g":{"docs":{},"r":{"docs":{},"a":{"docs":{},"m":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"i":{"docs":{},"n":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"t":{"docs":{},"p":{"docs":{},"}":{"docs":{},"{":{"docs":{},"t":{"docs":{},"p":{"docs":{},"+":{"docs":{},"f":{"docs":{},"p":{"docs":{},"}":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}},"t":{"docs":{},"p":{"docs":{},"t":{"docs":{},"p":{"docs":{},"+":{"docs":{},"f":{"docs":{},"p":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"​":{"docs":{},"t":{"docs":{},"p":{"docs":{},"+":{"docs":{},"f":{"docs":{},"p":{"docs":{},"​":{"docs":{},"​":{"docs":{},"t":{"docs":{},"p":{"docs":{},"​":{"docs":{},"​":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}},"d":{"docs":{},"i":{"docs":{},"c":{"docs":{},"t":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},"。":{"docs":{},"f":{"docs":{},"i":{"docs":{},"t":{"docs":{},"函":{"docs":{},"数":{"docs":{},"需":{"docs":{},"要":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"和":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"作":{"docs":{},"为":{"docs":{},"输":{"docs":{},"入":{"docs":{},",":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"d":{"docs":{},"i":{"docs":{},"c":{"docs":{},"t":{"docs":{},"函":{"docs":{},"数":{"docs":{},"需":{"docs":{},"要":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"作":{"docs":{},"为":{"docs":{},"输":{"docs":{},"入":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},")":{"docs":{},")":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}},"p":{"docs":{},"r":{"docs":{},"o":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},":":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}},"o":{"docs":{},"b":{"docs":{},"s":{"docs":{},"e":{"docs":{},"r":{"docs":{},"v":{"docs":{},"a":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}}}}}}}}}}}}}}}}}},"v":{"docs":{},"_":{"docs":{},"x":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.034782608695652174}}}}}},"i":{"docs":{},"n":{"docs":{},"t":{"docs":{},"(":{"docs":{},"a":{"docs":{},"c":{"docs":{},"c":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}},"u":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{},"c":{"docs":{},"o":{"docs":{},"r":{"docs":{},"e":{"docs":{},"(":{"docs":{},"y":{"docs":{},"_":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},",":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"_":{"docs":{},"a":{"docs":{},"c":{"docs":{},"c":{"docs":{},"/":{"5":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}},"docs":{}}}}}}}}}},"'":{"docs":{},"a":{"docs":{},"v":{"docs":{},"e":{"docs":{},"r":{"docs":{},"a":{"docs":{},"g":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}}}}}}}},"h":{"docs":{},"i":{"docs":{},"g":{"docs":{},"h":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"l":{"docs":{},"o":{"docs":{},"w":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"o":{"docs":{},"l":{"docs":{},"d":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"y":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"g":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}},"g":{"docs":{},"r":{"docs":{},"i":{"docs":{},"d":{"docs":{},"_":{"docs":{},"s":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{},".":{"docs":{},"b":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"a":{"docs":{},"m":{"docs":{},"s":{"docs":{},"_":{"docs":{},")":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}},"s":{"docs":{},"c":{"docs":{},"o":{"docs":{},"r":{"docs":{},"e":{"docs":{},"_":{"docs":{},")":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}},"=":{"1":{"docs":{},"/":{"docs":{},"(":{"1":{"docs":{},"+":{"docs":{},"e":{"docs":{},"^":{"docs":{},"{":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"docs":{}}}},"docs":{},"\\":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"a":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"。":{"docs":{},"若":{"docs":{},"得":{"docs":{},"到":{"docs":{},"了":{"docs":{},"样":{"docs":{},"本":{"docs":{},"x":{"docs":{},"x":{"docs":{},"x":{"docs":{},"属":{"docs":{},"于":{"docs":{},"标":{"docs":{},"签":{"1":{"1":{"1":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"后":{"docs":{},",":{"docs":{},"很":{"docs":{},"自":{"docs":{},"然":{"docs":{},"的":{"docs":{},"就":{"docs":{},"能":{"docs":{},"想":{"docs":{},"到":{"docs":{},"当":{"docs":{},"p":{"docs":{},"^":{"docs":{},">":{"0":{"docs":{},".":{"5":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},">":{"0":{"docs":{},".":{"5":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},">":{"0":{"docs":{},".":{"5":{"docs":{},"时":{"docs":{},"x":{"docs":{},"x":{"docs":{},"x":{"docs":{},"属":{"docs":{},"于":{"docs":{},"标":{"docs":{},"签":{"1":{"1":{"1":{"docs":{},",":{"docs":{},"否":{"docs":{},"则":{"docs":{},"属":{"docs":{},"于":{"docs":{},"标":{"docs":{},"签":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}},"预":{"docs":{},"测":{"docs":{},"为":{"docs":{},"一":{"docs":{},"种":{"docs":{},"类":{"docs":{},"别":{"docs":{},",":{"docs":{},"否":{"docs":{},"则":{"docs":{},"预":{"docs":{},"测":{"docs":{},"为":{"docs":{},"另":{"docs":{},"一":{"docs":{},"种":{"docs":{},"类":{"docs":{},"别":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}},"docs":{}}},"docs":{}},"^":{"docs":{},"=":{"docs":{},"σ":{"docs":{},"(":{"docs":{},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},")":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.014218009478672985}}}}}},"i":{"docs":{},")":{"docs":{},"^":{"2":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}},"}":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}},"docs":{}}},"|":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.014218009478672985}},"。":{"docs":{},"从":{"docs":{},"另":{"docs":{},"外":{"docs":{},"一":{"docs":{},"个":{"docs":{},"角":{"docs":{},"度":{"docs":{},"来":{"docs":{},"说":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"一":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"为":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"(":{"docs":{},"x":{"docs":{},"=":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}},"i":{"docs":{},",":{"docs":{},"y":{"docs":{},"=":{"docs":{},"y":{"docs":{},"j":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"i":{"docs":{},"j":{"docs":{},",":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"n":{"docs":{},";":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"m":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"y":{"docs":{},"=":{"docs":{},"y":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"n":{"docs":{},";":{"docs":{},"j":{"docs":{},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"m":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"\\":{"docs":{},"n":{"docs":{},"e":{"docs":{},"q":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}},"≠":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},")":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"k":{"docs":{},"=":{"0":{"docs":{},"t":{"docs":{},"/":{"2":{"docs":{},"c":{"docs":{},"t":{"docs":{},"k":{"docs":{},"(":{"1":{"docs":{},"−":{"docs":{},"ϵ":{"docs":{},")":{"docs":{},"k":{"docs":{},"ϵ":{"docs":{},"t":{"docs":{},"−":{"docs":{},"k":{"docs":{},"≤":{"docs":{},"e":{"docs":{},"x":{"docs":{},"p":{"docs":{},"(":{"docs":{},"−":{"1":{"2":{"docs":{},"t":{"docs":{},"(":{"1":{"docs":{},"−":{"2":{"docs":{},"ϵ":{"docs":{},")":{"2":{"docs":{},")":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"​":{"docs":{},"k":{"docs":{},"=":{"0":{"docs":{},"​":{"docs":{},"t":{"docs":{},"/":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"c":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"1":{"docs":{},"−":{"docs":{},"ϵ":{"docs":{},")":{"docs":{},"​":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"docs":{},"ϵ":{"docs":{},"​":{"docs":{},"t":{"docs":{},"−":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"docs":{},"≤":{"docs":{},"e":{"docs":{},"x":{"docs":{},"p":{"docs":{},"(":{"docs":{},"−":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"t":{"docs":{},"(":{"1":{"docs":{},"−":{"2":{"docs":{},"ϵ":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}},"docs":{}}}}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}}},"i":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"≠":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},")":{"docs":{},"=":{"docs":{},"ϵ":{"docs":{},"p":{"docs":{},"(":{"docs":{},"h":{"docs":{},"_":{"docs":{},"i":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"\\":{"docs":{},"n":{"docs":{},"e":{"docs":{},"q":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"|":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"(":{"docs":{},"s":{"docs":{},"_":{"1":{"docs":{},")":{"docs":{},"\\":{"docs":{},"p":{"docs":{},"r":{"docs":{},"o":{"docs":{},"d":{"docs":{},"_":{"docs":{},"{":{"docs":{},"t":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"t":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"_":{"docs":{},"t":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"docs":{},"t":{"docs":{},",":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"_":{"docs":{},"t":{"docs":{},",":{"docs":{},"s":{"docs":{},"_":{"docs":{},"{":{"docs":{},"t":{"docs":{},"+":{"1":{"docs":{},"}":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"docs":{},"t":{"docs":{},",":{"docs":{},"a":{"docs":{},"_":{"docs":{},"t":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"_":{"1":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"r":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"s":{"docs":{},"_":{"2":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"a":{"docs":{},"_":{"1":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"_":{"2":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"r":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},"s":{"docs":{},"_":{"3":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},"a":{"docs":{},"_":{"2":{"docs":{},")":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}},"docs":{}}}}},"docs":{}}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}},"docs":{}}}}},"docs":{}}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}}}}}}}}},"a":{"docs":{},"t":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"t":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"_":{"docs":{},"t":{"docs":{},"|":{"docs":{},"s":{"docs":{},"_":{"docs":{},"t":{"docs":{},",":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"我":{"docs":{},"们":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"根":{"docs":{},"据":{"docs":{},"环":{"docs":{},"境":{"docs":{},"状":{"docs":{},"态":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"τ":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"(":{"docs":{},"s":{"1":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"1":{"docs":{},"∣":{"docs":{},"s":{"1":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"r":{"1":{"docs":{},",":{"docs":{},"s":{"2":{"docs":{},"∣":{"docs":{},"s":{"1":{"docs":{},",":{"docs":{},"a":{"1":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"2":{"docs":{},"∣":{"docs":{},"s":{"2":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"r":{"2":{"docs":{},",":{"docs":{},"s":{"3":{"docs":{},"∣":{"docs":{},"s":{"2":{"docs":{},",":{"docs":{},"a":{"2":{"docs":{},")":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}}},"∏":{"docs":{},"t":{"docs":{},"=":{"1":{"docs":{},"t":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"t":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"t":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"t":{"docs":{},",":{"docs":{},"s":{"docs":{},"t":{"docs":{},"+":{"1":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"t":{"docs":{},",":{"docs":{},"a":{"docs":{},"t":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}},"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"r":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"s":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"a":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"r":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"s":{"docs":{},"​":{"3":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"a":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}},"∏":{"docs":{},"​":{"docs":{},"t":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"p":{"docs":{},"(":{"docs":{},"a":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"θ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"s":{"docs":{},"​":{"docs":{},"t":{"docs":{},"+":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"s":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"a":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}},"docs":{}}}}}}}}}}},"o":{"docs":{},"s":{"docs":{},"i":{"docs":{},"t":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.04247787610619469}}}}},"l":{"docs":{},"i":{"docs":{},"c":{"docs":{},"i":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":5.049645390070922}}},"y":{"docs":{},"_":{"docs":{},"f":{"docs":{},"o":{"docs":{},"r":{"docs":{},"w":{"docs":{},"a":{"docs":{},"r":{"docs":{},"d":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}},":":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}},"i":{"docs":{},"p":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},"c":{"docs":{},"k":{"docs":{},"l":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},"e":{"docs":{},".":{"docs":{},"l":{"docs":{},"o":{"docs":{},"a":{"docs":{},"d":{"docs":{},"(":{"docs":{},"o":{"docs":{},"p":{"docs":{},"e":{"docs":{},"n":{"docs":{},"(":{"docs":{},"'":{"docs":{},"s":{"docs":{},"a":{"docs":{},"v":{"docs":{},"e":{"docs":{},".":{"docs":{},"p":{"docs":{},"'":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}},"y":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}},"t":{"docs":{},"h":{"docs":{},"o":{"docs":{},"n":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}},"/":{"docs":{},"r":{"docs":{},"e":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"s":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"a":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"a":{"docs":{},"m":{"docs":{},"_":{"docs":{},"g":{"docs":{},"r":{"docs":{},"i":{"docs":{},"d":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}},"s":{"docs":{},"s":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.009523809523809525}},"e":{"docs":{},"r":{"docs":{},"i":{"docs":{},"d":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.009523809523809525}},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}}}}}}}}},"d":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"l":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},".":{"docs":{},"c":{"docs":{},"l":{"docs":{},"o":{"docs":{},"s":{"docs":{},"e":{"docs":{},"(":{"2":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}},"3":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}},"docs":{}}}}}}},"s":{"docs":{},"h":{"docs":{},"o":{"docs":{},"w":{"docs":{},"(":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.03333333333333333},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.04285714285714286}}}}}}},"u":{"docs":{},"b":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"s":{"docs":{},"_":{"docs":{},"a":{"docs":{},"d":{"docs":{},"j":{"docs":{},"u":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"w":{"docs":{},"s":{"docs":{},"p":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"0":{"docs":{},".":{"2":{"docs":{},",":{"docs":{},"h":{"docs":{},"s":{"docs":{},"p":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"0":{"docs":{},".":{"5":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{}}},"docs":{}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"2":{"docs":{},"=":{"1":{"docs":{},"−":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"(":{"docs":{},"p":{"docs":{},"i":{"docs":{},"−":{"docs":{},"y":{"docs":{},"i":{"docs":{},")":{"2":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"(":{"docs":{},"y":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"i":{"docs":{},"−":{"docs":{},"y":{"docs":{},"i":{"docs":{},")":{"2":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}},"docs":{}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}},"docs":{}},"≤":{"1":{"docs":{},"r":{"docs":{},"^":{"2":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}},"docs":{}}}},"docs":{}}},"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0273972602739726}},"e":{"docs":{},"s":{"docs":{},"p":{"docs":{},"e":{"docs":{},"c":{"docs":{},"t":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}},"u":{"docs":{},"l":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.012135922330097087}},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}}}}}}},"t":{"docs":{},"u":{"docs":{},"r":{"docs":{},"n":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.014218009478672985},"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}}}},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"t":{"docs":{},"p":{"docs":{},"}":{"docs":{},"{":{"docs":{},"f":{"docs":{},"n":{"docs":{},"+":{"docs":{},"t":{"docs":{},"p":{"docs":{},"}":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}},"t":{"docs":{},"p":{"docs":{},"f":{"docs":{},"n":{"docs":{},"+":{"docs":{},"t":{"docs":{},"p":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"​":{"docs":{},"f":{"docs":{},"n":{"docs":{},"+":{"docs":{},"t":{"docs":{},"p":{"docs":{},"​":{"docs":{},"​":{"docs":{},"t":{"docs":{},"p":{"docs":{},"​":{"docs":{},"​":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}},"l":{"docs":{},"u":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"w":{"docs":{},"a":{"docs":{},"r":{"docs":{},"d":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}},"a":{"docs":{},"n":{"docs":{},"k":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"=":{"docs":{},"[":{"2":{"docs":{},",":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"docs":{}}},"i":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"d":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"i":{"docs":{},"=":{"2":{"docs":{},"(":{"docs":{},"a":{"docs":{},"+":{"docs":{},"d":{"docs":{},")":{"docs":{},"m":{"docs":{},"(":{"docs":{},"m":{"docs":{},"−":{"1":{"docs":{},")":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}}}}}}}}},"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"(":{"docs":{},"a":{"docs":{},"+":{"docs":{},"d":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"docs":{},"m":{"docs":{},"(":{"docs":{},"m":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}},"docs":{}}}}}}},"​":{"docs":{},"m":{"docs":{},"(":{"docs":{},"m":{"docs":{},"−":{"1":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"(":{"docs":{},"a":{"docs":{},"+":{"docs":{},"d":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}}},"指":{"docs":{},"数":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"根":{"docs":{},"据":{"docs":{},"上":{"docs":{},"面":{"docs":{},"所":{"docs":{},"提":{"docs":{},"到":{"docs":{},"的":{"docs":{},"a":{"docs":{},"a":{"docs":{},"a":{"docs":{},"和":{"docs":{},"d":{"docs":{},"d":{"docs":{},"d":{"docs":{},"来":{"docs":{},"计":{"docs":{},"算":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"值":{"docs":{},"域":{"docs":{},"为":{"docs":{},"[":{"0":{"docs":{},",":{"1":{"docs":{},"]":{"docs":{},"[":{"0":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"o":{"docs":{},"m":{"docs":{},"f":{"docs":{},"o":{"docs":{},"r":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"i":{"docs":{},"f":{"docs":{},"i":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}},"e":{"docs":{},"r":{"docs":{},"(":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}},"n":{"docs":{},"_":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"i":{"docs":{},"m":{"docs":{},"a":{"docs":{},"t":{"docs":{},"o":{"docs":{},"r":{"docs":{},"s":{"docs":{},"=":{"1":{"0":{"docs":{},")":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}},"docs":{}},"5":{"0":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"t":{"docs":{},"e":{"docs":{},")":{"docs":{},"与":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"之":{"docs":{},"间":{"docs":{},"关":{"docs":{},"系":{"docs":{},"的":{"docs":{},"曲":{"docs":{},"线":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}},"o":{"docs":{},"c":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}},"曲":{"docs":{},"线":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.008849557522123894}},"(":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"e":{"docs":{},"i":{"docs":{},"v":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}},"^":{"2":{"docs":{},"=":{"1":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}},"docs":{}}},"docs":{}},"m":{"docs":{},"s":{"docs":{},"e":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0273972602739726}},"(":{"docs":{},"r":{"docs":{},"o":{"docs":{},"o":{"docs":{},"t":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"1":{"docs":{},"−":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"y":{"docs":{},"​":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}},"f":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}},".":{"docs":{},"f":{"docs":{},"i":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"d":{"docs":{},"i":{"docs":{},"c":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}}}}}},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"|":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}},"​":{"docs":{},"r":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"。":{"docs":{},"这":{"docs":{},"个":{"docs":{},"公":{"docs":{},"式":{"docs":{},"看":{"docs":{},"起":{"docs":{},"来":{"docs":{},"复":{"docs":{},"杂":{"docs":{},",":{"docs":{},"其":{"docs":{},"实":{"docs":{},"不":{"docs":{},"难":{"docs":{},"理":{"docs":{},"解":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"_":{"1":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"2":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"docs":{},"t":{"docs":{},"\\":{"docs":{},"}":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}},"θ":{"docs":{},"‾":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"τ":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"≈":{"1":{"docs":{},"n":{"docs":{},"∑":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"n":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}},"docs":{}}}}}},"docs":{}}}}}}}}}}}}}}},"≈":{"1":{"docs":{},"n":{"docs":{},"∑":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"n":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}},"docs":{}}}}}},"docs":{}}}}},"s":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.02619047619047619}},"c":{"docs":{},"o":{"docs":{},"r":{"docs":{},"e":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.019469026548672566}},"等":{"docs":{},"指":{"docs":{},"标":{"docs":{},",":{"docs":{},"回":{"docs":{},"归":{"docs":{},"时":{"docs":{},"会":{"docs":{},"以":{"docs":{},"f":{"docs":{},"m":{"docs":{},"指":{"docs":{},"数":{"docs":{},",":{"docs":{},"d":{"docs":{},"b":{"docs":{},"指":{"docs":{},"数":{"docs":{},"等":{"docs":{},"指":{"docs":{},"标":{"docs":{},"来":{"docs":{},"衡":{"docs":{},"量":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"的":{"docs":{},"效":{"docs":{},"果":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"样":{"docs":{},"。":{"docs":{},"对":{"docs":{},"各":{"docs":{},"种":{"docs":{},"性":{"docs":{},"能":{"docs":{},"指":{"docs":{},"标":{"docs":{},"感":{"docs":{},"兴":{"docs":{},"趣":{"docs":{},"可":{"docs":{},"以":{"docs":{},"阅":{"docs":{},"读":{"docs":{},"模":{"docs":{},"型":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{},"章":{"docs":{},"节":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"来":{"docs":{},"作":{"docs":{},"为":{"docs":{},"性":{"docs":{},"能":{"docs":{},"度":{"docs":{},"量":{"docs":{},"指":{"docs":{},"标":{"docs":{},"了":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}},"i":{"docs":{},"k":{"docs":{},"i":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}},"e":{"docs":{},"l":{"docs":{},"f":{"docs":{},".":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"b":{"docs":{},".":{"docs":{},"d":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{},"b":{"docs":{},"o":{"docs":{},"r":{"docs":{},"n":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"x":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}},"函":{"docs":{},"数":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},":":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}},"b":{"docs":{},"s":{"docs":{},"p":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"与":{"docs":{},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{},",":{"docs":{},"值":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"q":{"docs":{},"u":{"docs":{},"a":{"docs":{},"r":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0410958904109589}},"d":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}},"k":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.03155339805825243},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},".":{"docs":{},"e":{"docs":{},"n":{"docs":{},"s":{"docs":{},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"l":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}}}}}}}}},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"_":{"docs":{},"m":{"docs":{},"o":{"docs":{},"d":{"docs":{},"e":{"docs":{},"l":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}},"m":{"docs":{},"e":{"docs":{},"t":{"docs":{},"r":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}}}}},"o":{"docs":{},"d":{"docs":{},"e":{"docs":{},"l":{"docs":{},"_":{"docs":{},"s":{"docs":{},"e":{"docs":{},"l":{"docs":{},"e":{"docs":{},"c":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}},"的":{"docs":{},"安":{"docs":{},"装":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"目":{"docs":{},"录":{"docs":{},"结":{"docs":{},"构":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}},"简":{"docs":{},"介":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}},"h":{"docs":{},"i":{"docs":{},"p":{"docs":{},":":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"(":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"y":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"n":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"s":{"docs":{},".":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"'":{"docs":{},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"i":{"docs":{},"b":{"docs":{},"s":{"docs":{},"p":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"c":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"t":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"'":{"docs":{},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},",":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}},"h":{"docs":{},"u":{"docs":{},"e":{"docs":{},"=":{"docs":{},"'":{"docs":{},"p":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},",":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},",":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},",":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"p":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"h":{"docs":{},"u":{"docs":{},"e":{"docs":{},"=":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},",":{"docs":{},"h":{"docs":{},"u":{"docs":{},"e":{"docs":{},"=":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"p":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"docs":{},"=":{"1":{"docs":{},"]":{"docs":{},".":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}},"2":{"docs":{},"]":{"docs":{},".":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}},"3":{"docs":{},"]":{"docs":{},".":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"2":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"f":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"o":{"docs":{},"r":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"'":{"docs":{},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"=":{"docs":{},"'":{"docs":{},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}},"h":{"docs":{},"u":{"docs":{},"e":{"docs":{},"=":{"docs":{},"'":{"docs":{},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},",":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"=":{"docs":{},"'":{"docs":{},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"i":{"docs":{},"b":{"docs":{},"s":{"docs":{},"p":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"_":{"docs":{},"b":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"=":{"docs":{},"'":{"docs":{},"p":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}},"docs":{}}}}}}},"h":{"docs":{},"u":{"docs":{},"e":{"docs":{},"=":{"docs":{},"'":{"docs":{},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},",":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"=":{"docs":{},"'":{"docs":{},"p":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"f":{"docs":{},"a":{"docs":{},"m":{"docs":{},"i":{"docs":{},"l":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"h":{"docs":{},"e":{"docs":{},"a":{"docs":{},"t":{"docs":{},"m":{"docs":{},"a":{"docs":{},"p":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"c":{"docs":{},"o":{"docs":{},"r":{"docs":{},"r":{"docs":{},"(":{"docs":{},")":{"docs":{},",":{"docs":{},"a":{"docs":{},"n":{"docs":{},"n":{"docs":{},"o":{"docs":{},"t":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},",":{"docs":{},"c":{"docs":{},"m":{"docs":{},"a":{"docs":{},"p":{"docs":{},"=":{"docs":{},"'":{"docs":{},"r":{"docs":{},"d":{"docs":{},"y":{"docs":{},"l":{"docs":{},"g":{"docs":{},"n":{"docs":{},"'":{"docs":{},",":{"docs":{},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"w":{"docs":{},"i":{"docs":{},"d":{"docs":{},"t":{"docs":{},"h":{"docs":{},"s":{"docs":{},"=":{"0":{"docs":{},".":{"2":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"v":{"docs":{},"i":{"docs":{},"o":{"docs":{},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"\"":{"docs":{},"p":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"\"":{"docs":{},",":{"docs":{},"\"":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"\"":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"\"":{"docs":{},",":{"docs":{},"\"":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"\"":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}},"p":{"docs":{},"l":{"docs":{},"i":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.016666666666666666},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.02857142857142857}}}}}}}}}}},"a":{"docs":{},"l":{"docs":{},"u":{"docs":{},"t":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}},"_":{"2":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"docs":{},"t":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}},"t":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}},",":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}},"a":{"docs":{},"s":{"docs":{},"k":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.038834951456310676}}}}},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.023809523809523808},"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}},"r":{"docs":{},"y":{"docs":{},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"u":{"docs":{},"e":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},":":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}}}}},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},"_":{"docs":{},"i":{"docs":{},"n":{"docs":{},"d":{"docs":{},"e":{"docs":{},"x":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}},"表":{"docs":{},"示":{"docs":{},"从":{"5":{"docs":{},"份":{"docs":{},"中":{"docs":{},"挑":{"docs":{},"出":{"docs":{},"来":{"4":{"docs":{},"份":{"docs":{},"所":{"docs":{},"拼":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"的":{"docs":{},"索":{"docs":{},"引":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"s":{"docs":{},"p":{"docs":{},"l":{"docs":{},"i":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}}}}}},"e":{"docs":{},"e":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}},"}":{"docs":{},"σ":{"docs":{},"(":{"docs":{},"t":{"docs":{},")":{"docs":{},"=":{"1":{"docs":{},"/":{"1":{"docs":{},"+":{"docs":{},"e":{"docs":{},"​":{"docs":{},"−":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"。":{"docs":{},"函":{"docs":{},"数":{"docs":{},"图":{"docs":{},"像":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}},"t":{"docs":{},"t":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.033112582781456956}}}},"n":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}},"p":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}},"r":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.02654867256637168}},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"t":{"docs":{},"p":{"docs":{},"}":{"docs":{},"{":{"docs":{},"t":{"docs":{},"p":{"docs":{},"+":{"docs":{},"f":{"docs":{},"n":{"docs":{},"}":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}},"t":{"docs":{},"p":{"docs":{},"t":{"docs":{},"p":{"docs":{},"+":{"docs":{},"f":{"docs":{},"n":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"​":{"docs":{},"t":{"docs":{},"p":{"docs":{},"+":{"docs":{},"f":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"t":{"docs":{},"p":{"docs":{},"​":{"docs":{},"​":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}},"(":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"i":{"docs":{},"n":{"docs":{},"d":{"docs":{},"e":{"docs":{},"x":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}},"表":{"docs":{},"示":{"docs":{},"剩":{"docs":{},"下":{"docs":{},"的":{"docs":{},"一":{"docs":{},"份":{"docs":{},"作":{"docs":{},"为":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"索":{"docs":{},"引":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"=":{"0":{"docs":{},".":{"2":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}},"docs":{}}},"docs":{}}}}}},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"d":{"docs":{},"r":{"docs":{},"o":{"docs":{},"p":{"docs":{},"(":{"docs":{},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}},"l":{"docs":{},"o":{"docs":{},"c":{"docs":{},"[":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},".":{"docs":{},"i":{"docs":{},"s":{"docs":{},"n":{"docs":{},"u":{"docs":{},"l":{"docs":{},"l":{"docs":{},"(":{"docs":{},")":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"=":{"docs":{},"=":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"2":{"2":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}},"docs":{}}}}}}}}}}}}}},"r":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"3":{"3":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}},"docs":{}}}}}}}}}}},"s":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"3":{"6":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}},"docs":{}}}}}}}}}}}}}},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"4":{"6":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},":":{"docs":{},",":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.034482758620689655}}}},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"f":{"docs":{},"a":{"docs":{},"m":{"docs":{},"i":{"docs":{},"l":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"=":{"docs":{},"=":{"1":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"1":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"1":{"6":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"3":{"2":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"4":{"8":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"6":{"4":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"_":{"docs":{},"b":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"4":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"7":{"docs":{},".":{"9":{"1":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"1":{"4":{"docs":{},".":{"4":{"5":{"4":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"3":{"1":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}},"n":{"docs":{},"a":{"docs":{},"m":{"docs":{},"e":{"docs":{},".":{"docs":{},"s":{"docs":{},"t":{"docs":{},"r":{"docs":{},".":{"docs":{},"e":{"docs":{},"x":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"(":{"docs":{},"'":{"docs":{},"(":{"docs":{},"[":{"docs":{},"a":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}}}},":":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"=":{"docs":{},"p":{"docs":{},"d":{"docs":{},".":{"docs":{},"r":{"docs":{},"e":{"docs":{},"a":{"docs":{},"d":{"docs":{},"_":{"docs":{},"c":{"docs":{},"s":{"docs":{},"v":{"docs":{},"(":{"docs":{},"'":{"docs":{},".":{"docs":{},"/":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"a":{"docs":{},"n":{"docs":{},"i":{"docs":{},"c":{"docs":{},"/":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},".":{"docs":{},"c":{"docs":{},"s":{"docs":{},"v":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"_":{"docs":{},"b":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}}}}}}}}}}},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}}}}}}}}},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"f":{"docs":{},"i":{"docs":{},"l":{"docs":{},"l":{"docs":{},"n":{"docs":{},"a":{"docs":{},"(":{"docs":{},"'":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}}}},"f":{"docs":{},"a":{"docs":{},"m":{"docs":{},"i":{"docs":{},"l":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{},"'":{"docs":{},"]":{"docs":{},"+":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"i":{"docs":{},"b":{"docs":{},"s":{"docs":{},"p":{"docs":{},"'":{"docs":{},"]":{"docs":{},"+":{"1":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"docs":{},"e":{"docs":{},"_":{"docs":{},"c":{"docs":{},"a":{"docs":{},"t":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}}}}}}}}}}}},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}},"docs":{}}}}}}}}}}},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}},"i":{"docs":{},"c":{"docs":{},"k":{"docs":{},"e":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.019469026548672566},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0273972602739726},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},"然":{"docs":{},"后":{"docs":{},"您":{"docs":{},"可":{"docs":{},"能":{"docs":{},"觉":{"docs":{},"得":{"docs":{},"哎":{"docs":{},"呀":{"docs":{},",":{"docs":{},"我":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"很":{"docs":{},"厉":{"docs":{},"害":{"docs":{},"了":{"docs":{},",":{"docs":{},"但":{"docs":{},"其":{"docs":{},"实":{"docs":{},"并":{"docs":{},"不":{"docs":{},"然":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"让":{"docs":{},"您":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"有":{"docs":{},"了":{"docs":{},"误":{"docs":{},"解":{"docs":{},"。":{"docs":{},"那":{"docs":{},"有":{"docs":{},"没":{"docs":{},"有":{"docs":{},"更":{"docs":{},"加":{"docs":{},"公":{"docs":{},"正":{"docs":{},"的":{"docs":{},"验":{"docs":{},"证":{"docs":{},"算":{"docs":{},"法":{"docs":{},"性":{"docs":{},"能":{"docs":{},"的":{"docs":{},"方":{"docs":{},"法":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"有":{"docs":{},",":{"docs":{},"那":{"docs":{},"就":{"docs":{},"是":{"docs":{},"k":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"让":{"docs":{},"您":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"有":{"docs":{},"了":{"docs":{},"误":{"docs":{},"解":{"docs":{},"。":{"docs":{},"那":{"docs":{},"有":{"docs":{},"没":{"docs":{},"有":{"docs":{},"更":{"docs":{},"加":{"docs":{},"公":{"docs":{},"正":{"docs":{},"的":{"docs":{},"验":{"docs":{},"证":{"docs":{},"算":{"docs":{},"法":{"docs":{},"性":{"docs":{},"能":{"docs":{},"的":{"docs":{},"方":{"docs":{},"法":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"有":{"docs":{},",":{"docs":{},"那":{"docs":{},"就":{"docs":{},"是":{"docs":{},"k":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"将":{"docs":{},"上":{"docs":{},"表":{"docs":{},"中":{"docs":{},"的":{"docs":{},"文":{"docs":{},"字":{"docs":{},"替":{"docs":{},"换":{"docs":{},"掉":{"docs":{},",":{"docs":{},"混":{"docs":{},"淆":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}},"不":{"docs":{},"过":{"docs":{},"y":{"docs":{},"^":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}},"所":{"docs":{},"以":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"从":{"docs":{},"这":{"docs":{},"个":{"docs":{},"角":{"docs":{},"度":{"docs":{},"来":{"docs":{},"看":{"docs":{},",":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"与":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}},"就":{"docs":{},"有":{"docs":{},"y":{"docs":{},"^":{"docs":{},"=":{"docs":{},"{":{"0":{"docs":{},"p":{"docs":{},"^":{"0":{"docs":{},".":{"5":{"1":{"docs":{},"p":{"docs":{},"^":{"docs":{},">":{"0":{"docs":{},".":{"5":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"docs":{}}},"docs":{}}}}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}},"这":{"docs":{},"个":{"docs":{},"时":{"docs":{},"候":{"docs":{},"树":{"docs":{},"是":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},":":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}},"(":{"docs":{},"因":{"docs":{},"为":{"docs":{},"这":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"下":{"docs":{},"我":{"docs":{},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{},"的":{"docs":{},"不":{"docs":{},"确":{"docs":{},"定":{"docs":{},"性":{"docs":{},"是":{"docs":{},"最":{"docs":{},"低":{"docs":{},"的":{"docs":{},")":{"docs":{},",":{"docs":{},"那":{"docs":{},"如":{"docs":{},"果":{"docs":{},"我":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"是":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"就":{"docs":{},"像":{"docs":{},"扔":{"docs":{},"硬":{"docs":{},"币":{"docs":{},",":{"docs":{},"你":{"docs":{},"永":{"docs":{},"远":{"docs":{},"都":{"docs":{},"猜":{"docs":{},"不":{"docs":{},"透":{"docs":{},"你":{"docs":{},"下":{"docs":{},"次":{"docs":{},"扔":{"docs":{},"到":{"docs":{},"的":{"docs":{},"是":{"docs":{},"正":{"docs":{},"面":{"docs":{},"还":{"docs":{},"是":{"docs":{},"反":{"docs":{},"面":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"它":{"docs":{},"的":{"docs":{},"不":{"docs":{},"确":{"docs":{},"定":{"docs":{},"性":{"docs":{},"非":{"docs":{},"常":{"docs":{},"高":{"docs":{},")":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"呢":{"docs":{},",":{"docs":{},"熵":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"不":{"docs":{},"确":{"docs":{},"定":{"docs":{},"性":{"docs":{},"就":{"docs":{},"越":{"docs":{},"高":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"从":{"docs":{},"结":{"docs":{},"果":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"村":{"docs":{},"民":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"投":{"docs":{},"票":{"docs":{},"后":{"docs":{},"犯":{"docs":{},"错":{"docs":{},"的":{"docs":{},"错":{"docs":{},"误":{"docs":{},"率":{"docs":{},"就":{"docs":{},"越":{"docs":{},"小":{"docs":{},"。":{"docs":{},"这":{"docs":{},"也":{"docs":{},"是":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"性":{"docs":{},"能":{"docs":{},"强":{"docs":{},"的":{"docs":{},"原":{"docs":{},"因":{"docs":{},"之":{"docs":{},"一":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"假":{"docs":{},"设":{"docs":{},"该":{"docs":{},"模":{"docs":{},"型":{"docs":{},"在":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"阈":{"docs":{},"值":{"docs":{},"下":{"docs":{},"其":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}},"其":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"如":{"docs":{},"果":{"docs":{},"该":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"边":{"docs":{},"界":{"docs":{},"向":{"docs":{},"左":{"docs":{},"或":{"docs":{},"者":{"docs":{},"向":{"docs":{},"右":{"docs":{},"移":{"docs":{},"动":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"所":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"是":{"docs":{},"负":{"docs":{},"数":{"docs":{},",":{"docs":{},"则":{"docs":{},"考":{"docs":{},"虑":{"docs":{},"非":{"docs":{},"线":{"docs":{},"性":{"docs":{},"相":{"docs":{},"关":{"docs":{},"。":{"docs":{},"很":{"docs":{},"直":{"docs":{},"观":{"docs":{},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"不":{"docs":{},"同":{"docs":{},"模":{"docs":{},"型":{"docs":{},"一":{"docs":{},"样":{"docs":{},"的":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"有":{"docs":{},"没":{"docs":{},"有":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"衡":{"docs":{},"量":{"docs":{},"标":{"docs":{},"准":{"docs":{},"呢":{"docs":{},"?":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"您":{"docs":{},"认":{"docs":{},"为":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"系":{"docs":{},"统":{"docs":{},"的":{"docs":{},"预":{"docs":{},"测":{"docs":{},"性":{"docs":{},"能":{"docs":{},"好":{"docs":{},"不":{"docs":{},"好":{"docs":{},"呢":{"docs":{},"?":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}},"目":{"docs":{},"录":{"docs":{},"结":{"docs":{},"构":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}},"不":{"docs":{},"甜":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}},"重":{"docs":{},"复":{"docs":{},"抽":{"docs":{},"样":{"docs":{},"将":{"docs":{},"整":{"docs":{},"个":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"随":{"docs":{},"机":{"docs":{},"拆":{"docs":{},"分":{"docs":{},"成":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}},"过":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"是":{"docs":{},"有":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"值":{"docs":{},"的":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"图":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"平":{"docs":{},"均":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"来":{"docs":{},"填":{"docs":{},"充":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"的":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"。":{"docs":{},"但":{"docs":{},"是":{"docs":{},"这":{"docs":{},"样":{"docs":{},"做":{"docs":{},"并":{"docs":{},"不":{"docs":{},"合":{"docs":{},"适":{"docs":{},",":{"docs":{},"比":{"docs":{},"如":{"docs":{},"人":{"docs":{},"家":{"docs":{},"只":{"docs":{},"是":{"docs":{},"个":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"理":{"docs":{},"解":{"docs":{},"环":{"docs":{},"境":{"docs":{},",":{"docs":{},"环":{"docs":{},"境":{"docs":{},"给":{"docs":{},"了":{"docs":{},"什":{"docs":{},"么":{"docs":{},"就":{"docs":{},"是":{"docs":{},"什":{"docs":{},"么":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"就":{"docs":{},"把":{"docs":{},"这":{"docs":{},"种":{"docs":{},"方":{"docs":{},"法":{"docs":{},"叫":{"docs":{},"做":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"乌":{"docs":{},"黑":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}}},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}},"特":{"docs":{},"征":{"docs":{},"工":{"docs":{},"程":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"每":{"docs":{},"当":{"docs":{},"我":{"docs":{},"们":{"docs":{},"拿":{"docs":{},"到":{"docs":{},"数":{"docs":{},"据":{"docs":{},"时":{"docs":{},",":{"docs":{},"并":{"docs":{},"不":{"docs":{},"是":{"docs":{},"所":{"docs":{},"有":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"都":{"docs":{},"是":{"docs":{},"有":{"docs":{},"用":{"docs":{},"的":{"docs":{},",":{"docs":{},"可":{"docs":{},"能":{"docs":{},"有":{"docs":{},"许":{"docs":{},"多":{"docs":{},"冗":{"docs":{},"余":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"需":{"docs":{},"要":{"docs":{},"删":{"docs":{},"掉":{"docs":{},",":{"docs":{},"或":{"docs":{},"者":{"docs":{},"根":{"docs":{},"据":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"强":{"docs":{},"化":{"docs":{},"学":{"docs":{},"习":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":10.017543859649123}}}}}}}}},"但":{"docs":{},"如":{"docs":{},"果":{"docs":{},"仅":{"docs":{},"仅":{"docs":{},"是":{"docs":{},"从":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"抽":{"docs":{},"取":{"docs":{},"一":{"docs":{},"小":{"docs":{},"部":{"docs":{},"分":{"docs":{},"作":{"docs":{},"为":{"docs":{},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"有":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"让":{"docs":{},"我":{"docs":{},"们":{"docs":{},"对":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"有":{"docs":{},"一":{"docs":{},"种":{"docs":{},"偏":{"docs":{},"见":{"docs":{},"或":{"docs":{},"者":{"docs":{},"误":{"docs":{},"解":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"是":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"为":{"docs":{},"中":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"就":{"docs":{},"不":{"docs":{},"一":{"docs":{},"定":{"docs":{},"流":{"docs":{},"失":{"docs":{},"了":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"这":{"docs":{},"个":{"docs":{},"时":{"docs":{},"候":{"docs":{},"就":{"docs":{},"可":{"docs":{},"以":{"docs":{},"把":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"为":{"docs":{},"低":{"docs":{},"和":{"docs":{},"为":{"docs":{},"高":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"屏":{"docs":{},"蔽":{"docs":{},"掉":{"docs":{},",":{"docs":{},"屏":{"docs":{},"蔽":{"docs":{},"掉":{"docs":{},"之":{"docs":{},"后":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"预":{"docs":{},"测":{"docs":{},"成":{"docs":{},"了":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"不":{"docs":{},"是":{"docs":{},"最":{"docs":{},"高":{"docs":{},"的":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"假":{"docs":{},"如":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"一":{"docs":{},"些":{"docs":{},"水":{"docs":{},"果":{"docs":{},"的":{"docs":{},"图":{"docs":{},"片":{"docs":{},"作":{"docs":{},"为":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"(":{"docs":{},"无":{"docs":{},"标":{"docs":{},"签":{"docs":{},")":{"docs":{},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"想":{"docs":{},"要":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"能":{"docs":{},"够":{"docs":{},"根":{"docs":{},"据":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"的":{"docs":{},"图":{"docs":{},"片":{"docs":{},"将":{"docs":{},"这":{"docs":{},"些":{"docs":{},"图":{"docs":{},"片":{"docs":{},"进":{"docs":{},"行":{"docs":{},"归":{"docs":{},"类":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"并":{"docs":{},"不":{"docs":{},"知":{"docs":{},"道":{"docs":{},"这":{"docs":{},"些":{"docs":{},"类":{"docs":{},"别":{"docs":{},"是":{"docs":{},"什":{"docs":{},"么":{"docs":{},"。":{"docs":{},"像":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"任":{"docs":{},"务":{"docs":{},"我":{"docs":{},"们":{"docs":{},"称":{"docs":{},"为":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"任":{"docs":{},"务":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"苹":{"docs":{},"果":{"docs":{},"、":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"和":{"docs":{},"香":{"docs":{},"蕉":{"docs":{},"的":{"docs":{},"图":{"docs":{},"片":{"docs":{},"作":{"docs":{},"为":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"(":{"docs":{},"有":{"docs":{},"标":{"docs":{},"签":{"docs":{},")":{"docs":{},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"想":{"docs":{},"要":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"能":{"docs":{},"够":{"docs":{},"根":{"docs":{},"据":{"docs":{},"新":{"docs":{},"的":{"docs":{},"测":{"docs":{},"试":{"docs":{},"图":{"docs":{},"片":{"docs":{},"来":{"docs":{},"分":{"docs":{},"辨":{"docs":{},"出":{"docs":{},"该":{"docs":{},"图":{"docs":{},"片":{"docs":{},"中":{"docs":{},"的":{"docs":{},"是":{"docs":{},"苹":{"docs":{},"果":{"docs":{},"、":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"还":{"docs":{},"是":{"docs":{},"香":{"docs":{},"蕉":{"docs":{},"。":{"docs":{},"像":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"任":{"docs":{},"务":{"docs":{},"我":{"docs":{},"们":{"docs":{},"称":{"docs":{},"为":{"docs":{},"分":{"docs":{},"类":{"docs":{},"任":{"docs":{},"务":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"售":{"docs":{},"价":{"docs":{},"数":{"docs":{},"据":{"docs":{},"作":{"docs":{},"为":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"(":{"docs":{},"有":{"docs":{},"标":{"docs":{},"签":{"docs":{},")":{"docs":{},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"想":{"docs":{},"要":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"能":{"docs":{},"够":{"docs":{},"根":{"docs":{},"据":{"docs":{},"新":{"docs":{},"的":{"docs":{},"测":{"docs":{},"试":{"docs":{},"图":{"docs":{},"片":{"docs":{},"来":{"docs":{},"分":{"docs":{},"辨":{"docs":{},"出":{"docs":{},"该":{"docs":{},"图":{"docs":{},"片":{"docs":{},"中":{"docs":{},"的":{"docs":{},"苹":{"docs":{},"果":{"docs":{},"能":{"docs":{},"卖":{"docs":{},"多":{"docs":{},"少":{"docs":{},"钱":{"docs":{},"。":{"docs":{},"像":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"任":{"docs":{},"务":{"docs":{},"我":{"docs":{},"们":{"docs":{},"称":{"docs":{},"为":{"docs":{},"回":{"docs":{},"归":{"docs":{},"任":{"docs":{},"务":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"个":{"docs":{},"人":{"docs":{},"本":{"docs":{},"身":{"docs":{},"已":{"docs":{},"经":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"他":{"docs":{},"自":{"docs":{},"己":{"docs":{},"不":{"docs":{},"知":{"docs":{},"道":{"docs":{},"自":{"docs":{},"己":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"。":{"docs":{},"这":{"docs":{},"个":{"docs":{},"时":{"docs":{},"候":{"docs":{},"用":{"docs":{},"我":{"docs":{},"的":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},"检":{"docs":{},"测":{"docs":{},"发":{"docs":{},"现":{"docs":{},"他":{"docs":{},"没":{"docs":{},"有":{"docs":{},"得":{"docs":{},"癌":{"docs":{},"症":{"docs":{},",":{"docs":{},"那":{"docs":{},"很":{"docs":{},"显":{"docs":{},"然":{"docs":{},"我":{"docs":{},"这":{"docs":{},"个":{"docs":{},"系":{"docs":{},"统":{"docs":{},"已":{"docs":{},"经":{"docs":{},"把":{"docs":{},"他":{"docs":{},"给":{"docs":{},"坑":{"docs":{},"了":{"docs":{},"(":{"docs":{},"耽":{"docs":{},"误":{"docs":{},"了":{"docs":{},"治":{"docs":{},"疗":{"docs":{},")":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},"的":{"docs":{},"混":{"docs":{},"淆":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}}}}}}}}}}}}}}},"设":{"docs":{},"我":{"docs":{},"们":{"docs":{},"收":{"docs":{},"集":{"docs":{},"了":{"docs":{},"一":{"docs":{},"份":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"数":{"docs":{},"据":{"docs":{},":":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}},"玩":{"docs":{},"了":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}},"在":{"docs":{},"这":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"空":{"docs":{},"间":{"docs":{},"中":{"docs":{},"用":{"docs":{},"黄":{"docs":{},"圈":{"docs":{},"表":{"docs":{},"示":{"docs":{},",":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"空":{"docs":{},"间":{"docs":{},"(":{"docs":{},"由":{"docs":{},"样":{"docs":{},"本":{"docs":{},"组":{"docs":{},"成":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"空":{"docs":{},"间":{"docs":{},")":{"docs":{},",":{"docs":{},"该":{"docs":{},"样":{"docs":{},"本":{"docs":{},"空":{"docs":{},"间":{"docs":{},"里":{"docs":{},"有":{"docs":{},"宅":{"docs":{},"男":{"docs":{},"和":{"docs":{},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"这":{"docs":{},"两":{"docs":{},"个":{"docs":{},"类":{"docs":{},"别":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{},"红":{"docs":{},"圈":{"docs":{},"表":{"docs":{},"示":{"docs":{},"宅":{"docs":{},"男":{"docs":{},",":{"docs":{},"绿":{"docs":{},"圈":{"docs":{},"表":{"docs":{},"示":{"docs":{},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"。":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"又":{"docs":{},"有":{"docs":{},"两":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},",":{"docs":{},"情":{"docs":{},"况":{"docs":{},"a":{"docs":{},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}},"这":{"docs":{},"么":{"docs":{},"一":{"docs":{},"组":{"docs":{},"数":{"docs":{},"据":{"docs":{},",":{"docs":{},"菱":{"docs":{},"形":{"docs":{},"代":{"docs":{},"表":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}},"使":{"docs":{},"用":{"docs":{},"簇":{"docs":{},"间":{"docs":{},"最":{"docs":{},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"来":{"docs":{},"度":{"docs":{},"量":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"远":{"docs":{},"近":{"docs":{},",":{"docs":{},"从":{"docs":{},"表":{"docs":{},"中":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"给":{"docs":{},"定":{"docs":{},"簇":{"docs":{},"c":{"docs":{},"i":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"与":{"docs":{},"c":{"docs":{},"j":{"docs":{},"c":{"docs":{},"_":{"docs":{},"j":{"docs":{},"c":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"i":{"docs":{},"∣":{"docs":{},",":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"j":{"docs":{},"∣":{"docs":{},"|":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},"|":{"docs":{},",":{"docs":{},"|":{"docs":{},"c":{"docs":{},"_":{"docs":{},"j":{"docs":{},"|":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},",":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"分":{"docs":{},"别":{"docs":{},"表":{"docs":{},"示":{"docs":{},"簇":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"则":{"docs":{},"最":{"docs":{},"大":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{},":":{"docs":{},"d":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"=":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"x":{"docs":{},"∈":{"docs":{},"i":{"docs":{},",":{"docs":{},"z":{"docs":{},"∈":{"docs":{},"j":{"docs":{},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{},"z":{"docs":{},")":{"docs":{},"d":{"docs":{},"_":{"docs":{},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"}":{"docs":{},"=":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"_":{"docs":{},"{":{"docs":{},"x":{"docs":{},"\\":{"docs":{},"i":{"docs":{},"n":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{},":":{"docs":{},"d":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"=":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"x":{"docs":{},"∈":{"docs":{},"i":{"docs":{},",":{"docs":{},"z":{"docs":{},"∈":{"docs":{},"j":{"docs":{},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{},"z":{"docs":{},")":{"docs":{},"d":{"docs":{},"_":{"docs":{},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"}":{"docs":{},"=":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"_":{"docs":{},"{":{"docs":{},"x":{"docs":{},"\\":{"docs":{},"i":{"docs":{},"n":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}}}}}},"其":{"docs":{},"实":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}},"欠":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"与":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"的":{"docs":{},"区":{"docs":{},"别":{"docs":{},"和":{"docs":{},"我":{"docs":{},"们":{"docs":{},"生":{"docs":{},"活":{"docs":{},"中":{"docs":{},"学":{"docs":{},"生":{"docs":{},"考":{"docs":{},"试":{"docs":{},"的":{"docs":{},"例":{"docs":{},"子":{"docs":{},"很":{"docs":{},"像":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"一":{"docs":{},"个":{"docs":{},"学":{"docs":{},"生":{"docs":{},"在":{"docs":{},"平":{"docs":{},"时":{"docs":{},"的":{"docs":{},"练":{"docs":{},"习":{"docs":{},"中":{"docs":{},"题":{"docs":{},"目":{"docs":{},"的":{"docs":{},"正":{"docs":{},"确":{"docs":{},"率":{"docs":{},"都":{"docs":{},"不":{"docs":{},"高":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"说":{"docs":{},"明":{"docs":{},"这":{"docs":{},"个":{"docs":{},"学":{"docs":{},"生":{"docs":{},"可":{"docs":{},"能":{"docs":{},"基":{"docs":{},"础":{"docs":{},"不":{"docs":{},"牢":{"docs":{},"或":{"docs":{},"者":{"docs":{},"心":{"docs":{},"思":{"docs":{},"没":{"docs":{},"花":{"docs":{},"在":{"docs":{},"学":{"docs":{},"习":{"docs":{},"上":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"这":{"docs":{},"位":{"docs":{},"学":{"docs":{},"生":{"docs":{},"可":{"docs":{},"能":{"docs":{},"欠":{"docs":{},"缺":{"docs":{},"基":{"docs":{},"础":{"docs":{},"知":{"docs":{},"识":{"docs":{},"或":{"docs":{},"者":{"docs":{},"智":{"docs":{},"商":{"docs":{},"可":{"docs":{},"能":{"docs":{},"不":{"docs":{},"太":{"docs":{},"高":{"docs":{},"或":{"docs":{},"者":{"docs":{},"其":{"docs":{},"他":{"docs":{},"种":{"docs":{},"种":{"docs":{},"原":{"docs":{},"因":{"docs":{},",":{"docs":{},"像":{"docs":{},"这":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"欠":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"。":{"docs":{},"那":{"docs":{},"如":{"docs":{},"果":{"docs":{},"这":{"docs":{},"位":{"docs":{},"学":{"docs":{},"生":{"docs":{},"平":{"docs":{},"时":{"docs":{},"练":{"docs":{},"习":{"docs":{},"的":{"docs":{},"正":{"docs":{},"确":{"docs":{},"率":{"docs":{},"非":{"docs":{},"常":{"docs":{},"高":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"他":{"docs":{},"不":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"灵":{"docs":{},"光":{"docs":{},",":{"docs":{},"喜":{"docs":{},"欢":{"docs":{},"死":{"docs":{},"记":{"docs":{},"硬":{"docs":{},"背":{"docs":{},",":{"docs":{},"只":{"docs":{},"会":{"docs":{},"做":{"docs":{},"已":{"docs":{},"经":{"docs":{},"做":{"docs":{},"过":{"docs":{},"的":{"docs":{},"题":{"docs":{},",":{"docs":{},"一":{"docs":{},"碰":{"docs":{},"到":{"docs":{},"没":{"docs":{},"见":{"docs":{},"过":{"docs":{},"的":{"docs":{},"新":{"docs":{},"题":{"docs":{},"就":{"docs":{},"不":{"docs":{},"知":{"docs":{},"所":{"docs":{},"措":{"docs":{},"了":{"docs":{},"。":{"docs":{},"像":{"docs":{},"这":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"成":{"docs":{},"时":{"docs":{},"是":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"构":{"docs":{},"建":{"docs":{},"出":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"空":{"docs":{},"间":{"docs":{},"的":{"docs":{},"过":{"docs":{},"程":{"docs":{},"就":{"docs":{},"是":{"docs":{},"k":{"docs":{},"n":{"docs":{},"n":{"docs":{},"算":{"docs":{},"法":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"。":{"docs":{},"可":{"docs":{},"想":{"docs":{},"而":{"docs":{},"知":{"docs":{},"k":{"docs":{},"n":{"docs":{},"n":{"docs":{},"算":{"docs":{},"法":{"docs":{},"是":{"docs":{},"没":{"docs":{},"有":{"docs":{},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"的":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"k":{"docs":{},"n":{"docs":{},"n":{"docs":{},"算":{"docs":{},"法":{"docs":{},"属":{"docs":{},"于":{"docs":{},"懒":{"docs":{},"惰":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"不":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"而":{"docs":{},"是":{"docs":{},"一":{"docs":{},"种":{"docs":{},"基":{"docs":{},"于":{"docs":{},"搜":{"docs":{},"索":{"docs":{},"的":{"docs":{},"最":{"docs":{},"优":{"docs":{},"化":{"docs":{},"方":{"docs":{},"法":{"docs":{},"。":{"docs":{},"因":{"docs":{},"为":{"docs":{},"很":{"docs":{},"多":{"docs":{},"算":{"docs":{},"法":{"docs":{},"都":{"docs":{},"没":{"docs":{},"有":{"docs":{},"正":{"docs":{},"规":{"docs":{},"解":{"docs":{},"的":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"需":{"docs":{},"要":{"docs":{},"通":{"docs":{},"过":{"docs":{},"一":{"docs":{},"次":{"docs":{},"一":{"docs":{},"次":{"docs":{},"的":{"docs":{},"迭":{"docs":{},"代":{"docs":{},"来":{"docs":{},"找":{"docs":{},"到":{"docs":{},"找":{"docs":{},"到":{"docs":{},"一":{"docs":{},"组":{"docs":{},"参":{"docs":{},"数":{"docs":{},"能":{"docs":{},"让":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"最":{"docs":{},"小":{"docs":{},"。":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"大":{"docs":{},"概":{"docs":{},"套":{"docs":{},"路":{"docs":{},"可":{"docs":{},"以":{"docs":{},"参":{"docs":{},"看":{"docs":{},"这":{"docs":{},"个":{"docs":{},"图":{"docs":{},":":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"就":{"docs":{},"是":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"要":{"docs":{},"介":{"docs":{},"绍":{"docs":{},"的":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"函":{"docs":{},"数":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"m":{"docs":{},"s":{"docs":{},"e":{"docs":{},"开":{"docs":{},"个":{"docs":{},"根":{"docs":{},"号":{"docs":{},"。":{"docs":{},"有":{"docs":{},"什":{"docs":{},"么":{"docs":{},"意":{"docs":{},"义":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"实":{"docs":{},"质":{"docs":{},"是":{"docs":{},"一":{"docs":{},"样":{"docs":{},"的":{"docs":{},"。":{"docs":{},"只":{"docs":{},"不":{"docs":{},"过":{"docs":{},"用":{"docs":{},"于":{"docs":{},"数":{"docs":{},"据":{"docs":{},"更":{"docs":{},"好":{"docs":{},"的":{"docs":{},"描":{"docs":{},"述":{"docs":{},"。":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"这":{"docs":{},"样":{"docs":{},"一":{"docs":{},"种":{"docs":{},"脑":{"docs":{},"回":{"docs":{},"路":{"docs":{},"的":{"docs":{},"形":{"docs":{},"式":{"docs":{},"就":{"docs":{},"是":{"docs":{},"我":{"docs":{},"们":{"docs":{},"所":{"docs":{},"说":{"docs":{},"的":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"从":{"docs":{},"图":{"docs":{},"中":{"docs":{},"能":{"docs":{},"看":{"docs":{},"出":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"类":{"docs":{},"似":{"docs":{},"于":{"docs":{},"人":{"docs":{},"们":{"docs":{},"决":{"docs":{},"策":{"docs":{},"过":{"docs":{},"程":{"docs":{},"的":{"docs":{},"树":{"docs":{},"结":{"docs":{},"构":{"docs":{},",":{"docs":{},"从":{"docs":{},"根":{"docs":{},"节":{"docs":{},"点":{"docs":{},"开":{"docs":{},"始":{"docs":{},",":{"docs":{},"每":{"docs":{},"个":{"docs":{},"分":{"docs":{},"枝":{"docs":{},"代":{"docs":{},"表":{"docs":{},"一":{"docs":{},"个":{"docs":{},"新":{"docs":{},"的":{"docs":{},"决":{"docs":{},"策":{"docs":{},"事":{"docs":{},"件":{"docs":{},",":{"docs":{},"会":{"docs":{},"生":{"docs":{},"成":{"docs":{},"两":{"docs":{},"个":{"docs":{},"或":{"docs":{},"多":{"docs":{},"个":{"docs":{},"分":{"docs":{},"枝":{"docs":{},",":{"docs":{},"每":{"docs":{},"个":{"docs":{},"叶":{"docs":{},"子":{"docs":{},"代":{"docs":{},"表":{"docs":{},"一":{"docs":{},"个":{"docs":{},"最":{"docs":{},"终":{"docs":{},"判":{"docs":{},"定":{"docs":{},"所":{"docs":{},"属":{"docs":{},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},"。":{"docs":{},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"我":{"docs":{},"现":{"docs":{},"在":{"docs":{},"已":{"docs":{},"经":{"docs":{},"构":{"docs":{},"造":{"docs":{},"好":{"docs":{},"了":{"docs":{},"一":{"docs":{},"颗":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"我":{"docs":{},"得":{"docs":{},"到":{"docs":{},"一":{"docs":{},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"(":{"docs":{},"男":{"docs":{},",":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"质":{"docs":{},"心":{"docs":{},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},"样":{"docs":{},"本":{"docs":{},"每":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"均":{"docs":{},"值":{"docs":{},"所":{"docs":{},"构":{"docs":{},"成":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"坐":{"docs":{},"标":{"docs":{},"。":{"docs":{},"举":{"docs":{},"个":{"docs":{},"例":{"docs":{},"子":{"docs":{},":":{"docs":{},"假":{"docs":{},"如":{"docs":{},"有":{"docs":{},"两":{"docs":{},"个":{"docs":{},"数":{"docs":{},"据":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"分":{"docs":{},"子":{"docs":{},"表":{"docs":{},"示":{"docs":{},"的":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{},"时":{"docs":{},"产":{"docs":{},"生":{"docs":{},"的":{"docs":{},"误":{"docs":{},"差":{"docs":{},",":{"docs":{},"分":{"docs":{},"母":{"docs":{},"表":{"docs":{},"示":{"docs":{},"的":{"docs":{},"是":{"docs":{},"对":{"docs":{},"任":{"docs":{},"意":{"docs":{},"样":{"docs":{},"本":{"docs":{},"都":{"docs":{},"预":{"docs":{},"测":{"docs":{},"为":{"docs":{},"所":{"docs":{},"有":{"docs":{},"标":{"docs":{},"签":{"docs":{},"均":{"docs":{},"值":{"docs":{},"时":{"docs":{},"产":{"docs":{},"生":{"docs":{},"的":{"docs":{},"误":{"docs":{},"差":{"docs":{},",":{"docs":{},"由":{"docs":{},"此":{"docs":{},"可":{"docs":{},"知":{"docs":{},":":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"从":{"docs":{},"目":{"docs":{},"录":{"docs":{},"名":{"docs":{},"字":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},"目":{"docs":{},"录":{"docs":{},"中":{"docs":{},"的":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}},"中":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}},"y":{"docs":{},"i":{"docs":{},"y":{"docs":{},"^":{"docs":{},"i":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"表":{"docs":{},"示":{"docs":{},"第":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"y":{"docs":{},"_":{"docs":{},"{":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"}":{"docs":{},"y":{"docs":{},"​":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"表":{"docs":{},"示":{"docs":{},"所":{"docs":{},"有":{"docs":{},"测":{"docs":{},"试":{"docs":{},"样":{"docs":{},"本":{"docs":{},"标":{"docs":{},"签":{"docs":{},"值":{"docs":{},"的":{"docs":{},"均":{"docs":{},"值":{"docs":{},"。":{"docs":{},"为":{"docs":{},"什":{"docs":{},"么":{"docs":{},"这":{"docs":{},"个":{"docs":{},"指":{"docs":{},"标":{"docs":{},"会":{"docs":{},"有":{"docs":{},"刚":{"docs":{},"刚":{"docs":{},"我":{"docs":{},"们":{"docs":{},"提":{"docs":{},"到":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"我":{"docs":{},"们":{"docs":{},"分":{"docs":{},"析":{"docs":{},"下":{"docs":{},"公":{"docs":{},"式":{"docs":{},":":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"分":{"docs":{},"类":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":10}}}}}}}},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}},"和":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669},"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"标":{"docs":{},"签":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"(":{"2":{"docs":{},",":{"2":{"docs":{},")":{"docs":{},"(":{"2":{"docs":{},",":{"2":{"docs":{},")":{"docs":{},"(":{"2":{"docs":{},",":{"2":{"docs":{},")":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"与":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}},"编":{"docs":{},"号":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"安":{"docs":{},"装":{"docs":{},"其":{"docs":{},"他":{"docs":{},"第":{"docs":{},"三":{"docs":{},"方":{"docs":{},"库":{"docs":{},"一":{"docs":{},"样":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"只":{"docs":{},"需":{"docs":{},"要":{"docs":{},"在":{"docs":{},"命":{"docs":{},"令":{"docs":{},"行":{"docs":{},"中":{"docs":{},"输":{"docs":{},"入":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}},"用":{"docs":{},"来":{"docs":{},"预":{"docs":{},"测":{"docs":{},"的":{"docs":{},"函":{"docs":{},"数":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}},"年":{"docs":{},"龄":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{},"花":{"docs":{},"费":{"docs":{},"也":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"连":{"docs":{},"续":{"docs":{},"性":{"docs":{},"的":{"docs":{},"数":{"docs":{},"值":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"将":{"docs":{},"其":{"docs":{},"离":{"docs":{},"散":{"docs":{},"化":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"回":{"docs":{},"归":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":10}}}}}}}},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}},"因":{"docs":{},"此":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},",":{"docs":{},"这":{"docs":{},"份":{"docs":{},"数":{"docs":{},"据":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"有":{"4":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},",":{"3":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},",":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"是":{"docs":{},"“":{"docs":{},"甜":{"docs":{},"不":{"docs":{},"甜":{"docs":{},"”":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}},"docs":{}}}}}}}}}},"刚":{"docs":{},"刚":{"docs":{},"的":{"docs":{},"例":{"docs":{},"子":{"docs":{},"中":{"docs":{},",":{"docs":{},"f":{"docs":{},"m":{"docs":{},"i":{"docs":{},"=":{"2":{"2":{"docs":{},"+":{"1":{"docs":{},"∗":{"2":{"2":{"docs":{},"+":{"4":{"docs":{},"=":{"4":{"1":{"8":{"docs":{},"f":{"docs":{},"m":{"docs":{},"i":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"+":{"1":{"docs":{},"}":{"docs":{},"*":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"+":{"4":{"docs":{},"}":{"docs":{},"}":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"4":{"docs":{},"}":{"docs":{},"{":{"1":{"8":{"docs":{},"}":{"docs":{},"}":{"docs":{},"f":{"docs":{},"m":{"docs":{},"i":{"docs":{},"=":{"docs":{},"√":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"+":{"1":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"2":{"docs":{},"+":{"4":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"√":{"docs":{},"​":{"docs":{},"​":{"1":{"8":{"docs":{},"​":{"docs":{},"​":{"4":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}}}}}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}}}}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}}}},"j":{"docs":{},"c":{"docs":{},"=":{"2":{"2":{"docs":{},"+":{"1":{"docs":{},"+":{"4":{"docs":{},"=":{"2":{"7":{"docs":{},"j":{"docs":{},"c":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"+":{"1":{"docs":{},"+":{"4":{"docs":{},"}":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"{":{"7":{"docs":{},"}":{"docs":{},"j":{"docs":{},"c":{"docs":{},"=":{"docs":{},"​":{"2":{"docs":{},"+":{"1":{"docs":{},"+":{"4":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"​":{"7":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}},"docs":{}}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}}}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}}},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"i":{"docs":{},"=":{"2":{"docs":{},"∗":{"docs":{},"(":{"2":{"docs":{},"+":{"8":{"docs":{},")":{"6":{"docs":{},"∗":{"docs":{},"(":{"6":{"docs":{},"−":{"1":{"docs":{},")":{"docs":{},"=":{"2":{"3":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"i":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"*":{"docs":{},"(":{"2":{"docs":{},"+":{"8":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"6":{"docs":{},"*":{"docs":{},"(":{"6":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}},"docs":{}}}}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}},"docs":{}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}},"有":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}},"在":{"docs":{},"k":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}},"真":{"docs":{},"实":{"docs":{},"业":{"docs":{},"务":{"docs":{},"中":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"能":{"docs":{},"没":{"docs":{},"有":{"docs":{},"真":{"docs":{},"正":{"docs":{},"意":{"docs":{},"义":{"docs":{},"上":{"docs":{},"的":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},",":{"docs":{},"或":{"docs":{},"者":{"docs":{},"说":{"docs":{},"不":{"docs":{},"知":{"docs":{},"道":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"中":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"长":{"docs":{},"什":{"docs":{},"么":{"docs":{},"样":{"docs":{},"子":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"我":{"docs":{},"们":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"在":{"docs":{},"没":{"docs":{},"有":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"情":{"docs":{},"况":{"docs":{},"下":{"docs":{},"来":{"docs":{},"验":{"docs":{},"证":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"好":{"docs":{},"还":{"docs":{},"是":{"docs":{},"不":{"docs":{},"好":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"这":{"docs":{},"个":{"docs":{},"时":{"docs":{},"候":{"docs":{},"就":{"docs":{},"需":{"docs":{},"要":{"docs":{},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"了":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"使":{"docs":{},"用":{"docs":{},"k":{"docs":{},"n":{"docs":{},"n":{"docs":{},"算":{"docs":{},"法":{"docs":{},"解":{"docs":{},"决":{"docs":{},"回":{"docs":{},"归":{"docs":{},"问":{"docs":{},"题":{"docs":{},"时":{"docs":{},"的":{"docs":{},"思":{"docs":{},"路":{"docs":{},"和":{"docs":{},"解":{"docs":{},"决":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},"的":{"docs":{},"思":{"docs":{},"路":{"docs":{},"基":{"docs":{},"本":{"docs":{},"一":{"docs":{},"致":{"docs":{},",":{"docs":{},"只":{"docs":{},"不":{"docs":{},"过":{"docs":{},"预":{"docs":{},"测":{"docs":{},"标":{"docs":{},"签":{"docs":{},"值":{"docs":{},"是":{"docs":{},"多":{"docs":{},"少":{"docs":{},"的":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"是":{"docs":{},"将":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"预":{"docs":{},"测":{"docs":{},"样":{"docs":{},"本":{"docs":{},"属":{"docs":{},"于":{"docs":{},"哪":{"docs":{},"个":{"docs":{},"类":{"docs":{},"别":{"docs":{},"时":{"docs":{},"取":{"docs":{},"决":{"docs":{},"于":{"docs":{},"算":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"p":{"docs":{},"^":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}},"信":{"docs":{},"息":{"docs":{},"论":{"docs":{},"和":{"docs":{},"概":{"docs":{},"率":{"docs":{},"统":{"docs":{},"计":{"docs":{},"中":{"docs":{},"呢":{"docs":{},",":{"docs":{},"为":{"docs":{},"了":{"docs":{},"表":{"docs":{},"示":{"docs":{},"某":{"docs":{},"个":{"docs":{},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{},"的":{"docs":{},"不":{"docs":{},"确":{"docs":{},"定":{"docs":{},"性":{"docs":{},",":{"docs":{},"就":{"docs":{},"借":{"docs":{},"用":{"docs":{},"了":{"docs":{},"热":{"docs":{},"力":{"docs":{},"学":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"概":{"docs":{},"念":{"docs":{},"叫":{"docs":{},"熵":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"假":{"docs":{},"设":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"实":{"docs":{},"际":{"docs":{},"情":{"docs":{},"况":{"docs":{},"下":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"要":{"docs":{},"研":{"docs":{},"究":{"docs":{},"的":{"docs":{},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{},"基":{"docs":{},"本":{"docs":{},"上":{"docs":{},"都":{"docs":{},"是":{"docs":{},"多":{"docs":{},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{},"的":{"docs":{},"情":{"docs":{},"况":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"假":{"docs":{},"设":{"docs":{},"有":{"docs":{},"随":{"docs":{},"便":{"docs":{},"量":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{},"y":{"docs":{},")":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"它":{"docs":{},"的":{"docs":{},"联":{"docs":{},"合":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"是":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},":":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"训":{"docs":{},"练":{"docs":{},"时":{"docs":{},"的":{"docs":{},"特":{"docs":{},"点":{"docs":{},"就":{"docs":{},"是":{"docs":{},"随":{"docs":{},"机":{"docs":{},"有":{"docs":{},"放":{"docs":{},"回":{"docs":{},"采":{"docs":{},"样":{"docs":{},"和":{"docs":{},"并":{"docs":{},"行":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}},"划":{"docs":{},"分":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"与":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"时":{"docs":{},"会":{"docs":{},"有":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"情":{"docs":{},"况":{"docs":{},",":{"docs":{},"可":{"docs":{},"能":{"docs":{},"模":{"docs":{},"型":{"docs":{},"对":{"docs":{},"于":{"docs":{},"数":{"docs":{},"字":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}},"每":{"docs":{},"个":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"上":{"docs":{},"训":{"docs":{},"练":{"docs":{},"后":{"docs":{},"得":{"docs":{},"到":{"docs":{},"一":{"docs":{},"个":{"docs":{},"模":{"docs":{},"型":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}},"强":{"docs":{},"化":{"docs":{},"学":{"docs":{},"习":{"docs":{},"中":{"docs":{},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"按":{"docs":{},"类":{"docs":{},"别":{"docs":{},"划":{"docs":{},"分":{"docs":{},"可":{"docs":{},"以":{"docs":{},"划":{"docs":{},"分":{"docs":{},"成":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}},"这":{"docs":{},"里":{"docs":{},"主":{"docs":{},"要":{"docs":{},"介":{"docs":{},"绍":{"docs":{},"一":{"docs":{},"下":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}},"声":{"docs":{},"音":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}},"并":{"docs":{},"假":{"docs":{},"设":{"docs":{},"现":{"docs":{},"在":{"docs":{},"已":{"docs":{},"经":{"docs":{},"使":{"docs":{},"用":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"根":{"docs":{},"据":{"docs":{},"这":{"docs":{},"份":{"docs":{},"数":{"docs":{},"据":{"docs":{},"的":{"docs":{},"特":{"docs":{},"点":{"docs":{},"训":{"docs":{},"练":{"docs":{},"出":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"很":{"docs":{},"厉":{"docs":{},"害":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},",":{"docs":{},"成":{"docs":{},"为":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"挑":{"docs":{},"瓜":{"docs":{},"好":{"docs":{},"手":{"docs":{},",":{"docs":{},"只":{"docs":{},"需":{"docs":{},"告":{"docs":{},"诉":{"docs":{},"它":{"docs":{},"这":{"docs":{},"个":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"的":{"docs":{},"色":{"docs":{},"泽":{"docs":{},",":{"docs":{},"纹":{"docs":{},"理":{"docs":{},"和":{"docs":{},"声":{"docs":{},"音":{"docs":{},"就":{"docs":{},"能":{"docs":{},"告":{"docs":{},"诉":{"docs":{},"你":{"docs":{},"这":{"docs":{},"个":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"甜":{"docs":{},"不":{"docs":{},"甜":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"行":{"docs":{},":":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"且":{"docs":{},"预":{"docs":{},"测":{"docs":{},"正":{"docs":{},"确":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"占":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}},"错":{"docs":{},"了":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"占":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}},"避":{"docs":{},"免":{"docs":{},"低":{"docs":{},"分":{"docs":{},"的":{"docs":{},"行":{"docs":{},"为":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}},"当":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"过":{"docs":{},"于":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"很":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"导":{"docs":{},"致":{"docs":{},"欠":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"模":{"docs":{},"型":{"docs":{},"过":{"docs":{},"于":{"docs":{},"复":{"docs":{},"杂":{"docs":{},",":{"docs":{},"就":{"docs":{},"很":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"导":{"docs":{},"致":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"性":{"docs":{},"能":{"docs":{},"跟":{"docs":{},"基":{"docs":{},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"相":{"docs":{},"同":{"docs":{},"时":{"docs":{},",":{"docs":{},"取":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}},"θ":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"θ":{"docs":{},"更":{"docs":{},"新":{"docs":{},"好":{"docs":{},"了":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"就":{"docs":{},"相":{"docs":{},"当":{"docs":{},"于":{"docs":{},"得":{"docs":{},"到":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"模":{"docs":{},"型":{"docs":{},"。":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"只":{"docs":{},"要":{"docs":{},"将":{"docs":{},"数":{"docs":{},"据":{"docs":{},"放":{"docs":{},"到":{"docs":{},"模":{"docs":{},"型":{"docs":{},"中":{"docs":{},"进":{"docs":{},"行":{"docs":{},"计":{"docs":{},"算":{"docs":{},"就":{"docs":{},"能":{"docs":{},"得":{"docs":{},"到":{"docs":{},"预":{"docs":{},"测":{"docs":{},"输":{"docs":{},"出":{"docs":{},"了":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"一":{"docs":{},"看":{"docs":{},"到":{"docs":{},"“":{"docs":{},"回":{"docs":{},"归":{"docs":{},"”":{"docs":{},"这":{"docs":{},"两":{"docs":{},"个":{"docs":{},"字":{"docs":{},",":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"认":{"docs":{},"为":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"是":{"docs":{},"一":{"docs":{},"种":{"docs":{},"解":{"docs":{},"决":{"docs":{},"回":{"docs":{},"归":{"docs":{},"问":{"docs":{},"题":{"docs":{},"的":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"然":{"docs":{},"而":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"是":{"docs":{},"通":{"docs":{},"过":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"思":{"docs":{},"想":{"docs":{},"来":{"docs":{},"解":{"docs":{},"决":{"docs":{},"二":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},"的":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"然":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"不":{"docs":{},"仅":{"docs":{},"仅":{"docs":{},"与":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"性":{"docs":{},"质":{"docs":{},"也":{"docs":{},"熵":{"docs":{},"的":{"docs":{},"性":{"docs":{},"质":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{},"我":{"docs":{},"概":{"docs":{},"率":{"docs":{},"越":{"docs":{},"确":{"docs":{},"定":{"docs":{},",":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"就":{"docs":{},"越":{"docs":{},"小":{"docs":{},",":{"docs":{},"概":{"docs":{},"率":{"docs":{},"越":{"docs":{},"五":{"docs":{},"五":{"docs":{},"开":{"docs":{},",":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"就":{"docs":{},"越":{"docs":{},"大":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"在":{"docs":{},"e":{"docs":{},"d":{"docs":{},"a":{"docs":{},"之":{"docs":{},"前":{"docs":{},"先":{"docs":{},"要":{"docs":{},"加":{"docs":{},"载":{"docs":{},"数":{"docs":{},"据":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"先":{"docs":{},"将":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},".":{"docs":{},"c":{"docs":{},"s":{"docs":{},"v":{"docs":{},"读":{"docs":{},"到":{"docs":{},"内":{"docs":{},"存":{"docs":{},"中":{"docs":{},",":{"docs":{},"并":{"docs":{},"看":{"docs":{},"一":{"docs":{},"看":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"安":{"docs":{},"装":{"docs":{},"好":{"docs":{},"所":{"docs":{},"需":{"docs":{},"要":{"docs":{},"的":{"docs":{},"库":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"如":{"docs":{},"下":{"docs":{},"代":{"docs":{},"码":{"docs":{},"开":{"docs":{},"始":{"docs":{},"游":{"docs":{},"戏":{"docs":{},":":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"通":{"docs":{},"常":{"docs":{},"将":{"docs":{},"这":{"docs":{},"种":{"docs":{},"喂":{"docs":{},"给":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"来":{"docs":{},"训":{"docs":{},"练":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"称":{"docs":{},"为":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},",":{"docs":{},"用":{"docs":{},"来":{"docs":{},"让":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"预":{"docs":{},"测":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"称":{"docs":{},"为":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"知":{"docs":{},"道":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},":":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"一":{"docs":{},"下":{"docs":{},"转":{"docs":{},"换":{"docs":{},"成":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"段":{"docs":{},"后":{"docs":{},",":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"段":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}},"将":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"画":{"docs":{},"面":{"docs":{},"传":{"docs":{},"给":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"作":{"docs":{},"为":{"docs":{},"输":{"docs":{},"入":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"预":{"docs":{},"测":{"docs":{},"一":{"docs":{},"下":{"docs":{},"当":{"docs":{},"前":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"画":{"docs":{},"面":{"docs":{},"下":{"docs":{},",":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"动":{"docs":{},"作":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"首":{"docs":{},"先":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"看":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"有":{"docs":{},"多":{"docs":{},"少":{"docs":{},"人":{"docs":{},"活":{"docs":{},"了":{"docs":{},"下":{"docs":{},"来":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}},"都":{"docs":{},"能":{"docs":{},"通":{"docs":{},"过":{"docs":{},"这":{"docs":{},"个":{"docs":{},"方":{"docs":{},"程":{"docs":{},"算":{"docs":{},"出":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}},"折":{"docs":{},"交":{"docs":{},"叉":{"docs":{},"验":{"docs":{},"证":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}},"中":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"把":{"docs":{},"原":{"docs":{},"始":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"分":{"docs":{},"割":{"docs":{},"成":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}},"!":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}},"验":{"docs":{},"证":{"docs":{},"的":{"docs":{},"大":{"docs":{},"体":{"docs":{},"思":{"docs":{},"路":{"docs":{},"是":{"docs":{},"将":{"docs":{},"整":{"docs":{},"个":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"分":{"docs":{},"成":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}},"流":{"docs":{},"程":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}},"!":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"所":{"docs":{},"需":{"docs":{},"要":{"docs":{},"完":{"docs":{},"成":{"docs":{},"的":{"docs":{},"任":{"docs":{},"务":{"docs":{},"。":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"能":{"docs":{},"够":{"docs":{},"完":{"docs":{},"成":{"docs":{},"的":{"docs":{},"任":{"docs":{},"务":{"docs":{},"主":{"docs":{},"要":{"docs":{},"有":{"docs":{},":":{"docs":{},"分":{"docs":{},"类":{"docs":{},"、":{"docs":{},"回":{"docs":{},"归":{"docs":{},"、":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"最":{"docs":{},"好":{"docs":{},"的":{"docs":{},"情":{"docs":{},"况":{"docs":{},"下":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"应":{"docs":{},"该":{"docs":{},"不":{"docs":{},"管":{"docs":{},"在":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"上":{"docs":{},"还":{"docs":{},"是":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"上":{"docs":{},",":{"docs":{},"它":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"都":{"docs":{},"不":{"docs":{},"错":{"docs":{},"。":{"docs":{},"但":{"docs":{},"是":{"docs":{},"有":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"在":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"上":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"比":{"docs":{},"较":{"docs":{},"差":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"这":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"我":{"docs":{},"们":{"docs":{},"称":{"docs":{},"为":{"docs":{},"欠":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"。":{"docs":{},"那":{"docs":{},"如":{"docs":{},"果":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"在":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"上":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"好":{"docs":{},"到":{"docs":{},"爆":{"docs":{},"炸":{"docs":{},",":{"docs":{},"但":{"docs":{},"在":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"上":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"却":{"docs":{},"不":{"docs":{},"尽":{"docs":{},"人":{"docs":{},"意":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"这":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"我":{"docs":{},"们":{"docs":{},"称":{"docs":{},"为":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"后":{"docs":{},"只":{"docs":{},"需":{"docs":{},"要":{"docs":{},"对":{"docs":{},"这":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}},"简":{"docs":{},"单":{"docs":{},"的":{"docs":{},"回":{"docs":{},"归":{"docs":{},"算":{"docs":{},"法":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":5.011904761904762}}}}}}}}},"接":{"docs":{},"近":{"docs":{},"人":{"docs":{},"类":{"docs":{},"思":{"docs":{},"维":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}},"算":{"docs":{},"法":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":5}}}}}}}}}}},"大":{"docs":{},"距":{"docs":{},"离":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"描":{"docs":{},"述":{"docs":{},"的":{"docs":{},"是":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"远":{"docs":{},"的":{"docs":{},"两":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"所":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"中":{"docs":{},"圆":{"docs":{},"圈":{"docs":{},"和":{"docs":{},"菱":{"docs":{},"形":{"docs":{},"分":{"docs":{},"别":{"docs":{},"代":{"docs":{},"表":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},",":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"离":{"docs":{},"得":{"docs":{},"最":{"docs":{},"远":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"欧":{"docs":{},"式":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"描":{"docs":{},"述":{"docs":{},"的":{"docs":{},"是":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{},"两":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"所":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"中":{"docs":{},"圆":{"docs":{},"圈":{"docs":{},"和":{"docs":{},"菱":{"docs":{},"形":{"docs":{},"分":{"docs":{},"别":{"docs":{},"代":{"docs":{},"表":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},",":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"离":{"docs":{},"得":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"欧":{"docs":{},"式":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"常":{"docs":{},"用":{"docs":{},"术":{"docs":{},"语":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}},"概":{"docs":{},"述":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":10}}}},"的":{"docs":{},"定":{"docs":{},"义":{"docs":{},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},"种":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"最":{"docs":{},"准":{"docs":{},"确":{"docs":{},"的":{"docs":{},"定":{"docs":{},"义":{"docs":{},"是":{"docs":{},":":{"docs":{},"\"":{"docs":{},"a":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}},"库":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}},"模":{"docs":{},"糊":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}},"型":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"metrics.html":{"ref":"metrics.html","tf":10}}}},"与":{"docs":{},"选":{"docs":{},"择":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}},"欠":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"与":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}},"次":{"docs":{},"在":{"docs":{},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"上":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"求":{"docs":{},"平":{"docs":{},"均":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{},"训":{"docs":{},"练":{"docs":{},"和":{"docs":{},"验":{"docs":{},"证":{"docs":{},"。":{"docs":{},"每":{"docs":{},"⼀":{"docs":{},"次":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"使":{"docs":{},"⽤":{"docs":{},"⼀":{"docs":{},"个":{"docs":{},"⼦":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"验":{"docs":{},"证":{"docs":{},"模":{"docs":{},"型":{"docs":{},",":{"docs":{},"并":{"docs":{},"使":{"docs":{},"⽤":{"docs":{},"其":{"docs":{},"它":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"的":{"docs":{},"平":{"docs":{},"均":{"docs":{},"值":{"docs":{},"作":{"docs":{},"为":{"docs":{},"性":{"docs":{},"能":{"docs":{},"的":{"docs":{},"估":{"docs":{},"计":{"docs":{},"。":{"docs":{},"一":{"docs":{},"般":{"docs":{},"来":{"docs":{},"说":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}},"训":{"docs":{},"练":{"docs":{},"和":{"docs":{},"验":{"docs":{},"证":{"docs":{},"中":{"docs":{},",":{"docs":{},"每":{"docs":{},"次":{"docs":{},"⽤":{"docs":{},"来":{"docs":{},"验":{"docs":{},"证":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"⼦":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"都":{"docs":{},"不":{"docs":{},"同":{"docs":{},"。":{"docs":{},"最":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"对":{"docs":{},"这":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"就":{"docs":{},"能":{"docs":{},"得":{"docs":{},"到":{"docs":{},"拥":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}},"总":{"docs":{},"后":{"docs":{},"计":{"docs":{},"算":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}},"这":{"docs":{},"样":{"docs":{},"每":{"docs":{},"份":{"docs":{},"都":{"docs":{},"有":{"docs":{},"一":{"docs":{},"次":{"docs":{},"机":{"docs":{},"会":{"docs":{},"作":{"docs":{},"为":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},",":{"docs":{},"其":{"docs":{},"他":{"docs":{},"机":{"docs":{},"会":{"docs":{},"作":{"docs":{},"为":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}},"τ":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"τ":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"期":{"docs":{},"望":{"docs":{},"r":{"docs":{},"θ":{"docs":{},"‾":{"docs":{},"\\":{"docs":{},"o":{"docs":{},"v":{"docs":{},"e":{"docs":{},"r":{"docs":{},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"{":{"docs":{},"r":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"}":{"docs":{},"​":{"docs":{},"r":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"又":{"docs":{},"可":{"docs":{},"以":{"docs":{},"近":{"docs":{},"似":{"docs":{},"的":{"docs":{},"表":{"docs":{},"示":{"docs":{},"为":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"会":{"docs":{},"不":{"docs":{},"会":{"docs":{},"是":{"docs":{},"一":{"docs":{},"模":{"docs":{},"一":{"docs":{},"样":{"docs":{},"的":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"仔":{"docs":{},"细":{"docs":{},"想":{"docs":{},"想":{"docs":{},"会":{"docs":{},"发":{"docs":{},"现":{"docs":{},"不":{"docs":{},"会":{"docs":{},"一":{"docs":{},"摸":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"比":{"docs":{},"如":{"docs":{},"我":{"docs":{},"们":{"docs":{},"现":{"docs":{},"在":{"docs":{},"要":{"docs":{},"对":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"进":{"docs":{},"行":{"docs":{},"识":{"docs":{},"别":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"我":{"docs":{},"就":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"训":{"docs":{},"练":{"docs":{},"一":{"docs":{},"个":{"docs":{},"分":{"docs":{},"类":{"docs":{},"模":{"docs":{},"型":{"docs":{},"。":{"docs":{},"但":{"docs":{},"可":{"docs":{},"能":{"docs":{},"模":{"docs":{},"型":{"docs":{},"对":{"docs":{},"于":{"docs":{},"数":{"docs":{},"字":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"较":{"docs":{},"低":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"浑":{"docs":{},"浊":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}}},"清":{"docs":{},"晰":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}},"脆":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}}},"甜":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}},"不":{"docs":{},"甜":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.010619469026548672},"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},"值":{"docs":{},"由":{"docs":{},"我":{"docs":{},"们":{"docs":{},"自":{"docs":{},"己":{"docs":{},"来":{"docs":{},"指":{"docs":{},"定":{"docs":{},",":{"docs":{},"如":{"docs":{},"以":{"docs":{},"下":{"docs":{},"为":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}},"为":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"样":{"docs":{},"本":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"用":{"docs":{},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"测":{"docs":{},"试":{"docs":{},"完":{"docs":{},"后":{"docs":{},"得":{"docs":{},"到":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"为":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"测":{"docs":{},"试":{"docs":{},"完":{"docs":{},"后":{"docs":{},"得":{"docs":{},"到":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"为":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}},"有":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"数":{"docs":{},"量":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},",":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"点":{"docs":{},"额":{"docs":{},"预":{"docs":{},"测":{"docs":{},"概":{"docs":{},"率":{"docs":{},"从":{"docs":{},"小":{"docs":{},"到":{"docs":{},"大":{"docs":{},"排":{"docs":{},"序":{"docs":{},"后":{"docs":{},",":{"docs":{},"该":{"docs":{},"预":{"docs":{},"测":{"docs":{},"概":{"docs":{},"率":{"docs":{},"排":{"docs":{},"在":{"docs":{},"第":{"docs":{},"几":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}},"子":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"识":{"docs":{},"别":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"低":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669},"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}},"可":{"docs":{},"能":{"docs":{},"性":{"docs":{},"为":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}},"只":{"docs":{},"有":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"实":{"docs":{},"数":{"docs":{},"转":{"docs":{},"换":{"docs":{},"成":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"若":{"docs":{},"只":{"docs":{},"需":{"docs":{},"要":{"docs":{},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"样":{"docs":{},"本":{"docs":{},"所":{"docs":{},"属":{"docs":{},"标":{"docs":{},"签":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"就":{"docs":{},"是":{"docs":{},"一":{"docs":{},"种":{"docs":{},"回":{"docs":{},"归":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"若":{"docs":{},"需":{"docs":{},"要":{"docs":{},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"样":{"docs":{},"本":{"docs":{},"所":{"docs":{},"属":{"docs":{},"标":{"docs":{},"签":{"docs":{},",":{"docs":{},"则":{"docs":{},"就":{"docs":{},"是":{"docs":{},"一":{"docs":{},"种":{"docs":{},"二":{"docs":{},"分":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"概":{"docs":{},"率":{"docs":{},"为":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.023696682464454975},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"值":{"docs":{},"的":{"docs":{},"话":{"docs":{},"问":{"docs":{},"题":{"docs":{},"就":{"docs":{},"解":{"docs":{},"决":{"docs":{},"了":{"docs":{},"。":{"docs":{},"要":{"docs":{},"解":{"docs":{},"决":{"docs":{},"这":{"docs":{},"个":{"docs":{},"问":{"docs":{},"题":{"docs":{},"很":{"docs":{},"自":{"docs":{},"然":{"docs":{},"地":{"docs":{},"就":{"docs":{},"能":{"docs":{},"想":{"docs":{},"到":{"docs":{},"将":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"输":{"docs":{},"出":{"docs":{},"作":{"docs":{},"为":{"docs":{},"输":{"docs":{},"入":{"docs":{},",":{"docs":{},"输":{"docs":{},"入":{"docs":{},"到":{"docs":{},"另":{"docs":{},"一":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"中":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"能":{"docs":{},"够":{"docs":{},"进":{"docs":{},"行":{"docs":{},"转":{"docs":{},"换":{"docs":{},"工":{"docs":{},"作":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"函":{"docs":{},"数":{"docs":{},"为":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"是":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.018957345971563982}}},"小":{"docs":{},"于":{"docs":{},"分":{"docs":{},"类":{"docs":{},"阈":{"docs":{},"值":{"docs":{},"则":{"docs":{},"分":{"docs":{},"类":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}},"话":{"docs":{},",":{"docs":{},"就":{"docs":{},"意":{"docs":{},"味":{"docs":{},"着":{"docs":{},"这":{"docs":{},"个":{"docs":{},"模":{"docs":{},"型":{"docs":{},"认":{"docs":{},"为":{"docs":{},"当":{"docs":{},"前":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},"有":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}},"那":{"docs":{},"么":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}},"误":{"docs":{},"差":{"docs":{},"更":{"docs":{},"大":{"docs":{},"!":{"docs":{},"因":{"docs":{},"为":{"docs":{},"情":{"docs":{},"况":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}},"不":{"docs":{},"确":{"docs":{},"定":{"docs":{},"性":{"docs":{},"。":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"的":{"docs":{},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"是":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},":":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"∣":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"n":{"docs":{},"p":{"docs":{},"i":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"∣":{"docs":{},"x":{"docs":{},"=":{"docs":{},"x":{"docs":{},"i":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"|":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"^":{"docs":{},"n":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"p":{"docs":{},"_":{"docs":{},"i":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"|":{"docs":{},"x":{"docs":{},"=":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"∣":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"∣":{"docs":{},"x":{"docs":{},"=":{"docs":{},"x":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"减":{"docs":{},"少":{"docs":{},"程":{"docs":{},"度":{"docs":{},"。":{"docs":{},"就":{"docs":{},"好":{"docs":{},"比":{"docs":{},",":{"docs":{},"我":{"docs":{},"在":{"docs":{},"玩":{"docs":{},"读":{"docs":{},"心":{"docs":{},"术":{"docs":{},"。":{"docs":{},"您":{"docs":{},"心":{"docs":{},"里":{"docs":{},"想":{"docs":{},"一":{"docs":{},"件":{"docs":{},"东":{"docs":{},"西":{"docs":{},",":{"docs":{},"我":{"docs":{},"来":{"docs":{},"猜":{"docs":{},"。":{"docs":{},"我":{"docs":{},"已":{"docs":{},"开":{"docs":{},"始":{"docs":{},"什":{"docs":{},"么":{"docs":{},"都":{"docs":{},"没":{"docs":{},"问":{"docs":{},"你":{"docs":{},",":{"docs":{},"我":{"docs":{},"要":{"docs":{},"猜":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"是":{"docs":{},"瞎":{"docs":{},"猜":{"docs":{},"。":{"docs":{},"这":{"docs":{},"个":{"docs":{},"时":{"docs":{},"候":{"docs":{},"我":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"就":{"docs":{},"非":{"docs":{},"常":{"docs":{},"高":{"docs":{},"对":{"docs":{},"不":{"docs":{},"对":{"docs":{},"。":{"docs":{},"然":{"docs":{},"后":{"docs":{},"我":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"我":{"docs":{},"会":{"docs":{},"去":{"docs":{},"试":{"docs":{},"着":{"docs":{},"问":{"docs":{},"你":{"docs":{},"是":{"docs":{},"非":{"docs":{},"题":{"docs":{},",":{"docs":{},"当":{"docs":{},"我":{"docs":{},"问":{"docs":{},"了":{"docs":{},"是":{"docs":{},"非":{"docs":{},"题":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"就":{"docs":{},"能":{"docs":{},"减":{"docs":{},"小":{"docs":{},"猜":{"docs":{},"测":{"docs":{},"你":{"docs":{},"心":{"docs":{},"中":{"docs":{},"想":{"docs":{},"到":{"docs":{},"的":{"docs":{},"东":{"docs":{},"西":{"docs":{},"的":{"docs":{},"范":{"docs":{},"围":{"docs":{},",":{"docs":{},"这":{"docs":{},"样":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"减":{"docs":{},"小":{"docs":{},"了":{"docs":{},"我":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"我":{"docs":{},"熵":{"docs":{},"的":{"docs":{},"减":{"docs":{},"小":{"docs":{},"程":{"docs":{},"度":{"docs":{},"就":{"docs":{},"是":{"docs":{},"我":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"记":{"docs":{},"为":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}},"意":{"docs":{},"思":{"docs":{},"是":{"docs":{},"性":{"docs":{},"别":{"docs":{},"为":{"docs":{},"男":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"有":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}},"总":{"docs":{},"共":{"docs":{},"有":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}},"时":{"docs":{},"候":{"docs":{},",":{"docs":{},"我":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"就":{"docs":{},"是":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}},"条":{"docs":{},"件":{"docs":{},"下":{"docs":{},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}},"熵":{"docs":{},"的":{"docs":{},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"就":{"docs":{},"是":{"docs":{},"(":{"docs":{},"p":{"docs":{},"s":{"docs":{},"p":{"docs":{},"s":{"docs":{},"p":{"docs":{},"s":{"docs":{},":":{"docs":{},"这":{"docs":{},"里":{"docs":{},"的":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"就":{"docs":{},"是":{"docs":{},":":{"docs":{},"g":{"docs":{},"(":{"docs":{},"d":{"docs":{},",":{"docs":{},"a":{"docs":{},")":{"docs":{},"=":{"docs":{},"h":{"docs":{},"(":{"docs":{},"d":{"docs":{},")":{"docs":{},"−":{"docs":{},"h":{"docs":{},"(":{"docs":{},"d":{"docs":{},"∣":{"docs":{},"a":{"docs":{},")":{"docs":{},"g":{"docs":{},"(":{"docs":{},"d":{"docs":{},",":{"docs":{},"a":{"docs":{},")":{"docs":{},"=":{"docs":{},"h":{"docs":{},"(":{"docs":{},"d":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"可":{"docs":{},"知":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}}},"您":{"docs":{},"可":{"docs":{},"能":{"docs":{},"有":{"docs":{},"点":{"docs":{},"眼":{"docs":{},"熟":{"docs":{},",":{"docs":{},"没":{"docs":{},"错":{"docs":{},"!":{"docs":{},"就":{"docs":{},"是":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"的":{"docs":{},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"。":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"众":{"docs":{},"多":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"中":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"作":{"docs":{},"为":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}},"取":{"docs":{},"值":{"docs":{},"一":{"docs":{},"般":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}},"基":{"docs":{},"础":{"docs":{},"上":{"docs":{},"修":{"docs":{},"改":{"docs":{},"的":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}},"语":{"docs":{},"法":{"docs":{},"知":{"docs":{},"识":{"docs":{},"就":{"docs":{},"能":{"docs":{},"学":{"docs":{},"会":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"使":{"docs":{},"用":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}},"英":{"docs":{},"文":{"docs":{},"缩":{"docs":{},"写":{"docs":{},",":{"docs":{},"刚":{"docs":{},"接":{"docs":{},"触":{"docs":{},"的":{"docs":{},"您":{"docs":{},"不":{"docs":{},"要":{"docs":{},"误":{"docs":{},"认":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}},"错":{"docs":{},"误":{"docs":{},"率":{"docs":{},"为":{"docs":{},":":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}},"低":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"增":{"docs":{},"大":{"docs":{},",":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"性":{"docs":{},"能":{"docs":{},"好":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"比":{"docs":{},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"数":{"docs":{},"据":{"docs":{},"排":{"docs":{},"在":{"docs":{},"第":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}}},"有":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"编":{"docs":{},"号":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"量":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},";":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336}}}},"值":{"docs":{},"变":{"docs":{},"大":{"docs":{},"。":{"docs":{},"通":{"docs":{},"常":{"docs":{},"使":{"docs":{},"用":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"会":{"docs":{},"导":{"docs":{},"致":{"docs":{},"特":{"docs":{},"征":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},";":{"docs":{},"负":{"docs":{},"相":{"docs":{},"关":{"docs":{},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},":":{"docs":{},"如":{"docs":{},"果":{"docs":{},"特":{"docs":{},"征":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"小":{"docs":{},"会":{"docs":{},"导":{"docs":{},"致":{"docs":{},"特":{"docs":{},"征":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"来":{"docs":{},"表":{"docs":{},"示":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"值":{"docs":{},"称":{"docs":{},"为":{"docs":{},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},"系":{"docs":{},"数":{"docs":{},"。":{"docs":{},"若":{"docs":{},"该":{"docs":{},"系":{"docs":{},"数":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"学":{"docs":{},"推":{"docs":{},"导":{"docs":{},"全":{"docs":{},"部":{"docs":{},"推":{"docs":{},"导":{"docs":{},"完":{"docs":{},"毕":{"docs":{},"了":{"docs":{},"。":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"用":{"docs":{},"一":{"docs":{},"张":{"docs":{},"图":{"docs":{},"来":{"docs":{},"总":{"docs":{},"结":{"docs":{},"一":{"docs":{},"下":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}}}}}},"面":{"docs":{},"积":{"docs":{},"称":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"官":{"docs":{},"方":{"docs":{},"网":{"docs":{},"站":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}},"强":{"docs":{},"大":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"化":{"docs":{},"学":{"docs":{},"习":{"docs":{},",":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}},"目":{"docs":{},"录":{"docs":{},"结":{"docs":{},"构":{"docs":{},"有":{"docs":{},"一":{"docs":{},"个":{"docs":{},"大":{"docs":{},"致":{"docs":{},"的":{"docs":{},"了":{"docs":{},"解":{"docs":{},",":{"docs":{},"有":{"docs":{},"助":{"docs":{},"于":{"docs":{},"我":{"docs":{},"们":{"docs":{},"更":{"docs":{},"加":{"docs":{},"深":{"docs":{},"刻":{"docs":{},"地":{"docs":{},"理":{"docs":{},"解":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},",":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"低":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"兄":{"docs":{},"弟":{"docs":{},"姐":{"docs":{},"妹":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"变":{"docs":{},"多":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"还":{"docs":{},"是":{"docs":{},"呈":{"docs":{},"下":{"docs":{},"降":{"docs":{},"趋":{"docs":{},"势":{"docs":{},"的":{"docs":{},"。":{"docs":{},"这":{"docs":{},"其":{"docs":{},"实":{"docs":{},"挺":{"docs":{},"合":{"docs":{},"理":{"docs":{},"的":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"如":{"docs":{},"果":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"家":{"docs":{},"庭":{"docs":{},"在":{"docs":{},"船":{"docs":{},"上":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"设":{"docs":{},"法":{"docs":{},"救":{"docs":{},"他":{"docs":{},"们":{"docs":{},"而":{"docs":{},"不":{"docs":{},"是":{"docs":{},"救":{"docs":{},"自":{"docs":{},"己":{"docs":{},",":{"docs":{},"这":{"docs":{},"样":{"docs":{},"一":{"docs":{},"来":{"docs":{},"可":{"docs":{},"能":{"docs":{},"谁":{"docs":{},"都":{"docs":{},"救":{"docs":{},"不":{"docs":{},"了":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"花":{"docs":{},"费":{"docs":{},"是":{"docs":{},"被":{"docs":{},"有":{"docs":{},"钱":{"docs":{},"的":{"docs":{},"大":{"docs":{},"佬":{"docs":{},"给":{"docs":{},"提":{"docs":{},"上":{"docs":{},"去":{"docs":{},"的":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}},"结":{"docs":{},"果":{"docs":{},"相":{"docs":{},"符":{"docs":{},",":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"越":{"docs":{},"低":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"根":{"docs":{},"据":{"docs":{},"已":{"docs":{},"有":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"来":{"docs":{},"添":{"docs":{},"加":{"docs":{},"新":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"这":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"特":{"docs":{},"征":{"docs":{},"工":{"docs":{},"程":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"船":{"docs":{},"客":{"docs":{},"置":{"docs":{},"为":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"。":{"docs":{},"然":{"docs":{},"后":{"docs":{},"我":{"docs":{},"们":{"docs":{},"使":{"docs":{},"用":{"docs":{},"最":{"docs":{},"佳":{"docs":{},"参":{"docs":{},"数":{"docs":{},"构":{"docs":{},"造":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},",":{"docs":{},"并":{"docs":{},"对":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"测":{"docs":{},"试":{"docs":{},"会":{"docs":{},"发":{"docs":{},"现":{"docs":{},",":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"达":{"docs":{},"到":{"docs":{},"了":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"方":{"docs":{},"法":{"docs":{},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},",":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}},"原":{"docs":{},"理":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"并":{"docs":{},"不":{"docs":{},"是":{"docs":{},"每":{"docs":{},"次":{"docs":{},"都":{"docs":{},"选":{"docs":{},"取":{"docs":{},"概":{"docs":{},"率":{"docs":{},"最":{"docs":{},"高":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},",":{"docs":{},"而":{"docs":{},"是":{"docs":{},"根":{"docs":{},"据":{"docs":{},"动":{"docs":{},"作":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"进":{"docs":{},"行":{"docs":{},"采":{"docs":{},"样":{"docs":{},"。":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"就":{"docs":{},"算":{"docs":{},"我":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"向":{"docs":{},"上":{"docs":{},"挪":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"为":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"核":{"docs":{},"心":{"docs":{},"思":{"docs":{},"想":{"docs":{},"非":{"docs":{},"常":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"找":{"docs":{},"一":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"π":{"docs":{},"\\":{"docs":{},"p":{"docs":{},"i":{"docs":{},"π":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"π":{"docs":{},"\\":{"docs":{},"p":{"docs":{},"i":{"docs":{},"π":{"docs":{},"能":{"docs":{},"够":{"docs":{},"根":{"docs":{},"据":{"docs":{},"现":{"docs":{},"在":{"docs":{},"环":{"docs":{},"境":{"docs":{},"的":{"docs":{},"状":{"docs":{},"态":{"docs":{},"(":{"docs":{},"s":{"docs":{},"t":{"docs":{},"a":{"docs":{},"t":{"docs":{},"e":{"docs":{},")":{"docs":{},"来":{"docs":{},"产":{"docs":{},"生":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"要":{"docs":{},"采":{"docs":{},"取":{"docs":{},"的":{"docs":{},"行":{"docs":{},"动":{"docs":{},"或":{"docs":{},"者":{"docs":{},"动":{"docs":{},"作":{"docs":{},"(":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},")":{"docs":{},"。":{"docs":{},"即":{"docs":{},"π":{"docs":{},"(":{"docs":{},"s":{"docs":{},"t":{"docs":{},"a":{"docs":{},"t":{"docs":{},"e":{"docs":{},")":{"docs":{},"→":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"\\":{"docs":{},"p":{"docs":{},"i":{"docs":{},"(":{"docs":{},"s":{"docs":{},"t":{"docs":{},"a":{"docs":{},"t":{"docs":{},"e":{"docs":{},")":{"docs":{},"\\":{"docs":{},"r":{"docs":{},"i":{"docs":{},"g":{"docs":{},"h":{"docs":{},"t":{"docs":{},"a":{"docs":{},"r":{"docs":{},"r":{"docs":{},"o":{"docs":{},"w":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"算":{"docs":{},"法":{"docs":{},"流":{"docs":{},"程":{"docs":{},"。":{"docs":{},"流":{"docs":{},"程":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}},"纹":{"docs":{},"理":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}},"细":{"docs":{},"心":{"docs":{},"的":{"docs":{},"您":{"docs":{},"可":{"docs":{},"能":{"docs":{},"注":{"docs":{},"意":{"docs":{},"到":{"docs":{},"了":{"docs":{},",":{"docs":{},"分":{"docs":{},"类":{"docs":{},"和":{"docs":{},"回":{"docs":{},"归":{"docs":{},"问":{"docs":{},"题":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"都":{"docs":{},"是":{"docs":{},"带":{"docs":{},"有":{"docs":{},"标":{"docs":{},"签":{"docs":{},"的":{"docs":{},"。":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"数":{"docs":{},"据":{"docs":{},"已":{"docs":{},"经":{"docs":{},"告":{"docs":{},"诉":{"docs":{},"了":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"我":{"docs":{},"这":{"docs":{},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"的":{"docs":{},"答":{"docs":{},"案":{"docs":{},"是":{"docs":{},"这":{"docs":{},"个":{"docs":{},",":{"docs":{},"那":{"docs":{},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"的":{"docs":{},"答":{"docs":{},"案":{"docs":{},"是":{"docs":{},"那":{"docs":{},"个":{"docs":{},",":{"docs":{},"就":{"docs":{},"像":{"docs":{},"有":{"docs":{},"老":{"docs":{},"师":{"docs":{},"在":{"docs":{},"监":{"docs":{},"督":{"docs":{},"学":{"docs":{},"生":{"docs":{},"做":{"docs":{},"题":{"docs":{},"目":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{},"一":{"docs":{},"看":{"docs":{},"到":{"docs":{},"学":{"docs":{},"生":{"docs":{},"做":{"docs":{},"错":{"docs":{},"了":{"docs":{},"就":{"docs":{},"告":{"docs":{},"诉":{"docs":{},"他":{"docs":{},"题":{"docs":{},"目":{"docs":{},"做":{"docs":{},"错":{"docs":{},"了":{"docs":{},",":{"docs":{},"看":{"docs":{},"到":{"docs":{},"学":{"docs":{},"生":{"docs":{},"做":{"docs":{},"对":{"docs":{},"了":{"docs":{},"就":{"docs":{},"鼓":{"docs":{},"励":{"docs":{},"他":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"用":{"docs":{},"来":{"docs":{},"解":{"docs":{},"决":{"docs":{},"分":{"docs":{},"类":{"docs":{},"和":{"docs":{},"回":{"docs":{},"归":{"docs":{},"问":{"docs":{},"题":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"又":{"docs":{},"称":{"docs":{},"为":{"docs":{},"监":{"docs":{},"督":{"docs":{},"学":{"docs":{},"习":{"docs":{},"。":{"docs":{},"而":{"docs":{},"像":{"docs":{},"用":{"docs":{},"来":{"docs":{},"解":{"docs":{},"决":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"又":{"docs":{},"称":{"docs":{},"为":{"docs":{},"无":{"docs":{},"监":{"docs":{},"督":{"docs":{},"学":{"docs":{},"习":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"已":{"docs":{},"经":{"docs":{},"发":{"docs":{},"现":{"docs":{},",":{"docs":{},"不":{"docs":{},"管":{"docs":{},"使":{"docs":{},"用":{"docs":{},"哪":{"docs":{},"种":{"docs":{},"分":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},"来":{"docs":{},"进":{"docs":{},"行":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"识":{"docs":{},"别":{"docs":{},",":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"只":{"docs":{},"是":{"docs":{},"创":{"docs":{},"建":{"docs":{},"的":{"docs":{},"算":{"docs":{},"法":{"docs":{},"对":{"docs":{},"象":{"docs":{},"不":{"docs":{},"一":{"docs":{},"样":{"docs":{},"而":{"docs":{},"已":{"docs":{},"。":{"docs":{},"有":{"docs":{},"了":{"docs":{},"算":{"docs":{},"法":{"docs":{},"对":{"docs":{},"象":{"docs":{},"后":{"docs":{},",":{"docs":{},"就":{"docs":{},"可":{"docs":{},"以":{"docs":{},"f":{"docs":{},"i":{"docs":{},"t":{"docs":{},",":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"d":{"docs":{},"i":{"docs":{},"c":{"docs":{},"t":{"docs":{},"大":{"docs":{},"法":{"docs":{},"了":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"会":{"docs":{},"发":{"docs":{},"现":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"每":{"docs":{},"次":{"docs":{},"取":{"docs":{},"概":{"docs":{},"率":{"docs":{},"最":{"docs":{},"高":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},"作":{"docs":{},"为":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},",":{"docs":{},"那":{"docs":{},"不":{"docs":{},"就":{"docs":{},"成":{"docs":{},"分":{"docs":{},"类":{"docs":{},"了":{"docs":{},"么":{"docs":{},"。":{"docs":{},"其":{"docs":{},"实":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"聚":{"docs":{},"类":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":10}}}}}}}},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"度":{"docs":{},"量":{"docs":{},"大":{"docs":{},"致":{"docs":{},"分":{"docs":{},"为":{"docs":{},"两":{"docs":{},"类":{"docs":{},":":{"docs":{},"一":{"docs":{},"类":{"docs":{},"是":{"docs":{},"将":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"结":{"docs":{},"果":{"docs":{},"与":{"docs":{},"某":{"docs":{},"个":{"docs":{},"参":{"docs":{},"考":{"docs":{},"模":{"docs":{},"型":{"docs":{},"作":{"docs":{},"为":{"docs":{},"参":{"docs":{},"照":{"docs":{},"进":{"docs":{},"行":{"docs":{},"比":{"docs":{},"较":{"docs":{},",":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"所":{"docs":{},"谓":{"docs":{},"的":{"docs":{},"外":{"docs":{},"部":{"docs":{},"指":{"docs":{},"标":{"docs":{},";":{"docs":{},"另":{"docs":{},"一":{"docs":{},"类":{"docs":{},"是":{"docs":{},"则":{"docs":{},"是":{"docs":{},"直":{"docs":{},"接":{"docs":{},"度":{"docs":{},"量":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"而":{"docs":{},"不":{"docs":{},"使":{"docs":{},"用":{"docs":{},"参":{"docs":{},"考":{"docs":{},"模":{"docs":{},"型":{"docs":{},"进":{"docs":{},"行":{"docs":{},"比":{"docs":{},"较":{"docs":{},",":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"内":{"docs":{},"部":{"docs":{},"指":{"docs":{},"标":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"簇":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}},"至":{"docs":{},"于":{"docs":{},"这":{"docs":{},"样":{"docs":{},"一":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"(":{"docs":{},"模":{"docs":{},"型":{"docs":{},")":{"docs":{},"里":{"docs":{},"面":{"docs":{},"长":{"docs":{},"什":{"docs":{},"么":{"docs":{},"样":{"docs":{},"子":{"docs":{},",":{"docs":{},"这":{"docs":{},"就":{"docs":{},"与":{"docs":{},"具":{"docs":{},"体":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"有":{"docs":{},"关":{"docs":{},"了":{"docs":{},"。":{"docs":{},"对":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"感":{"docs":{},"兴":{"docs":{},"趣":{"docs":{},"可":{"docs":{},"以":{"docs":{},"阅":{"docs":{},"读":{"docs":{},"常":{"docs":{},"见":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"章":{"docs":{},"节":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"色":{"docs":{},"泽":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"的":{"docs":{},"所":{"docs":{},"有":{"docs":{},"行":{"docs":{},"称":{"docs":{},"为":{"docs":{},"样":{"docs":{},"本":{"docs":{},"。":{"docs":{},"由":{"docs":{},"于":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"挑":{"docs":{},"瓜":{"docs":{},"好":{"docs":{},"手":{"docs":{},"需":{"docs":{},"要":{"docs":{},"的":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"信":{"docs":{},"息":{"docs":{},"是":{"docs":{},"色":{"docs":{},"泽":{"docs":{},"、":{"docs":{},"纹":{"docs":{},"理":{"docs":{},"和":{"docs":{},"声":{"docs":{},"音":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"此":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"前":{"3":{"docs":{},"列":{"docs":{},"称":{"docs":{},"为":{"docs":{},"特":{"docs":{},"征":{"docs":{},"。":{"docs":{},"挑":{"docs":{},"瓜":{"docs":{},"好":{"docs":{},"手":{"docs":{},"给":{"docs":{},"出":{"docs":{},"的":{"docs":{},"结":{"docs":{},"果":{"docs":{},"是":{"docs":{},"甜":{"docs":{},"或":{"docs":{},"不":{"docs":{},"甜":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"最":{"docs":{},"后":{"1":{"docs":{},"列":{"docs":{},"称":{"docs":{},"为":{"docs":{},"标":{"docs":{},"签":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},",":{"docs":{},"样":{"docs":{},"本":{"docs":{},",":{"docs":{},"特":{"docs":{},"征":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}},"这":{"docs":{},"个":{"docs":{},"定":{"docs":{},"义":{"docs":{},"除":{"docs":{},"了":{"docs":{},"非":{"docs":{},"常":{"docs":{},"押":{"docs":{},"韵":{"docs":{},"之":{"docs":{},"外":{"docs":{},",":{"docs":{},"还":{"docs":{},"体":{"docs":{},"现":{"docs":{},"了":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"的":{"docs":{},"几":{"docs":{},"个":{"docs":{},"关":{"docs":{},"键":{"docs":{},"点":{"docs":{},",":{"docs":{},"即":{"docs":{},":":{"docs":{},"\"":{"docs":{},"t":{"docs":{},"a":{"docs":{},"s":{"docs":{},"k":{"docs":{},"\"":{"docs":{},",":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"式":{"docs":{},"子":{"docs":{},"表":{"docs":{},"达":{"docs":{},"的":{"docs":{},"是":{"docs":{},",":{"docs":{},"当":{"docs":{},"我":{"docs":{},"知":{"docs":{},"道":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}},"性":{"docs":{},"质":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"理":{"docs":{},"解":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"举":{"docs":{},"个":{"docs":{},"栗":{"docs":{},"子":{"docs":{},"。":{"docs":{},"假":{"docs":{},"如":{"docs":{},"我":{"docs":{},"是":{"docs":{},"个":{"docs":{},"想":{"docs":{},"要":{"docs":{},"成":{"docs":{},"为":{"docs":{},"英":{"docs":{},"雄":{"docs":{},"联":{"docs":{},"盟":{"docs":{},"郊":{"docs":{},"区":{"docs":{},"王":{"docs":{},"者":{"docs":{},"的":{"docs":{},"死":{"docs":{},"肥":{"docs":{},"宅":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"要":{"docs":{},"成":{"docs":{},"为":{"docs":{},"郊":{"docs":{},"区":{"docs":{},"王":{"docs":{},"者":{"docs":{},"可":{"docs":{},"能":{"docs":{},"有":{"docs":{},"这":{"docs":{},"么":{"docs":{},"几":{"docs":{},"个":{"docs":{},"因":{"docs":{},"素":{"docs":{},",":{"docs":{},"一":{"docs":{},"个":{"docs":{},"是":{"docs":{},"英":{"docs":{},"雄":{"docs":{},"池":{"docs":{},"的":{"docs":{},"深":{"docs":{},"浅":{"docs":{},",":{"docs":{},"一":{"docs":{},"个":{"docs":{},"是":{"docs":{},"大":{"docs":{},"局":{"docs":{},"观":{"docs":{},",":{"docs":{},"还":{"docs":{},"有":{"docs":{},"一":{"docs":{},"个":{"docs":{},"是":{"docs":{},"骚":{"docs":{},"操":{"docs":{},"作":{"docs":{},"。":{"docs":{},"他":{"docs":{},"们":{"docs":{},"对":{"docs":{},"我":{"docs":{},"成":{"docs":{},"为":{"docs":{},"王":{"docs":{},"者":{"docs":{},"来":{"docs":{},"说":{"docs":{},"都":{"docs":{},"有":{"docs":{},"一":{"docs":{},"定":{"docs":{},"的":{"docs":{},"权":{"docs":{},"重":{"docs":{},"。":{"docs":{},"如":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},",":{"docs":{},"每":{"docs":{},"一":{"docs":{},"个":{"docs":{},"因":{"docs":{},"素":{"docs":{},"的":{"docs":{},"箭":{"docs":{},"头":{"docs":{},"都":{"docs":{},"有":{"docs":{},"方":{"docs":{},"向":{"docs":{},"(":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"因":{"docs":{},"素":{"docs":{},"对":{"docs":{},"于":{"docs":{},"我":{"docs":{},"成":{"docs":{},"为":{"docs":{},"王":{"docs":{},"者":{"docs":{},"的":{"docs":{},"偏":{"docs":{},"导":{"docs":{},"的":{"docs":{},"方":{"docs":{},"向":{"docs":{},")":{"docs":{},"和":{"docs":{},"长":{"docs":{},"度":{"docs":{},"(":{"docs":{},"偏":{"docs":{},"导":{"docs":{},"的":{"docs":{},"值":{"docs":{},"的":{"docs":{},"大":{"docs":{},"小":{"docs":{},")":{"docs":{},"。":{"docs":{},"然":{"docs":{},"后":{"docs":{},"在":{"docs":{},"这":{"docs":{},"些":{"docs":{},"因":{"docs":{},"素":{"docs":{},"的":{"docs":{},"共":{"docs":{},"同":{"docs":{},"作":{"docs":{},"用":{"docs":{},"下":{"docs":{},",":{"docs":{},"我":{"docs":{},"最":{"docs":{},"终":{"docs":{},"会":{"docs":{},"朝":{"docs":{},"着":{"docs":{},"一":{"docs":{},"个":{"docs":{},"方":{"docs":{},"向":{"docs":{},"来":{"docs":{},"训":{"docs":{},"练":{"docs":{},"(":{"docs":{},"好":{"docs":{},"比":{"docs":{},"物":{"docs":{},"理":{"docs":{},"中":{"docs":{},"分":{"docs":{},"力":{"docs":{},"和":{"docs":{},"合":{"docs":{},"力":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{},")":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"时":{"docs":{},"候":{"docs":{},"我":{"docs":{},"就":{"docs":{},"能":{"docs":{},"以":{"docs":{},"最":{"docs":{},"快":{"docs":{},"的":{"docs":{},"速":{"docs":{},"度":{"docs":{},"向":{"docs":{},"郊":{"docs":{},"区":{"docs":{},"王":{"docs":{},"者":{"docs":{},"更":{"docs":{},"进":{"docs":{},"一":{"docs":{},"步":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"欧":{"docs":{},"氏":{"docs":{},"距":{"docs":{},"离":{"docs":{},"加":{"docs":{},"和":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"用":{"docs":{},"来":{"docs":{},"量":{"docs":{},"化":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"和":{"docs":{},"真":{"docs":{},"实":{"docs":{},"结":{"docs":{},"果":{"docs":{},"的":{"docs":{},"误":{"docs":{},"差":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"。":{"docs":{},"在":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"中":{"docs":{},"称":{"docs":{},"它":{"docs":{},"为":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"(":{"docs":{},"说":{"docs":{},"白":{"docs":{},"了":{"docs":{},"就":{"docs":{},"是":{"docs":{},"计":{"docs":{},"算":{"docs":{},"误":{"docs":{},"差":{"docs":{},"的":{"docs":{},"函":{"docs":{},"数":{"docs":{},")":{"docs":{},"。":{"docs":{},"那":{"docs":{},"有":{"docs":{},"了":{"docs":{},"这":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"就":{"docs":{},"相":{"docs":{},"当":{"docs":{},"于":{"docs":{},"有":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"评":{"docs":{},"判":{"docs":{},"标":{"docs":{},"准":{"docs":{},",":{"docs":{},"当":{"docs":{},"这":{"docs":{},"个":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"值":{"docs":{},"越":{"docs":{},"小":{"docs":{},",":{"docs":{},"就":{"docs":{},"越":{"docs":{},"说":{"docs":{},"明":{"docs":{},"我":{"docs":{},"们":{"docs":{},"找":{"docs":{},"到":{"docs":{},"的":{"docs":{},"这":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},"越":{"docs":{},"能":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"房":{"docs":{},"价":{"docs":{},"数":{"docs":{},"据":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"说":{"docs":{},"啊":{"docs":{},",":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"就":{"docs":{},"是":{"docs":{},"通":{"docs":{},"过":{"docs":{},"这":{"docs":{},"个":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"做":{"docs":{},"为":{"docs":{},"评":{"docs":{},"判":{"docs":{},"标":{"docs":{},"准":{"docs":{},"来":{"docs":{},"找":{"docs":{},"出":{"docs":{},"一":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"时":{"docs":{},"候":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},"值":{"docs":{},"表":{"docs":{},"示":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},"的":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"中":{"docs":{},"如":{"docs":{},"果":{"docs":{},"有":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}},"特":{"docs":{},"征":{"docs":{},"应":{"docs":{},"该":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"能":{"docs":{},"够":{"docs":{},"很":{"docs":{},"好":{"docs":{},"的":{"docs":{},"区":{"docs":{},"分":{"docs":{},"一":{"docs":{},"个":{"docs":{},"人":{"docs":{},"是":{"docs":{},"否":{"docs":{},"生":{"docs":{},"还":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"。":{"docs":{},"而":{"docs":{},"且":{"docs":{},"对":{"docs":{},"于":{"docs":{},"生":{"docs":{},"还":{"docs":{},"来":{"docs":{},"说":{"docs":{},",":{"docs":{},"好":{"docs":{},"像":{"docs":{},"是":{"docs":{},"女":{"docs":{},"士":{"docs":{},"优":{"docs":{},"先":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"样":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}},"看":{"docs":{},"上":{"docs":{},"去":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"懵":{"docs":{},",":{"docs":{},"不":{"docs":{},"如":{"docs":{},"用":{"docs":{},"刚":{"docs":{},"刚":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"来":{"docs":{},"构":{"docs":{},"建":{"docs":{},"一":{"docs":{},"颗":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"改":{"docs":{},"动":{"docs":{},"通":{"docs":{},"常":{"docs":{},"会":{"docs":{},"使":{"docs":{},"得":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"具":{"docs":{},"有":{"docs":{},"更":{"docs":{},"加":{"docs":{},"强":{"docs":{},"的":{"docs":{},"泛":{"docs":{},"化":{"docs":{},"性":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"每":{"docs":{},"一":{"docs":{},"棵":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"是":{"docs":{},"随":{"docs":{},"机":{"docs":{},"的":{"docs":{},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"中":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"也":{"docs":{},"是":{"docs":{},"随":{"docs":{},"机":{"docs":{},"抽":{"docs":{},"取":{"docs":{},"的":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"每":{"docs":{},"一":{"docs":{},"棵":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"差":{"docs":{},"异":{"docs":{},"比":{"docs":{},"较":{"docs":{},"大":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"就":{"docs":{},"很":{"docs":{},"容":{"docs":{},"易":{"docs":{},"能":{"docs":{},"够":{"docs":{},"解":{"docs":{},"决":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"容":{"docs":{},"易":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"的":{"docs":{},"问":{"docs":{},"题":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"前":{"docs":{},"缀":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"根":{"docs":{},"据":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"的":{"docs":{},"前":{"docs":{},"缀":{"docs":{},"来":{"docs":{},"填":{"docs":{},"充":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"的":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"能":{"docs":{},"够":{"docs":{},"提":{"docs":{},"取":{"docs":{},"出":{"docs":{},"诸":{"docs":{},"如":{"docs":{},":":{"docs":{},"c":{"docs":{},"a":{"docs":{},"p":{"docs":{},"t":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}},"时":{"docs":{},"候":{"docs":{},"呢":{"docs":{},",":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"里":{"docs":{},"没":{"docs":{},"有":{"docs":{},"其":{"docs":{},"他":{"docs":{},"特":{"docs":{},"征":{"docs":{},"可":{"docs":{},"以":{"docs":{},"选":{"docs":{},"择":{"docs":{},"了":{"docs":{},"(":{"docs":{},"总":{"docs":{},"共":{"docs":{},"就":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"已":{"docs":{},"经":{"docs":{},"是":{"docs":{},"根":{"docs":{},"节":{"docs":{},"点":{"docs":{},"了":{"docs":{},")":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"就":{"docs":{},"看":{"docs":{},"我":{"docs":{},"性":{"docs":{},"别":{"docs":{},"是":{"docs":{},"男":{"docs":{},"或":{"docs":{},"女":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"那":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"最":{"docs":{},"有":{"docs":{},"可":{"docs":{},"能":{"docs":{},"出":{"docs":{},"现":{"docs":{},"了":{"docs":{},"。":{"docs":{},"此":{"docs":{},"时":{"docs":{},"性":{"docs":{},"别":{"docs":{},"为":{"docs":{},"男":{"docs":{},"的":{"docs":{},"用":{"docs":{},"户":{"docs":{},"中":{"docs":{},"有":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"也":{"docs":{},"说":{"docs":{},"明":{"docs":{},"了":{"docs":{},"只":{"docs":{},"有":{"docs":{},"当":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"都":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},"时":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}},"三":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"中":{"docs":{},"有":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"值":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"需":{"docs":{},"要":{"docs":{},"处":{"docs":{},"理":{"docs":{},"这":{"docs":{},"些":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"值":{"docs":{},"。":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"处":{"docs":{},"理":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"先":{"docs":{},"不":{"docs":{},"着":{"docs":{},"急":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"先":{"docs":{},"看":{"docs":{},"看":{"docs":{},"数":{"docs":{},"据":{"docs":{},"中":{"docs":{},"有":{"docs":{},"哪":{"docs":{},"些":{"docs":{},"信":{"docs":{},"息":{"docs":{},"可":{"docs":{},"以":{"docs":{},"挖":{"docs":{},"掘":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"与":{"docs":{},"女":{"docs":{},"性":{"docs":{},"是":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"还":{"docs":{},"是":{"docs":{},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"没":{"docs":{},"啥":{"docs":{},"关":{"docs":{},"系":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"四":{"docs":{},"个":{"docs":{},"类":{"docs":{},"别":{"docs":{},",":{"docs":{},"并":{"docs":{},"统":{"docs":{},"计":{"docs":{},"这":{"docs":{},"四":{"docs":{},"个":{"docs":{},"类":{"docs":{},"别":{"docs":{},"的":{"docs":{},"平":{"docs":{},"均":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}},"那":{"docs":{},"么":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}},"是":{"docs":{},"什":{"docs":{},"么":{"docs":{},"原":{"docs":{},"因":{"docs":{},"导":{"docs":{},"致":{"docs":{},"了":{"docs":{},"欠":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"和":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"呢":{"docs":{},"?":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"从":{"docs":{},"何":{"docs":{},"而":{"docs":{},"来":{"docs":{},",":{"docs":{},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"从":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"抽":{"docs":{},"取":{"docs":{},"一":{"docs":{},"小":{"docs":{},"部":{"docs":{},"分":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"作":{"docs":{},"为":{"docs":{},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},",":{"docs":{},"用":{"docs":{},"来":{"docs":{},"验":{"docs":{},"证":{"docs":{},"我":{"docs":{},"们":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"。":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"中":{"docs":{},"样":{"docs":{},"本":{"docs":{},"所":{"docs":{},"属":{"docs":{},"标":{"docs":{},"签":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"计":{"docs":{},"算":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"和":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"有":{"docs":{},"关":{"docs":{},"系":{"docs":{},",":{"docs":{},"学":{"docs":{},"习":{"docs":{},"了":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"话":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"知":{"docs":{},"道":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"就":{"docs":{},"是":{"docs":{},"训":{"docs":{},"练":{"docs":{},"出":{"docs":{},"一":{"docs":{},"组":{"docs":{},"参":{"docs":{},"数":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"问":{"docs":{},"题":{"docs":{},"来":{"docs":{},"了":{"docs":{},",":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"算":{"docs":{},"法":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"解":{"docs":{},"决":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"很":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"是":{"docs":{},"将":{"docs":{},"样":{"docs":{},"本":{"docs":{},"特":{"docs":{},"征":{"docs":{},"和":{"docs":{},"样":{"docs":{},"本":{"docs":{},"所":{"docs":{},"属":{"docs":{},"类":{"docs":{},"别":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"联":{"docs":{},"系":{"docs":{},"在":{"docs":{},"一":{"docs":{},"起":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"现":{"docs":{},"在":{"docs":{},"已":{"docs":{},"经":{"docs":{},"训":{"docs":{},"练":{"docs":{},"好":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"为":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"输":{"docs":{},"出":{"docs":{},"是":{"docs":{},"样":{"docs":{},"本":{"docs":{},"x":{"docs":{},"x":{"docs":{},"x":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"是":{"1":{"1":{"1":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},",":{"docs":{},"则":{"docs":{},"该":{"docs":{},"模":{"docs":{},"型":{"docs":{},"可":{"docs":{},"以":{"docs":{},"表":{"docs":{},"示":{"docs":{},"成":{"docs":{},"p":{"docs":{},"^":{"docs":{},"=":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"准":{"docs":{},"确":{"docs":{},"对":{"docs":{},"越":{"docs":{},"高":{"docs":{},"就":{"docs":{},"能":{"docs":{},"说":{"docs":{},"明":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"性":{"docs":{},"能":{"docs":{},"越":{"docs":{},"好":{"docs":{},"吗":{"docs":{},"?":{"docs":{},"非":{"docs":{},"也":{"docs":{},"!":{"docs":{},"举":{"docs":{},"个":{"docs":{},"例":{"docs":{},"子":{"docs":{},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"我":{"docs":{},"开":{"docs":{},"发":{"docs":{},"了":{"docs":{},"一":{"docs":{},"套":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},",":{"docs":{},"只":{"docs":{},"要":{"docs":{},"输":{"docs":{},"入":{"docs":{},"你":{"docs":{},"的":{"docs":{},"一":{"docs":{},"些":{"docs":{},"基":{"docs":{},"本":{"docs":{},"健":{"docs":{},"康":{"docs":{},"信":{"docs":{},"息":{"docs":{},",":{"docs":{},"就":{"docs":{},"能":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"你":{"docs":{},"现":{"docs":{},"在":{"docs":{},"是":{"docs":{},"否":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"分":{"docs":{},"类":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"度":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"误":{"docs":{},"差":{"docs":{},"单":{"docs":{},"位":{"docs":{},"就":{"docs":{},"是":{"docs":{},"万":{"docs":{},"元":{"docs":{},"。":{"docs":{},"数":{"docs":{},"子":{"docs":{},"可":{"docs":{},"能":{"docs":{},"是":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}},"满":{"docs":{},"足":{"docs":{},"a":{"docs":{},"a":{"docs":{},"a":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"为":{"docs":{},"(":{"1":{"docs":{},",":{"2":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}},"c":{"docs":{},"c":{"docs":{},"c":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"为":{"docs":{},"(":{"1":{"docs":{},",":{"3":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}},"表":{"docs":{},"示":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"之":{"docs":{},"间":{"docs":{},"完":{"docs":{},"全":{"docs":{},"正":{"docs":{},"相":{"docs":{},"关":{"docs":{},",":{"docs":{},"若":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}},"为":{"docs":{},"什":{"docs":{},"么":{"docs":{},"采":{"docs":{},"样":{"docs":{},"而":{"docs":{},"不":{"docs":{},"是":{"docs":{},"直":{"docs":{},"接":{"docs":{},"选":{"docs":{},"取":{"docs":{},"概":{"docs":{},"率":{"docs":{},"最":{"docs":{},"大":{"docs":{},"的":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"因":{"docs":{},"为":{"docs":{},"这":{"docs":{},"样":{"docs":{},"很":{"docs":{},"有":{"docs":{},"灵":{"docs":{},"性":{"docs":{},"。":{"docs":{},"可":{"docs":{},"以":{"docs":{},"想":{"docs":{},"象":{"docs":{},"一":{"docs":{},"下":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"和":{"docs":{},"别":{"docs":{},"人":{"docs":{},"下":{"docs":{},"棋":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"一":{"docs":{},"直":{"docs":{},"按":{"docs":{},"照":{"docs":{},"套":{"docs":{},"路":{"docs":{},"来":{"docs":{},"下":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"对":{"docs":{},"手":{"docs":{},"很":{"docs":{},"可":{"docs":{},"能":{"docs":{},"能":{"docs":{},"够":{"docs":{},"猜":{"docs":{},"到":{"docs":{},"我":{"docs":{},"们":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"棋":{"docs":{},"会":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"走":{"docs":{},",":{"docs":{},"从":{"docs":{},"而":{"docs":{},"占":{"docs":{},"据":{"docs":{},"主":{"docs":{},"动":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"我":{"docs":{},"们":{"docs":{},"时":{"docs":{},"不":{"docs":{},"时":{"docs":{},"地":{"docs":{},"不":{"docs":{},"按":{"docs":{},"套":{"docs":{},"路":{"docs":{},"出":{"docs":{},"牌":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"这":{"docs":{},"种":{"docs":{},"不":{"docs":{},"按":{"docs":{},"套":{"docs":{},"路":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},"不":{"docs":{},"会":{"docs":{},"降":{"docs":{},"低":{"docs":{},"太":{"docs":{},"多":{"docs":{},"对":{"docs":{},"于":{"docs":{},"我":{"docs":{},"们":{"docs":{},"能":{"docs":{},"够":{"docs":{},"赢":{"docs":{},"下":{"docs":{},"这":{"docs":{},"一":{"docs":{},"局":{"docs":{},"棋":{"docs":{},"的":{"docs":{},"几":{"docs":{},"率":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"对":{"docs":{},"手":{"docs":{},"很":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"不":{"docs":{},"知":{"docs":{},"所":{"docs":{},"措":{"docs":{},",":{"docs":{},"主":{"docs":{},"动":{"docs":{},"权":{"docs":{},"就":{"docs":{},"掌":{"docs":{},"握":{"docs":{},"在":{"docs":{},"我":{"docs":{},"们":{"docs":{},"手":{"docs":{},"里":{"docs":{},"。":{"docs":{},"就":{"docs":{},"像":{"docs":{},"《":{"docs":{},"天":{"docs":{},"龙":{"docs":{},"八":{"docs":{},"部":{"docs":{},"》":{"docs":{},"中":{"docs":{},"虚":{"docs":{},"竹":{"docs":{},"大":{"docs":{},"破":{"docs":{},"珍":{"docs":{},"珑":{"docs":{},"棋":{"docs":{},"局":{"docs":{},"时":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{},"可":{"docs":{},"能":{"docs":{},"有":{"docs":{},"灵":{"docs":{},"性":{"docs":{},"一":{"docs":{},"点":{"docs":{},",":{"docs":{},"会":{"docs":{},"有":{"docs":{},"意":{"docs":{},"想":{"docs":{},"不":{"docs":{},"到":{"docs":{},"的":{"docs":{},"效":{"docs":{},"果":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"会":{"docs":{},"有":{"docs":{},"一":{"docs":{},"个":{"docs":{},"灵":{"docs":{},"魂":{"docs":{},"拷":{"docs":{},"问":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"来":{"docs":{},"鉴":{"docs":{},"定":{"docs":{},"我":{"docs":{},"的":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"是":{"docs":{},"好":{"docs":{},"还":{"docs":{},"是":{"docs":{},"坏":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"很":{"docs":{},"显":{"docs":{},"然":{"docs":{},",":{"docs":{},"当":{"docs":{},"然":{"docs":{},"是":{"docs":{},"赢":{"docs":{},"的":{"docs":{},"越":{"docs":{},"多":{"docs":{},"越":{"docs":{},"好":{"docs":{},"了":{"docs":{},"!":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"假":{"docs":{},"设":{"docs":{},",":{"docs":{},"让":{"docs":{},"计":{"docs":{},"算":{"docs":{},"机":{"docs":{},"玩":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"怎":{"docs":{},"样":{"docs":{},"评":{"docs":{},"价":{"docs":{},"这":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}},"如":{"docs":{},"果":{"docs":{},"让":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}},"我":{"docs":{},"想":{"docs":{},"知":{"docs":{},"道":{"docs":{},"在":{"docs":{},"我":{"docs":{},"事":{"docs":{},"件":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}},"要":{"docs":{},"算":{"docs":{},"性":{"docs":{},"别":{"docs":{},"和":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"这":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"首":{"docs":{},"先":{"docs":{},"要":{"docs":{},"先":{"docs":{},"算":{"docs":{},"总":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"和":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"。":{"docs":{},"(":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"既":{"docs":{},"然":{"docs":{},"是":{"docs":{},"找":{"docs":{},"直":{"docs":{},"线":{"docs":{},",":{"docs":{},"那":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"是":{"docs":{},"要":{"docs":{},"有":{"docs":{},"一":{"docs":{},"个":{"docs":{},"评":{"docs":{},"判":{"docs":{},"的":{"docs":{},"标":{"docs":{},"准":{"docs":{},",":{"docs":{},"来":{"docs":{},"评":{"docs":{},"判":{"docs":{},"哪":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},"才":{"docs":{},"是":{"docs":{},"最":{"docs":{},"好":{"docs":{},"的":{"docs":{},"。":{"docs":{},"o":{"docs":{},"k":{"docs":{},",":{"docs":{},"道":{"docs":{},"理":{"docs":{},"我":{"docs":{},"们":{"docs":{},"都":{"docs":{},"懂":{"docs":{},",":{"docs":{},"那":{"docs":{},"咋":{"docs":{},"评":{"docs":{},"判":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"只":{"docs":{},"要":{"docs":{},"算":{"docs":{},"一":{"docs":{},"下":{"docs":{},"实":{"docs":{},"际":{"docs":{},"房":{"docs":{},"价":{"docs":{},"和":{"docs":{},"我":{"docs":{},"找":{"docs":{},"出":{"docs":{},"的":{"docs":{},"直":{"docs":{},"线":{"docs":{},"根":{"docs":{},"据":{"docs":{},"房":{"docs":{},"子":{"docs":{},"大":{"docs":{},"小":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"房":{"docs":{},"价":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"差":{"docs":{},"距":{"docs":{},"就":{"docs":{},"行":{"docs":{},"了":{"docs":{},"。":{"docs":{},"说":{"docs":{},"白":{"docs":{},"了":{"docs":{},"就":{"docs":{},"是":{"docs":{},"算":{"docs":{},"两":{"docs":{},"点":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"当":{"docs":{},"我":{"docs":{},"们":{"docs":{},"把":{"docs":{},"所":{"docs":{},"有":{"docs":{},"实":{"docs":{},"际":{"docs":{},"房":{"docs":{},"价":{"docs":{},"和":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"房":{"docs":{},"价":{"docs":{},"的":{"docs":{},"差":{"docs":{},"距":{"docs":{},"(":{"docs":{},"距":{"docs":{},"离":{"docs":{},")":{"docs":{},"算":{"docs":{},"出":{"docs":{},"来":{"docs":{},"然":{"docs":{},"后":{"docs":{},"做":{"docs":{},"个":{"docs":{},"加":{"docs":{},"和":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"就":{"docs":{},"能":{"docs":{},"量":{"docs":{},"化":{"docs":{},"出":{"docs":{},"现":{"docs":{},"在":{"docs":{},"我":{"docs":{},"们":{"docs":{},"预":{"docs":{},"测":{"docs":{},"的":{"docs":{},"房":{"docs":{},"价":{"docs":{},"和":{"docs":{},"实":{"docs":{},"际":{"docs":{},"房":{"docs":{},"价":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"误":{"docs":{},"差":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"中":{"docs":{},"我":{"docs":{},"画":{"docs":{},"了":{"docs":{},"很":{"docs":{},"多":{"docs":{},"条":{"docs":{},"小":{"docs":{},"数":{"docs":{},"线":{"docs":{},",":{"docs":{},"每":{"docs":{},"一":{"docs":{},"条":{"docs":{},"小":{"docs":{},"数":{"docs":{},"线":{"docs":{},"就":{"docs":{},"是":{"docs":{},"实":{"docs":{},"际":{"docs":{},"房":{"docs":{},"价":{"docs":{},"和":{"docs":{},"预":{"docs":{},"测":{"docs":{},"房":{"docs":{},"价":{"docs":{},"的":{"docs":{},"差":{"docs":{},"距":{"docs":{},"(":{"docs":{},"距":{"docs":{},"离":{"docs":{},")":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"算":{"docs":{},"出":{"docs":{},"来":{"docs":{},"之":{"docs":{},"后":{"docs":{},"有":{"docs":{},"什":{"docs":{},"么":{"docs":{},"意":{"docs":{},"义":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"回":{"docs":{},"到":{"docs":{},"读":{"docs":{},"心":{"docs":{},"术":{"docs":{},"的":{"docs":{},"问":{"docs":{},"题":{"docs":{},",":{"docs":{},"为":{"docs":{},"了":{"docs":{},"我":{"docs":{},"能":{"docs":{},"更":{"docs":{},"加":{"docs":{},"准":{"docs":{},"确":{"docs":{},"的":{"docs":{},"猜":{"docs":{},"出":{"docs":{},"你":{"docs":{},"心":{"docs":{},"中":{"docs":{},"所":{"docs":{},"想":{"docs":{},",":{"docs":{},"我":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"是":{"docs":{},"问":{"docs":{},"的":{"docs":{},"问":{"docs":{},"题":{"docs":{},"越":{"docs":{},"好":{"docs":{},"就":{"docs":{},"能":{"docs":{},"猜":{"docs":{},"得":{"docs":{},"越":{"docs":{},"准":{"docs":{},"!":{"docs":{},"换":{"docs":{},"句":{"docs":{},"话":{"docs":{},"来":{"docs":{},"说":{"docs":{},"我":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"是":{"docs":{},"要":{"docs":{},"想":{"docs":{},"出":{"docs":{},"一":{"docs":{},"个":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"最":{"docs":{},"大":{"docs":{},"的":{"docs":{},"问":{"docs":{},"题":{"docs":{},"来":{"docs":{},"问":{"docs":{},"你":{"docs":{},",":{"docs":{},"对":{"docs":{},"不":{"docs":{},"对":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"i":{"docs":{},"d":{"3":{"docs":{},"算":{"docs":{},"法":{"docs":{},"也":{"docs":{},"是":{"docs":{},"这":{"docs":{},"么":{"docs":{},"想":{"docs":{},"的":{"docs":{},"。":{"docs":{},"i":{"docs":{},"d":{"3":{"docs":{},"算":{"docs":{},"法":{"docs":{},"的":{"docs":{},"思":{"docs":{},"想":{"docs":{},"是":{"docs":{},"从":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"青":{"docs":{},"绿":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.019417475728155338}}}},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"与":{"docs":{},"交":{"docs":{},"叉":{"docs":{},"验":{"docs":{},"证":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}},",":{"0":{"docs":{},".":{"6":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}},"docs":{}}},"1":{"6":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"docs":{}},"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115},"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0273972602739726}},"而":{"docs":{},"验":{"docs":{},"证":{"docs":{},"集":{"docs":{},"中":{"docs":{},"没":{"docs":{},"多":{"docs":{},"少":{"docs":{},"个":{"docs":{},"数":{"docs":{},"字":{"docs":{},"为":{"docs":{"machine_learning.html":{"ref":"machine_learning.html","tf":0.009708737864077669}}}}}}}}}}}}},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"中":{"docs":{},"没":{"docs":{},"多":{"docs":{},"少":{"docs":{},"个":{"docs":{},"数":{"docs":{},"字":{"docs":{},"为":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}},"且":{"docs":{},"虽":{"docs":{},"然":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"人":{"docs":{},"数":{"docs":{},"是":{"docs":{},"最":{"docs":{},"多":{"docs":{},"的":{"docs":{},",":{"docs":{},"但":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"确":{"docs":{},"是":{"docs":{},"最":{"docs":{},"低":{"docs":{},"的":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"不":{"docs":{},"难":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"金":{"docs":{},"钱":{"docs":{},"地":{"docs":{},"位":{"docs":{},"还":{"docs":{},"是":{"docs":{},"很":{"docs":{},"重":{"docs":{},"要":{"docs":{},"的":{"docs":{},",":{"docs":{},"也":{"docs":{},"许":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"周":{"docs":{},"围":{"docs":{},"有":{"docs":{},"比":{"docs":{},"较":{"docs":{},"多":{"docs":{},"的":{"docs":{},"救":{"docs":{},"生":{"docs":{},"设":{"docs":{},"备":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"男":{"docs":{},"人":{"docs":{},"的":{"docs":{},"存":{"docs":{},"活":{"docs":{},"率":{"docs":{},"约":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"的":{"docs":{},"总":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}},"那":{"docs":{},"么":{"docs":{},"可":{"docs":{},"以":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"将":{"docs":{},"属":{"docs":{},"于":{"docs":{},"宅":{"docs":{},"男":{"docs":{},"的":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}},"投":{"docs":{},"票":{"docs":{},"的":{"docs":{},"错":{"docs":{},"误":{"docs":{},"率":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.026490066225165563}}}}}}}}},"其":{"docs":{},"实":{"docs":{},"我":{"docs":{},"这":{"docs":{},"个":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},"只":{"docs":{},"要":{"docs":{},"一":{"docs":{},"直":{"docs":{},"输":{"docs":{},"出":{"docs":{},"您":{"docs":{},"没":{"docs":{},"有":{"docs":{},"患":{"docs":{},"癌":{"docs":{},"症":{"docs":{},",":{"docs":{},"准":{"docs":{},"确":{"docs":{},"度":{"docs":{},"也":{"docs":{},"可":{"docs":{},"能":{"docs":{},"能":{"docs":{},"够":{"docs":{},"达":{"docs":{},"到":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}},"就":{"docs":{},"认":{"docs":{},"为":{"docs":{},"这":{"docs":{},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}},"但":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"来":{"docs":{},"该":{"docs":{},"样":{"docs":{},"本":{"docs":{},"是":{"docs":{},"类":{"docs":{},"别":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.014218009478672985}}}}}}}}}}}}}}}},"使":{"docs":{},"得":{"docs":{},"损":{"docs":{},"失":{"docs":{},"值":{"docs":{},"最":{"docs":{},"小":{"docs":{},"。":{"docs":{},"找":{"docs":{},"到":{"docs":{},"这":{"docs":{},"组":{"docs":{},"参":{"docs":{},"数":{"docs":{},"后":{"docs":{},"模":{"docs":{},"型":{"docs":{},"就":{"docs":{},"确":{"docs":{},"定":{"docs":{},"下":{"docs":{},"来":{"docs":{},"了":{"docs":{},"。":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"找":{"docs":{},"?":{"docs":{},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},",":{"docs":{},"用":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"不":{"docs":{},"难":{"docs":{},"算":{"docs":{},"出":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"为":{"docs":{},":":{"docs":{},"(":{"docs":{},"y":{"docs":{},"^":{"docs":{},"−":{"docs":{},"y":{"docs":{},")":{"docs":{},"x":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"用":{"docs":{},"示":{"docs":{},"例":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}},"则":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"在":{"docs":{},"预":{"docs":{},"测":{"docs":{},"时":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"成":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}},"最":{"docs":{},"大":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}},"有":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336}}},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{},"样":{"docs":{},"本":{"docs":{},"为":{"docs":{},"类":{"docs":{},"别":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}},"认":{"docs":{},"为":{"docs":{},"这":{"docs":{},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}},"转":{"docs":{},"换":{"docs":{},"后":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"为":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}}}}}},"右":{"docs":{},"边":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"否":{"docs":{},"则":{"docs":{},"就":{"docs":{},"分":{"docs":{},"类":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"圆":{"docs":{},"形":{"docs":{},"代":{"docs":{},"表":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}}}},"它":{"docs":{},"们":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"就":{"docs":{},"需":{"docs":{},"要":{"docs":{},"将":{"docs":{},"预":{"docs":{},"测":{"docs":{},"概":{"docs":{},"率":{"docs":{},"从":{"docs":{},"小":{"docs":{},"到":{"docs":{},"大":{"docs":{},"排":{"docs":{},"序":{"docs":{},",":{"docs":{},"排":{"docs":{},"序":{"docs":{},"后":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}},"最":{"docs":{},"小":{"docs":{},"值":{"docs":{},"是":{"0":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}}}}},"竖":{"docs":{},"线":{"docs":{},"右":{"docs":{},"边":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"成":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}},"系":{"docs":{},"统":{"docs":{},"预":{"docs":{},"测":{"docs":{},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},"也":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}},"编":{"docs":{},"号":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"错":{"docs":{},"误":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"也":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336}}}},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"n":{"docs":{},"e":{"docs":{},"g":{"docs":{},"t":{"docs":{},"i":{"docs":{},"v":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}},"提":{"docs":{},"升":{"docs":{},"了":{"docs":{},"接":{"docs":{},"近":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}},"也":{"docs":{},"不":{"docs":{},"一":{"docs":{},"定":{"docs":{},"会":{"docs":{},"向":{"docs":{},"上":{"docs":{},"挪":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}},"背":{"docs":{},"景":{"docs":{},"是":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}},"常":{"docs":{},"见":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{"algorithm.html":{"ref":"algorithm.html","tf":10}}}}}}}}}},")":{"docs":{},"。":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"与":{"docs":{},"我":{"docs":{},"离":{"docs":{},"得":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}},"+":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.01680672268907563},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}},".":{"docs":{},".":{"docs":{},".":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.025210084033613446},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.014184397163120567}},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.014184397163120567}}}}}},":":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}},":":{"2":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"docs":{}}},"=":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815},"linear_regression.html":{"ref":"linear_regression.html","tf":0.023809523809523808},"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.014218009478672985},"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282},"sklearn.html":{"ref":"sklearn.html","tf":0.08495145631067962},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.1206896551724138},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.11267605633802817},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.11739130434782609}},"=":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"宅":{"docs":{},"男":{"docs":{},"和":{"docs":{},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"的":{"docs":{},"比":{"docs":{},"分":{"docs":{},"是":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}},"从":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"和":{"docs":{},"我":{"docs":{},"们":{"docs":{},"之":{"docs":{},"前":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}},",":{"docs":{},"除":{"docs":{},"了":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"单":{"docs":{},"身":{"docs":{},"女":{"docs":{},"性":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"比":{"docs":{},"非":{"docs":{},"单":{"docs":{},"身":{"docs":{},"女":{"docs":{},"性":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"高":{"docs":{},"外":{"docs":{},",":{"docs":{},"单":{"docs":{},"身":{"docs":{},"并":{"docs":{},"不":{"docs":{},"是":{"docs":{},"什":{"docs":{},"么":{"docs":{},"好":{"docs":{},"事":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"作":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"的":{"docs":{},"一":{"docs":{},"种":{"docs":{},"加":{"docs":{},"权":{"docs":{},"平":{"docs":{},"均":{"docs":{},",":{"docs":{},"它":{"docs":{},"的":{"docs":{},"最":{"docs":{},"大":{"docs":{},"值":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}},"到":{"docs":{},"经":{"docs":{},"过":{"docs":{},"调":{"docs":{},"参":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"提":{"docs":{},"高":{"docs":{},"到":{"docs":{},"了":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}}}}},"实":{"docs":{},"现":{"docs":{},"数":{"docs":{},"据":{"docs":{},"预":{"docs":{},"处":{"docs":{},"理":{"docs":{},"、":{"docs":{},"分":{"docs":{},"类":{"docs":{},"、":{"docs":{},"回":{"docs":{},"归":{"docs":{},"、":{"docs":{},"降":{"docs":{},"维":{"docs":{},"、":{"docs":{},"模":{"docs":{},"型":{"docs":{},"选":{"docs":{},"择":{"docs":{},"等":{"docs":{},"常":{"docs":{},"用":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{},"基":{"docs":{},"本":{"docs":{},"上":{"docs":{},"只":{"docs":{},"需":{"docs":{},"要":{"docs":{},"知":{"docs":{},"道":{"docs":{},"一":{"docs":{},"些":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"宅":{"docs":{},"男":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.06722689075630252}}}},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},",":{"docs":{},"刚":{"docs":{},"刚":{"docs":{},"我":{"docs":{},"们":{"docs":{},"使":{"docs":{},"用":{"docs":{},"k":{"docs":{},"n":{"docs":{},"n":{"docs":{},"算":{"docs":{},"法":{"docs":{},"解":{"docs":{},"决":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},",":{"docs":{},"那":{"docs":{},"k":{"docs":{},"n":{"docs":{},"n":{"docs":{},"算":{"docs":{},"法":{"docs":{},"能":{"docs":{},"解":{"docs":{},"决":{"docs":{},"回":{"docs":{},"归":{"docs":{},"问":{"docs":{},"题":{"docs":{},"吗":{"docs":{},"?":{"docs":{},"当":{"docs":{},"然":{"docs":{},"可":{"docs":{},"以":{"docs":{},"!":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"当":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"连":{"docs":{},"小":{"docs":{},"朋":{"docs":{},"友":{"docs":{},"都":{"docs":{},"能":{"docs":{},"算":{"docs":{},"出":{"docs":{},"来":{"docs":{},"该":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"度":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}},"花":{"docs":{},"费":{"docs":{},"越":{"docs":{},"多":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"越":{"docs":{},"高":{"docs":{},",":{"docs":{},"金":{"docs":{},"钱":{"docs":{},"决":{"docs":{},"定":{"docs":{},"命":{"docs":{},"运":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"多":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},"可":{"docs":{},"以":{"docs":{},"调":{"docs":{},"整":{"docs":{},"的":{"docs":{},"参":{"docs":{},"数":{"docs":{},"(":{"docs":{},"即":{"docs":{},"超":{"docs":{},"参":{"docs":{},"数":{"docs":{},")":{"docs":{},",":{"docs":{},"例":{"docs":{},"如":{"docs":{},"我":{"docs":{},"们":{"docs":{},"用":{"docs":{},"的":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"需":{"docs":{},"要":{"docs":{},"我":{"docs":{},"们":{"docs":{},"指":{"docs":{},"定":{"docs":{},"森":{"docs":{},"林":{"docs":{},"中":{"docs":{},"有":{"docs":{},"多":{"docs":{},"少":{"docs":{},"棵":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},",":{"docs":{},"没":{"docs":{},"棵":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"的":{"docs":{},"最":{"docs":{},"大":{"docs":{},"深":{"docs":{},"度":{"docs":{},"等":{"docs":{},"。":{"docs":{},"这":{"docs":{},"些":{"docs":{},"超":{"docs":{},"参":{"docs":{},"数":{"docs":{},"都":{"docs":{},"或":{"docs":{},"多":{"docs":{},"或":{"docs":{},"少":{"docs":{},"的":{"docs":{},"会":{"docs":{},"影":{"docs":{},"响":{"docs":{},"这":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"才":{"docs":{},"能":{"docs":{},"找":{"docs":{},"到":{"docs":{},"合":{"docs":{},"适":{"docs":{},"的":{"docs":{},"超":{"docs":{},"参":{"docs":{},"数":{"docs":{},",":{"docs":{},"来":{"docs":{},"让":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"达":{"docs":{},"到":{"docs":{},"比":{"docs":{},"较":{"docs":{},"好":{"docs":{},"的":{"docs":{},"效":{"docs":{},"果":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"网":{"docs":{},"格":{"docs":{},"搜":{"docs":{},"索":{"docs":{},"!":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"所":{"docs":{},"以":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"待":{"docs":{},"预":{"docs":{},"测":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"为":{"docs":{},":":{"docs":{},"(":{"1":{"docs":{},".":{"2":{"docs":{},"+":{"1":{"docs":{},".":{"5":{"docs":{},"+":{"0":{"docs":{},".":{"8":{"docs":{},"+":{"1":{"docs":{},".":{"3":{"3":{"docs":{},"+":{"1":{"docs":{},".":{"1":{"9":{"docs":{},")":{"docs":{},"/":{"5":{"docs":{},"=":{"1":{"docs":{},".":{"2":{"0":{"4":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}}},"很":{"docs":{},"自":{"docs":{},"然":{"docs":{},"的":{"docs":{},"可":{"docs":{},"以":{"docs":{},"想":{"docs":{},"到":{"docs":{},",":{"docs":{},"使":{"docs":{},"用":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"求":{"docs":{},"解":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"解":{"docs":{},"的":{"docs":{},"流":{"docs":{},"程":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"说":{"docs":{},",":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"的":{"docs":{},"作":{"docs":{},"用":{"docs":{},"是":{"docs":{},"不":{"docs":{},"断":{"docs":{},"的":{"docs":{},"寻":{"docs":{},"找":{"docs":{},"靠":{"docs":{},"谱":{"docs":{},"的":{"docs":{},"权":{"docs":{},"重":{"docs":{},"是":{"docs":{},"多":{"docs":{},"少":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"的":{"docs":{},"伪":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"的":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"如":{"docs":{},"下":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"如":{"docs":{},"果":{"docs":{},"套":{"docs":{},"上":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"的":{"docs":{},"话":{"docs":{},"就":{"docs":{},"是":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"把":{"docs":{},"特":{"docs":{},"征":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"型":{"docs":{},"分":{"docs":{},"类":{"docs":{},"性":{"docs":{},"能":{"docs":{},"越":{"docs":{},"好":{"docs":{},",":{"docs":{},"混":{"docs":{},"淆":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},"中":{"docs":{},"非":{"docs":{},"对":{"docs":{},"角":{"docs":{},"线":{"docs":{},"上":{"docs":{},"的":{"docs":{},"数":{"docs":{},"值":{"docs":{},"越":{"docs":{},"小":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"用":{"docs":{},"热":{"docs":{},"力":{"docs":{},"图":{"docs":{},"对":{"docs":{},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},"系":{"docs":{},"数":{"docs":{},"进":{"docs":{},"行":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}},"就":{"docs":{},"有":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}},"我":{"docs":{},"们":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"的":{"docs":{},"总":{"docs":{},"的":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"期":{"docs":{},"望":{"docs":{},"r":{"docs":{},"θ":{"docs":{},"‾":{"docs":{},"\\":{"docs":{},"o":{"docs":{},"v":{"docs":{},"e":{"docs":{},"r":{"docs":{},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"{":{"docs":{},"r":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"}":{"docs":{},"​":{"docs":{},"r":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"可":{"docs":{},"表":{"docs":{},"示":{"docs":{},"为":{"docs":{},":":{"docs":{},"r":{"docs":{},"θ":{"docs":{},"‾":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"τ":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"\\":{"docs":{},"o":{"docs":{},"v":{"docs":{},"e":{"docs":{},"r":{"docs":{},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"{":{"docs":{},"r":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"}":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"代":{"docs":{},"表":{"docs":{},"的":{"docs":{},"含":{"docs":{},"义":{"docs":{},"是":{"docs":{},"根":{"docs":{},"据":{"docs":{},"业":{"docs":{},"务":{"docs":{},"决":{"docs":{},"定":{"docs":{},"的":{"docs":{},",":{"docs":{},"比":{"docs":{},"如":{"docs":{},"在":{"docs":{},"癌":{"docs":{},"细":{"docs":{},"胞":{"docs":{},"识":{"docs":{},"别":{"docs":{},"中":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.04201680672268908}}}}},"件":{"docs":{},"中":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"对":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}},"是":{"docs":{},"干":{"docs":{},"啥":{"docs":{},"的":{"docs":{},"。":{"docs":{},"比":{"docs":{},"如":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}},"时":{"docs":{},"与":{"docs":{},"我":{"docs":{},"离":{"docs":{},"得":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}},"其":{"docs":{},"中":{"docs":{},"各":{"docs":{},"个":{"docs":{},"变":{"docs":{},"量":{"docs":{},"的":{"docs":{},"偏":{"docs":{},"导":{"docs":{},"所":{"docs":{},"组":{"docs":{},"成":{"docs":{},"的":{"docs":{},"向":{"docs":{},"量":{"docs":{},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"方":{"docs":{},"向":{"docs":{},"是":{"docs":{},"使":{"docs":{},"得":{"docs":{},"函":{"docs":{},"数":{"docs":{},"值":{"docs":{},"增":{"docs":{},"长":{"docs":{},"最":{"docs":{},"快":{"docs":{},"的":{"docs":{},"方":{"docs":{},"向":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"预":{"docs":{},"测":{"docs":{},"准":{"docs":{},"确":{"docs":{},"度":{"docs":{},",":{"docs":{},"其":{"docs":{},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"应":{"docs":{},"该":{"docs":{},"是":{"docs":{},"最":{"docs":{},"好":{"docs":{},"的":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"模":{"docs":{},"型":{"docs":{},"并":{"docs":{},"没":{"docs":{},"有":{"docs":{},"在":{"docs":{},"预":{"docs":{},"测":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"犯":{"docs":{},"错":{"docs":{},"误":{"docs":{},"。":{"docs":{},"即":{"docs":{},"如":{"docs":{},"下":{"docs":{},"混":{"docs":{},"淆":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"是":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}},"一":{"docs":{},"个":{"docs":{},"超":{"docs":{},"参":{"docs":{},"数":{"docs":{},",":{"docs":{},"需":{"docs":{},"要":{"docs":{},"自":{"docs":{},"己":{"docs":{},"设":{"docs":{},"置":{"docs":{},",":{"docs":{},"一":{"docs":{},"般":{"docs":{},"默":{"docs":{},"认":{"docs":{},"为":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}},"有":{"docs":{},"限":{"docs":{},"个":{"docs":{},"取":{"docs":{},"值":{"docs":{},"的":{"docs":{},"离":{"docs":{},"散":{"docs":{},"型":{"docs":{},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"很":{"docs":{},"显":{"docs":{},"然":{"docs":{},"它":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"或":{"docs":{},"者":{"docs":{},"分":{"docs":{},"布":{"docs":{},"律":{"docs":{},"就":{"docs":{},"是":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},":":{"docs":{},"p":{"docs":{},"(":{"docs":{},"x":{"docs":{},"=":{"docs":{},"x":{"docs":{},"i":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"i":{"docs":{},",":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"n":{"docs":{},"p":{"docs":{},"(":{"docs":{},"x":{"docs":{},"=":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"种":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}},"款":{"docs":{},"非":{"docs":{},"常":{"docs":{},"好":{"docs":{},"用":{"docs":{},"的":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}},"张":{"docs":{},"r":{"docs":{},"g":{"docs":{},"b":{"docs":{},"的":{"docs":{},"三":{"docs":{},"通":{"docs":{},"道":{"docs":{},"图":{"docs":{},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"挡":{"docs":{},"板":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"移":{"docs":{},"动":{"docs":{},"只":{"docs":{},"跟":{"docs":{},"挡":{"docs":{},"板":{"docs":{},"和":{"docs":{},"球":{"docs":{},"有":{"docs":{},"关":{"docs":{},"系":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"将":{"docs":{},"三":{"docs":{},"通":{"docs":{},"道":{"docs":{},"图":{"docs":{},"转":{"docs":{},"换":{"docs":{},"成":{"docs":{},"一":{"docs":{},"张":{"docs":{},"二":{"docs":{},"值":{"docs":{},"化":{"docs":{},"的":{"docs":{},"图":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{},"挡":{"docs":{},"板":{"docs":{},"和":{"docs":{},"球":{"docs":{},"是":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"以":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"不":{"docs":{},"是":{"docs":{},"狼":{"docs":{},"人":{"docs":{},"(":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}},"并":{"docs":{},"行":{"docs":{},"式":{"docs":{},"集":{"docs":{},"成":{"docs":{},"学":{"docs":{},"习":{"docs":{},"方":{"docs":{},"法":{"docs":{},"。":{"docs":{},"大":{"docs":{},"名":{"docs":{},"鼎":{"docs":{},"鼎":{"docs":{},"的":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"算":{"docs":{},"法":{"docs":{},"就":{"docs":{},"是":{"docs":{},"在":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}},"集":{"docs":{},"成":{"docs":{},"学":{"docs":{},"习":{"docs":{},"中":{"docs":{},"的":{"docs":{},"学":{"docs":{},"习":{"docs":{},"框":{"docs":{},"架":{"docs":{},",":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}},"自":{"docs":{},"底":{"docs":{},"向":{"docs":{},"上":{"docs":{},"的":{"docs":{},"层":{"docs":{},"次":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},"了":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}},"统":{"docs":{},"计":{"docs":{},"学":{"docs":{},"中":{"docs":{},"用":{"docs":{},"来":{"docs":{},"衡":{"docs":{},"量":{"docs":{},"二":{"docs":{},"分":{"docs":{},"类":{"docs":{},"模":{"docs":{},"型":{"docs":{},"精":{"docs":{},"确":{"docs":{},"度":{"docs":{},"的":{"docs":{},"一":{"docs":{},"种":{"docs":{},"指":{"docs":{},"标":{"docs":{},"。":{"docs":{},"它":{"docs":{},"同":{"docs":{},"时":{"docs":{},"兼":{"docs":{},"顾":{"docs":{},"了":{"docs":{},"分":{"docs":{},"类":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"。":{"docs":{},"f":{"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"否":{"docs":{},"生":{"docs":{},"还":{"docs":{},",":{"1":{"docs":{},"表":{"docs":{},"示":{"docs":{},"是":{"docs":{},",":{"0":{"docs":{},"表":{"docs":{},"示":{"docs":{},"否":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"docs":{}}}}}},"docs":{}}}}},"通":{"docs":{},"过":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"来":{"docs":{},"训":{"docs":{},"练":{"docs":{},"模":{"docs":{},"型":{"docs":{},",":{"docs":{},"该":{"docs":{},"模":{"docs":{},"型":{"docs":{},"需":{"docs":{},"要":{"docs":{},"根":{"docs":{},"据":{"docs":{},"环":{"docs":{},"境":{"docs":{},"状":{"docs":{},"态":{"docs":{},"来":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"动":{"docs":{},"作":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},",":{"docs":{},"并":{"docs":{},"根":{"docs":{},"据":{"docs":{},"这":{"docs":{},"个":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"进":{"docs":{},"行":{"docs":{},"采":{"docs":{},"样":{"docs":{},",":{"docs":{},"将":{"docs":{},"采":{"docs":{},"样":{"docs":{},"到":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},"作":{"docs":{},"为":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"标":{"docs":{},"签":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.03361344537815126}}}},"样":{"docs":{},"本":{"docs":{},"编":{"docs":{},"号":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.03361344537815126}}}},"的":{"docs":{},"比":{"docs":{},"例":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"而":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"注":{"docs":{},"意":{"docs":{},":":{"docs":{},"有":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"有":{"docs":{},"票":{"docs":{},"数":{"docs":{},"一":{"docs":{},"致":{"docs":{},"的":{"docs":{},"情":{"docs":{},"况":{"docs":{},",":{"docs":{},"比":{"docs":{},"如":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}},"然":{"docs":{},"后":{"docs":{},"找":{"docs":{},"出":{"docs":{},"与":{"docs":{},"我":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"小":{"docs":{},"的":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}},"呢":{"docs":{},",":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"就":{"docs":{},"是":{"docs":{},"要":{"docs":{},"找":{"docs":{},"一":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"让":{"docs":{},"这":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},"尽":{"docs":{},"可":{"docs":{},"能":{"docs":{},"地":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"图":{"docs":{},"中":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"点":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"把":{"docs":{},"每":{"docs":{},"条":{"docs":{},"小":{"docs":{},"竖":{"docs":{},"线":{"docs":{},"的":{"docs":{},"长":{"docs":{},"度":{"docs":{},"加":{"docs":{},"起":{"docs":{},"来":{"docs":{},"就":{"docs":{},"等":{"docs":{},"于":{"docs":{},"我":{"docs":{},"们":{"docs":{},"现":{"docs":{},"在":{"docs":{},"通":{"docs":{},"过":{"docs":{},"这":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"的":{"docs":{},"房":{"docs":{},"价":{"docs":{},"与":{"docs":{},"实":{"docs":{},"际":{"docs":{},"房":{"docs":{},"价":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"差":{"docs":{},"距":{"docs":{},"。":{"docs":{},"那":{"docs":{},"每":{"docs":{},"条":{"docs":{},"小":{"docs":{},"竖":{"docs":{},"线":{"docs":{},"的":{"docs":{},"长":{"docs":{},"度":{"docs":{},"的":{"docs":{},"加":{"docs":{},"和":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"算":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"欧":{"docs":{},"式":{"docs":{},"距":{"docs":{},"离":{"docs":{},"加":{"docs":{},"和":{"docs":{},",":{"docs":{},"公":{"docs":{},"式":{"docs":{},"为":{"docs":{},":":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"m":{"docs":{},"(":{"docs":{},"y":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"−":{"docs":{},"y":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"^":{"docs":{},")":{"2":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"m":{"docs":{},"(":{"docs":{},"y":{"docs":{},"^":{"docs":{},"{":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"}":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}},"docs":{}}}}}}}}}},"docs":{}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"发":{"docs":{},"现":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"表":{"docs":{},"示":{"docs":{},"当":{"docs":{},"我":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"低":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"一":{"docs":{},"定":{"docs":{},"会":{"docs":{},"流":{"docs":{},"失":{"docs":{},",":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"高":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"一":{"docs":{},"定":{"docs":{},"不":{"docs":{},"流":{"docs":{},"失":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"可":{"docs":{},"以":{"docs":{},"先":{"docs":{},"在":{"docs":{},"根":{"docs":{},"节":{"docs":{},"点":{"docs":{},"上":{"docs":{},"接":{"docs":{},"上":{"docs":{},"两":{"docs":{},"个":{"docs":{},"叶":{"docs":{},"子":{"docs":{},"节":{"docs":{},"点":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"继":{"docs":{},"续":{"docs":{},"看":{"docs":{},"这":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}}}}},"再":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"看":{"docs":{},"一":{"docs":{},"下":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"模":{"docs":{},"型":{"docs":{},"来":{"docs":{},"训":{"docs":{},"练":{"docs":{},"并":{"docs":{},"预":{"docs":{},"测":{"docs":{},"了":{"docs":{},",":{"docs":{},"这":{"docs":{},"里":{"docs":{},"使":{"docs":{},"用":{"docs":{},"的":{"docs":{},"是":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"。":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"两":{"docs":{},"边":{"docs":{},"取":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"会":{"docs":{},"得":{"docs":{},"到":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}},"现":{"docs":{},"在":{"docs":{},"使":{"docs":{},"用":{"docs":{},"k":{"docs":{},"n":{"docs":{},"n":{"docs":{},"算":{"docs":{},"法":{"docs":{},"来":{"docs":{},"鉴":{"docs":{},"别":{"docs":{},"一":{"docs":{},"下":{"docs":{},"我":{"docs":{},"是":{"docs":{},"宅":{"docs":{},"男":{"docs":{},"还":{"docs":{},"是":{"docs":{},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"。":{"docs":{},"首":{"docs":{},"先":{"docs":{},"需":{"docs":{},"要":{"docs":{},"计":{"docs":{},"算":{"docs":{},"我":{"docs":{},"与":{"docs":{},"样":{"docs":{},"本":{"docs":{},"空":{"docs":{},"间":{"docs":{},"中":{"docs":{},"所":{"docs":{},"有":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"计":{"docs":{},"算":{"docs":{},"得":{"docs":{},"到":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"表":{"docs":{},"格":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"您":{"docs":{},"应":{"docs":{},"该":{"docs":{},"已":{"docs":{},"经":{"docs":{},"弄":{"docs":{},"明":{"docs":{},"白":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"事":{"docs":{},"实":{"docs":{},",":{"docs":{},"那":{"docs":{},"就":{"docs":{},"是":{"docs":{},"我":{"docs":{},"只":{"docs":{},"要":{"docs":{},"找":{"docs":{},"到":{"docs":{},"一":{"docs":{},"组":{"docs":{},"参":{"docs":{},"数":{"docs":{},"(":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"线":{"docs":{},"性":{"docs":{},"方":{"docs":{},"程":{"docs":{},"每":{"docs":{},"一":{"docs":{},"项":{"docs":{},"上":{"docs":{},"的":{"docs":{},"系":{"docs":{},"数":{"docs":{},")":{"docs":{},"能":{"docs":{},"让":{"docs":{},"我":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"值":{"docs":{},"最":{"docs":{},"小":{"docs":{},",":{"docs":{},"那":{"docs":{},"我":{"docs":{},"这":{"docs":{},"一":{"docs":{},"组":{"docs":{},"参":{"docs":{},"数":{"docs":{},"就":{"docs":{},"能":{"docs":{},"最":{"docs":{},"好":{"docs":{},"的":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"我":{"docs":{},"现":{"docs":{},"在":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"。":{"docs":{},"o":{"docs":{},"k":{"docs":{},",":{"docs":{},"那":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"来":{"docs":{},"找":{"docs":{},"到":{"docs":{},"这":{"docs":{},"一":{"docs":{},"组":{"docs":{},"参":{"docs":{},"数":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},"有":{"docs":{},"两":{"docs":{},"种":{"docs":{},"套":{"docs":{},"路":{"docs":{},",":{"docs":{},"一":{"docs":{},"种":{"docs":{},"就":{"docs":{},"是":{"docs":{},"用":{"docs":{},"大":{"docs":{},"名":{"docs":{},"鼎":{"docs":{},"鼎":{"docs":{},"的":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},",":{"docs":{},"其":{"docs":{},"大":{"docs":{},"概":{"docs":{},"思":{"docs":{},"想":{"docs":{},"就":{"docs":{},"是":{"docs":{},"根":{"docs":{},"据":{"docs":{},"每":{"docs":{},"个":{"docs":{},"参":{"docs":{},"数":{"docs":{},"对":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"偏":{"docs":{},"导":{"docs":{},"来":{"docs":{},"更":{"docs":{},"新":{"docs":{},"参":{"docs":{},"数":{"docs":{},"。":{"docs":{},"另":{"docs":{},"一":{"docs":{},"种":{"docs":{},"是":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"正":{"docs":{},"规":{"docs":{},"方":{"docs":{},"程":{"docs":{},"解":{"docs":{},",":{"docs":{},"这":{"docs":{},"名":{"docs":{},"字":{"docs":{},"听":{"docs":{},"起":{"docs":{},"来":{"docs":{},"高":{"docs":{},"大":{"docs":{},"上":{"docs":{},",":{"docs":{},"其":{"docs":{},"实":{"docs":{},"本":{"docs":{},"质":{"docs":{},"就":{"docs":{},"是":{"docs":{},"根":{"docs":{},"据":{"docs":{},"一":{"docs":{},"个":{"docs":{},"固":{"docs":{},"定":{"docs":{},"的":{"docs":{},"式":{"docs":{},"子":{"docs":{},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"参":{"docs":{},"数":{"docs":{},"。":{"docs":{},"由":{"docs":{},"于":{"docs":{},"正":{"docs":{},"规":{"docs":{},"方":{"docs":{},"程":{"docs":{},"解":{"docs":{},"在":{"docs":{},"数":{"docs":{},"据":{"docs":{},"量":{"docs":{},"比":{"docs":{},"较":{"docs":{},"大":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"时":{"docs":{},"间":{"docs":{},"复":{"docs":{},"杂":{"docs":{},"度":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"在":{"docs":{},"这":{"docs":{},"一":{"docs":{},"部":{"docs":{},"分":{"docs":{},"中":{"docs":{},",":{"docs":{},"主":{"docs":{},"要":{"docs":{},"聊":{"docs":{},"聊":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"使":{"docs":{},"用":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"的":{"docs":{},"方":{"docs":{},"法":{"docs":{},"来":{"docs":{},"更":{"docs":{},"新":{"docs":{},"参":{"docs":{},"数":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"已":{"docs":{},"经":{"docs":{},"知":{"docs":{},"道":{"docs":{},"了":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"就":{"docs":{},"是":{"docs":{},"用":{"docs":{},"来":{"docs":{},"找":{"docs":{},"权":{"docs":{},"重":{"docs":{},"的":{"docs":{},",":{"docs":{},"那":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"找":{"docs":{},"权":{"docs":{},"重":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"瞎":{"docs":{},"猜":{"docs":{},"?":{"docs":{},"不":{"docs":{},"可":{"docs":{},"能":{"docs":{},"的":{"docs":{},"。":{"docs":{},"。":{"docs":{},"这":{"docs":{},"辈":{"docs":{},"子":{"docs":{},"都":{"docs":{},"不":{"docs":{},"可":{"docs":{},"能":{"docs":{},"猜":{"docs":{},"的":{"docs":{},"。":{"docs":{},"想":{"docs":{},"想":{"docs":{},"都":{"docs":{},"知":{"docs":{},"道":{"docs":{},",":{"docs":{},"权":{"docs":{},"重":{"docs":{},"的":{"docs":{},"取":{"docs":{},"值":{"docs":{},"范":{"docs":{},"围":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"个":{"docs":{},"实":{"docs":{},"数":{"docs":{},"空":{"docs":{},"间":{"docs":{},",":{"docs":{},"那":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"有":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"是":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}},"了":{"docs":{},"总":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"和":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"之":{"docs":{},"后":{"docs":{},"我":{"docs":{},"们":{"docs":{},"就":{"docs":{},"能":{"docs":{},"算":{"docs":{},"出":{"docs":{},"性":{"docs":{},"别":{"docs":{},"和":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"这":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"了":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"假":{"docs":{},"设":{"docs":{},"每":{"docs":{},"个":{"docs":{},"村":{"docs":{},"民":{"docs":{},"都":{"docs":{},"是":{"docs":{},"有":{"docs":{},"主":{"docs":{},"见":{"docs":{},"的":{"docs":{},"人":{"docs":{},",":{"docs":{},"对":{"docs":{},"于":{"docs":{},"谁":{"docs":{},"是":{"docs":{},"狼":{"docs":{},"人":{"docs":{},"都":{"docs":{},"有":{"docs":{},"自":{"docs":{},"己":{"docs":{},"的":{"docs":{},"想":{"docs":{},"法":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"他":{"docs":{},"们":{"docs":{},"的":{"docs":{},"错":{"docs":{},"误":{"docs":{},"率":{"docs":{},"也":{"docs":{},"是":{"docs":{},"相":{"docs":{},"互":{"docs":{},"独":{"docs":{},"立":{"docs":{},"的":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"根":{"docs":{},"据":{"docs":{},"h":{"docs":{},"o":{"docs":{},"e":{"docs":{},"f":{"docs":{},"f":{"docs":{},"d":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"不":{"docs":{},"等":{"docs":{},"式":{"docs":{},"可":{"docs":{},"知":{"docs":{},",":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"需":{"docs":{},"要":{"docs":{},"训":{"docs":{},"练":{"docs":{},"一":{"docs":{},"个":{"docs":{},"模":{"docs":{},"型":{"docs":{},"对":{"docs":{},"数":{"docs":{},"据":{"docs":{},"进":{"docs":{},"行":{"docs":{},"分":{"docs":{},"类":{"docs":{},",":{"docs":{},"假":{"docs":{},"如":{"docs":{},"该":{"docs":{},"模":{"docs":{},"型":{"docs":{},"非":{"docs":{},"常":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"在":{"docs":{},"数":{"docs":{},"据":{"docs":{},"上":{"docs":{},"画":{"docs":{},"一":{"docs":{},"条":{"docs":{},"线":{"docs":{},"作":{"docs":{},"为":{"docs":{},"分":{"docs":{},"类":{"docs":{},"边":{"docs":{},"界":{"docs":{},"。":{"docs":{},"模":{"docs":{},"型":{"docs":{},"认":{"docs":{},"为":{"docs":{},"边":{"docs":{},"界":{"docs":{},"的":{"docs":{},"左":{"docs":{},"边":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"对":{"docs":{},"数":{"docs":{},"据":{"docs":{},"进":{"docs":{},"行":{"docs":{},"分":{"docs":{},"类":{"docs":{},",":{"docs":{},"假":{"docs":{},"如":{"docs":{},"将":{"docs":{},"从":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}},"能":{"docs":{},"看":{"docs":{},"出":{"docs":{},"很":{"docs":{},"多":{"docs":{},"信":{"docs":{},"息":{"docs":{},"了":{"docs":{},":":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}},"已":{"docs":{},"经":{"docs":{},"知":{"docs":{},"道":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}},"票":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"是":{"docs":{},"宅":{"docs":{},"男":{"docs":{},"。":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}}},"文":{"docs":{},"艺":{"docs":{},"青":{"docs":{},"年":{"docs":{},"是":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.008403361344537815}}}}}}}},":":{"docs":{},"票":{"docs":{},"这":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"感":{"docs":{},"觉":{"docs":{},"是":{"docs":{},"一":{"docs":{},"堆":{"docs":{},"随":{"docs":{},"机":{"docs":{},"的":{"docs":{},"字":{"docs":{},"符":{"docs":{},"串":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"删":{"docs":{},"掉":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}},"距":{"docs":{},"离":{"docs":{"kNN.html":{"ref":"kNN.html","tf":0.025210084033613446}},"准":{"docs":{},"则":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},"的":{"docs":{},"计":{"docs":{},"算":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}},"。":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}},"近":{"docs":{},"朱":{"docs":{},"者":{"docs":{},"赤":{"docs":{},"近":{"docs":{},"墨":{"docs":{},"者":{"docs":{},"黑":{"docs":{"kNN.html":{"ref":"kNN.html","tf":5.008403361344538}}}}}}}}}},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"1":{"0":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"1":{"0":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{},"=":{"0":{"docs":{},".":{"9":{"1":{"8":{"2":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}}}}},"docs":{}},"docs":{}}},"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"/":{"5":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"1":{"docs":{},"/":{"5":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},"docs":{}}},"docs":{}}}}}}},"docs":{}},",":{"1":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},",":{"1":{"docs":{},")":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}},".":{"0":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}},"5":{"docs":{},",":{"1":{"docs":{},".":{"5":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},".":{"5":{"docs":{},",":{"1":{"docs":{},".":{"5":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},".":{"5":{"docs":{},",":{"1":{"docs":{},".":{"5":{"docs":{},")":{"docs":{},"。":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}},"2":{"docs":{},"/":{"7":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"2":{"docs":{},"/":{"7":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},"docs":{}}},"docs":{}}}}}}},"docs":{}}},"3":{"docs":{},"/":{"8":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"3":{"docs":{},"/":{"8":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},"docs":{}}},"docs":{}}}}}}},"docs":{}}},"4":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{},"*":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"为":{"docs":{},"低":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"=":{"0":{"docs":{},".":{"6":{"7":{"7":{"6":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}},"docs":{}},"4":{"docs":{},")":{"docs":{},"*":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"4":{"docs":{},"/":{"4":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},"docs":{}}},"docs":{}}}}}}}},"5":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"4":{"docs":{},"/":{"5":{"docs":{},")":{"docs":{},"=":{"0":{"docs":{},".":{"7":{"2":{"1":{"9":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}},"docs":{}}},"5":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"为":{"docs":{},"中":{"docs":{},"的":{"docs":{},"熵":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}},"docs":{}},"7":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"5":{"docs":{},"/":{"7":{"docs":{},")":{"docs":{},"=":{"0":{"docs":{},".":{"8":{"6":{"3":{"1":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}},"8":{"docs":{},")":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"5":{"docs":{},"/":{"8":{"docs":{},")":{"docs":{},"=":{"0":{"docs":{},".":{"9":{"5":{"4":{"3":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}},"docs":{}}},"6":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"为":{"docs":{},"高":{"docs":{},"的":{"docs":{},"熵":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}},"docs":{}},"6":{"docs":{},")":{"docs":{},"*":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"6":{"docs":{},"/":{"6":{"docs":{},")":{"docs":{},"=":{"0":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}},"docs":{}}},"7":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{},"性":{"docs":{},"别":{"docs":{},"为":{"docs":{},"女":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"=":{"0":{"docs":{},".":{"0":{"0":{"6":{"4":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}},"docs":{}},"docs":{}}},"8":{"docs":{},"/":{"1":{"5":{"docs":{},")":{"docs":{},"性":{"docs":{},"别":{"docs":{},"为":{"docs":{},"男":{"docs":{},"的":{"docs":{},"熵":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}},"docs":{}},"docs":{}}},"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}},"h":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}},"i":{"docs":{},")":{"docs":{},"y":{"docs":{},"​":{"docs":{},"(":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"i":{"docs":{},")":{"docs":{},"表":{"docs":{},"示":{"docs":{},"的":{"docs":{},"是":{"docs":{},"预":{"docs":{},"测":{"docs":{},"房":{"docs":{},"价":{"docs":{},")":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"j":{"docs":{},"(":{"docs":{},"θ":{"docs":{},")":{"docs":{},"j":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"j":{"docs":{},"(":{"docs":{},"θ":{"docs":{},")":{"docs":{},"就":{"docs":{},"是":{"docs":{},":":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},")":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"σ":{"docs":{},"(":{"docs":{},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},")":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}},"特":{"docs":{},"征":{"docs":{},"数":{"docs":{},"量":{"docs":{},")":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}},"d":{"docs":{},"b":{"docs":{},"指":{"docs":{},"数":{"docs":{},")":{"docs":{},"以":{"docs":{},"及":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}},"不":{"docs":{},"基":{"docs":{},"于":{"docs":{},"模":{"docs":{},"型":{"docs":{},")":{"docs":{},"两":{"docs":{},"大":{"docs":{},"类":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}},"基":{"docs":{},"于":{"docs":{},"模":{"docs":{},"型":{"docs":{},")":{"docs":{},"和":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}},"*":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"1":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"t":{"docs":{},"(":{"1":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}}}}},"docs":{},"m":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"m":{"docs":{},"(":{"docs":{},"y":{"docs":{},"^":{"docs":{},"i":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}},"|":{"docs":{},"y":{"docs":{},"^":{"docs":{},"i":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}},"docs":{}}}}}}}}}}},"n":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"^":{"docs":{},"n":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.02127659574468085}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}},"2":{"docs":{},"(":{"2":{"docs":{},"+":{"1":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"*":{"2":{"docs":{},"}":{"docs":{},"=":{"0":{"docs":{},".":{"7":{"5":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}}},"docs":{}}}}},"docs":{}}},"docs":{}}},"docs":{},"\\":{"docs":{},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"t":{"docs":{},"i":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"i":{"docs":{},"(":{"docs":{},"p":{"docs":{},"^":{"docs":{},"i":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}},"m":{"docs":{},"(":{"docs":{},"m":{"docs":{},"+":{"1":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"}":{"docs":{},"{":{"docs":{},"m":{"docs":{},"*":{"docs":{},"n":{"docs":{},"}":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}},"docs":{}}}}},"docs":{}}}}},"(":{"4":{"docs":{},"+":{"3":{"docs":{},"+":{"4":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"3":{"docs":{},"}":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"2":{"docs":{},".":{"6":{"7":{"docs":{},",":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}}},"docs":{}}}}},"docs":{}}},"docs":{}}},"9":{"docs":{},"+":{"1":{"0":{"docs":{},"+":{"1":{"1":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"3":{"docs":{},"}":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"7":{"docs":{},",":{"1":{"0":{"docs":{},")":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}},"docs":{}}},"docs":{}}}}}},"docs":{}}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}}}},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.023809523809523808},"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}}}},"e":{"docs":{},"n":{"docs":{},"d":{"docs":{},"{":{"docs":{},"c":{"docs":{},"a":{"docs":{},"s":{"docs":{},"e":{"docs":{},"s":{"docs":{},"}":{"docs":{},"​":{"docs":{},"y":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"{":{"docs":{},"​":{"0":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"0":{"docs":{},".":{"5":{"docs":{},"​":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},">":{"0":{"docs":{},".":{"5":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"其":{"docs":{},"中":{"docs":{},"y":{"docs":{},"^":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}},"p":{"docs":{},"s":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},")":{"docs":{},"^":{"docs":{},"k":{"docs":{},"\\":{"docs":{},"e":{"docs":{},"p":{"docs":{},"s":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}},"i":{"docs":{},"n":{"docs":{},"f":{"docs":{},"t":{"docs":{},"y":{"docs":{},",":{"docs":{},"+":{"docs":{},"\\":{"docs":{},"i":{"docs":{},"n":{"docs":{},"f":{"docs":{},"t":{"docs":{},"y":{"docs":{},")":{"docs":{},"(":{"docs":{},"−":{"docs":{},"∞":{"docs":{},",":{"docs":{},"+":{"docs":{},"∞":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"的":{"docs":{},"实":{"docs":{},"数":{"docs":{},"转":{"docs":{},"换":{"docs":{},"成":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"值":{"docs":{},"的":{"docs":{},"需":{"docs":{},"求":{"docs":{},"。":{"docs":{},"因":{"docs":{},"此":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"在":{"docs":{},"预":{"docs":{},"测":{"docs":{},"时":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"成":{"docs":{},"p":{"docs":{},"^":{"docs":{},"=":{"1":{"docs":{},"/":{"docs":{},"(":{"1":{"docs":{},"+":{"docs":{},"e":{"docs":{},"−":{"docs":{},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},")":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"能":{"docs":{},"够":{"docs":{},"将":{"docs":{},"值":{"docs":{},"域":{"docs":{},"为":{"docs":{},"(":{"docs":{},"−":{"docs":{},"∞":{"docs":{},",":{"docs":{},"+":{"docs":{},"∞":{"docs":{},")":{"docs":{},"(":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"−":{"docs":{},"∞":{"docs":{},"时":{"docs":{},"函":{"docs":{},"数":{"docs":{},"值":{"docs":{},"趋":{"docs":{},"近":{"docs":{},"于":{"0":{"0":{"0":{"docs":{},",":{"docs":{},"当":{"docs":{},"t":{"docs":{},"t":{"docs":{},"t":{"docs":{},"趋":{"docs":{},"近":{"docs":{},"于":{"docs":{},"+":{"docs":{},"∞":{"docs":{},"+":{"docs":{},"\\":{"docs":{},"i":{"docs":{},"n":{"docs":{},"f":{"docs":{},"t":{"docs":{},"y":{"docs":{},"+":{"docs":{},"∞":{"docs":{},"时":{"docs":{},"函":{"docs":{},"数":{"docs":{},"值":{"docs":{},"趋":{"docs":{},"近":{"docs":{},"于":{"1":{"1":{"1":{"docs":{},"。":{"docs":{},"可":{"docs":{},"见":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"值":{"docs":{},"域":{"docs":{},"是":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"docs":{},")":{"docs":{},",":{"docs":{},"满":{"docs":{},"足":{"docs":{},"我":{"docs":{},"们":{"docs":{},"要":{"docs":{},"将":{"docs":{},"(":{"docs":{},"−":{"docs":{},"∞":{"docs":{},",":{"docs":{},"+":{"docs":{},"∞":{"docs":{},")":{"docs":{},"(":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"n":{"docs":{},"p":{"docs":{},"_":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"_":{"docs":{},"i":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"−":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"1":{"docs":{},"}":{"docs":{},"{":{"docs":{},"m":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"m":{"docs":{},"(":{"docs":{},"y":{"docs":{},"^":{"docs":{},"i":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}},"docs":{}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}},"l":{"docs":{},"e":{"docs":{},"q":{"1":{"docs":{},"r":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"≤":{"1":{"docs":{},",":{"docs":{},"当":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"不":{"docs":{},"犯":{"docs":{},"任":{"docs":{},"何":{"docs":{},"错":{"docs":{},"误":{"docs":{},"时":{"docs":{},",":{"docs":{},"取":{"docs":{},"最":{"docs":{},"大":{"docs":{},"值":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}},"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"^":{"docs":{},"*":{"docs":{},"_":{"docs":{},"i":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"^":{"docs":{},"*":{"docs":{},"_":{"docs":{},"j":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"i":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}},"\\":{"docs":{},"n":{"docs":{},"e":{"docs":{},"q":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"^":{"docs":{},"*":{"docs":{},"_":{"docs":{},"j":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}}}}}}}}}}}}}}}}}}}}}}},"m":{"docs":{},"u":{"docs":{},"_":{"1":{"docs":{},"=":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"(":{"3":{"docs":{},"+":{"2":{"docs":{},"+":{"3":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"3":{"docs":{},"}":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}},"docs":{}}}}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}},"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"2":{"docs":{},".":{"6":{"7":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}},"=":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"(":{"6":{"docs":{},"+":{"7":{"docs":{},"+":{"8":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"3":{"docs":{},"}":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}},"docs":{}}}}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{},"j":{"docs":{},")":{"docs":{},"d":{"docs":{},"​":{"docs":{},"c":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"μ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"μ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"代":{"docs":{},"表":{"docs":{},"第":{"docs":{},"i":{"docs":{},"i":{"docs":{},"i":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"中":{"docs":{},"心":{"docs":{},"点":{"docs":{},"与":{"docs":{},"第":{"docs":{},"j":{"docs":{},"j":{"docs":{},"j":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"中":{"docs":{},"心":{"docs":{},"点":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"n":{"docs":{},"e":{"docs":{},"q":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"a":{"docs":{},"b":{"docs":{},"l":{"docs":{},"a":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.014184397163120567}}}}}}},"a":{"docs":{},"p":{"docs":{},"p":{"docs":{},"r":{"docs":{},"o":{"docs":{},"x":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.02127659574468085}}}}}}}},"o":{"docs":{},"v":{"docs":{},"e":{"docs":{},"r":{"docs":{},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"{":{"docs":{},"r":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"}":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.02127659574468085}}}}}}}}}}}}}}}}}}}},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"s":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"docs":{}}}}}},"_":{"2":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"docs":{},"{":{"1":{"0":{"docs":{},"}":{"docs":{},"τ":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"τ":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"τ":{"docs":{},"​":{"1":{"0":{"docs":{},"​":{"docs":{},"​":{"docs":{},"]":{"docs":{},"。":{"docs":{},"这":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}},"docs":{}},"docs":{}}}}}}},"a":{"docs":{},"l":{"docs":{},"p":{"docs":{},"h":{"docs":{},"a":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}},"g":{"docs":{},"o":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}},")":{"docs":{},"g":{"docs":{},"(":{"docs":{},"d":{"docs":{},",":{"docs":{},"a":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.014285714285714285}}}}}}}}},"a":{"docs":{},"a":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143},"random_forest.html":{"ref":"random_forest.html","tf":0.019867549668874173}}}},"g":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.009523809523809525}},"g":{"docs":{},"r":{"docs":{},"e":{"docs":{},"g":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}},"n":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":5.051282051282051},"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"e":{"docs":{},"s":{"docs":{},"(":{"docs":{},"d":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}},"算":{"docs":{},"法":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}},"e":{"docs":{},",":{"docs":{},"c":{"docs":{},"a":{"docs":{},"b":{"docs":{},"i":{"docs":{},"n":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"n":{"docs":{},"t":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.03508771929824561},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}},",":{"docs":{},"他":{"docs":{},"试":{"docs":{},"图":{"docs":{},"通":{"docs":{},"过":{"docs":{},"采":{"docs":{},"取":{"docs":{},"行":{"docs":{},"动":{"docs":{},"来":{"docs":{},"操":{"docs":{},"纵":{"docs":{},"环":{"docs":{},"境":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"从":{"docs":{},"一":{"docs":{},"个":{"docs":{},"状":{"docs":{},"态":{"docs":{},"转":{"docs":{},"变":{"docs":{},"到":{"docs":{},"另":{"docs":{},"一":{"docs":{},"个":{"docs":{},"状":{"docs":{},"态":{"docs":{},",":{"docs":{},"当":{"docs":{},"他":{"docs":{},"完":{"docs":{},"成":{"docs":{},"任":{"docs":{},"务":{"docs":{},"时":{"docs":{},"给":{"docs":{},"高":{"docs":{},"分":{"docs":{},"(":{"docs":{},"奖":{"docs":{},"励":{"docs":{},")":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"当":{"docs":{},"他":{"docs":{},"没":{"docs":{},"完":{"docs":{},"成":{"docs":{},"任":{"docs":{},"务":{"docs":{},"时":{"docs":{},",":{"docs":{},"给":{"docs":{},"低":{"docs":{},"分":{"docs":{},"(":{"docs":{},"无":{"docs":{},"奖":{"docs":{},"励":{"docs":{},")":{"docs":{},"。":{"docs":{},"这":{"docs":{},"也":{"docs":{},"是":{"docs":{},"强":{"docs":{},"化":{"docs":{},"学":{"docs":{},"习":{"docs":{},"的":{"docs":{},"核":{"docs":{},"心":{"docs":{},"思":{"docs":{},"想":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"u":{"docs":{},"c":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}},"=":{"docs":{},"(":{"2":{"docs":{},"+":{"4":{"docs":{},")":{"docs":{},"−":{"2":{"docs":{},"(":{"2":{"docs":{},"+":{"1":{"docs":{},")":{"2":{"2":{"docs":{},"∗":{"2":{"docs":{},"=":{"0":{"docs":{},".":{"7":{"5":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"(":{"2":{"docs":{},"+":{"4":{"docs":{},")":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"docs":{}}},"docs":{}},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}},"​":{"2":{"docs":{},"∗":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"2":{"docs":{},"+":{"4":{"docs":{},")":{"docs":{},"−":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"(":{"2":{"docs":{},"+":{"1":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"0":{"docs":{},".":{"7":{"5":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}}}},"docs":{}}},"docs":{}}}}},"docs":{}}},"docs":{},"m":{"docs":{},"∗":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"e":{"docs":{},"p":{"docs":{},"o":{"docs":{},"s":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"​":{"docs":{},"​":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"k":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"m":{"docs":{},"(":{"docs":{},"m":{"docs":{},"+":{"1":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"∑":{"docs":{},"i":{"docs":{},"e":{"docs":{},"p":{"docs":{},"o":{"docs":{},"s":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"k":{"docs":{},"i":{"docs":{},"−":{"docs":{},"m":{"docs":{},"(":{"docs":{},"m":{"docs":{},"+":{"1":{"docs":{},")":{"2":{"docs":{},"m":{"docs":{},"∗":{"docs":{},"n":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"b":{"docs":{},"o":{"docs":{},"s":{"docs":{},"l":{"docs":{},"u":{"docs":{},"t":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}},"=":{"docs":{},"|":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"∣":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"i":{"docs":{},",":{"docs":{},"x":{"docs":{},"j":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"j":{"docs":{},",":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"∗":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"j":{"docs":{},"∗":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"1":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"docs":{},"(":{"3":{"docs":{},"−":{"2":{"docs":{},".":{"6":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"2":{"docs":{},"−":{"2":{"docs":{},".":{"6":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"3":{"docs":{},"−":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"3":{"docs":{},"−":{"2":{"docs":{},".":{"6":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"2":{"docs":{},")":{"docs":{},"/":{"3":{"docs":{},"=":{"0":{"docs":{},".":{"6":{"2":{"8":{"5":{"3":{"9":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}},"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"docs":{},"(":{"6":{"docs":{},"−":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"9":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"7":{"docs":{},"−":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"1":{"0":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"8":{"docs":{},"−":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"1":{"1":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"2":{"docs":{},")":{"docs":{},"/":{"3":{"docs":{},"=":{"0":{"docs":{},".":{"9":{"4":{"2":{"8":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}}}},"docs":{},"_":{"1":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}}}}}}}}}},"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"6":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}}}}}}}}}},"docs":{}},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"3":{"docs":{},"−":{"2":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"2":{"docs":{},"−":{"2":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"3":{"docs":{},"−":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"3":{"docs":{},"−":{"2":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"/":{"3":{"docs":{},"=":{"0":{"docs":{},".":{"6":{"2":{"8":{"5":{"3":{"9":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}},"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"6":{"docs":{},"−":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"9":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"7":{"docs":{},"−":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"1":{"0":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"8":{"docs":{},"−":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"1":{"1":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"/":{"3":{"docs":{},"=":{"0":{"docs":{},".":{"9":{"4":{"2":{"8":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}},"docs":{}}}}}},"c":{"docs":{},"c":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}},"u":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{},"c":{"docs":{},"o":{"docs":{},"r":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}},"e":{"docs":{},"(":{"docs":{},"y":{"docs":{},"_":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}}}}}}}}}}}}}}}}}}}}}},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}},"π":{"docs":{},"(":{"docs":{},"s":{"docs":{},"t":{"docs":{},"a":{"docs":{},"t":{"docs":{},"e":{"docs":{},")":{"docs":{},"→":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}},"x":{"docs":{},"[":{"0":{"docs":{},",":{"0":{"docs":{},"]":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},"'":{"docs":{},"n":{"docs":{},"o":{"docs":{},".":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"1":{"docs":{},"]":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},"'":{"docs":{},"m":{"docs":{},"a":{"docs":{},"l":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"docs":{}},"]":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"m":{"docs":{},"i":{"docs":{},"l":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}},"n":{"docs":{},"u":{"docs":{},"m":{"docs":{},"b":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"s":{"docs":{},"i":{"docs":{},"b":{"docs":{},"s":{"docs":{},"p":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"=":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}},"x":{"docs":{},"t":{"docs":{},"i":{"docs":{},"c":{"docs":{},"k":{"docs":{},"s":{"docs":{},"(":{"docs":{},"x":{"1":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{}}}}}}}}},"y":{"docs":{},"l":{"docs":{},"a":{"docs":{},"b":{"docs":{},"e":{"docs":{},"l":{"docs":{},"(":{"docs":{},"'":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"c":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"t":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"t":{"docs":{},"i":{"docs":{},"c":{"docs":{},"k":{"docs":{},"s":{"docs":{},"(":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"g":{"docs":{},"e":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"1":{"0":{"docs":{},",":{"1":{"0":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"1":{"docs":{},",":{"0":{"docs":{},"]":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},"'":{"docs":{},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}},"1":{"docs":{},"]":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},"'":{"docs":{},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"]":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},":":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},":":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}},"i":{"docs":{},"b":{"docs":{},"s":{"docs":{},"p":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"=":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}},"a":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}},"x":{"docs":{},"t":{"docs":{},"i":{"docs":{},"c":{"docs":{},"k":{"docs":{},"s":{"docs":{},"(":{"docs":{},"x":{"2":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{}}}}}}}}},"y":{"docs":{},"t":{"docs":{},"i":{"docs":{},"c":{"docs":{},"k":{"docs":{},"s":{"docs":{},"(":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"g":{"docs":{},"e":{"docs":{},"(":{"0":{"docs":{},",":{"1":{"1":{"0":{"docs":{},",":{"1":{"0":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"2":{"docs":{},"]":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"l":{"docs":{},"e":{"docs":{},"(":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"docs":{}},"i":{"docs":{},"s":{"docs":{},"=":{"1":{"docs":{},")":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.034482758620689655},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.028169014084507043}}}},"docs":{}}}}},"_":{"1":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"2":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"docs":{},"t":{"docs":{},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}},"p":{"docs":{},"r":{"docs":{},"o":{"docs":{},"b":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}}}}},"t":{"docs":{},"a":{"docs":{},"r":{"docs":{},"i":{"docs":{},"_":{"docs":{},"p":{"docs":{},"i":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.017391304347826087}}}}}}}}}},"b":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.010619469026548672},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}},"(":{"docs":{},"参":{"docs":{},"数":{"docs":{},")":{"docs":{},"的":{"docs":{},"情":{"docs":{},"况":{"docs":{},"下":{"docs":{},",":{"docs":{},"我":{"docs":{},"随":{"docs":{},"便":{"docs":{},"给":{"docs":{},"一":{"docs":{},"个":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}},"a":{"docs":{},"s":{"docs":{},"e":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285},"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.07017543859649122}},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"模":{"docs":{},"型":{"docs":{},",":{"docs":{},"以":{"docs":{},"方":{"docs":{},"便":{"docs":{},"后":{"docs":{},"期":{"docs":{},"更":{"docs":{},"好":{"docs":{},"的":{"docs":{},"挖":{"docs":{},"掘":{"docs":{},"业":{"docs":{},"务":{"docs":{},"相":{"docs":{},"关":{"docs":{},"信":{"docs":{},"息":{"docs":{},"或":{"docs":{},"提":{"docs":{},"升":{"docs":{},"模":{"docs":{},"型":{"docs":{},"性":{"docs":{},"能":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"d":{"docs":{},",":{"docs":{},"能":{"docs":{},"通":{"docs":{},"过":{"docs":{},"想":{"docs":{},"象":{"docs":{},"来":{"docs":{},"预":{"docs":{},"判":{"docs":{},"断":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"将":{"docs":{},"要":{"docs":{},"发":{"docs":{},"生":{"docs":{},"的":{"docs":{},"所":{"docs":{},"有":{"docs":{},"情":{"docs":{},"况":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"选":{"docs":{},"择":{"docs":{},"这":{"docs":{},"些":{"docs":{},"想":{"docs":{},"象":{"docs":{},"情":{"docs":{},"况":{"docs":{},"中":{"docs":{},"最":{"docs":{},"好":{"docs":{},"的":{"docs":{},"那":{"docs":{},"种":{"docs":{},",":{"docs":{},"并":{"docs":{},"依":{"docs":{},"据":{"docs":{},"这":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"来":{"docs":{},"采":{"docs":{},"取":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"的":{"docs":{},"策":{"docs":{},"略":{"docs":{},",":{"docs":{},"这":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"围":{"docs":{},"棋":{"docs":{},"场":{"docs":{},"上":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"g":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.06622516556291391}},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"在":{"docs":{},"预":{"docs":{},"测":{"docs":{},"时":{"docs":{},"非":{"docs":{},"常":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"投":{"docs":{},"票":{"docs":{},"!":{"docs":{},"比":{"docs":{},"如":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}},"方":{"docs":{},"法":{"docs":{},"如":{"docs":{},"何":{"docs":{},"训":{"docs":{},"练":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"预":{"docs":{},"测":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}},"预":{"docs":{},"测":{"docs":{},"过":{"docs":{},"程":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}},"b":{"docs":{},"y":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"b":{"docs":{},"b":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991},"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}},"o":{"docs":{},"o":{"docs":{},"t":{"docs":{},"s":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"p":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}},"u":{"docs":{},"l":{"docs":{},"d":{"docs":{},"i":{"docs":{},"n":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}},"a":{"docs":{},"r":{"docs":{},"d":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}},"=":{"docs":{},"|":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"∣":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"i":{"docs":{},",":{"docs":{},"x":{"docs":{},"j":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"j":{"docs":{},",":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"∗":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"j":{"docs":{},"∗":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"g":{"docs":{},"r":{"docs":{},"a":{"docs":{},"d":{"docs":{},"i":{"docs":{},"e":{"docs":{},"n":{"docs":{},"t":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.023809523809523808},"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.04964539007092199}},"_":{"docs":{},"d":{"docs":{},"e":{"docs":{},"s":{"docs":{},"c":{"docs":{},"e":{"docs":{},"n":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"b":{"docs":{},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"。":{"docs":{},"在":{"docs":{},"介":{"docs":{},"绍":{"docs":{},"该":{"docs":{},"算":{"docs":{},"法":{"docs":{},"之":{"docs":{},"前":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"先":{"docs":{},"要":{"docs":{},"明":{"docs":{},"确":{"docs":{},"一":{"docs":{},"下":{"docs":{},"这":{"docs":{},"个":{"docs":{},"雅":{"docs":{},"达":{"docs":{},"利":{"docs":{},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"中":{"docs":{},"的":{"docs":{},"环":{"docs":{},"境":{"docs":{},"状":{"docs":{},"态":{"docs":{},"是":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"画":{"docs":{},"面":{"docs":{},",":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"n":{"docs":{},"t":{"docs":{},"是":{"docs":{},"我":{"docs":{},"们":{"docs":{},"操":{"docs":{},"作":{"docs":{},"的":{"docs":{},"挡":{"docs":{},"板":{"docs":{},",":{"docs":{},"奖":{"docs":{},"励":{"docs":{},"是":{"docs":{},"分":{"docs":{},"数":{"docs":{},",":{"docs":{},"动":{"docs":{},"作":{"docs":{},"是":{"docs":{},"上":{"docs":{},"或":{"docs":{},"者":{"docs":{},"下":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"原":{"docs":{},"理":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":5}}}},"的":{"docs":{},"核":{"docs":{},"心":{"docs":{},"思":{"docs":{},"想":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}},"玩":{"docs":{},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":5.004347826086956}}}}}}}}}}}}}},"i":{"docs":{},"d":{"docs":{},"_":{"docs":{},"s":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},".":{"docs":{},"f":{"docs":{},"i":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{},"c":{"docs":{},"v":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},"(":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"o":{"docs":{},"m":{"docs":{},"f":{"docs":{},"o":{"docs":{},"r":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"i":{"docs":{},"f":{"docs":{},"i":{"docs":{},"e":{"docs":{},"r":{"docs":{},"(":{"docs":{},")":{"docs":{},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"(":{"docs":{},"d":{"docs":{},",":{"docs":{},"a":{"docs":{},")":{"docs":{},"g":{"docs":{},"(":{"docs":{},"d":{"docs":{},",":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.014285714285714285}}}}}}}}}}},"y":{"docs":{},"m":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.021739130434782608}},".":{"docs":{},"m":{"docs":{},"a":{"docs":{},"k":{"docs":{},"e":{"docs":{},"(":{"docs":{},"\"":{"docs":{},"p":{"docs":{},"o":{"docs":{},"n":{"docs":{},"g":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"'":{"docs":{},"p":{"docs":{},"o":{"docs":{},"n":{"docs":{},"g":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}},"即":{"docs":{},"可":{"docs":{},"。":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}},"j":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"1":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"^":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"(":{"docs":{},"h":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"(":{"docs":{},"x":{"docs":{},"^":{"docs":{},"i":{"docs":{},")":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}},"_":{"docs":{},"j":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"_":{"docs":{},"j":{"docs":{},"}":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}},"θ":{"docs":{},")":{"docs":{},"=":{"1":{"2":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"m":{"docs":{},"(":{"docs":{},"h":{"docs":{},"θ":{"docs":{},"(":{"docs":{},"x":{"docs":{},"i":{"docs":{},")":{"docs":{},"−":{"docs":{},"y":{"docs":{},"i":{"docs":{},")":{"2":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}},"docs":{}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}},"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"h":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"x":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"−":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}}}},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}},"j":{"docs":{},"j":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904},"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}},"=":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"m":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}},"docs":{}}},"docs":{}},"}":{"docs":{},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"z":{"docs":{},")":{"docs":{},"d":{"docs":{},"​":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"​":{"docs":{},"x":{"docs":{},"∈":{"docs":{},"i":{"docs":{},",":{"docs":{},"z":{"docs":{},"∈":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{},"z":{"docs":{},")":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}},"i":{"docs":{},"n":{"docs":{},"​":{"docs":{},"x":{"docs":{},"∈":{"docs":{},"i":{"docs":{},",":{"docs":{},"z":{"docs":{},"∈":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{},"z":{"docs":{},")":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"(":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"d":{"docs":{},"_":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{},"c":{"docs":{},"_":{"docs":{},"j":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"_":{"docs":{},"{":{"1":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"e":{"docs":{},"q":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{},"c":{"docs":{},"c":{"docs":{},"a":{"docs":{},"r":{"docs":{},"d":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}},"c":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"a":{"docs":{},"}":{"docs":{},"{":{"docs":{},"a":{"docs":{},"+":{"docs":{},"b":{"docs":{},"+":{"docs":{},"c":{"docs":{},"}":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}},"a":{"docs":{},"a":{"docs":{},"+":{"docs":{},"b":{"docs":{},"+":{"docs":{},"c":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}},"​":{"docs":{},"a":{"docs":{},"+":{"docs":{},"b":{"docs":{},"+":{"docs":{},"c":{"docs":{},"​":{"docs":{},"​":{"docs":{},"a":{"docs":{},"​":{"docs":{},"​":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}},"系":{"docs":{},"数":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"根":{"docs":{},"据":{"docs":{},"上":{"docs":{},"面":{"docs":{},"所":{"docs":{},"提":{"docs":{},"到":{"docs":{},"的":{"docs":{},"a":{"docs":{},"a":{"docs":{},"a":{"docs":{},",":{"docs":{},"b":{"docs":{},"b":{"docs":{},"b":{"docs":{},",":{"docs":{},"c":{"docs":{},"c":{"docs":{},"c":{"docs":{},"来":{"docs":{},"计":{"docs":{},"算":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"值":{"docs":{},"域":{"docs":{},"为":{"docs":{},"[":{"0":{"docs":{},",":{"1":{"docs":{},"]":{"docs":{},"[":{"0":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"n":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787},"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.014184397163120567}},"_":{"docs":{},"i":{"docs":{},"t":{"docs":{},"e":{"docs":{},"r":{"docs":{},"s":{"docs":{},"=":{"1":{"docs":{},"e":{"4":{"docs":{},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"docs":{}}},"docs":{}}}}}}},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"i":{"docs":{},"m":{"docs":{},"a":{"docs":{},"t":{"docs":{},"o":{"docs":{},"r":{"docs":{},"s":{"docs":{},"表":{"docs":{},"示":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}}}}}}}},"p":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},".":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"(":{"docs":{},"y":{"docs":{},"*":{"docs":{},"n":{"docs":{},"p":{"docs":{},".":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"docs":{},"y":{"docs":{},"_":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{},")":{"docs":{},"+":{"docs":{},"(":{"1":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"(":{"docs":{},"d":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"h":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}},"d":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"m":{"docs":{},"o":{"docs":{},"d":{"docs":{},"e":{"docs":{},"l":{"docs":{},"[":{"docs":{},"'":{"docs":{},"w":{"1":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}},"docs":{}}}}}}}}}}}}},"e":{"docs":{},"x":{"docs":{},"p":{"docs":{},"(":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"o":{"docs":{},"m":{"docs":{},".":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"n":{"docs":{},"(":{"docs":{},"h":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}},"u":{"docs":{},"n":{"docs":{},"i":{"docs":{},"f":{"docs":{},"o":{"docs":{},"r":{"docs":{},"m":{"docs":{},"(":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}}}}}}}}}}}}}}}},"z":{"docs":{},"e":{"docs":{},"r":{"docs":{},"o":{"docs":{},"s":{"docs":{},"(":{"8":{"0":{"docs":{},"*":{"8":{"0":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{},"d":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}},"n":{"docs":{},"n":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}},"e":{"docs":{},"g":{"docs":{},"t":{"docs":{},"i":{"docs":{},"v":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.021238938053097345}},"e":{"docs":{},")":{"docs":{},"。":{"docs":{},"在":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"阈":{"docs":{},"值":{"docs":{},"下":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"所":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{},"m":{"docs":{},"e":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"u":{"docs":{},"m":{"docs":{},"p":{"docs":{},"i":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}},"(":{"docs":{},"n":{"docs":{},"很":{"docs":{},"大":{"docs":{},"很":{"docs":{},"大":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}}}},"o":{"docs":{},"k":{"docs":{},"。":{"docs":{},"现":{"docs":{},"在":{"docs":{},"我":{"docs":{},"们":{"docs":{},"知":{"docs":{},"道":{"docs":{},"了":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"的":{"docs":{},"方":{"docs":{},"向":{"docs":{},"是":{"docs":{},"函":{"docs":{},"数":{"docs":{},"增":{"docs":{},"长":{"docs":{},"最":{"docs":{},"快":{"docs":{},"的":{"docs":{},"方":{"docs":{},"向":{"docs":{},",":{"docs":{},"那":{"docs":{},"我":{"docs":{},"在":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"前":{"docs":{},"面":{"docs":{},"取":{"docs":{},"个":{"docs":{},"负":{"docs":{},"号":{"docs":{},"(":{"docs":{},"反":{"docs":{},"方":{"docs":{},"向":{"docs":{},")":{"docs":{},",":{"docs":{},"那":{"docs":{},"不":{"docs":{},"就":{"docs":{},"是":{"docs":{},"函":{"docs":{},"数":{"docs":{},"下":{"docs":{},"降":{"docs":{},"最":{"docs":{},"快":{"docs":{},"的":{"docs":{},"方":{"docs":{},"向":{"docs":{},"了":{"docs":{},"么":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},",":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"它":{"docs":{},"的":{"docs":{},"本":{"docs":{},"质":{"docs":{},"就":{"docs":{},"是":{"docs":{},"更":{"docs":{},"新":{"docs":{},"权":{"docs":{},"重":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"是":{"docs":{},"沿":{"docs":{},"着":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"的":{"docs":{},"反":{"docs":{},"方":{"docs":{},"向":{"docs":{},"更":{"docs":{},"新":{"docs":{},"。":{"docs":{},"好":{"docs":{},"比":{"docs":{},"下":{"docs":{},"面":{"docs":{},"这":{"docs":{},"个":{"docs":{},"图":{"docs":{},",":{"docs":{},"假":{"docs":{},"如":{"docs":{},"我":{"docs":{},"是":{"docs":{},"个":{"docs":{},"瞎":{"docs":{},"子":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"莫":{"docs":{},"名":{"docs":{},"其":{"docs":{},"妙":{"docs":{},"的":{"docs":{},"来":{"docs":{},"到":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"山":{"docs":{},"谷":{"docs":{},"里":{"docs":{},"。":{"docs":{},"现":{"docs":{},"在":{"docs":{},"我":{"docs":{},"要":{"docs":{},"做":{"docs":{},"的":{"docs":{},"事":{"docs":{},"情":{"docs":{},"就":{"docs":{},"是":{"docs":{},"走":{"docs":{},"到":{"docs":{},"山":{"docs":{},"谷":{"docs":{},"的":{"docs":{},"谷":{"docs":{},"底":{"docs":{},"。":{"docs":{},"因":{"docs":{},"为":{"docs":{},"我":{"docs":{},"是":{"docs":{},"瞎":{"docs":{},"子":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"只":{"docs":{},"能":{"docs":{},"一":{"docs":{},"点":{"docs":{},"一":{"docs":{},"点":{"docs":{},"的":{"docs":{},"挪":{"docs":{},"。":{"docs":{},"要":{"docs":{},"挪":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"那":{"docs":{},"我":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"是":{"docs":{},"那":{"docs":{},"我":{"docs":{},"的":{"docs":{},"脚":{"docs":{},"在":{"docs":{},"我":{"docs":{},"四":{"docs":{},"周":{"docs":{},"扫":{"docs":{},"一":{"docs":{},"遍":{"docs":{},",":{"docs":{},"觉":{"docs":{},"得":{"docs":{},"哪":{"docs":{},"里":{"docs":{},"感":{"docs":{},"觉":{"docs":{},"起":{"docs":{},"来":{"docs":{},"更":{"docs":{},"像":{"docs":{},"是":{"docs":{},"在":{"docs":{},"下":{"docs":{},"山":{"docs":{},"那":{"docs":{},"我":{"docs":{},"就":{"docs":{},"往":{"docs":{},"哪":{"docs":{},"里":{"docs":{},"走":{"docs":{},"。":{"docs":{},"然":{"docs":{},"后":{"docs":{},"这":{"docs":{},"样":{"docs":{},"循":{"docs":{},"环":{"docs":{},"反":{"docs":{},"复":{"docs":{},"一":{"docs":{},"发":{"docs":{},"我":{"docs":{},"最":{"docs":{},"终":{"docs":{},"就":{"docs":{},"能":{"docs":{},"走":{"docs":{},"到":{"docs":{},"山":{"docs":{},"谷":{"docs":{},"的":{"docs":{},"谷":{"docs":{},"底":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"已":{"docs":{},"经":{"docs":{},"知":{"docs":{},"道":{"docs":{},"了":{"docs":{},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"熵":{"docs":{},",":{"docs":{},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"。":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"就":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"看":{"docs":{},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"了":{"docs":{},"。":{"docs":{},"所":{"docs":{},"谓":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"就":{"docs":{},"是":{"docs":{},"表":{"docs":{},"示":{"docs":{},"我":{"docs":{},"已":{"docs":{},"知":{"docs":{},"条":{"docs":{},"件":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"到":{"docs":{},"这":{"docs":{},"里":{"docs":{},",":{"docs":{},"p":{"docs":{},"o":{"docs":{},"l":{"docs":{},"i":{"docs":{},"c":{"docs":{},"i":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}},"p":{"docs":{},"e":{"docs":{},"r":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"f":{"docs":{},":":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"(":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"y":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"i":{"docs":{},"n":{"docs":{},"(":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"y":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"b":{"docs":{},"s":{"docs":{},"e":{"docs":{},"r":{"docs":{},"v":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}},"a":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}},"x":{"1":{"docs":{},"=":{"docs":{},"l":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"g":{"docs":{},"e":{"docs":{},"(":{"0":{"docs":{},",":{"8":{"5":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}},"2":{"docs":{},"=":{"docs":{},"l":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"g":{"docs":{},"e":{"docs":{},"(":{"0":{"docs":{},",":{"8":{"5":{"docs":{},",":{"5":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}},"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904},"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857},"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}},"_":{"docs":{},"b":{"docs":{},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}},".":{"docs":{},"t":{"docs":{},".":{"docs":{},"d":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"s":{"docs":{},"e":{"docs":{},"l":{"docs":{},"f":{"docs":{},".":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"b":{"docs":{},".":{"docs":{},"d":{"docs":{},"o":{"docs":{},"t":{"docs":{},"(":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"j":{"docs":{},")":{"docs":{},"|":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"_":{"docs":{},"i":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"_":{"docs":{},"j":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}}}}}}}},"\\":{"docs":{},"n":{"docs":{},"e":{"docs":{},"q":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"_":{"docs":{},"j":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}}}}}}}}}}}}}}}}}}}}}}},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}}}}}},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669}}},"表":{"docs":{},"示":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"x":{"docs":{},"_":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"表":{"docs":{},"示":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"y":{"docs":{},"_":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},"表":{"docs":{},"示":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},",":{"docs":{},"y":{"docs":{},"_":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"表":{"docs":{},"示":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"x":{"docs":{},"x":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996},"decision_tree.html":{"ref":"decision_tree.html","tf":0.03571428571428571},"random_forest.html":{"ref":"random_forest.html","tf":0.013245033112582781}}}},"i":{"docs":{},"j":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},"^":{"docs":{},"j":{"docs":{},"x":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}},"[":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"i":{"docs":{},"n":{"docs":{},"d":{"docs":{},"e":{"docs":{},"x":{"docs":{},"]":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},"_":{"docs":{},"i":{"docs":{},"n":{"docs":{},"d":{"docs":{},"e":{"docs":{},"x":{"docs":{},"]":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}}},"表":{"docs":{},"示":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"即":{"1":{"7":{"9":{"7":{"docs":{},"行":{"6":{"4":{"docs":{},"列":{"docs":{},"的":{"docs":{},"矩":{"docs":{},"阵":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}}}}}},",":{"docs":{},"i":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"为":{"docs":{},"帧":{"docs":{},"差":{"docs":{},"图":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"y":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904},"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996},"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"x":{"docs":{},"_":{"docs":{},"j":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}},"(":{"docs":{},"​":{"docs":{},"y":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"y":{"docs":{},")":{"docs":{},"x":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"*":{"docs":{},"n":{"docs":{},"p":{"docs":{},".":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"1":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"docs":{}}}}}}}}},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"1":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"docs":{}}}}}},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{},"{":{"docs":{},"^":{"docs":{},"{":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"}":{"docs":{},"}":{"docs":{},")":{"docs":{},"^":{"2":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"y":{"docs":{},"​":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"y":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"其":{"docs":{},"中":{"docs":{},"y":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"y":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"y":{"docs":{},"(":{"docs":{},"i":{"docs":{},")":{"docs":{},"表":{"docs":{},"示":{"docs":{},"的":{"docs":{},"是":{"docs":{},"实":{"docs":{},"际":{"docs":{},"房":{"docs":{},"价":{"docs":{},",":{"docs":{},"y":{"docs":{},"(":{"docs":{},"^":{"docs":{},"i":{"docs":{},")":{"docs":{},"i":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}},"docs":{}}}}}}}}}}}}}}},"^":{"docs":{},"i":{"docs":{},")":{"docs":{},"^":{"2":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}},"j":{"docs":{},"(":{"docs":{},"θ":{"docs":{},")":{"docs":{},"=":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"h":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"x":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"−":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{},"θ":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"θ":{"docs":{},"为":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"解":{"docs":{},"。":{"docs":{},"使":{"docs":{},"用":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"来":{"docs":{},"求":{"docs":{},"解":{"docs":{},",":{"docs":{},"最":{"docs":{},"关":{"docs":{},"键":{"docs":{},"的":{"docs":{},"一":{"docs":{},"步":{"docs":{},"是":{"docs":{},"算":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"(":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"算":{"docs":{},"偏":{"docs":{},"导":{"docs":{},")":{"docs":{},",":{"docs":{},"通":{"docs":{},"过":{"docs":{},"计":{"docs":{},"算":{"docs":{},"可":{"docs":{},"知":{"docs":{},"第":{"docs":{},"$":{"docs":{},"j":{"docs":{},"$":{"docs":{},"个":{"docs":{},"权":{"docs":{},"重":{"docs":{},"的":{"docs":{},"偏":{"docs":{},"导":{"docs":{},"为":{"docs":{},":":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}}}}}},"}":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}},"{":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"i":{"docs":{},"(":{"docs":{},"y":{"docs":{},"_":{"docs":{},"{":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"}":{"docs":{},"^":{"docs":{},"i":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996},"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}},"=":{"docs":{},"\\":{"docs":{},"b":{"docs":{},"e":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"{":{"docs":{},"c":{"docs":{},"a":{"docs":{},"s":{"docs":{},"e":{"docs":{},"s":{"docs":{},"}":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},"​":{"docs":{},"y":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}},"y":{"docs":{},"_":{"docs":{},"j":{"docs":{},")":{"docs":{},"=":{"docs":{},"p":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},",":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}},"_":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},")":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.009708737864077669},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.012135922330097087},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.028169014084507043}}},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}},"​":{"docs":{},"y":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"为":{"docs":{},"样":{"docs":{},"本":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}},"的":{"docs":{},"值":{"docs":{},"域":{"docs":{},"是":{"docs":{},"(":{"docs":{},"−":{"docs":{},"∞":{"docs":{},",":{"docs":{},"+":{"docs":{},"∞":{"docs":{},")":{"docs":{},"(":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}},"y":{"docs":{},"i":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.02142857142857143}}}},"[":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"_":{"docs":{},"i":{"docs":{},"n":{"docs":{},"d":{"docs":{},"e":{"docs":{},"x":{"docs":{},"]":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},"_":{"docs":{},"i":{"docs":{},"n":{"docs":{},"d":{"docs":{},"e":{"docs":{},"x":{"docs":{},"]":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}}}},"表":{"docs":{},"示":{"docs":{},"标":{"docs":{},"签":{"docs":{},",":{"docs":{},"即":{"1":{"7":{"9":{"7":{"docs":{},"个":{"docs":{},"元":{"docs":{},"素":{"docs":{},"的":{"docs":{},"一":{"docs":{},"维":{"docs":{},"数":{"docs":{},"组":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}}}}}}},"α":{"docs":{},"\\":{"docs":{},"a":{"docs":{},"l":{"docs":{},"p":{"docs":{},"h":{"docs":{},"a":{"docs":{},"α":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∂":{"docs":{},"j":{"docs":{},"(":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"(":{"docs":{},"h":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"−":{"docs":{},"y":{"docs":{},")":{"docs":{},"x":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"m":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}},"docs":{}}}}}}}}}}}}}}},"∣":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}},"r":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"≈":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}},"≈":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}}}}}}}}}},"∂":{"docs":{},"j":{"docs":{},"(":{"docs":{},"θ":{"docs":{},"j":{"docs":{},")":{"docs":{},"θ":{"docs":{},"j":{"docs":{},"=":{"docs":{},"(":{"docs":{},"h":{"docs":{},"θ":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"−":{"docs":{},"y":{"docs":{},")":{"docs":{},"x":{"docs":{},"j":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}},"为":{"2":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"根":{"docs":{},"据":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},",":{"docs":{},"n":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.014285714285714285},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}},":":{"docs":{},"j":{"docs":{},"(":{"docs":{},"θ":{"docs":{},")":{"docs":{},"=":{"1":{"2":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"m":{"docs":{},"(":{"docs":{},"h":{"docs":{},"θ":{"docs":{},"(":{"docs":{},"x":{"docs":{},"i":{"docs":{},")":{"docs":{},"−":{"docs":{},"y":{"docs":{},"i":{"docs":{},")":{"2":{"docs":{},"j":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"1":{"docs":{},"}":{"docs":{},"{":{"2":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"^":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"(":{"docs":{},"h":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"(":{"docs":{},"x":{"docs":{},"^":{"docs":{},"i":{"docs":{},")":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}},"docs":{}}}}}}},"底":{"docs":{},")":{"docs":{},":":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"−":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"n":{"docs":{},"p":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"i":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}},"什":{"docs":{},"么":{"docs":{},"需":{"docs":{},"要":{"docs":{},"距":{"docs":{},"离":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}}}}},"蓝":{"docs":{},"色":{"docs":{},")":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"黄":{"docs":{},"色":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"我":{"docs":{},"们":{"docs":{},"提":{"docs":{},"供":{"docs":{},"了":{"docs":{},"将":{"docs":{},"数":{"docs":{},"据":{"docs":{},"划":{"docs":{},"分":{"docs":{},"成":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}},"网":{"docs":{},"格":{"docs":{},"搜":{"docs":{},"索":{"docs":{},"的":{"docs":{},"接":{"docs":{},"口":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"能":{"docs":{},"很":{"docs":{},"方":{"docs":{},"便":{"docs":{},"的":{"docs":{},"进":{"docs":{},"行":{"docs":{},"网":{"docs":{},"格":{"docs":{},"搜":{"docs":{},"索":{"docs":{},"。":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}},"模":{"docs":{},"拟":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"的":{"docs":{},"环":{"docs":{},"境":{"docs":{},"。":{"docs":{},"使":{"docs":{},"得":{"docs":{},"我":{"docs":{},"们":{"docs":{},"能":{"docs":{},"够":{"docs":{},"很":{"docs":{},"方":{"docs":{},"便":{"docs":{},"地":{"docs":{},"得":{"docs":{},"到":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"的":{"docs":{},"环":{"docs":{},"境":{"docs":{},"状":{"docs":{},"态":{"docs":{},",":{"docs":{},"并":{"docs":{},"作":{"docs":{},"出":{"docs":{},"动":{"docs":{},"作":{"docs":{},"。":{"docs":{},"想":{"docs":{},"要":{"docs":{},"安":{"docs":{},"装":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"。":{"docs":{},"既":{"docs":{},"然":{"docs":{},"船":{"docs":{},"舱":{"docs":{},"分":{"docs":{},"三":{"docs":{},"六":{"docs":{},"九":{"docs":{},"等":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"是":{"docs":{},"不":{"docs":{},"是":{"docs":{},"越":{"docs":{},"高":{"docs":{},"级":{"docs":{},"的":{"docs":{},"舱":{"docs":{},",":{"docs":{},"它":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"越":{"docs":{},"高":{"docs":{},"呢":{"docs":{},"?":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"我":{"docs":{},"如":{"docs":{},"果":{"docs":{},"一":{"docs":{},"直":{"docs":{},"朝":{"docs":{},"着":{"docs":{},"最":{"docs":{},"终":{"docs":{},"的":{"docs":{},"那":{"docs":{},"个":{"docs":{},"方":{"docs":{},"向":{"docs":{},"努":{"docs":{},"力":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"理":{"docs":{},"论":{"docs":{},"上":{"docs":{},"来":{"docs":{},"说":{"docs":{},"我":{"docs":{},"就":{"docs":{},"能":{"docs":{},"以":{"docs":{},"最":{"docs":{},"快":{"docs":{},"的":{"docs":{},"速":{"docs":{},"度":{"docs":{},"成":{"docs":{},"为":{"docs":{},"郊":{"docs":{},"区":{"docs":{},"王":{"docs":{},"者":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"五":{"docs":{},"五":{"docs":{},"开":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},",":{"docs":{},"我":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"是":{"docs":{},"最":{"docs":{},"大":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}},"会":{"docs":{},"增":{"docs":{},"大":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"越":{"docs":{},"低":{"docs":{},"。":{"docs":{},"这":{"docs":{},"与":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{},"刚":{"docs":{},"好":{"docs":{},"相":{"docs":{},"反":{"docs":{},"。":{"docs":{},"并":{"docs":{},"且":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"阈":{"docs":{},"值":{"docs":{},"一":{"docs":{},"但":{"docs":{},"改":{"docs":{},"变":{"docs":{},",":{"docs":{},"就":{"docs":{},"有":{"docs":{},"一":{"docs":{},"组":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"高":{"docs":{},",":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},"。":{"docs":{},"而":{"docs":{},"其":{"docs":{},"他":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"要":{"docs":{},"么":{"docs":{},"都":{"docs":{},"比":{"docs":{},"较":{"docs":{},"低":{"docs":{},",":{"docs":{},"要":{"docs":{},"么":{"docs":{},"一":{"docs":{},"个":{"docs":{},"低":{"docs":{},"一":{"docs":{},"个":{"docs":{},"高":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"它":{"docs":{},"们":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"很":{"docs":{},"方":{"docs":{},"便":{"docs":{},",":{"docs":{},"只":{"docs":{},"需":{"docs":{},"在":{"docs":{},"命":{"docs":{},"令":{"docs":{},"行":{"docs":{},"中":{"docs":{},"输":{"docs":{},"入":{"docs":{},"p":{"docs":{},"i":{"docs":{},"p":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}},"可":{"docs":{},"通":{"docs":{},"过":{"docs":{},"扫":{"docs":{},"码":{"docs":{},"查":{"docs":{},"看":{"docs":{},"整":{"docs":{},"套":{"docs":{},"课":{"docs":{},"程":{"docs":{},",":{"docs":{},"二":{"docs":{},"维":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}}}},"从":{"docs":{},"理":{"docs":{},"论":{"docs":{},"上":{"docs":{},"来":{"docs":{},"说":{"docs":{},",":{"docs":{},"这":{"docs":{},"式":{"docs":{},"子":{"docs":{},"满":{"docs":{},"足":{"docs":{},"线":{"docs":{},"性":{"docs":{},"系":{"docs":{},"统":{"docs":{},"的":{"docs":{},"性":{"docs":{},"质":{"docs":{},"(":{"docs":{},"至":{"docs":{},"于":{"docs":{},"线":{"docs":{},"性":{"docs":{},"系":{"docs":{},"统":{"docs":{},"是":{"docs":{},"什":{"docs":{},"么":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"查":{"docs":{},"阅":{"docs":{},"相":{"docs":{},"关":{"docs":{},"资":{"docs":{},"料":{"docs":{},",":{"docs":{},"这":{"docs":{},"里":{"docs":{},"就":{"docs":{},"不":{"docs":{},"多":{"docs":{},"做":{"docs":{},"赘":{"docs":{},"述":{"docs":{},"了":{"docs":{},",":{"docs":{},"不":{"docs":{},"然":{"docs":{},"没":{"docs":{},"完":{"docs":{},"没":{"docs":{},"了":{"docs":{},")":{"docs":{},"。":{"docs":{},"您":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"觉":{"docs":{},"得":{"docs":{},"疑":{"docs":{},"惑":{"docs":{},",":{"docs":{},"这":{"docs":{},"一":{"docs":{},"节":{"docs":{},"要":{"docs":{},"说":{"docs":{},"的":{"docs":{},"是":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},",":{"docs":{},"我":{"docs":{},"说":{"docs":{},"个":{"docs":{},"这":{"docs":{},"么":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"o":{"docs":{},"i":{"docs":{},"d":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"图":{"docs":{},"像":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},"当":{"docs":{},"t":{"docs":{},"t":{"docs":{},"t":{"docs":{},"趋":{"docs":{},"近":{"docs":{},"于":{"docs":{},"−":{"docs":{},"∞":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"这":{"docs":{},"个":{"docs":{},"公":{"docs":{},"式":{"docs":{},"也":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"我":{"docs":{},"概":{"docs":{},"率":{"docs":{},"是":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}},"张":{"docs":{},"图":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"女":{"docs":{},"性":{"docs":{},"(":{"docs":{},"上":{"docs":{},"流":{"docs":{},"女":{"docs":{},"性":{"docs":{},")":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"非":{"docs":{},"常":{"docs":{},"高":{"docs":{},"!":{"docs":{},"几":{"docs":{},"乎":{"docs":{},"接":{"docs":{},"近":{"docs":{},"了":{"docs":{},"百":{"docs":{},"分":{"docs":{},"之":{"docs":{},"百":{"docs":{},"!":{"docs":{},"而":{"docs":{},"且":{"docs":{},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"和":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"女":{"docs":{},"性":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"也":{"docs":{},"远":{"docs":{},"比":{"docs":{},"男":{"docs":{},"性":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"高":{"docs":{},"。":{"docs":{},"这":{"docs":{},"也":{"docs":{},"验":{"docs":{},"证":{"docs":{},"了":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"猜":{"docs":{},"测":{"docs":{},",":{"docs":{},"在":{"docs":{},"沉":{"docs":{},"船":{"docs":{},"后":{"docs":{},"是":{"docs":{},"优":{"docs":{},"先":{"docs":{},"女":{"docs":{},"性":{"docs":{},"和":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"的":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"上":{"docs":{},"图":{"docs":{},"可":{"docs":{},"知":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"变":{"docs":{},"高":{"docs":{},",":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"会":{"docs":{},"变":{"docs":{},"低":{"docs":{},",":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"变":{"docs":{},"低":{"docs":{},",":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"会":{"docs":{},"变":{"docs":{},"高":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"述":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"图":{"docs":{},"中":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},",":{"docs":{},"当":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"一":{"docs":{},"个":{"docs":{},"比":{"docs":{},"较":{"docs":{},"有":{"docs":{},"趣":{"docs":{},"的":{"docs":{},"现":{"docs":{},"象":{"docs":{},",":{"docs":{},"船":{"docs":{},"上":{"docs":{},"的":{"docs":{},"男":{"docs":{},"人":{"docs":{},"是":{"docs":{},"比":{"docs":{},"女":{"docs":{},"人":{"docs":{},"多":{"docs":{},"了":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}},"平":{"docs":{},"均":{"docs":{},"花":{"docs":{},"费":{"docs":{},"其":{"docs":{},"实":{"docs":{},"是":{"docs":{},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"普":{"docs":{},"遍":{"docs":{},"消":{"docs":{},"费":{"docs":{},"水":{"docs":{},"平":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"人":{"docs":{},"数":{"docs":{},"是":{"docs":{},"最":{"docs":{},"多":{"docs":{},"的":{"docs":{},",":{"docs":{},"而":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"人":{"docs":{},"群":{"docs":{},"中":{"docs":{},"花":{"docs":{},"费":{"docs":{},"人":{"docs":{},"数":{"docs":{},"最":{"docs":{},"多":{"docs":{},"的":{"docs":{},"是":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"数":{"docs":{},"据":{"docs":{},"是":{"docs":{},"由":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"泰":{"docs":{},"坦":{"docs":{},"尼":{"docs":{},"克":{"docs":{},"沉":{"docs":{},"船":{"docs":{},"事":{"docs":{},"件":{"docs":{},"中":{"docs":{},"还":{"docs":{},"是":{"docs":{},"凶":{"docs":{},"多":{"docs":{},"吉":{"docs":{},"少":{"docs":{},"的":{"docs":{},"。":{"docs":{},"因":{"docs":{},"为":{"docs":{},"在":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},"的":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"你":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"人":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"生":{"docs":{},"还":{"docs":{},"的":{"docs":{},"几":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"低":{"docs":{},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"对":{"docs":{},"于":{"docs":{},"人":{"docs":{},"数":{"docs":{},"大":{"docs":{},"于":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"上":{"docs":{},"看":{"docs":{},"会":{"docs":{},"发":{"docs":{},"现":{"docs":{},"结":{"docs":{},"果":{"docs":{},"和":{"docs":{},"上":{"docs":{},"面":{"docs":{},"的":{"docs":{},"比":{"docs":{},"较":{"docs":{},"相":{"docs":{},"似":{"docs":{},",":{"docs":{},"父":{"docs":{},"母":{"docs":{},"在":{"docs":{},"船":{"docs":{},"上":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"有":{"docs":{},"更":{"docs":{},"大":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"机":{"docs":{},"会":{"docs":{},"。":{"docs":{},"而":{"docs":{},"且":{"docs":{},"对":{"docs":{},"于":{"docs":{},"那":{"docs":{},"些":{"docs":{},"在":{"docs":{},"船":{"docs":{},"上":{"docs":{},"有":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"一":{"docs":{},"位":{"docs":{},"船":{"docs":{},"客":{"docs":{},"是":{"docs":{},"单":{"docs":{},"独":{"docs":{},"一":{"docs":{},"个":{"docs":{},"人":{"docs":{},"上":{"docs":{},"船":{"docs":{},"旅":{"docs":{},"游":{"docs":{},",":{"docs":{},"没":{"docs":{},"有":{"docs":{},"兄":{"docs":{},"弟":{"docs":{},"姐":{"docs":{},"妹":{"docs":{},"而":{"docs":{},"且":{"docs":{},"是":{"docs":{},"单":{"docs":{},"身":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"他":{"docs":{},"有":{"docs":{},"大":{"docs":{},"约":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"的":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"有":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}},"表":{"docs":{},"格":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}}}},"前":{"docs":{},"两":{"docs":{},"次":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"结":{"docs":{},"果":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"女":{"docs":{},"性":{"docs":{},",":{"docs":{},"上":{"docs":{},"流":{"docs":{},"人":{"docs":{},"士":{"docs":{},"成":{"docs":{},"为":{"docs":{},"了":{"docs":{},"是":{"docs":{},"否":{"docs":{},"能":{"docs":{},"够":{"docs":{},"活":{"docs":{},"下":{"docs":{},"来":{"docs":{},"的":{"docs":{},"关":{"docs":{},"键":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"上":{"docs":{},"流":{"docs":{},"女":{"docs":{},"性":{"docs":{},"(":{"docs":{},"两":{"docs":{},"者":{"docs":{},"的":{"docs":{},"结":{"docs":{},"合":{"docs":{},")":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"会":{"docs":{},"不":{"docs":{},"会":{"docs":{},"很":{"docs":{},"高":{"docs":{},"呢":{"docs":{},"?":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"结":{"docs":{},"果":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},":":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"热":{"docs":{},"力":{"docs":{},"图":{"docs":{},"上":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},"这":{"docs":{},"些":{"docs":{},"特":{"docs":{},"征":{"docs":{},"之":{"docs":{},"间":{"docs":{},"没":{"docs":{},"有":{"docs":{},"太":{"docs":{},"大":{"docs":{},"的":{"docs":{},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},",":{"docs":{},"最":{"docs":{},"高":{"docs":{},"的":{"docs":{},"也":{"docs":{},"就":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"位":{"docs":{},"朋":{"docs":{},"友":{"docs":{},"来":{"docs":{},"找":{"docs":{},"这":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},"就":{"docs":{},"可":{"docs":{},"能":{"docs":{},"找":{"docs":{},"出":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}},"使":{"docs":{},"用":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{},"求":{"docs":{},"解":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"解":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"思":{"docs":{},"想":{"docs":{},"进":{"docs":{},"行":{"docs":{},"分":{"docs":{},"类":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":5.004739336492891}}}}}}}}}}},"k":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}},"s":{"docs":{},"k":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{},"识":{"docs":{},"别":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}},"进":{"docs":{},"行":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":10.00242718446602}}}}}}}}}}}}}}},"p":{"docs":{},"o":{"docs":{},"l":{"docs":{},"i":{"docs":{},"c":{"docs":{},"i":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":5.004347826086956}}}}}}}}}},"喏":{"docs":{},",":{"docs":{},"其":{"docs":{},"实":{"docs":{},"找":{"docs":{},"直":{"docs":{},"线":{"docs":{},"的":{"docs":{},"过":{"docs":{},"程":{"docs":{},"就":{"docs":{},"是":{"docs":{},"在":{"docs":{},"做":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},",":{"docs":{},"只":{"docs":{},"不":{"docs":{},"过":{"docs":{},"这":{"docs":{},"个":{"docs":{},"叫":{"docs":{},"法":{"docs":{},"更":{"docs":{},"有":{"docs":{},"高":{"docs":{},"大":{"docs":{},"上":{"docs":{},"而":{"docs":{},"已":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"如":{"docs":{},"果":{"docs":{},"假":{"docs":{},"设":{"docs":{},"h":{"docs":{},"(":{"docs":{},"θ":{"docs":{},")":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"_":{"docs":{},"{":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},")":{"docs":{},"}":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"​":{"docs":{},"(":{"docs":{},"θ":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"表":{"docs":{},"示":{"docs":{},"当":{"docs":{},"权":{"docs":{},"重":{"docs":{},"为":{"docs":{},"θ":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"θ":{"docs":{},",":{"docs":{},"输":{"docs":{},"入":{"docs":{},"为":{"docs":{},"x":{"docs":{},"x":{"docs":{},"x":{"docs":{},"时":{"docs":{},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"y":{"docs":{},"(":{"docs":{},"^":{"docs":{},"i":{"docs":{},")":{"docs":{},"i":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"看":{"docs":{},"到":{"docs":{},"这":{"docs":{},"一":{"docs":{},"堆":{"docs":{},"公":{"docs":{},"式":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"懵":{"docs":{},"逼":{"docs":{},",":{"docs":{},"那":{"docs":{},"不":{"docs":{},"如":{"docs":{},"举":{"docs":{},"个":{"docs":{},"栗":{"docs":{},"子":{"docs":{},"来":{"docs":{},"看":{"docs":{},"看":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"算":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"我":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"这":{"docs":{},"一":{"docs":{},"个":{"docs":{},"数":{"docs":{},"据":{"docs":{},"表":{"docs":{},",":{"docs":{},"第":{"docs":{},"一":{"docs":{},"列":{"docs":{},"是":{"docs":{},"性":{"docs":{},"别":{"docs":{},",":{"docs":{},"第":{"docs":{},"二":{"docs":{},"列":{"docs":{},"是":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},",":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"将":{"docs":{},"每":{"docs":{},"个":{"docs":{},"村":{"docs":{},"民":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"每":{"docs":{},"个":{"docs":{},"村":{"docs":{},"民":{"docs":{},"的":{"docs":{},"任":{"docs":{},"务":{"docs":{},"就":{"docs":{},"是":{"docs":{},"二":{"docs":{},"分":{"docs":{},"类":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"把":{"docs":{},"这":{"docs":{},"些":{"docs":{},"结":{"docs":{},"果":{"docs":{},"组":{"docs":{},"成":{"docs":{},"如":{"docs":{},"下":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},",":{"docs":{},"则":{"docs":{},"该":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},"就":{"docs":{},"成":{"docs":{},"为":{"docs":{},"混":{"docs":{},"淆":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}},"整":{"docs":{},"个":{"docs":{},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"所":{"docs":{},"有":{"docs":{},"可":{"docs":{},"能":{"docs":{},"出":{"docs":{},"现":{"docs":{},"的":{"docs":{},"状":{"docs":{},"态":{"docs":{},",":{"docs":{},"动":{"docs":{},"作":{"docs":{},",":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"组":{"docs":{},"合":{"docs":{},"起":{"docs":{},"来":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"玩":{"docs":{},"了":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}},"将":{"docs":{},"整":{"docs":{},"个":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"过":{"docs":{},"程":{"docs":{},"中":{"docs":{},"的":{"docs":{},"合":{"docs":{},"并":{"docs":{},",":{"docs":{},"与":{"docs":{},"合":{"docs":{},"并":{"docs":{},"的":{"docs":{},"次":{"docs":{},"序":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"出":{"docs":{},"来":{"docs":{},",":{"docs":{},"就":{"docs":{},"能":{"docs":{},"看":{"docs":{},"出":{"docs":{},"为":{"docs":{},"什":{"docs":{},"么":{"docs":{},"说":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"正":{"docs":{},"确":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"为":{"docs":{},"负":{"docs":{},"数":{"docs":{},",":{"docs":{},"则":{"docs":{},"说":{"docs":{},"明":{"docs":{},"我":{"docs":{},"们":{"docs":{},"训":{"docs":{},"练":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"还":{"docs":{},"不":{"docs":{},"如":{"docs":{},"基":{"docs":{},"准":{"docs":{},"模":{"docs":{},"型":{"docs":{},",":{"docs":{},"此":{"docs":{},"时":{"docs":{},",":{"docs":{},"很":{"docs":{},"有":{"docs":{},"可":{"docs":{},"能":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"不":{"docs":{},"存":{"docs":{},"在":{"docs":{},"任":{"docs":{},"何":{"docs":{},"线":{"docs":{},"性":{"docs":{},"关":{"docs":{},"系":{"docs":{},"。":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"现":{"docs":{},"在":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"高":{"docs":{},"度":{"docs":{},"相":{"docs":{},"关":{"docs":{},"或":{"docs":{},"者":{"docs":{},"完":{"docs":{},"全":{"docs":{},"相":{"docs":{},"关":{"docs":{},",":{"docs":{},"这":{"docs":{},"就":{"docs":{},"意":{"docs":{},"味":{"docs":{},"着":{"docs":{},"这":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"都":{"docs":{},"包":{"docs":{},"含":{"docs":{},"高":{"docs":{},"度":{"docs":{},"相":{"docs":{},"似":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"信":{"docs":{},"息":{"docs":{},"的":{"docs":{},"差":{"docs":{},"异":{"docs":{},"非":{"docs":{},"常":{"docs":{},"小":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"其":{"docs":{},"中":{"docs":{},"一":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"是":{"docs":{},"多":{"docs":{},"余":{"docs":{},"的":{"docs":{},"。":{"docs":{},"在":{"docs":{},"构":{"docs":{},"建":{"docs":{},"模":{"docs":{},"型":{"docs":{},"时":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"应":{"docs":{},"该":{"docs":{},"尽":{"docs":{},"量":{"docs":{},"消":{"docs":{},"除":{"docs":{},"这":{"docs":{},"种":{"docs":{},"多":{"docs":{},"余":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"这":{"docs":{},"样":{"docs":{},"能":{"docs":{},"减":{"docs":{},"少":{"docs":{},"训":{"docs":{},"练":{"docs":{},"的":{"docs":{},"时":{"docs":{},"间":{"docs":{},",":{"docs":{},"也":{"docs":{},"可":{"docs":{},"以":{"docs":{},"在":{"docs":{},"某":{"docs":{},"种":{"docs":{},"程":{"docs":{},"度":{"docs":{},"上":{"docs":{},"缓":{"docs":{},"解":{"docs":{},"过":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},"(":{"docs":{},"竖":{"docs":{},"线":{"docs":{},"代":{"docs":{},"表":{"docs":{},"分":{"docs":{},"类":{"docs":{},"阈":{"docs":{},"值":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"会":{"docs":{},"将":{"docs":{},"竖":{"docs":{},"线":{"docs":{},"左":{"docs":{},"边":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"分":{"docs":{},"类":{"docs":{},"成":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"表":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"循":{"docs":{},"环":{"docs":{},"干":{"docs":{},"的":{"docs":{},"事":{"docs":{},"情":{"docs":{},"就":{"docs":{},"相":{"docs":{},"当":{"docs":{},"于":{"docs":{},"我":{"docs":{},"下":{"docs":{},"山":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"在":{"docs":{},"迈":{"docs":{},"步":{"docs":{},"子":{"docs":{},",":{"docs":{},"代":{"docs":{},"码":{"docs":{},"里":{"docs":{},"的":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}},"若":{"docs":{},"干":{"docs":{},"次":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}},"怎":{"docs":{},"样":{"docs":{},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"解":{"docs":{},"?":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}},"处":{"docs":{},"理":{"docs":{},"数":{"docs":{},"据":{"docs":{},",":{"docs":{},"使":{"docs":{},"用":{"docs":{},"什":{"docs":{},"么":{"docs":{},"样":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"模":{"docs":{},"型":{"docs":{},"并":{"docs":{},"没":{"docs":{},"有":{"docs":{},"所":{"docs":{},"谓":{"docs":{},"的":{"docs":{},"正":{"docs":{},"确":{"docs":{},"答":{"docs":{},"案":{"docs":{},"。":{"docs":{},"这":{"docs":{},"篇":{"docs":{},"文":{"docs":{},"章":{"docs":{},"只":{"docs":{},"是":{"docs":{},"抛":{"docs":{},"砖":{"docs":{},"引":{"docs":{},"玉":{"docs":{},",":{"docs":{},"若":{"docs":{},"您":{"docs":{},"是":{"docs":{},"刚":{"docs":{},"刚":{"docs":{},"接":{"docs":{},"触":{"docs":{},"数":{"docs":{},"据":{"docs":{},"科":{"docs":{},"学":{"docs":{},",":{"docs":{},"我":{"docs":{},"相":{"docs":{},"信":{"docs":{},"这":{"docs":{},"一":{"docs":{},"篇":{"docs":{},"不":{"docs":{},"错":{"docs":{},"的":{"docs":{},"指":{"docs":{},"引":{"docs":{},";":{"docs":{},"若":{"docs":{},"您":{"docs":{},"已":{"docs":{},"经":{"docs":{},"是":{"docs":{},"老":{"docs":{},"手":{"docs":{},",":{"docs":{},"我":{"docs":{},"相":{"docs":{},"信":{"docs":{},"文":{"docs":{},"中":{"docs":{},"的":{"docs":{},"一":{"docs":{},"些":{"docs":{},"技":{"docs":{},"巧":{"docs":{},"您":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"也":{"docs":{},"用":{"docs":{},"过":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"温":{"docs":{},"故":{"docs":{},"而":{"docs":{},"知":{"docs":{},"新":{"docs":{},";":{"docs":{},"所":{"docs":{},"以":{"docs":{},"希":{"docs":{},"望":{"docs":{},"这":{"docs":{},"篇":{"docs":{},"文":{"docs":{},"章":{"docs":{},"对":{"docs":{},"您":{"docs":{},"或":{"docs":{},"多":{"docs":{},"或":{"docs":{},"少":{"docs":{},"的":{"docs":{},"有":{"docs":{},"所":{"docs":{},"帮":{"docs":{},"助":{"docs":{},"。":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"或":{"docs":{},"者":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"这":{"docs":{},"样":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}},"是":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}},"来":{"docs":{},"。":{"docs":{},"而":{"docs":{},"且":{"docs":{},"呢":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"式":{"docs":{},"子":{"docs":{},"是":{"docs":{},"线":{"docs":{},"性":{"docs":{},"的":{"docs":{},",":{"docs":{},"为":{"docs":{},"什":{"docs":{},"么":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"因":{"docs":{},"为":{"docs":{},"从":{"docs":{},"直":{"docs":{},"觉":{"docs":{},"上":{"docs":{},"来":{"docs":{},"说":{"docs":{},",":{"docs":{},"你":{"docs":{},"都":{"docs":{},"知":{"docs":{},"道":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"式":{"docs":{},"子":{"docs":{},"的":{"docs":{},"函":{"docs":{},"数":{"docs":{},"图":{"docs":{},"像":{"docs":{},"是":{"docs":{},"条":{"docs":{},"直":{"docs":{},"线":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"拟":{"docs":{},"合":{"docs":{},"样":{"docs":{},"本":{"docs":{},"数":{"docs":{},"据":{"docs":{},",":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"输":{"docs":{},"出":{"docs":{},"为":{"docs":{},"y":{"docs":{},"^":{"docs":{},"=":{"docs":{},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}},"表":{"docs":{},"示":{"docs":{},"第":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}},"自":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"实":{"docs":{},"现":{"docs":{},"雅":{"docs":{},"达":{"docs":{},"利":{"docs":{},"环":{"docs":{},"境":{"docs":{},"的":{"docs":{},"模":{"docs":{},"拟":{"docs":{},"。":{"docs":{},"安":{"docs":{},"装":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}},"直":{"docs":{},"线":{"docs":{},"方":{"docs":{},"程":{"docs":{},"干":{"docs":{},"啥":{"docs":{},"?":{"docs":{},"其":{"docs":{},"实":{"docs":{},",":{"docs":{},"说":{"docs":{},"白":{"docs":{},"了":{"docs":{},",":{"docs":{},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{},"就":{"docs":{},"是":{"docs":{},"在":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}},"种":{"docs":{},"直":{"docs":{},"线":{"docs":{},"来":{"docs":{},",":{"docs":{},"比":{"docs":{},"如":{"docs":{},"这":{"docs":{},"样":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}},"线":{"docs":{},"性":{"docs":{},"回":{"docs":{},"归":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":5.011904761904762},"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"是":{"docs":{},"什":{"docs":{},"么":{"docs":{},"意":{"docs":{},"思":{"docs":{},"?":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"拆":{"docs":{},"字":{"docs":{},"释":{"docs":{},"义":{"docs":{},"。":{"docs":{},"回":{"docs":{},"归":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"不":{"docs":{},"用":{"docs":{},"我":{"docs":{},"多":{"docs":{},"说":{"docs":{},"了":{"docs":{},",":{"docs":{},"那":{"docs":{},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"线":{"docs":{},"性":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"回":{"docs":{},"忆":{"docs":{},"一":{"docs":{},"下":{"docs":{},"初":{"docs":{},"中":{"docs":{},"时":{"docs":{},"学":{"docs":{},"过":{"docs":{},"的":{"docs":{},"直":{"docs":{},"线":{"docs":{},"方":{"docs":{},"程":{"docs":{},":":{"docs":{},"y":{"docs":{},"=":{"docs":{},"k":{"docs":{},"∗":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},"y":{"docs":{},"=":{"docs":{},"k":{"docs":{},"*":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},"y":{"docs":{},"=":{"docs":{},"k":{"docs":{},"∗":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"维":{"docs":{},"空":{"docs":{},"间":{"docs":{},"中":{"docs":{},"找":{"docs":{},"一":{"docs":{},"个":{"docs":{},"形":{"docs":{},"式":{"docs":{},"像":{"docs":{},"直":{"docs":{},"线":{"docs":{},"方":{"docs":{},"程":{"docs":{},"一":{"docs":{},"样":{"docs":{},"的":{"docs":{},"函":{"docs":{},"数":{"docs":{},"来":{"docs":{},"拟":{"docs":{},"合":{"docs":{},"数":{"docs":{},"据":{"docs":{},"而":{"docs":{},"已":{"docs":{},"。":{"docs":{},"比":{"docs":{},"如":{"docs":{},"说":{"docs":{},",":{"docs":{},"我":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"这":{"docs":{},"么":{"docs":{},"一":{"docs":{},"张":{"docs":{},"图":{"docs":{},",":{"docs":{},"横":{"docs":{},"坐":{"docs":{},"标":{"docs":{},"代":{"docs":{},"表":{"docs":{},"房":{"docs":{},"子":{"docs":{},"的":{"docs":{},"面":{"docs":{},"积":{"docs":{},",":{"docs":{},"纵":{"docs":{},"坐":{"docs":{},"标":{"docs":{},"代":{"docs":{},"表":{"docs":{},"房":{"docs":{},"价":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"计":{"docs":{},"算":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"当":{"docs":{},"前":{"docs":{},"参":{"docs":{},"数":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"对":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"梯":{"docs":{},"度":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}},"预":{"docs":{},"测":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}},"机":{"docs":{},"就":{"docs":{},"是":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}},"有":{"docs":{},"一":{"docs":{},"位":{"docs":{},"虚":{"docs":{},"拟":{"docs":{},"的":{"docs":{},"裁":{"docs":{},"判":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"裁":{"docs":{},"判":{"docs":{},"他":{"docs":{},"不":{"docs":{},"会":{"docs":{},"告":{"docs":{},"诉":{"docs":{},"你":{"docs":{},"如":{"docs":{},"何":{"docs":{},"行":{"docs":{},"动":{"docs":{},",":{"docs":{},"如":{"docs":{},"何":{"docs":{},"做":{"docs":{},"决":{"docs":{},"定":{"docs":{},",":{"docs":{},"他":{"docs":{},"为":{"docs":{},"你":{"docs":{},"做":{"docs":{},"的":{"docs":{},"事":{"docs":{},"只":{"docs":{},"有":{"docs":{},"给":{"docs":{},"你":{"docs":{},"的":{"docs":{},"行":{"docs":{},"为":{"docs":{},"打":{"docs":{},"分":{"docs":{},",":{"docs":{},"最":{"docs":{},"开":{"docs":{},"始":{"docs":{},",":{"docs":{},"计":{"docs":{},"算":{"docs":{},"机":{"docs":{},"完":{"docs":{},"全":{"docs":{},"不":{"docs":{},"知":{"docs":{},"道":{"docs":{},"该":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"做":{"docs":{},",":{"docs":{},"行":{"docs":{},"为":{"docs":{},"完":{"docs":{},"全":{"docs":{},"是":{"docs":{},"随":{"docs":{},"机":{"docs":{},"的":{"docs":{},",":{"docs":{},"那":{"docs":{},"计":{"docs":{},"算":{"docs":{},"机":{"docs":{},"应":{"docs":{},"该":{"docs":{},"以":{"docs":{},"什":{"docs":{},"么":{"docs":{},"形":{"docs":{},"式":{"docs":{},"学":{"docs":{},"习":{"docs":{},"这":{"docs":{},"些":{"docs":{},"现":{"docs":{},"有":{"docs":{},"的":{"docs":{},"资":{"docs":{},"源":{"docs":{},",":{"docs":{},"或":{"docs":{},"者":{"docs":{},"说":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"样":{"docs":{},"只":{"docs":{},"从":{"docs":{},"分":{"docs":{},"数":{"docs":{},"中":{"docs":{},"学":{"docs":{},"习":{"docs":{},"到":{"docs":{},"我":{"docs":{},"应":{"docs":{},"该":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"做":{"docs":{},"决":{"docs":{},"定":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"很":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"只":{"docs":{},"需":{"docs":{},"要":{"docs":{},"记":{"docs":{},"住":{"docs":{},"那":{"docs":{},"些":{"docs":{},"高":{"docs":{},"分":{"docs":{},",":{"docs":{},"低":{"docs":{},"分":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{},"行":{"docs":{},"为":{"docs":{},",":{"docs":{},"下":{"docs":{},"次":{"docs":{},"用":{"docs":{},"同":{"docs":{},"样":{"docs":{},"的":{"docs":{},"行":{"docs":{},"为":{"docs":{},"拿":{"docs":{},"高":{"docs":{},"分":{"docs":{},",":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"高":{"docs":{},"端":{"docs":{},"点":{"docs":{},"叫":{"docs":{},"学":{"docs":{},"习":{"docs":{},"率":{"docs":{},",":{"docs":{},"实":{"docs":{},"际":{"docs":{},"上":{"docs":{},"就":{"docs":{},"是":{"docs":{},"代":{"docs":{},"表":{"docs":{},"我":{"docs":{},"下":{"docs":{},"山":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"步":{"docs":{},"子":{"docs":{},"迈":{"docs":{},"多":{"docs":{},"大":{"docs":{},"。":{"docs":{},"值":{"docs":{},"越":{"docs":{},"小":{"docs":{},"就":{"docs":{},"代":{"docs":{},"表":{"docs":{},"我":{"docs":{},"步":{"docs":{},"子":{"docs":{},"迈":{"docs":{},"得":{"docs":{},"小":{"docs":{},",":{"docs":{},"害":{"docs":{},"怕":{"docs":{},"一":{"docs":{},"脚":{"docs":{},"下":{"docs":{},"去":{"docs":{},"掉":{"docs":{},"坑":{"docs":{},"里":{"docs":{},"。":{"docs":{},"值":{"docs":{},"越":{"docs":{},"大":{"docs":{},"就":{"docs":{},"代":{"docs":{},"表":{"docs":{},"我":{"docs":{},"胆":{"docs":{},"子":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"步":{"docs":{},"子":{"docs":{},"迈":{"docs":{},"得":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"有":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"越":{"docs":{},"过":{"docs":{},"山":{"docs":{},"谷":{"docs":{},"的":{"docs":{},"谷":{"docs":{},"底":{"docs":{},"。":{"docs":{"linear_regression.html":{"ref":"linear_regression.html","tf":0.011904761904761904}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},")":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"输":{"docs":{},"出":{"docs":{},"会":{"docs":{},"是":{"docs":{},"不":{"docs":{},"流":{"docs":{},"失":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}},"#":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991},"sklearn.html":{"ref":"sklearn.html","tf":0.10436893203883495},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.007142857142857143},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.056338028169014086},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.0782608695652174}},"l":{"docs":{},"o":{"docs":{},"s":{"docs":{},"s":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}},"e":{"docs":{},"t":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}},"c":{"docs":{},"中":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}},"为":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"结":{"docs":{},"果":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}},"假":{"docs":{},"设":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"为":{"docs":{},"d":{"docs":{},",":{"docs":{},"想":{"docs":{},"要":{"docs":{},"聚":{"docs":{},"成":{"docs":{},"的":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"为":{"docs":{},"k":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}},"将":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"看":{"docs":{},"成":{"docs":{},"一":{"docs":{},"个":{"docs":{},"簇":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}},"二":{"docs":{},"维":{"docs":{},"图":{"docs":{},"压":{"docs":{},"成":{"docs":{},"一":{"docs":{},"维":{"docs":{},"的":{"docs":{},"数":{"docs":{},"组":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"c":{"docs":{},"o":{"docs":{},"r":{"docs":{},"r":{"docs":{},"(":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}},"s":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"e":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"不":{"docs":{},"要":{"docs":{},"上":{"docs":{},"面":{"docs":{},"的":{"docs":{},"记":{"docs":{},"分":{"docs":{},"牌":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}},"从":{"docs":{},"动":{"docs":{},"作":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"中":{"docs":{},"采":{"docs":{},"样":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},",":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"=":{"2":{"docs":{},"表":{"docs":{},"示":{"docs":{},"往":{"docs":{},"上":{"docs":{},"挪":{"docs":{},",":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"=":{"3":{"docs":{},"表":{"docs":{},"示":{"docs":{},"往":{"docs":{},"下":{"docs":{},"挪":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}},"docs":{}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}},"前":{"docs":{},"向":{"docs":{},"传":{"docs":{},"播":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"&":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"/":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}}},"d":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}},"e":{"docs":{},"f":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.014218009478672985},"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}}},"a":{"docs":{},"d":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}}}}}}},"j":{"docs":{},"(":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}},"d":{"docs":{},"d":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.014285714285714285}}}},":":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"=":{"docs":{},"|":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"∣":{"docs":{},"{":{"docs":{},"(":{"docs":{},"x":{"docs":{},"i":{"docs":{},",":{"docs":{},"x":{"docs":{},"j":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"j":{"docs":{},",":{"docs":{},"λ":{"docs":{},"i":{"docs":{},"∗":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"j":{"docs":{},"∗":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"∣":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},"≠":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"i":{"docs":{},"j":{"docs":{},"}":{"docs":{},"∣":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"_":{"docs":{},"c":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"m":{"docs":{},"u":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}}}}},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"}":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"c":{"docs":{},"_":{"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}}}}},"a":{"docs":{},"v":{"docs":{},"i":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"t":{"docs":{},"a":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}},"s":{"docs":{},".":{"docs":{},"l":{"docs":{},"o":{"docs":{},"a":{"docs":{},"d":{"docs":{},"_":{"docs":{},"d":{"docs":{},"i":{"docs":{},"g":{"docs":{},"i":{"docs":{},"t":{"docs":{},"s":{"docs":{},"(":{"docs":{},")":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}}}}}}}}}}}}}}},".":{"docs":{},"g":{"docs":{},"r":{"docs":{},"o":{"docs":{},"u":{"docs":{},"p":{"docs":{},"b":{"docs":{},"y":{"docs":{},"(":{"docs":{},"'":{"docs":{},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"'":{"docs":{},")":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"(":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},")":{"docs":{},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"c":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"t":{"docs":{},"(":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"h":{"docs":{},"e":{"docs":{},"a":{"docs":{},"d":{"docs":{},"(":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"i":{"docs":{},"s":{"docs":{},"n":{"docs":{},"u":{"docs":{},"l":{"docs":{},"l":{"docs":{},"(":{"docs":{},")":{"docs":{},".":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"(":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"l":{"docs":{},"o":{"docs":{},"c":{"docs":{},"[":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},".":{"docs":{},"i":{"docs":{},"s":{"docs":{},"n":{"docs":{},"u":{"docs":{},"l":{"docs":{},"l":{"docs":{},"(":{"docs":{},")":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"=":{"docs":{},"=":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"2":{"2":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{}}}}}}}}}}}}}},"r":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"3":{"3":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{}}}}}}}}}}},"s":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"3":{"6":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{}}}}}}}}}}}}}},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},")":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"4":{"6":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"f":{"docs":{},"a":{"docs":{},"m":{"docs":{},"i":{"docs":{},"l":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"=":{"docs":{},"=":{"0":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"1":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"docs":{}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"1":{"6":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"3":{"2":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"4":{"8":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"6":{"4":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"_":{"docs":{},"b":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"4":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"docs":{}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"7":{"docs":{},".":{"9":{"1":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"1":{"4":{"docs":{},".":{"4":{"5":{"4":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"3":{"1":{"docs":{},")":{"docs":{},"&":{"docs":{},"(":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}},"d":{"docs":{},"r":{"docs":{},"o":{"docs":{},"p":{"docs":{},"(":{"docs":{},"[":{"docs":{},"'":{"docs":{},"n":{"docs":{},"a":{"docs":{},"m":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"t":{"docs":{},"i":{"docs":{},"c":{"docs":{},"k":{"docs":{},"e":{"docs":{},"t":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"a":{"docs":{},"b":{"docs":{},"i":{"docs":{},"n":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"p":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{},"e":{"docs":{},"r":{"docs":{},"i":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"i":{"docs":{},"s":{"docs":{},"=":{"1":{"docs":{},",":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}},":":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"=":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},",":{"docs":{},"s":{"docs":{},"p":{"docs":{},"l":{"docs":{},"i":{"docs":{},"t":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"1":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}},"p":{"docs":{},"d":{"docs":{},".":{"docs":{},"r":{"docs":{},"e":{"docs":{},"a":{"docs":{},"d":{"docs":{},"_":{"docs":{},"c":{"docs":{},"s":{"docs":{},"v":{"docs":{},"(":{"docs":{},"'":{"docs":{},".":{"docs":{},"/":{"docs":{},"t":{"docs":{},"i":{"docs":{},"t":{"docs":{},"a":{"docs":{},"n":{"docs":{},"i":{"docs":{},"c":{"docs":{},"/":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"i":{"docs":{},"n":{"docs":{},".":{"docs":{},"c":{"docs":{},"s":{"docs":{},"v":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"[":{"docs":{},"'":{"docs":{},"e":{"docs":{},"m":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"k":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"f":{"docs":{},"i":{"docs":{},"l":{"docs":{},"l":{"docs":{},"n":{"docs":{},"a":{"docs":{},"(":{"docs":{},"'":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"docs":{},"e":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"(":{"docs":{},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"q":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"[":{"0":{"docs":{},",":{"1":{"docs":{},",":{"2":{"docs":{},"]":{"docs":{},",":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"r":{"docs":{},"e":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"(":{"docs":{},"[":{"docs":{},"'":{"docs":{},"m":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"m":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"d":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"a":{"docs":{},"j":{"docs":{},"o":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"l":{"docs":{},"a":{"docs":{},"d":{"docs":{},"y":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"j":{"docs":{},"o":{"docs":{},"n":{"docs":{},"k":{"docs":{},"h":{"docs":{},"e":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"r":{"docs":{},"e":{"docs":{},"v":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"a":{"docs":{},"p":{"docs":{},"t":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"i":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"d":{"docs":{},"o":{"docs":{},"n":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"[":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"a":{"docs":{},"s":{"docs":{},"t":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"[":{"0":{"docs":{},",":{"1":{"docs":{},",":{"2":{"docs":{},",":{"3":{"docs":{},",":{"4":{"docs":{},"]":{"docs":{},",":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"=":{"0":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},".":{"docs":{},"n":{"docs":{},"a":{"docs":{},"m":{"docs":{},"e":{"docs":{},".":{"docs":{},"s":{"docs":{},"t":{"docs":{},"r":{"docs":{},".":{"docs":{},"e":{"docs":{},"x":{"docs":{},"t":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"t":{"docs":{},"(":{"docs":{},"'":{"docs":{},"(":{"docs":{},"[":{"docs":{},"a":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"p":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"v":{"docs":{},"a":{"docs":{},"l":{"docs":{},"u":{"docs":{},"e":{"docs":{},"_":{"docs":{},"c":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"t":{"docs":{},"s":{"docs":{},"(":{"docs":{},")":{"docs":{},".":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},".":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"(":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827},"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},".":{"docs":{},"v":{"docs":{},"a":{"docs":{},"l":{"docs":{},"u":{"docs":{},"e":{"docs":{},"_":{"docs":{},"c":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"t":{"docs":{},"s":{"docs":{},"(":{"docs":{},")":{"docs":{},".":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},".":{"docs":{},"p":{"docs":{},"i":{"docs":{},"e":{"docs":{},"(":{"docs":{},"e":{"docs":{},"x":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"d":{"docs":{},"e":{"docs":{},"=":{"docs":{},"[":{"0":{"docs":{},",":{"0":{"docs":{},".":{"1":{"docs":{},"]":{"docs":{},",":{"docs":{},"a":{"docs":{},"u":{"docs":{},"t":{"docs":{},"o":{"docs":{},"p":{"docs":{},"c":{"docs":{},"t":{"docs":{},"=":{"docs":{},"'":{"docs":{},"%":{"1":{"docs":{},".":{"1":{"docs":{},"f":{"docs":{},"%":{"docs":{},"%":{"docs":{},"'":{"docs":{},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},",":{"docs":{},"s":{"docs":{},"h":{"docs":{},"a":{"docs":{},"d":{"docs":{},"o":{"docs":{},"w":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"r":{"docs":{},"e":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"(":{"docs":{},"[":{"docs":{},"'":{"docs":{},"m":{"docs":{},"a":{"docs":{},"l":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"f":{"docs":{},"e":{"docs":{},"m":{"docs":{},"a":{"docs":{},"l":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"[":{"0":{"docs":{},",":{"1":{"docs":{},"]":{"docs":{},",":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"_":{"docs":{},"b":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"docs":{}}}}}}}}}}},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"docs":{}}}}}}}}},"f":{"docs":{},"a":{"docs":{},"m":{"docs":{},"i":{"docs":{},"l":{"docs":{},"y":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"p":{"docs":{},"a":{"docs":{},"r":{"docs":{},"c":{"docs":{},"h":{"docs":{},"'":{"docs":{},"]":{"docs":{},"+":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"i":{"docs":{},"b":{"docs":{},"s":{"docs":{},"p":{"docs":{},"'":{"docs":{},"]":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"docs":{},"e":{"docs":{},"_":{"docs":{},"c":{"docs":{},"a":{"docs":{},"t":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"0":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"docs":{}}}}}}}}}}}}},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},"]":{"docs":{},".":{"docs":{},"g":{"docs":{},"r":{"docs":{},"o":{"docs":{},"u":{"docs":{},"p":{"docs":{},"b":{"docs":{},"y":{"docs":{},"(":{"docs":{},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"e":{"docs":{},"x":{"docs":{},"'":{"docs":{},"]":{"docs":{},")":{"docs":{},".":{"docs":{},"m":{"docs":{},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"(":{"docs":{},")":{"docs":{},".":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},".":{"docs":{},"b":{"docs":{},"a":{"docs":{},"r":{"docs":{},"(":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},"]":{"docs":{},"=":{"docs":{},"=":{"0":{"docs":{},"]":{"docs":{},".":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},".":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},".":{"docs":{},"h":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"0":{"docs":{},"]":{"docs":{},",":{"docs":{},"b":{"docs":{},"i":{"docs":{},"n":{"docs":{},"s":{"docs":{},"=":{"2":{"0":{"docs":{},",":{"docs":{},"e":{"docs":{},"d":{"docs":{},"g":{"docs":{},"e":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"o":{"docs":{},"r":{"docs":{},"=":{"docs":{},"'":{"docs":{},"b":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"k":{"docs":{},"'":{"docs":{},",":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"o":{"docs":{},"r":{"docs":{},"=":{"docs":{},"'":{"docs":{},"r":{"docs":{},"e":{"docs":{},"d":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}},"1":{"docs":{},"]":{"docs":{},".":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},".":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},".":{"docs":{},"h":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"a":{"docs":{},"x":{"docs":{},"[":{"1":{"docs":{},"]":{"docs":{},",":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"o":{"docs":{},"r":{"docs":{},"=":{"docs":{},"'":{"docs":{},"g":{"docs":{},"r":{"docs":{},"e":{"docs":{},"e":{"docs":{},"n":{"docs":{},"'":{"docs":{},",":{"docs":{},"b":{"docs":{},"i":{"docs":{},"n":{"docs":{},"s":{"docs":{},"=":{"2":{"0":{"docs":{},",":{"docs":{},"e":{"docs":{},"d":{"docs":{},"g":{"docs":{},"e":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"o":{"docs":{},"r":{"docs":{},"=":{"docs":{},"'":{"docs":{},"b":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"k":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}},"b":{"docs":{},"i":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"=":{"1":{"docs":{},"k":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"k":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"(":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"i":{"docs":{},")":{"docs":{},"+":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"j":{"docs":{},")":{"docs":{},"d":{"docs":{},"c":{"docs":{},"(":{"docs":{},"μ":{"docs":{},"i":{"docs":{},",":{"docs":{},"μ":{"docs":{},"j":{"docs":{},")":{"docs":{},")":{"docs":{},",":{"docs":{},"i":{"docs":{},"≠":{"docs":{},"j":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}},"=":{"0":{"docs":{},".":{"2":{"0":{"4":{"7":{"6":{"5":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}},"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"1":{"docs":{},"}":{"docs":{},"{":{"docs":{},"k":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"k":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},")":{"docs":{},"+":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"docs":{},"j":{"docs":{},")":{"docs":{},"}":{"docs":{},"{":{"docs":{},"d":{"docs":{},"_":{"docs":{},"c":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"m":{"docs":{},"u":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{},"\\":{"docs":{},"m":{"docs":{},"u":{"docs":{},"_":{"docs":{},"j":{"docs":{},")":{"docs":{},"}":{"docs":{},")":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"=":{"0":{"docs":{},".":{"2":{"0":{"4":{"7":{"6":{"5":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}},"docs":{}}}}}}},"​":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"(":{"docs":{},"​":{"docs":{},"d":{"docs":{},"​":{"docs":{},"c":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"μ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"μ":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"+":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},",":{"docs":{},"i":{"docs":{},"≠":{"docs":{},"j":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}},"=":{"0":{"docs":{},".":{"2":{"0":{"4":{"7":{"6":{"5":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}},"指":{"docs":{},"数":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"又":{"docs":{},"称":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"越":{"docs":{},"小":{"docs":{},"就":{"docs":{},"越":{"docs":{},"就":{"docs":{},"意":{"docs":{},"味":{"docs":{},"着":{"docs":{},"簇":{"docs":{},"内":{"docs":{},"距":{"docs":{},"离":{"docs":{},"越":{"docs":{},"小":{"docs":{},"同":{"docs":{},"时":{"docs":{},"簇":{"docs":{},"间":{"docs":{},"距":{"docs":{},"离":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"d":{"docs":{},"b":{"docs":{},"指":{"docs":{},"数":{"docs":{},"越":{"docs":{},"小":{"docs":{},"越":{"docs":{},"好":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"c":{"docs":{},"(":{"docs":{},"μ":{"1":{"docs":{},",":{"docs":{},"μ":{"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"2":{"docs":{},".":{"6":{"7":{"docs":{},"−":{"7":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"3":{"docs":{},".":{"6":{"7":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"2":{"docs":{},"=":{"7":{"docs":{},".":{"6":{"7":{"3":{"9":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}},"docs":{}}}},"docs":{}}}},"i":{"docs":{},"=":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"1":{"docs":{},"≤":{"docs":{},"i":{"docs":{},"≤":{"docs":{},"k":{"docs":{},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"≠":{"docs":{},"j":{"docs":{},"(":{"docs":{},"d":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"(":{"docs":{},"c":{"docs":{},"i":{"docs":{},",":{"docs":{},"c":{"docs":{},"j":{"docs":{},")":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"1":{"docs":{},"≤":{"docs":{},"l":{"docs":{},"≤":{"docs":{},"k":{"docs":{},"d":{"docs":{},"i":{"docs":{},"a":{"docs":{},"m":{"docs":{},"(":{"docs":{},"c":{"docs":{},"l":{"docs":{},")":{"docs":{},")":{"docs":{},"}":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"=":{"2":{"docs":{},".":{"0":{"6":{"1":{"5":{"5":{"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{},"_":{"docs":{},"{":{"1":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"e":{"docs":{},"q":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}}}}}},"docs":{}}},"​":{"1":{"docs":{},"≤":{"docs":{},"i":{"docs":{},"≤":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"docs":{},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"​":{"docs":{},"i":{"docs":{},"≠":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"​":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"​":{"1":{"docs":{},"≤":{"docs":{},"l":{"docs":{},"≤":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"docs":{},"d":{"docs":{},"i":{"docs":{},"a":{"docs":{},"m":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"docs":{},"l":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},"d":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"i":{"docs":{},"n":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"c":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"}":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"=":{"2":{"docs":{},".":{"0":{"6":{"1":{"5":{"5":{"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}},"a":{"docs":{},"m":{"docs":{},"(":{"docs":{},"c":{"1":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"3":{"docs":{},"−":{"2":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"2":{"docs":{},")":{"2":{"docs":{},"=":{"1":{"docs":{},".":{"4":{"1":{"4":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"6":{"docs":{},"−":{"8":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"9":{"docs":{},"−":{"1":{"1":{"docs":{},")":{"2":{"docs":{},"=":{"2":{"docs":{},".":{"8":{"2":{"8":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"docs":{},"_":{"1":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"3":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}}}}}}}}},"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"(":{"6":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}}}}}}}}}}},"docs":{}},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"3":{"docs":{},"−":{"2":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"2":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"1":{"docs":{},".":{"4":{"1":{"4":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}},"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"6":{"docs":{},"−":{"8":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"9":{"docs":{},"−":{"1":{"1":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"2":{"docs":{},".":{"8":{"2":{"8":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}},"docs":{}}}}}},"g":{"docs":{},"i":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}},"s":{"docs":{},".":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}},"t":{"docs":{},"a":{"docs":{},"r":{"docs":{},"g":{"docs":{},"e":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}}}}}}}}},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"(":{"docs":{},"c":{"1":{"docs":{},",":{"docs":{},"c":{"2":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"3":{"docs":{},"−":{"6":{"docs":{},")":{"2":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"9":{"docs":{},")":{"2":{"docs":{},"=":{"5":{"docs":{},".":{"8":{"3":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"docs":{}}}},"docs":{}}}}}},"u":{"docs":{},"n":{"docs":{},"n":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"指":{"docs":{},"数":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"又":{"docs":{},"称":{"docs":{},"d":{"docs":{},"i":{"docs":{},",":{"docs":{},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}},"越":{"docs":{},"大":{"docs":{},"意":{"docs":{},"味":{"docs":{},"着":{"docs":{},"簇":{"docs":{},"内":{"docs":{},"距":{"docs":{},"离":{"docs":{},"越":{"docs":{},"小":{"docs":{},"同":{"docs":{},"时":{"docs":{},"簇":{"docs":{},"间":{"docs":{},"距":{"docs":{},"离":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"d":{"docs":{},"u":{"docs":{},"n":{"docs":{},"n":{"docs":{},"指":{"docs":{},"数":{"docs":{},"越":{"docs":{},"大":{"docs":{},"越":{"docs":{},"好":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"​":{"docs":{},"c":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"μ":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"μ":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"2":{"docs":{},".":{"6":{"7":{"docs":{},"−":{"7":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"3":{"docs":{},".":{"6":{"7":{"docs":{},"−":{"1":{"0":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"7":{"docs":{},".":{"6":{"7":{"3":{"9":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"c":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"√":{"docs":{},"​":{"docs":{},"(":{"3":{"docs":{},"−":{"6":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"+":{"docs":{},"(":{"4":{"docs":{},"−":{"9":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"5":{"docs":{},".":{"8":{"3":{"1":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}},"docs":{}},"docs":{}},"docs":{}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{},",":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"f":{"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.017699115044247787}},"=":{"2":{"docs":{},"∗":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"∗":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"+":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"2":{"docs":{},"*":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"*":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"}":{"docs":{},"{":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"+":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"}":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}},"​":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"+":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"​":{"docs":{},"​":{"2":{"docs":{},"∗":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},"∗":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"​":{"docs":{},"​":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}},"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}},"l":{"docs":{},"o":{"docs":{},"a":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"(":{"docs":{},"'":{"docs":{},"i":{"docs":{},"n":{"docs":{},"f":{"docs":{},"'":{"docs":{},")":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"e":{"docs":{},"p":{"docs":{},"s":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"p":{"docs":{},"(":{"docs":{},"h":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"≠":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},")":{"docs":{},"=":{"docs":{},"ϵ":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"k":{"docs":{},"=":{"0":{"docs":{},"}":{"docs":{},"^":{"docs":{},"{":{"docs":{},"t":{"docs":{},"/":{"2":{"docs":{},"}":{"docs":{},"c":{"docs":{},"_":{"docs":{},"t":{"docs":{},"^":{"docs":{},"k":{"docs":{},"(":{"1":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}}}}},"a":{"docs":{},"l":{"docs":{},"s":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"r":{"docs":{},"e":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.009523809523809525}}}}},"n":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336}}},"p":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336}},"r":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.023008849557522124}},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"f":{"docs":{},"p":{"docs":{},"}":{"docs":{},"{":{"docs":{},"f":{"docs":{},"p":{"docs":{},"+":{"docs":{},"t":{"docs":{},"n":{"docs":{},"}":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}},"f":{"docs":{},"p":{"docs":{},"f":{"docs":{},"p":{"docs":{},"+":{"docs":{},"t":{"docs":{},"n":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"​":{"docs":{},"f":{"docs":{},"p":{"docs":{},"+":{"docs":{},"t":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"f":{"docs":{},"p":{"docs":{},"​":{"docs":{},"​":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}},"(":{"docs":{},"f":{"docs":{},"a":{"docs":{},"l":{"docs":{},"s":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"m":{"docs":{},"i":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"q":{"docs":{},"r":{"docs":{},"t":{"docs":{},"{":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"a":{"docs":{},"}":{"docs":{},"{":{"docs":{},"a":{"docs":{},"+":{"docs":{},"b":{"docs":{},"}":{"docs":{},"*":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"docs":{},"a":{"docs":{},"}":{"docs":{},"{":{"docs":{},"a":{"docs":{},"+":{"docs":{},"c":{"docs":{},"}":{"docs":{},"}":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{},"a":{"docs":{},"+":{"docs":{},"b":{"docs":{},"∗":{"docs":{},"a":{"docs":{},"a":{"docs":{},"+":{"docs":{},"c":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}},"√":{"docs":{},"​":{"docs":{},"​":{"docs":{},"a":{"docs":{},"+":{"docs":{},"b":{"docs":{},"​":{"docs":{},"​":{"docs":{},"a":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"a":{"docs":{},"+":{"docs":{},"c":{"docs":{},"​":{"docs":{},"​":{"docs":{},"a":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}},"指":{"docs":{},"数":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"根":{"docs":{},"据":{"docs":{},"上":{"docs":{},"面":{"docs":{},"所":{"docs":{},"提":{"docs":{},"到":{"docs":{},"的":{"docs":{},"a":{"docs":{},"a":{"docs":{},"a":{"docs":{},",":{"docs":{},"b":{"docs":{},"b":{"docs":{},"b":{"docs":{},",":{"docs":{},"c":{"docs":{},"c":{"docs":{},"c":{"docs":{},"来":{"docs":{},"计":{"docs":{},"算":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"值":{"docs":{},"域":{"docs":{},"为":{"docs":{},"[":{"0":{"docs":{},",":{"1":{"docs":{},"]":{"docs":{},"[":{"0":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"i":{"docs":{},"t":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},"g":{"docs":{},".":{"docs":{},"s":{"docs":{},"e":{"docs":{},"t":{"docs":{},"_":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"_":{"docs":{},"i":{"docs":{},"n":{"docs":{},"c":{"docs":{},"h":{"docs":{},"e":{"docs":{},"s":{"docs":{},"(":{"1":{"0":{"docs":{},",":{"8":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{}}},"docs":{}},"5":{"docs":{},",":{"3":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}},"=":{"docs":{},"p":{"docs":{},"l":{"docs":{},"t":{"docs":{},".":{"docs":{},"g":{"docs":{},"c":{"docs":{},"f":{"docs":{},"(":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}}}}}}}}}}}}}},",":{"docs":{},"a":{"docs":{},"x":{"docs":{},"=":{"docs":{},"p":{"docs":{},"l":{"docs":{},"t":{"docs":{},".":{"docs":{},"s":{"docs":{},"u":{"docs":{},"b":{"docs":{},"p":{"docs":{},"l":{"docs":{},"o":{"docs":{},"t":{"docs":{},"s":{"docs":{},"(":{"1":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},"f":{"docs":{},"i":{"docs":{},"g":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"=":{"docs":{},"(":{"1":{"8":{"docs":{},",":{"6":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}},"8":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.009523809523809525}}}}},"docs":{}}},"docs":{}},"2":{"0":{"docs":{},",":{"1":{"0":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}},"8":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}}}}},"docs":{}}},"docs":{}},"docs":{}}}}}}}}}}}},"3":{"docs":{},",":{"docs":{},"f":{"docs":{},"i":{"docs":{},"g":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"=":{"docs":{},"(":{"2":{"0":{"docs":{},",":{"8":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}}},"docs":{}},"docs":{}}}}}}}}}}}},"docs":{}}},"2":{"docs":{},",":{"2":{"docs":{},",":{"docs":{},"f":{"docs":{},"i":{"docs":{},"g":{"docs":{},"s":{"docs":{},"i":{"docs":{},"z":{"docs":{},"e":{"docs":{},"=":{"docs":{},"(":{"2":{"0":{"docs":{},",":{"1":{"5":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}},"e":{"docs":{},"m":{"docs":{},"a":{"docs":{},"l":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"r":{"docs":{},"e":{"docs":{},"e":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.08771929824561403}},",":{"docs":{},"这":{"docs":{},"里":{"docs":{},"的":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}},"w":{"docs":{},"w":{"docs":{},"w":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}}},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},"}":{"docs":{},")":{"docs":{},"​":{"docs":{},"p":{"docs":{},"​":{"docs":{},"^":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"1":{"docs":{},"/":{"docs":{},"(":{"1":{"docs":{},"+":{"docs":{},"e":{"docs":{},"​":{"docs":{},"−":{"docs":{},"w":{"docs":{},"x":{"docs":{},"+":{"docs":{},"b":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"p":{"docs":{},"^":{"docs":{},">":{"0":{"docs":{},".":{"5":{"docs":{},"\\":{"docs":{},"h":{"docs":{},"a":{"docs":{},"t":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}},"o":{"docs":{},"r":{"docs":{},"l":{"docs":{},"d":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}},"a":{"docs":{},"s":{"docs":{},":":{"docs":{},"'":{"docs":{},",":{"docs":{},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"[":{"docs":{},"'":{"docs":{},"f":{"docs":{},"a":{"docs":{},"r":{"docs":{},"e":{"docs":{},"'":{"docs":{},"]":{"docs":{},".":{"docs":{},"m":{"docs":{},"a":{"docs":{},"x":{"docs":{},"(":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"e":{"docs":{},"a":{"docs":{},"n":{"docs":{},"(":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"i":{"docs":{},"n":{"docs":{},"(":{"docs":{},")":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}},"σ":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"a":{"docs":{},"σ":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}}}}}}}}},"两":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"哪":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"的":{"docs":{},"误":{"docs":{},"差":{"docs":{},"更":{"docs":{},"大":{"docs":{},"?":{"docs":{},"很":{"docs":{},"显":{"docs":{},"然":{"docs":{},",":{"docs":{},"情":{"docs":{},"况":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}},"中":{"docs":{},"模":{"docs":{},"型":{"docs":{},"认":{"docs":{},"为":{"docs":{},"样":{"docs":{},"本":{"docs":{},"是":{"docs":{},"类":{"docs":{},"别":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}},"计":{"docs":{},"算":{"docs":{},"每":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"看":{"docs":{},"哪":{"docs":{},"个":{"docs":{},"最":{"docs":{},"大":{"docs":{},"就":{"docs":{},"选":{"docs":{},"哪":{"docs":{},"个":{"docs":{},"作":{"docs":{},"为":{"docs":{},"当":{"docs":{},"前":{"docs":{},"节":{"docs":{},"点":{"docs":{},"。":{"docs":{},"然":{"docs":{},"后":{"docs":{},"继":{"docs":{},"续":{"docs":{},"重":{"docs":{},"复":{"docs":{},"刚":{"docs":{},"刚":{"docs":{},"的":{"docs":{},"步":{"docs":{},"骤":{"docs":{},"来":{"docs":{},"构":{"docs":{},"建":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"只":{"docs":{},"有":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"了":{"docs":{},",":{"docs":{},"达":{"docs":{},"到":{"docs":{},"了":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"预":{"docs":{},"期":{"docs":{},"目":{"docs":{},"标":{"docs":{},"(":{"docs":{},"想":{"docs":{},"要":{"docs":{},"聚":{"docs":{},"成":{"docs":{},"两":{"docs":{},"类":{"docs":{},")":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"算":{"docs":{},"法":{"docs":{},"停":{"docs":{},"止":{"docs":{},"。":{"docs":{},"算":{"docs":{},"法":{"docs":{},"停":{"docs":{},"止":{"docs":{},"后":{"docs":{},"会":{"docs":{},"发":{"docs":{},"现":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"已":{"docs":{},"经":{"docs":{},"将":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},",":{"docs":{},"则":{"docs":{},"平":{"docs":{},"均":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{},":":{"docs":{},"d":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"i":{"docs":{},"∣":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"j":{"docs":{},"∣":{"docs":{},"∑":{"docs":{},"x":{"docs":{},"∈":{"docs":{},"i":{"docs":{},"∑":{"docs":{},"z":{"docs":{},"∈":{"docs":{},"j":{"docs":{},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{},"z":{"docs":{},")":{"docs":{},"d":{"docs":{},"_":{"docs":{},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"}":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"f":{"docs":{},"r":{"docs":{},"a":{"docs":{},"c":{"docs":{},"{":{"1":{"docs":{},"}":{"docs":{},"{":{"docs":{},"|":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},"|":{"docs":{},"|":{"docs":{},"c":{"docs":{},"_":{"docs":{},"j":{"docs":{},"|":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"x":{"docs":{},"\\":{"docs":{},"i":{"docs":{},"n":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"一":{"docs":{},"些":{"docs":{},"值":{"docs":{},"作":{"docs":{},"为":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"阈":{"docs":{},"值":{"docs":{},"。":{"docs":{},"若":{"docs":{},"模":{"docs":{},"型":{"docs":{},"认":{"docs":{},"为":{"docs":{},"当":{"docs":{},"前":{"docs":{},"数":{"docs":{},"据":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}},"已":{"docs":{},"经":{"docs":{},"为":{"docs":{},"我":{"docs":{},"们":{"docs":{},"准":{"docs":{},"备":{"docs":{},"好":{"docs":{},"了":{"docs":{},"一":{"docs":{},"些":{"docs":{},"比":{"docs":{},"较":{"docs":{},"经":{"docs":{},"典":{"docs":{},"且":{"docs":{},"质":{"docs":{},"量":{"docs":{},"较":{"docs":{},"高":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{},"就":{"docs":{},"包":{"docs":{},"括":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"。":{"docs":{},"该":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"有":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}},"基":{"docs":{},"于":{"docs":{},"策":{"docs":{},"略":{"docs":{},"的":{"docs":{},"一":{"docs":{},"种":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"p":{"docs":{},"o":{"docs":{},"l":{"docs":{},"i":{"docs":{},"c":{"docs":{},"i":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}},"采":{"docs":{},"样":{"docs":{},"了":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}},"代":{"docs":{},"表":{"docs":{},"恶":{"docs":{},"性":{"docs":{},"肿":{"docs":{},"瘤":{"docs":{},")":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}},"良":{"docs":{},"性":{"docs":{},"肿":{"docs":{},"瘤":{"docs":{},",":{"1":{"1":{"1":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},"docs":{}},"docs":{}},"docs":{}}}}}},"不":{"docs":{},"是":{"docs":{},"狼":{"docs":{},"人":{"docs":{},",":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}},"是":{"docs":{},"狼":{"docs":{},"人":{"docs":{},")":{"docs":{},",":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"f":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}},"了":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"公":{"docs":{},"式":{"docs":{},"为":{"docs":{},":":{"docs":{},"σ":{"docs":{},"(":{"docs":{},"t":{"docs":{},")":{"docs":{},"=":{"1":{"docs":{},"/":{"1":{"docs":{},"+":{"docs":{},"e":{"docs":{},"−":{"docs":{},"t":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"m":{"docs":{},"a":{"docs":{},"(":{"docs":{},"t":{"docs":{},")":{"docs":{},"=":{"1":{"docs":{},"/":{"1":{"docs":{},"+":{"docs":{},"e":{"docs":{},"^":{"docs":{},"{":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}},"π":{"docs":{},"\\":{"docs":{},"p":{"docs":{},"i":{"docs":{},"π":{"docs":{},"其":{"docs":{},"实":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"模":{"docs":{},"型":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"想":{"docs":{},"在":{"docs":{},"无":{"docs":{},"数":{"docs":{},"次":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"中":{"docs":{},"寻":{"docs":{},"找":{"docs":{},"出":{"docs":{},"能":{"docs":{},"让":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"。":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}},"到":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}},"情":{"docs":{},"况":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"批":{"docs":{},"量":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"下":{"docs":{},"降":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}},"有":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"关":{"docs":{},"。":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}},",":{"docs":{},"它":{"docs":{},"还":{"docs":{},"与":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"有":{"docs":{},"关":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"两":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},",":{"docs":{},"情":{"docs":{},"况":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}},"了":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"后":{"docs":{},",":{"docs":{},"则":{"docs":{},"这":{"docs":{},"个":{"docs":{},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}},"多":{"docs":{},"少":{"docs":{},"人":{"docs":{},"活":{"docs":{},"了":{"docs":{},"下":{"docs":{},"来":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}},"根":{"docs":{},"据":{"docs":{},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{},"出":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"结":{"docs":{},"果":{"docs":{},",":{"docs":{},"标":{"docs":{},"签":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"上":{"docs":{},"式":{"docs":{},"可":{"docs":{},"知":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}},"狼":{"docs":{},"人":{"docs":{},"杀":{"docs":{},"的":{"docs":{},"规":{"docs":{},"则":{"docs":{},",":{"docs":{},"村":{"docs":{},"民":{"docs":{},"们":{"docs":{},"需":{"docs":{},"要":{"docs":{},"投":{"docs":{},"票":{"docs":{},"决":{"docs":{},"定":{"docs":{},"天":{"docs":{},"黑":{"docs":{},"前":{"docs":{},"谁":{"docs":{},"是":{"docs":{},"狼":{"docs":{},"人":{"docs":{},",":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"如":{"docs":{},"果":{"docs":{},"有":{"docs":{},"超":{"docs":{},"过":{"docs":{},"半":{"docs":{},"数":{"docs":{},"的":{"docs":{},"村":{"docs":{},"民":{"docs":{},"投":{"docs":{},"票":{"docs":{},"时":{"docs":{},"猜":{"docs":{},"对":{"docs":{},"了":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"这":{"docs":{},"一":{"docs":{},"轮":{"docs":{},"就":{"docs":{},"猜":{"docs":{},"对":{"docs":{},"了":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"假":{"docs":{},"设":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"由":{"docs":{},"于":{"docs":{},"概":{"docs":{},"率":{"docs":{},"是":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}},"是":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"导":{"docs":{},"入":{"docs":{},"的":{"docs":{},"是":{"docs":{},"r":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"o":{"docs":{},"m":{"docs":{},"f":{"docs":{},"o":{"docs":{},"r":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"c":{"docs":{},"l":{"docs":{},"a":{"docs":{},"s":{"docs":{},"s":{"docs":{},"i":{"docs":{},"f":{"docs":{},"i":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"大":{"docs":{},"多":{"docs":{},"数":{"docs":{},"人":{"docs":{},"都":{"docs":{},"是":{"docs":{},"从":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"家":{"docs":{},"庭":{"docs":{},"成":{"docs":{},"员":{"docs":{},"数":{"docs":{},"量":{"docs":{},"和":{"docs":{},"是":{"docs":{},"否":{"docs":{},"孤":{"docs":{},"身":{"docs":{},"一":{"docs":{},"人":{"docs":{},"好":{"docs":{},"想":{"docs":{},"对":{"docs":{},"于":{"docs":{},"是":{"docs":{},"否":{"docs":{},"生":{"docs":{},"还":{"docs":{},"有":{"docs":{},"影":{"docs":{},"响":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"添":{"docs":{},"加":{"docs":{},"新":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"模":{"docs":{},"型":{"docs":{},"不":{"docs":{},"支":{"docs":{},"持":{"docs":{},"字":{"docs":{},"符":{"docs":{},"串":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"需":{"docs":{},"要":{"docs":{},"将":{"docs":{},"一":{"docs":{},"些":{"docs":{},"有":{"docs":{},"用":{"docs":{},"的":{"docs":{},"字":{"docs":{},"符":{"docs":{},"串":{"docs":{},"类":{"docs":{},"型":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"转":{"docs":{},"换":{"docs":{},"成":{"docs":{},"数":{"docs":{},"值":{"docs":{},"型":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"比":{"docs":{},"如":{"docs":{},":":{"docs":{},"性":{"docs":{},"别":{"docs":{},",":{"docs":{},"口":{"docs":{},"岸":{"docs":{},",":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"前":{"docs":{},"缀":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"docs":{},"θ":{"docs":{},"‾":{"docs":{},"\\":{"docs":{},"o":{"docs":{},"v":{"docs":{},"e":{"docs":{},"r":{"docs":{},"l":{"docs":{},"i":{"docs":{},"n":{"docs":{},"e":{"docs":{},"{":{"docs":{},"r":{"docs":{},"_":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"}":{"docs":{},"​":{"docs":{},"r":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"的":{"docs":{},"值":{"docs":{},"越":{"docs":{},"大":{"docs":{},"越":{"docs":{},"好":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"梯":{"docs":{},"度":{"docs":{},"上":{"docs":{},"升":{"docs":{},"的":{"docs":{},"方":{"docs":{},"式":{"docs":{},"来":{"docs":{},"更":{"docs":{},"新":{"docs":{},"θ":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"θ":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"就":{"docs":{},"有":{"docs":{},"如":{"docs":{},"下":{"docs":{},"数":{"docs":{},"学":{"docs":{},"推":{"docs":{},"导":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"一":{"docs":{},"个":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"docs":{},"τ":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"τ":{"docs":{},"是":{"docs":{},"由":{"docs":{},"多":{"docs":{},"个":{"docs":{},"状":{"docs":{},"态":{"docs":{},",":{"docs":{},"动":{"docs":{},"作":{"docs":{},",":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"构":{"docs":{},"成":{"docs":{},"的":{"docs":{},",":{"docs":{},"即":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"e":{"docs":{},"n":{"docs":{},"v":{"docs":{},".":{"docs":{},"s":{"docs":{},"t":{"docs":{},"e":{"docs":{},"p":{"docs":{},"返":{"docs":{},"回":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"是":{"docs":{},"雅":{"docs":{},"达":{"docs":{},"利":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"机":{"docs":{},"上":{"docs":{},"的":{"docs":{},"游":{"docs":{},"戏":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"需":{"docs":{},"要":{"docs":{},"安":{"docs":{},"装":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}},"知":{"docs":{},"道":{"docs":{},"了":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"流":{"docs":{},"程":{"docs":{},"就":{"docs":{},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},"了":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"寻":{"docs":{},"找":{"docs":{},"一":{"docs":{},"组":{"docs":{},"合":{"docs":{},"适":{"docs":{},"的":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"质":{"docs":{},"心":{"docs":{},"后":{"docs":{},",":{"docs":{},"就":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"看":{"docs":{},"k":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}},"秒":{"docs":{},"钟":{"docs":{},",":{"docs":{},"a":{"docs":{},"b":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}},"两":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"哪":{"docs":{},"种":{"docs":{},"情":{"docs":{},"况":{"docs":{},"的":{"docs":{},"误":{"docs":{},"差":{"docs":{},"更":{"docs":{},"大":{"docs":{},"?":{"docs":{},"很":{"docs":{},"显":{"docs":{},"然":{"docs":{},",":{"docs":{},"一":{"docs":{},"样":{"docs":{},"大":{"docs":{},"!":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"算":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"t":{"docs":{},"a":{"docs":{},"对":{"docs":{},"l":{"docs":{},"o":{"docs":{},"s":{"docs":{},"s":{"docs":{},"的":{"docs":{},"偏":{"docs":{},"导":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}},"法":{"docs":{},"中":{"docs":{},"可":{"docs":{},"根":{"docs":{},"据":{"docs":{},"具":{"docs":{},"体":{"docs":{},"业":{"docs":{},"务":{"docs":{},"选":{"docs":{},"择":{"docs":{},"其":{"docs":{},"中":{"docs":{},"一":{"docs":{},"种":{"docs":{},"距":{"docs":{},"离":{"docs":{},"作":{"docs":{},"为":{"docs":{},"度":{"docs":{},"量":{"docs":{},"标":{"docs":{},"准":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}},"前":{"docs":{},"需":{"docs":{},"要":{"docs":{},"先":{"docs":{},"理":{"docs":{},"解":{"docs":{},"一":{"docs":{},"些":{"docs":{},"距":{"docs":{},"离":{"docs":{},"准":{"docs":{},"则":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}},"是":{"docs":{},"一":{"docs":{},"种":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"最":{"docs":{},"初":{"docs":{},"将":{"docs":{},"每":{"docs":{},"个":{"docs":{},"对":{"docs":{},"象":{"docs":{},"作":{"docs":{},"为":{"docs":{},"一":{"docs":{},"个":{"docs":{},"簇":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"这":{"docs":{},"些":{"docs":{},"簇":{"docs":{},"根":{"docs":{},"据":{"docs":{},"某":{"docs":{},"些":{"docs":{},"距":{"docs":{},"离":{"docs":{},"准":{"docs":{},"则":{"docs":{},"被":{"docs":{},"一":{"docs":{},"步":{"docs":{},"步":{"docs":{},"地":{"docs":{},"合":{"docs":{},"并":{"docs":{},"。":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"间":{"docs":{},"的":{"docs":{},"相":{"docs":{},"似":{"docs":{},"度":{"docs":{},"有":{"docs":{},"多":{"docs":{},"种":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"计":{"docs":{},"算":{"docs":{},"方":{"docs":{},"法":{"docs":{},"。":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"的":{"docs":{},"合":{"docs":{},"并":{"docs":{},"过":{"docs":{},"程":{"docs":{},"反":{"docs":{},"复":{"docs":{},"进":{"docs":{},"行":{"docs":{},"直":{"docs":{},"到":{"docs":{},"所":{"docs":{},"有":{"docs":{},"的":{"docs":{},"对":{"docs":{},"象":{"docs":{},"最":{"docs":{},"终":{"docs":{},"满":{"docs":{},"足":{"docs":{},"簇":{"docs":{},"数":{"docs":{},"目":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"理":{"docs":{},"解":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"自":{"docs":{},"底":{"docs":{},"向":{"docs":{},"上":{"docs":{},"聚":{"docs":{},"合":{"docs":{},"的":{"docs":{},"层":{"docs":{},"次":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"它":{"docs":{},"先":{"docs":{},"会":{"docs":{},"将":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"中":{"docs":{},"的":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"看":{"docs":{},"作":{"docs":{},"一":{"docs":{},"个":{"docs":{},"初":{"docs":{},"始":{"docs":{},"簇":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"在":{"docs":{},"算":{"docs":{},"法":{"docs":{},"运":{"docs":{},"行":{"docs":{},"的":{"docs":{},"每":{"docs":{},"一":{"docs":{},"步":{"docs":{},"中":{"docs":{},"找":{"docs":{},"出":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"近":{"docs":{},"的":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"进":{"docs":{},"行":{"docs":{},"合":{"docs":{},"并":{"docs":{},",":{"docs":{},"直":{"docs":{},"至":{"docs":{},"达":{"docs":{},"到":{"docs":{},"预":{"docs":{},"设":{"docs":{},"的":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"所":{"docs":{},"以":{"docs":{},"a":{"docs":{},"g":{"docs":{},"n":{"docs":{},"e":{"docs":{},"s":{"docs":{},"算":{"docs":{},"法":{"docs":{},"需":{"docs":{},"要":{"docs":{},"不":{"docs":{},"断":{"docs":{},"的":{"docs":{},"计":{"docs":{},"算":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},",":{"docs":{},"这":{"docs":{},"也":{"docs":{},"符":{"docs":{},"合":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"的":{"docs":{},"核":{"docs":{},"心":{"docs":{},"思":{"docs":{},"想":{"docs":{},"(":{"docs":{},"物":{"docs":{},"以":{"docs":{},"类":{"docs":{},"聚":{"docs":{},",":{"docs":{},"人":{"docs":{},"以":{"docs":{},"群":{"docs":{},"分":{"docs":{},")":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"度":{"docs":{},"量":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"成":{"docs":{},"为":{"docs":{},"了":{"docs":{},"关":{"docs":{},"键":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"流":{"docs":{},"程":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}},"表":{"docs":{},"示":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},"的":{"docs":{},"值":{"docs":{},",":{"docs":{},"$":{"docs":{},"y":{"docs":{},"$":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},":":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}},"随":{"docs":{},"机":{"docs":{},"变":{"docs":{},"量":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}},"为":{"docs":{},"村":{"docs":{},"民":{"docs":{},"判":{"docs":{},"断":{"docs":{},"错":{"docs":{},"误":{"docs":{},"的":{"docs":{},"错":{"docs":{},"误":{"docs":{},"率":{"docs":{},"。":{"docs":{},"则":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}},"投":{"docs":{},"票":{"docs":{},"后":{"docs":{},"最":{"docs":{},"终":{"docs":{},"的":{"docs":{},"结":{"docs":{},"果":{"docs":{},",":{"docs":{},"则":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}},"第":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"类":{"docs":{},"别":{"docs":{},"的":{"docs":{},"中":{"docs":{},"心":{"docs":{},",":{"docs":{},"数":{"docs":{},"据":{"docs":{},"点":{"docs":{},"的":{"docs":{},"颜":{"docs":{},"色":{"docs":{},"代":{"docs":{},"表":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},")":{"docs":{},":":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}}}}}},"健":{"docs":{},"康":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"现":{"docs":{},"在":{"docs":{},"拿":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},",":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}}}}}}}}},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":5.004739336492891},"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"大":{"docs":{},"体":{"docs":{},"思":{"docs":{},"想":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}},"是":{"docs":{},"属":{"docs":{},"于":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"里":{"docs":{},"面":{"docs":{},"的":{"docs":{},"监":{"docs":{},"督":{"docs":{},"学":{"docs":{},"习":{"docs":{},",":{"docs":{},"它":{"docs":{},"是":{"docs":{},"以":{"docs":{},"回":{"docs":{},"归":{"docs":{},"的":{"docs":{},"思":{"docs":{},"想":{"docs":{},"来":{"docs":{},"解":{"docs":{},"决":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},"的":{"docs":{},"一":{"docs":{},"种":{"docs":{},"非":{"docs":{},"常":{"docs":{},"经":{"docs":{},"典":{"docs":{},"的":{"docs":{},"二":{"docs":{},"分":{"docs":{},"类":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"。":{"docs":{},"由":{"docs":{},"于":{"docs":{},"其":{"docs":{},"训":{"docs":{},"练":{"docs":{},"后":{"docs":{},"的":{"docs":{},"参":{"docs":{},"数":{"docs":{},"有":{"docs":{},"较":{"docs":{},"强":{"docs":{},"的":{"docs":{},"可":{"docs":{},"解":{"docs":{},"释":{"docs":{},"性":{"docs":{},",":{"docs":{},"在":{"docs":{},"诸":{"docs":{},"多":{"docs":{},"领":{"docs":{},"域":{"docs":{},"中":{"docs":{},",":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"通":{"docs":{},"常":{"docs":{},"用":{"docs":{},"作":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}}}}}},")":{"docs":{},";":{"docs":{},"情":{"docs":{},"况":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}},"请":{"docs":{},"您":{"docs":{},"再":{"docs":{},"思":{"docs":{},"考":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}},"思":{"docs":{},"考":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.004739336492890996}}}}}}},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"是":{"docs":{"logistic_regression.html":{"ref":"logistic_regression.html","tf":0.009478672985781991}}}}}}}}}}}}}}},"h":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}},"(":{"docs":{},"d":{"docs":{},"|":{"docs":{},"a":{"docs":{},")":{"docs":{},"g":{"docs":{},"(":{"docs":{},"d":{"docs":{},",":{"docs":{},"a":{"docs":{},")":{"docs":{},"=":{"docs":{},"h":{"docs":{},"(":{"docs":{},"d":{"docs":{},")":{"docs":{},"−":{"docs":{},"h":{"docs":{},"(":{"docs":{},"d":{"docs":{},"∣":{"docs":{},"a":{"docs":{},")":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}},"y":{"docs":{},"∣":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"|":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"y":{"docs":{},"∣":{"docs":{},"x":{"docs":{},")":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"n":{"docs":{},"(":{"docs":{},"∑":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"t":{"docs":{},"h":{"docs":{},"i":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"n":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"t":{"docs":{},"h":{"docs":{},"_":{"docs":{},"i":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},")":{"docs":{},"h":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"=":{"docs":{},"s":{"docs":{},"i":{"docs":{},"g":{"docs":{},"n":{"docs":{},"(":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"h":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},")":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}},"i":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"_":{"docs":{},"i":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{},"h":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"x":{"docs":{},")":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}},"e":{"docs":{},"l":{"docs":{},"l":{"docs":{},"o":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}},"u":{"docs":{},"e":{"docs":{},"=":{"docs":{},"\"":{"docs":{},"s":{"docs":{},"u":{"docs":{},"r":{"docs":{},"v":{"docs":{},"i":{"docs":{},"v":{"docs":{},"e":{"docs":{},"d":{"docs":{},"\"":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.004761904761904762}}}}}}}}}}}}}}}},"[":{"docs":{},"h":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"t":{"docs":{},"t":{"docs":{},"p":{"docs":{},"s":{"docs":{},":":{"docs":{},"/":{"docs":{},"/":{"docs":{},"g":{"docs":{},"i":{"docs":{},"t":{"docs":{},"h":{"docs":{},"u":{"docs":{},"b":{"docs":{},".":{"docs":{},"c":{"docs":{},"o":{"docs":{},"m":{"docs":{},"/":{"docs":{},"k":{"docs":{},"o":{"docs":{},"j":{"docs":{},"o":{"docs":{},"l":{"docs":{},"e":{"docs":{},"y":{"docs":{},"/":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"r":{"docs":{},"i":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}},"w":{"docs":{},"w":{"docs":{},"w":{"docs":{},".":{"docs":{},"e":{"docs":{},"d":{"docs":{},"u":{"docs":{},"c":{"docs":{},"o":{"docs":{},"d":{"docs":{},"e":{"docs":{},"r":{"docs":{},".":{"docs":{},"n":{"docs":{},"e":{"docs":{},"t":{"docs":{},"/":{"docs":{},"s":{"docs":{},"h":{"docs":{},"i":{"docs":{},"x":{"docs":{},"u":{"docs":{},"n":{"docs":{},"s":{"docs":{},"/":{"4":{"docs":{},"a":{"docs":{},"w":{"docs":{},"q":{"2":{"5":{"docs":{},"i":{"docs":{},"v":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}}}},"docs":{}},"docs":{}}}},"f":{"docs":{},"h":{"docs":{},"e":{"docs":{},"m":{"docs":{},"f":{"docs":{},"r":{"9":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{},"a":{"docs":{},"w":{"9":{"docs":{},"b":{"docs":{},"x":{"docs":{},"y":{"7":{"5":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}},"docs":{}},"docs":{}}}}},"docs":{}}},"c":{"docs":{},"b":{"docs":{},"s":{"docs":{},"f":{"docs":{},"h":{"3":{"docs":{},"r":{"5":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}},"h":{"docs":{},"l":{"7":{"docs":{},"w":{"docs":{},"a":{"docs":{},"c":{"docs":{},"q":{"5":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}},"docs":{}}}}}},"docs":{}}},"k":{"6":{"docs":{},"f":{"docs":{},"p":{"4":{"docs":{},"s":{"docs":{},"a":{"docs":{},"q":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}}}}},"docs":{}}}},"docs":{},"z":{"3":{"docs":{},"f":{"docs":{},"i":{"docs":{},"x":{"docs":{},"v":{"9":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}},"docs":{}}}}}},"docs":{}}},"q":{"docs":{},"y":{"9":{"docs":{},"g":{"docs":{},"o":{"docs":{},"z":{"docs":{},"t":{"8":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}},"docs":{}}}}}},"docs":{}}},"t":{"docs":{},"w":{"9":{"docs":{},"u":{"docs":{},"p":{"7":{"5":{"docs":{},"v":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}}},"docs":{}},"docs":{}}}},"docs":{}}},"y":{"docs":{},"a":{"8":{"docs":{},"h":{"7":{"docs":{},"u":{"docs":{},"t":{"docs":{},"x":{"docs":{},"/":{"docs":{},"c":{"docs":{},"h":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"g":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"一":{"docs":{},"开":{"docs":{},"始":{"docs":{},"我":{"docs":{},"们":{"docs":{},"已":{"docs":{},"经":{"docs":{},"算":{"docs":{},"过":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"最":{"docs":{},"大":{"docs":{},"的":{"docs":{},"是":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"的":{"docs":{},"根":{"docs":{},"节":{"docs":{},"点":{"docs":{},"是":{"docs":{},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"都":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"(":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}},"等":{"docs":{},"舱":{"docs":{},"和":{"docs":{},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"女":{"docs":{},"性":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"几":{"docs":{},"乎":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}},"直":{"docs":{},"渲":{"docs":{},"染":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"画":{"docs":{},"面":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":5.007142857142857},"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"构":{"docs":{},"流":{"docs":{},"程":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}},"说":{"docs":{},"白":{"docs":{},"了":{"docs":{},"就":{"docs":{},"是":{"docs":{},"一":{"docs":{},"棵":{"docs":{},"能":{"docs":{},"够":{"docs":{},"替":{"docs":{},"我":{"docs":{},"们":{"docs":{},"做":{"docs":{},"决":{"docs":{},"策":{"docs":{},"的":{"docs":{},"树":{"docs":{},",":{"docs":{},"或":{"docs":{},"者":{"docs":{},"说":{"docs":{},"是":{"docs":{},"我":{"docs":{},"们":{"docs":{},"人":{"docs":{},"的":{"docs":{},"脑":{"docs":{},"回":{"docs":{},"路":{"docs":{},"的":{"docs":{},"一":{"docs":{},"种":{"docs":{},"表":{"docs":{},"现":{"docs":{},"形":{"docs":{},"式":{"docs":{},"。":{"docs":{},"比":{"docs":{},"如":{"docs":{},"我":{"docs":{},"看":{"docs":{},"到":{"docs":{},"一":{"docs":{},"个":{"docs":{},"人":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"我":{"docs":{},"会":{"docs":{},"思":{"docs":{},"考":{"docs":{},"这":{"docs":{},"个":{"docs":{},"男":{"docs":{},"人":{"docs":{},"有":{"docs":{},"没":{"docs":{},"有":{"docs":{},"买":{"docs":{},"车":{"docs":{},"。":{"docs":{},"那":{"docs":{},"我":{"docs":{},"的":{"docs":{},"脑":{"docs":{},"回":{"docs":{},"路":{"docs":{},"可":{"docs":{},"能":{"docs":{},"是":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},":":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"发":{"docs":{},"生":{"docs":{},"的":{"docs":{},"前":{"docs":{},"提":{"docs":{},"下":{"docs":{},",":{"docs":{},"事":{"docs":{},"件":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}},"熵":{"docs":{},"是":{"docs":{},"多":{"docs":{},"少":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"这":{"docs":{},"种":{"docs":{},"熵":{"docs":{},"我":{"docs":{},"们":{"docs":{},"叫":{"docs":{},"它":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"。":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}},"后":{"docs":{},"能":{"docs":{},"得":{"docs":{},"到":{"docs":{},"信":{"docs":{},"息":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}},"好":{"docs":{},"了":{"docs":{},",":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"构":{"docs":{},"造":{"docs":{},"好":{"docs":{},"了":{"docs":{},"。":{"docs":{},"从":{"docs":{},"图":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"有":{"docs":{},"一":{"docs":{},"个":{"docs":{},"非":{"docs":{},"常":{"docs":{},"好":{"docs":{},"的":{"docs":{},"地":{"docs":{},"方":{"docs":{},"就":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"解":{"docs":{},"释":{"docs":{},"性":{"docs":{},"非":{"docs":{},"常":{"docs":{},"强":{"docs":{},"!":{"docs":{},"!":{"docs":{},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"现":{"docs":{},"在":{"docs":{},"来":{"docs":{},"了":{"docs":{},"一":{"docs":{},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"(":{"docs":{},"男":{"docs":{},",":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"对":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}},"于":{"docs":{},"男":{"docs":{},"性":{"docs":{},"来":{"docs":{},"说":{"docs":{},",":{"docs":{},"年":{"docs":{},"纪":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"越":{"docs":{},"低":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}},"性":{"docs":{},"别":{"docs":{},"为":{"docs":{},"女":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"=":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}},"男":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"=":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"=":{"docs":{},"总":{"docs":{},"的":{"docs":{},"熵":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},":":{"docs":{},"女":{"docs":{},"性":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"高":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"总":{"docs":{},"熵":{"docs":{},"=":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},"共":{"3":{"docs":{},"种":{"docs":{},"类":{"docs":{},"型":{"docs":{},":":{"1":{"docs":{},"(":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},")":{"docs":{},",":{"2":{"docs":{},"(":{"docs":{},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},")":{"docs":{},",":{"3":{"docs":{},"(":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}},"docs":{}}},"整":{"docs":{},"个":{"docs":{},"i":{"docs":{},"d":{"3":{"docs":{},"算":{"docs":{},"法":{"docs":{},"其":{"docs":{},"实":{"docs":{},"主":{"docs":{},"要":{"docs":{},"就":{"docs":{},"是":{"docs":{},"围":{"docs":{},"绕":{"docs":{},"着":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"来":{"docs":{},"的":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"要":{"docs":{},"弄":{"docs":{},"清":{"docs":{},"楚":{"docs":{},"i":{"docs":{},"d":{"3":{"docs":{},"算":{"docs":{},"法":{"docs":{},"的":{"docs":{},"流":{"docs":{},"程":{"docs":{},",":{"docs":{},"首":{"docs":{},"先":{"docs":{},"要":{"docs":{},"弄":{"docs":{},"清":{"docs":{},"楚":{"docs":{},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},",":{"docs":{},"但":{"docs":{},"要":{"docs":{},"弄":{"docs":{},"清":{"docs":{},"楚":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"之":{"docs":{},"前":{"docs":{},"有":{"docs":{},"个":{"docs":{},"概":{"docs":{},"念":{"docs":{},"必":{"docs":{},"须":{"docs":{},"要":{"docs":{},"懂":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"熵":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"先":{"docs":{},"看":{"docs":{},"看":{"docs":{},"什":{"docs":{},"么":{"docs":{},"是":{"docs":{},"熵":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}},"数":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"。":{"docs":{},"比":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"的":{"docs":{},"标":{"docs":{},"签":{"docs":{},"是":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"当":{"docs":{},"成":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"来":{"docs":{},"继":{"docs":{},"续":{"docs":{},"算":{"docs":{},"哪":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"最":{"docs":{},"高":{"docs":{},",":{"docs":{},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},"算":{"docs":{},"完":{"docs":{},"之":{"docs":{},"后":{"docs":{},"是":{"docs":{},"性":{"docs":{},"别":{"docs":{},"这":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"这":{"docs":{},"时":{"docs":{},"候":{"docs":{},"树":{"docs":{},"变":{"docs":{},"成":{"docs":{},"了":{"docs":{},"这":{"docs":{},"样":{"docs":{},":":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"接":{"docs":{},"着":{"docs":{},"把":{"docs":{},"这":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}},"中":{"docs":{},"随":{"docs":{},"机":{"docs":{},"取":{"docs":{},"一":{"docs":{},"条":{"docs":{},"数":{"docs":{},"据":{"docs":{},"放":{"docs":{},"入":{"docs":{},"采":{"docs":{},"样":{"docs":{},"集":{"docs":{},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"将":{"docs":{},"其":{"docs":{},"返":{"docs":{},"回":{"docs":{},",":{"docs":{},"让":{"docs":{},"下":{"docs":{},"一":{"docs":{},"次":{"docs":{},"采":{"docs":{},"样":{"docs":{},"有":{"docs":{},"机":{"docs":{},"会":{"docs":{},"仍":{"docs":{},"然":{"docs":{},"能":{"docs":{},"被":{"docs":{},"采":{"docs":{},"样":{"docs":{},"。":{"docs":{},"然":{"docs":{},"后":{"docs":{},"重":{"docs":{},"复":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"采":{"docs":{},"样":{"docs":{},"集":{"docs":{},",":{"docs":{},"该":{"docs":{},"采":{"docs":{},"样":{"docs":{},"集":{"docs":{},"作":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}}}}}}}},"来":{"docs":{},"进":{"docs":{},"行":{"docs":{},"测":{"docs":{},"试":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{},"有":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}},"是":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"样":{"docs":{},"本":{"docs":{},"里":{"docs":{},"面":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},"数":{"docs":{},"据":{"docs":{},",":{"docs":{},"每":{"docs":{},"次":{"docs":{},"从":{"docs":{},"这":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}},"里":{"docs":{},"有":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}},",":{"3":{"docs":{},"/":{"8":{"3":{"docs":{},"/":{"8":{"3":{"docs":{},"/":{"8":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{},"然":{"docs":{},"后":{"docs":{},"这":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}},"n":{"docs":{},"e":{"docs":{},"g":{"docs":{},"t":{"docs":{},"i":{"docs":{},"v":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"。":{"docs":{},"因":{"docs":{},"此":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"健":{"docs":{},"康":{"docs":{},"信":{"docs":{},"息":{"docs":{},"数":{"docs":{},"据":{"docs":{},"中":{"docs":{},",":{"docs":{},"只":{"docs":{},"有":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},"是":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},",":{"docs":{},"其":{"docs":{},"他":{"docs":{},"的":{"docs":{},"类":{"docs":{},"别":{"docs":{},"都":{"docs":{},"是":{"docs":{},"健":{"docs":{},"康":{"docs":{},")":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}},"西":{"docs":{},"瓜":{"docs":{},"数":{"docs":{},"据":{"docs":{},"{":{"docs":{},"x":{"1":{"docs":{},",":{"docs":{},"x":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"6":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"x":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"x":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"docs":{},"_":{"6":{"docs":{},"\\":{"docs":{},"}":{"docs":{},"{":{"docs":{},"x":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"6":{"docs":{},"​":{"docs":{},"​":{"docs":{},"}":{"docs":{},",":{"docs":{},"这":{"docs":{},"些":{"docs":{},"数":{"docs":{},"据":{"docs":{},"已":{"docs":{},"经":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"成":{"docs":{},"了":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}}}}}}},"构":{"docs":{},"造":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"时":{"docs":{},"会":{"docs":{},"遵":{"docs":{},"循":{"docs":{},"一":{"docs":{},"个":{"docs":{},"指":{"docs":{},"标":{"docs":{},",":{"docs":{},"有":{"docs":{},"的":{"docs":{},"是":{"docs":{},"按":{"docs":{},"照":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"来":{"docs":{},"构":{"docs":{},"建":{"docs":{},",":{"docs":{},"这":{"docs":{},"种":{"docs":{},"叫":{"docs":{},"i":{"docs":{},"d":{"3":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"有":{"docs":{},"的":{"docs":{},"是":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"比":{"docs":{},"来":{"docs":{},"构":{"docs":{},"建":{"docs":{},",":{"docs":{},"这":{"docs":{},"种":{"docs":{},"叫":{"docs":{},"c":{"4":{"docs":{},".":{"5":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"有":{"docs":{},"的":{"docs":{},"是":{"docs":{},"按":{"docs":{},"照":{"docs":{},"基":{"docs":{},"尼":{"docs":{},"系":{"docs":{},"数":{"docs":{},"来":{"docs":{},"构":{"docs":{},"建":{"docs":{},"的":{"docs":{},",":{"docs":{},"这":{"docs":{},"种":{"docs":{},"叫":{"docs":{},"c":{"docs":{},"a":{"docs":{},"r":{"docs":{},"t":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{},"在":{"docs":{},"这":{"docs":{},"里":{"docs":{},"主":{"docs":{},"要":{"docs":{},"介":{"docs":{},"绍":{"docs":{},"一":{"docs":{},"下":{"docs":{},"i":{"docs":{},"d":{"3":{"docs":{},"算":{"docs":{},"法":{"docs":{},"。":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"建":{"docs":{},"模":{"docs":{},"型":{"docs":{},"进":{"docs":{},"行":{"docs":{},"预":{"docs":{},"测":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":10.017241379310345}}}}}}}}}},"活":{"docs":{},"跃":{"docs":{},"度":{"docs":{},"为":{"docs":{},"中":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"=":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}},"低":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"=":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}},"高":{"docs":{},"的":{"docs":{},"熵":{"docs":{},"=":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{},"=":{"docs":{},"总":{"docs":{},"的":{"docs":{},"熵":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}}},"熵":{"docs":{},"、":{"docs":{},"条":{"docs":{},"件":{"docs":{},"熵":{"docs":{},"、":{"docs":{},"信":{"docs":{},"息":{"docs":{},"增":{"docs":{},"益":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}},"第":{"docs":{},"三":{"docs":{},"列":{"docs":{},"是":{"docs":{},"客":{"docs":{},"户":{"docs":{},"是":{"docs":{},"否":{"docs":{},"流":{"docs":{},"失":{"docs":{},"的":{"docs":{"decision_tree.html":{"ref":"decision_tree.html","tf":0.007142857142857143}}}}}}}}}}}}},"$":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"$":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}},"^":{"docs":{},"{":{"docs":{},"t":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}},"−":{"1":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"号":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},",":{"docs":{},"而":{"docs":{},"在":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"中":{"docs":{},",":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"可":{"docs":{},"以":{"docs":{},"同":{"docs":{},"时":{"docs":{},"进":{"docs":{},"行":{"docs":{},"训":{"docs":{},"练":{"docs":{},",":{"docs":{},"当":{"docs":{},"所":{"docs":{},"有":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"训":{"docs":{},"练":{"docs":{},"完":{"docs":{},"成":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"整":{"docs":{},"个":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"就":{"docs":{},"结":{"docs":{},"束":{"docs":{},"了":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"训":{"docs":{},"练":{"docs":{},"完":{"docs":{},"成":{"docs":{},"之":{"docs":{},"后":{"docs":{},"才":{"docs":{},"能":{"docs":{},"开":{"docs":{},"始":{"2":{"2":{"2":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}},"样":{"docs":{},"本":{"docs":{},"看":{"docs":{},"成":{"docs":{},"是":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.019230769230769232}}}}}}},"簇":{"docs":{},")":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"集":{"docs":{},"合":{"docs":{},"为":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}},"与":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.019230769230769232}}},"合":{"docs":{},"并":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"此":{"docs":{},"时":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"集":{"docs":{},"合":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}},"和":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}},"的":{"docs":{},"最":{"docs":{},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"小":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"我":{"docs":{},"们":{"docs":{},"要":{"docs":{},"进":{"docs":{},"行":{"docs":{},"合":{"docs":{},"并":{"docs":{},",":{"docs":{},"合":{"docs":{},"并":{"docs":{},"之":{"docs":{},"后":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}},"簇":{"docs":{},"间":{"docs":{},"最":{"docs":{},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"小":{"docs":{},"。":{"docs":{},"因":{"docs":{},"此":{"docs":{},"需":{"docs":{},"要":{"docs":{},"将":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}},"口":{"docs":{},"岸":{"docs":{},"。":{"docs":{},"嗯":{"docs":{},",":{"docs":{},"好":{"docs":{},"像":{"docs":{},"并":{"docs":{},"没":{"docs":{},"有":{"docs":{},"什":{"docs":{},"么":{"docs":{},"线":{"docs":{},"索":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"再":{"docs":{},"深":{"docs":{},"入":{"docs":{},"一":{"docs":{},"点":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}},"上":{"docs":{},"的":{"docs":{},"船":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"假":{"docs":{},"设":{"docs":{},"由":{"docs":{},"于":{"docs":{},"人":{"docs":{},"多":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"在":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"船":{"docs":{},"并":{"docs":{},"且":{"docs":{},"是":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},",":{"docs":{},"不":{"docs":{},"管":{"docs":{},"是":{"docs":{},"男":{"docs":{},"的":{"docs":{},"还":{"docs":{},"是":{"docs":{},"女":{"docs":{},"的":{"docs":{},",":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"都":{"docs":{},"很":{"docs":{},"低":{"docs":{},"。":{"docs":{},"金":{"docs":{},"钱":{"docs":{},"决":{"docs":{},"定":{"docs":{},"命":{"docs":{},"运":{"docs":{},"。":{"docs":{},"。":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"人":{"docs":{},"中":{"docs":{},"有":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"大":{"docs":{},"多":{"docs":{},"数":{"docs":{},"都":{"docs":{},"是":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"基":{"docs":{},"本":{"docs":{},"上":{"docs":{},"都":{"docs":{},"是":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"船":{"docs":{},"客":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"最":{"docs":{},"高":{"docs":{},",":{"docs":{},"可":{"docs":{},"能":{"docs":{},"大":{"docs":{},"部":{"docs":{},"分":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"最":{"docs":{},"低":{"docs":{},"的":{"docs":{},"是":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"男":{"docs":{},"性":{"docs":{},"几":{"docs":{},"乎":{"docs":{},"团":{"docs":{},"灭":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"q":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"填":{"docs":{},"充":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"值":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"的":{"docs":{},"基":{"docs":{},"本":{"docs":{},"上":{"docs":{},"是":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"在":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"基":{"docs":{},"学":{"docs":{},"习":{"docs":{},"器":{"docs":{},":":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"的":{"docs":{},"基":{"docs":{},"学":{"docs":{},"习":{"docs":{},"器":{"docs":{},"可":{"docs":{},"以":{"docs":{},"是":{"docs":{},"任":{"docs":{},"意":{"docs":{},"学":{"docs":{},"习":{"docs":{},"器":{"docs":{},",":{"docs":{},"而":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"则":{"docs":{},"是":{"docs":{},"以":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"作":{"docs":{},"为":{"docs":{},"基":{"docs":{},"学":{"docs":{},"习":{"docs":{},"器":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"方":{"docs":{},"法":{"docs":{},"如":{"docs":{},"此":{"docs":{},"有":{"docs":{},"效":{"docs":{},"呢":{"docs":{},",":{"docs":{},"举":{"docs":{},"个":{"docs":{},"例":{"docs":{},"子":{"docs":{},"。":{"docs":{},"狼":{"docs":{},"人":{"docs":{},"杀":{"docs":{},"我":{"docs":{},"相":{"docs":{},"信":{"docs":{},"您":{"docs":{},"应":{"docs":{},"该":{"docs":{},"玩":{"docs":{},"过":{"docs":{},",":{"docs":{},"在":{"docs":{},"天":{"docs":{},"黑":{"docs":{},"之":{"docs":{},"前":{"docs":{},",":{"docs":{},"村":{"docs":{},"民":{"docs":{},"们":{"docs":{},"都":{"docs":{},"要":{"docs":{},"根":{"docs":{},"据":{"docs":{},"当":{"docs":{},"天":{"docs":{},"所":{"docs":{},"发":{"docs":{},"生":{"docs":{},"的":{"docs":{},"事":{"docs":{},"和":{"docs":{},"别":{"docs":{},"人":{"docs":{},"的":{"docs":{},"发":{"docs":{},"现":{"docs":{},"来":{"docs":{},"投":{"docs":{},"票":{"docs":{},"决":{"docs":{},"定":{"docs":{},"谁":{"docs":{},"可":{"docs":{},"能":{"docs":{},"是":{"docs":{},"狼":{"docs":{},"人":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"核":{"docs":{},"心":{"docs":{},"思":{"docs":{},"想":{"docs":{},"就":{"docs":{},"是":{"docs":{},"三":{"docs":{},"个":{"docs":{},"臭":{"docs":{},"皮":{"docs":{},"匠":{"docs":{},"顶":{"docs":{},"个":{"docs":{},"诸":{"docs":{},"葛":{"docs":{},"亮":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"使":{"docs":{},"用":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}},"既":{"docs":{},"然":{"docs":{},"有":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},",":{"docs":{},"那":{"docs":{},"有":{"docs":{},"没":{"docs":{},"有":{"docs":{},"用":{"docs":{},"多":{"docs":{},"棵":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"组":{"docs":{},"成":{"docs":{},"森":{"docs":{},"林":{"docs":{},"的":{"docs":{},"算":{"docs":{},"法":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"有":{"docs":{},"!":{"docs":{},"那":{"docs":{},"就":{"docs":{},"是":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"。":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"是":{"docs":{},"一":{"docs":{},"种":{"docs":{},"叫":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"的":{"docs":{},"算":{"docs":{},"法":{"docs":{},"框":{"docs":{},"架":{"docs":{},"的":{"docs":{},"变":{"docs":{},"体":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"想":{"docs":{},"要":{"docs":{},"理":{"docs":{},"解":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"首":{"docs":{},"先":{"docs":{},"要":{"docs":{},"理":{"docs":{},"解":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"一":{"docs":{},"直":{"docs":{},"会":{"docs":{},"变":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"换":{"docs":{},"一":{"docs":{},"种":{"docs":{},"思":{"docs":{},"路":{"docs":{},",":{"docs":{},"即":{"docs":{},"计":{"docs":{},"算":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"的":{"docs":{},"期":{"docs":{},"望":{"docs":{},",":{"docs":{},"即":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"的":{"docs":{},"期":{"docs":{},"望":{"docs":{},"越":{"docs":{},"高":{"docs":{},"越":{"docs":{},"好":{"docs":{},"。":{"docs":{},"那":{"docs":{},"这":{"docs":{},"个":{"docs":{},"期":{"docs":{},"望":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"算":{"docs":{},"呢":{"docs":{},"?":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"此":{"docs":{},"随":{"docs":{},"机":{"docs":{},"有":{"docs":{},"放":{"docs":{},"回":{"docs":{},"采":{"docs":{},"样":{"docs":{},",":{"docs":{},"构":{"docs":{},"建":{"docs":{},"出":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}},"时":{"docs":{},"您":{"docs":{},"会":{"docs":{},"发":{"docs":{},"现":{"docs":{},"我":{"docs":{},"们":{"docs":{},"短":{"docs":{},"短":{"docs":{},"的":{"docs":{},"几":{"docs":{},"行":{"docs":{},"代":{"docs":{},"码":{"docs":{},"实":{"docs":{},"现":{"docs":{},"的":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"识":{"docs":{},"别":{"docs":{},"程":{"docs":{},"序":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"高":{"docs":{},"于":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"看":{"docs":{},"到":{"docs":{},"预":{"docs":{},"测":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"达":{"docs":{},"到":{"docs":{},"了":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}},"真":{"docs":{},"正":{"docs":{},"的":{"docs":{},"身":{"docs":{},"份":{"docs":{},"(":{"docs":{},"是":{"docs":{},"不":{"docs":{},"是":{"docs":{},"狼":{"docs":{},"人":{"docs":{},")":{"docs":{},",":{"docs":{},"ϵ":{"docs":{},"\\":{"docs":{},"e":{"docs":{},"p":{"docs":{},"s":{"docs":{},"i":{"docs":{},"l":{"docs":{},"o":{"docs":{},"n":{"docs":{},"ϵ":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}},"实":{"docs":{},"\\":{"docs":{},"预":{"docs":{},"测":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.010619469026548672}}}}},"类":{"docs":{},"别":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}},"结":{"docs":{},"果":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"类":{"docs":{},"的":{"docs":{},"票":{"docs":{},"数":{"docs":{},"最":{"docs":{},"高":{"docs":{},")":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}},"(":{"docs":{},"因":{"docs":{},"为":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}},",":{"1":{"1":{"1":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.013245033112582781}}},"docs":{}},"docs":{}},"docs":{},"那":{"docs":{},"么":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"的":{"docs":{},"结":{"docs":{},"果":{"docs":{},"会":{"docs":{},"是":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}},"型":{"docs":{},"的":{"docs":{},"数":{"docs":{},"值":{"docs":{},")":{"docs":{},"的":{"docs":{},"图":{"docs":{},"像":{"docs":{},"和":{"docs":{},"一":{"docs":{},"个":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}},"群":{"docs":{},"众":{"docs":{},"的":{"docs":{},"力":{"docs":{},"量":{"docs":{},"是":{"docs":{},"伟":{"docs":{},"大":{"docs":{},"的":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":5.006622516556291}}}}}}}}}}},"解":{"docs":{},"决":{"docs":{},"分":{"docs":{},"类":{"docs":{},"问":{"docs":{},"题":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"将":{"docs":{},"多":{"docs":{},"个":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"的":{"docs":{},"结":{"docs":{},"果":{"docs":{},"整":{"docs":{},"合":{"docs":{},"起":{"docs":{},"来":{"docs":{},"进":{"docs":{},"行":{"docs":{},"投":{"docs":{},"票":{"docs":{},",":{"docs":{},"选":{"docs":{},"取":{"docs":{},"票":{"docs":{},"数":{"docs":{},"最":{"docs":{},"高":{"docs":{},"的":{"docs":{},"结":{"docs":{},"果":{"docs":{},"作":{"docs":{},"为":{"docs":{},"最":{"docs":{},"终":{"docs":{},"结":{"docs":{},"果":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"使":{"docs":{},"用":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"回":{"docs":{},"归":{"docs":{},"问":{"docs":{},"题":{"docs":{},",":{"docs":{},"就":{"docs":{},"将":{"docs":{},"多":{"docs":{},"个":{"docs":{},"回":{"docs":{},"归":{"docs":{},"器":{"docs":{},"的":{"docs":{},"结":{"docs":{},"果":{"docs":{},"加":{"docs":{},"起":{"docs":{},"来":{"docs":{},"然":{"docs":{},"后":{"docs":{},"求":{"docs":{},"平":{"docs":{},"均":{"docs":{},",":{"docs":{},"将":{"docs":{},"平":{"docs":{},"均":{"docs":{},"值":{"docs":{},"作":{"docs":{},"为":{"docs":{},"最":{"docs":{},"终":{"docs":{},"结":{"docs":{},"果":{"docs":{},"。":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"随":{"docs":{},"机":{"docs":{},"属":{"docs":{},"性":{"docs":{},"选":{"docs":{},"择":{"docs":{},":":{"docs":{},"假":{"docs":{},"设":{"docs":{},"原":{"docs":{},"始":{"docs":{},"训":{"docs":{},"练":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"有":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}},"有":{"docs":{},"放":{"docs":{},"回":{"docs":{},"采":{"docs":{},"样":{"docs":{},":":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}},"森":{"docs":{},"林":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":5.013245033112582},"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}},"是":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"的":{"docs":{},"一":{"docs":{},"种":{"docs":{},"扩":{"docs":{},"展":{"docs":{},"变":{"docs":{},"体":{"docs":{},",":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"相":{"docs":{},"对":{"docs":{},"与":{"docs":{},"b":{"docs":{},"a":{"docs":{},"g":{"docs":{},"g":{"docs":{},"i":{"docs":{},"n":{"docs":{},"g":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"的":{"docs":{},"改":{"docs":{},"变":{"docs":{},"有":{"docs":{},":":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.006622516556291391}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"做":{"docs":{},"动":{"docs":{},"作":{"docs":{},",":{"docs":{},"并":{"docs":{},"得":{"docs":{},"到":{"docs":{},"做":{"docs":{},"完":{"docs":{},"动":{"docs":{},"作":{"docs":{},"之":{"docs":{},"后":{"docs":{},"的":{"docs":{},"环":{"docs":{},"境":{"docs":{},"(":{"docs":{},"o":{"docs":{},"b":{"docs":{},"s":{"docs":{},"e":{"docs":{},"r":{"docs":{},"v":{"docs":{},"a":{"docs":{},"t":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},")":{"docs":{},",":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"(":{"docs":{},"r":{"docs":{},"e":{"docs":{},"w":{"docs":{},"a":{"docs":{},"r":{"docs":{},"d":{"docs":{},")":{"docs":{},",":{"docs":{},"是":{"docs":{},"否":{"docs":{},"结":{"docs":{},"束":{"docs":{},"(":{"docs":{},"d":{"docs":{},"o":{"docs":{},"n":{"docs":{},"e":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"初":{"docs":{},"始":{"docs":{},"化":{"docs":{},"第":{"docs":{},"一":{"docs":{},"层":{"docs":{},"的":{"docs":{},"神":{"docs":{},"经":{"docs":{},"元":{"docs":{},"参":{"docs":{},"数":{"docs":{},",":{"docs":{},"总":{"docs":{},"共":{"2":{"0":{"0":{"docs":{},"个":{"docs":{},"神":{"docs":{},"经":{"docs":{},"元":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}},"二":{"docs":{},"层":{"docs":{},"的":{"docs":{},"神":{"docs":{},"经":{"docs":{},"元":{"docs":{},"参":{"docs":{},"数":{"docs":{},",":{"docs":{},"总":{"docs":{},"共":{"2":{"0":{"0":{"docs":{},"个":{"docs":{},"神":{"docs":{},"经":{"docs":{},"元":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}},";":{"docs":{},"如":{"docs":{},"果":{"docs":{"random_forest.html":{"ref":"random_forest.html","tf":0.019867549668874173}}}}},"则":{"docs":{},"这":{"docs":{},"两":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"质":{"docs":{},"心":{"docs":{},"为":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}},"该":{"docs":{},"系":{"docs":{},"统":{"docs":{},"的":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"=":{"8":{"docs":{},"/":{"docs":{},"(":{"8":{"docs":{},"+":{"2":{"docs":{},")":{"docs":{},"=":{"0":{"docs":{},".":{"8":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}}},"docs":{}}}}},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"=":{"8":{"docs":{},"/":{"docs":{},"(":{"8":{"docs":{},"+":{"1":{"2":{"docs":{},")":{"docs":{},"=":{"0":{"docs":{},".":{"4":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}}},"docs":{}}}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}}}}}}}},"表":{"docs":{},"示":{"docs":{},"两":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"之":{"docs":{},"间":{"docs":{},"没":{"docs":{},"有":{"docs":{},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},"(":{"docs":{},"线":{"docs":{},"性":{"docs":{},"的":{"docs":{},")":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"完":{"docs":{},"全":{"docs":{},"负":{"docs":{},"相":{"docs":{},"关":{"docs":{},",":{"docs":{},"若":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}},"同":{"docs":{},"样":{"docs":{},"的":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"一":{"docs":{},"份":{"docs":{},"数":{"docs":{},"据":{"docs":{},"有":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}}},"物":{"docs":{},"以":{"docs":{},"类":{"docs":{},"聚":{"docs":{},"人":{"docs":{},"以":{"docs":{},"群":{"docs":{},"分":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":5.0285714285714285}}}}}}}}}},"过":{"docs":{},"程":{"docs":{},"示":{"docs":{},"意":{"docs":{},"图":{"docs":{},"如":{"docs":{},"下":{"docs":{},"(":{"docs":{},"其":{"docs":{},"中":{"docs":{"kMeans.html":{"ref":"kMeans.html","tf":0.02857142857142857}}}}}}}}}}}},">":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"c":{"docs":{},"o":{"docs":{},"r":{"docs":{},"r":{"docs":{},"e":{"docs":{},"l":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"动":{"docs":{},"作":{"1":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}},"2":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}},"docs":{},"n":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}},"反":{"docs":{},"馈":{"1":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}},"2":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}},"docs":{},"n":{"docs":{},")":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"每":{"docs":{},"一":{"docs":{},"个":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"docs":{},"(":{"docs":{},"即":{"docs":{},"每":{"docs":{},"一":{"docs":{},"把":{"docs":{},"游":{"docs":{},"戏":{"docs":{},")":{"docs":{},"的":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"=":{"docs":{},"反":{"docs":{},"馈":{"1":{"docs":{},"+":{"docs":{},"反":{"docs":{},"馈":{"2":{"docs":{},"+":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"+":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"n":{"docs":{},"。":{"docs":{},"因":{"docs":{},"此":{"docs":{},",":{"docs":{},"若":{"docs":{},"假":{"docs":{},"设":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"r":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},")":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"表":{"docs":{},"示":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"docs":{},"τ":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"τ":{"docs":{},"的":{"docs":{},"反":{"docs":{},"馈":{"docs":{},",":{"docs":{},"则":{"docs":{},"有":{"docs":{},":":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"n":{"docs":{},"τ":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},")":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"n":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"_":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},")":{"docs":{},"=":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"状":{"docs":{},"态":{"2":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}},"docs":{}}}},"[":{"0":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}},"1":{"0":{"docs":{},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},"2":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}},"]":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}}}},"3":{"docs":{},"]":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}},"4":{"docs":{},"]":{"docs":{},",":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}}}},"5":{"docs":{},"]":{"docs":{},"]":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282}}}}},",":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}},"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"]":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},"q":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.01282051282051282},"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.007142857142857143},"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}},"=":{"docs":{},"l":{"docs":{},"e":{"docs":{},"n":{"docs":{},"(":{"docs":{},"c":{"docs":{},")":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}},"z":{"docs":{},")":{"docs":{},"d":{"docs":{},"​":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"∣":{"docs":{},"c":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"x":{"docs":{},"∈":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"z":{"docs":{},"∈":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},"d":{"docs":{},"i":{"docs":{},"s":{"docs":{},"t":{"docs":{},"(":{"docs":{},"x":{"docs":{},",":{"docs":{},"z":{"docs":{},")":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}},"]":{"docs":{},"+":{"docs":{},")":{"docs":{},"\\":{"docs":{},".":{"docs":{},"'":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},",":{"docs":{},"e":{"docs":{},"x":{"docs":{},"p":{"docs":{},"a":{"docs":{},"n":{"docs":{},"d":{"docs":{},"=":{"docs":{},"f":{"docs":{},"a":{"docs":{},"l":{"docs":{},"s":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}},"a":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}},"与":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.008849557522123894}},"簇":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}},"举":{"docs":{},"个":{"docs":{},"例":{"docs":{},"子":{"docs":{},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"先":{"docs":{},"要":{"docs":{},"将":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"数":{"docs":{},"据":{"docs":{},"聚":{"docs":{},"成":{"docs":{},"两":{"docs":{},"类":{"docs":{},",":{"docs":{},"数":{"docs":{},"据":{"docs":{},"如":{"docs":{},"下":{"docs":{},"表":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}},"有":{"6":{"6":{"6":{"docs":{},"条":{"docs":{},"西":{"docs":{},"瓜":{"docs":{},"数":{"docs":{},"据":{"docs":{},"{":{"docs":{},"x":{"1":{"docs":{},",":{"docs":{},"x":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"6":{"docs":{},"}":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"x":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"x":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"docs":{},"_":{"6":{"docs":{},"\\":{"docs":{},"}":{"docs":{},"{":{"docs":{},"x":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"6":{"docs":{},"​":{"docs":{},"​":{"docs":{},"}":{"docs":{},",":{"docs":{},"这":{"docs":{},"些":{"docs":{},"数":{"docs":{},"据":{"docs":{},"已":{"docs":{},"经":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"成":{"docs":{},"了":{"2":{"2":{"2":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}},"docs":{}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}},"docs":{}},"docs":{}},"docs":{}}},"有":{"docs":{},"预":{"docs":{},"测":{"docs":{},"概":{"docs":{},"率":{"docs":{},"与":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"的":{"docs":{},"表":{"docs":{},"格":{"docs":{},"如":{"docs":{},"下":{"docs":{},"所":{"docs":{},"示":{"docs":{},"(":{"docs":{},"其":{"docs":{},"中":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}},"参":{"docs":{},"考":{"docs":{},"模":{"docs":{},"型":{"docs":{},"给":{"docs":{},"出":{"docs":{},"的":{"docs":{},"簇":{"docs":{},"与":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"模":{"docs":{},"型":{"docs":{},"给":{"docs":{},"出":{"docs":{},"的":{"docs":{},"簇":{"docs":{},"划":{"docs":{},"分":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"以":{"docs":{},"距":{"docs":{},"离":{"docs":{},"为":{"docs":{},"尺":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":5.006410256410256}}}}}}},"伪":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}},"寻":{"docs":{},"找":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"小":{"docs":{},"的":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"a":{"docs":{},"和":{"docs":{},"b":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}},"将":{"docs":{},"a":{"docs":{},"和":{"docs":{},"b":{"docs":{},"合":{"docs":{},"并":{"docs":{},",":{"docs":{},"并":{"docs":{},"修":{"docs":{},"改":{"docs":{},"c":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}},"x":{"docs":{},",":{"docs":{},"y":{"docs":{},"划":{"docs":{},"分":{"docs":{},"成":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"和":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"的":{"docs":{},"比":{"docs":{},"例":{"docs":{},"为":{"8":{"0":{"docs":{},"%":{"docs":{},",":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"比":{"docs":{},"例":{"docs":{},"为":{"2":{"0":{"docs":{},"%":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}},"docs":{}},"docs":{}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}},"整":{"docs":{},"个":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"划":{"docs":{},"分":{"docs":{},"成":{"5":{"docs":{},"份":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}},"docs":{}}}}}}}}},"字":{"docs":{},"符":{"docs":{},"串":{"docs":{},"特":{"docs":{},"征":{"docs":{},"转":{"docs":{},"换":{"docs":{},"为":{"docs":{},"数":{"docs":{},"值":{"docs":{},"型":{"docs":{},"特":{"docs":{},"征":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}},"上":{"docs":{},"一":{"docs":{},"帧":{"docs":{},"更":{"docs":{},"新":{"docs":{},"为":{"docs":{},"当":{"docs":{},"前":{"docs":{},"帧":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}},"当":{"docs":{},"前":{"docs":{},"帧":{"docs":{},"更":{"docs":{},"新":{"docs":{},"为":{"docs":{},"上":{"docs":{},"一":{"docs":{},"帧":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}},"平":{"docs":{},"均":{"docs":{},"距":{"docs":{},"离":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}},"描":{"docs":{},"述":{"docs":{},"的":{"docs":{},"是":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"平":{"docs":{},"均":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"中":{"docs":{},"圆":{"docs":{},"圈":{"docs":{},"和":{"docs":{},"菱":{"docs":{},"形":{"docs":{},"分":{"docs":{},"别":{"docs":{},"代":{"docs":{},"表":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},",":{"docs":{},"计":{"docs":{},"算":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"所":{"docs":{},"有":{"docs":{},"样":{"docs":{},"本":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"欧":{"docs":{},"式":{"docs":{},"距":{"docs":{},"离":{"docs":{},"并":{"docs":{},"求":{"docs":{},"其":{"docs":{},"平":{"docs":{},"均":{"docs":{},"值":{"docs":{},"。":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"年":{"docs":{},"龄":{"docs":{},"快":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"簇":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}},"的":{"docs":{},"最":{"docs":{},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"最":{"docs":{},"小":{"docs":{},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"我":{"docs":{},"们":{"docs":{},"要":{"docs":{},"进":{"docs":{},"行":{"docs":{},"合":{"docs":{},"并":{"docs":{},",":{"docs":{},"合":{"docs":{},"并":{"docs":{},"之":{"docs":{},"后":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}},"编":{"docs":{},"号":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641},"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.005309734513274336},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.011673151750972763}}}},"衡":{"docs":{},"量":{"docs":{},"两":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"通":{"docs":{},"常":{"docs":{},"分":{"docs":{},"为":{"docs":{},"最":{"docs":{},"小":{"docs":{},"距":{"docs":{},"离":{"docs":{},"、":{"docs":{},"最":{"docs":{},"大":{"docs":{},"距":{"docs":{},"离":{"docs":{},"和":{"docs":{},"平":{"docs":{},"均":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"在":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"重":{"docs":{},"量":{"docs":{"AGNES.html":{"ref":"AGNES.html","tf":0.00641025641025641},"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.007782101167315175}}},"复":{"docs":{},"第":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}},"上":{"docs":{},"一":{"docs":{},"关":{"docs":{},"中":{"docs":{},"提":{"docs":{},"到":{"docs":{},"了":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"变":{"docs":{},"高":{"docs":{},",":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"会":{"docs":{},"变":{"docs":{},"低":{"docs":{},",":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"变":{"docs":{},"低":{"docs":{},",":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"会":{"docs":{},"变":{"docs":{},"高":{"docs":{},"。":{"docs":{},"那":{"docs":{},"如":{"docs":{},"果":{"docs":{},"想":{"docs":{},"要":{"docs":{},"同":{"docs":{},"时":{"docs":{},"兼":{"docs":{},"顾":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},",":{"docs":{},"这":{"docs":{},"个":{"docs":{},"时":{"docs":{},"候":{"docs":{},"就":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"f":{"1":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"面":{"docs":{},"的":{"docs":{},"几":{"docs":{},"种":{"docs":{},"衡":{"docs":{},"量":{"docs":{},"标":{"docs":{},"准":{"docs":{},"针":{"docs":{},"对":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"会":{"docs":{},"有":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"值":{"docs":{},"。":{"docs":{},"比":{"docs":{},"如":{"docs":{},"说":{"docs":{},"预":{"docs":{},"测":{"docs":{},"房":{"docs":{},"价":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"流":{"docs":{},"女":{"docs":{},"性":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"船":{"docs":{},"人":{"docs":{},"数":{"docs":{},"最":{"docs":{},"多":{"docs":{},"的":{"docs":{},"口":{"docs":{},"岸":{"docs":{},"是":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"之":{"docs":{},"间":{"docs":{},"也":{"docs":{},"存":{"docs":{},"在":{"docs":{},"关":{"docs":{},"系":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"有":{"docs":{},"这":{"docs":{},"么":{"docs":{},"一":{"docs":{},"组":{"docs":{},"数":{"docs":{},"据":{"docs":{},",":{"docs":{},"菱":{"docs":{},"形":{"docs":{},"代":{"docs":{},"表":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"最":{"docs":{},"高":{"docs":{},"百":{"docs":{},"分":{"docs":{},"之":{"docs":{},"百":{"docs":{},"。":{"docs":{},"最":{"docs":{},"低":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}},"类":{"docs":{},"的":{"docs":{},"。":{"docs":{},"没":{"docs":{},"有":{"docs":{},"什":{"docs":{},"么":{"docs":{},"可":{"docs":{},"读":{"docs":{},"性":{"docs":{},",":{"docs":{},"到":{"docs":{},"底":{"docs":{},"多":{"docs":{},"少":{"docs":{},"才":{"docs":{},"算":{"docs":{},"好":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"不":{"docs":{},"知":{"docs":{},"道":{"docs":{},",":{"docs":{},"那":{"docs":{},"要":{"docs":{},"根":{"docs":{},"据":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"应":{"docs":{},"用":{"docs":{},"场":{"docs":{},"景":{"docs":{},"来":{"docs":{},"。":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"那":{"docs":{},"么":{"docs":{},"预":{"docs":{},"测":{"docs":{},"身":{"docs":{},"高":{"docs":{},"就":{"docs":{},"可":{"docs":{},"能":{"docs":{},"是":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}},"人":{"docs":{},"是":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"的":{"docs":{},"。":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},",":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"越":{"docs":{},"高":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"我":{"docs":{},"们":{"docs":{},"感":{"docs":{},"兴":{"docs":{},"趣":{"docs":{},"的":{"docs":{},"对":{"docs":{},"象":{"docs":{},"成":{"docs":{},"为":{"docs":{},"漏":{"docs":{},"网":{"docs":{},"之":{"docs":{},"鱼":{"docs":{},"的":{"docs":{},"可":{"docs":{},"能":{"docs":{},"性":{"docs":{},"越":{"docs":{},"低":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"真":{"docs":{},"的":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"。":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},",":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"越":{"docs":{},"高":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},"预":{"docs":{},"测":{"docs":{},"某":{"docs":{},"人":{"docs":{},"患":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"的":{"docs":{},"可":{"docs":{},"信":{"docs":{},"度":{"docs":{},"就":{"docs":{},"越":{"docs":{},"高":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"家":{"docs":{},"庭":{"docs":{},"来":{"docs":{},"说":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"也":{"docs":{},"比":{"docs":{},"较":{"docs":{},"低":{"docs":{},"。":{"docs":{},"感":{"docs":{},"觉":{"docs":{},",":{"docs":{},"这":{"docs":{},"可":{"docs":{},"能":{"docs":{},"也":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"比":{"docs":{},"较":{"docs":{},"好":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"再":{"docs":{},"深":{"docs":{},"入":{"docs":{},"的":{"docs":{},"看":{"docs":{},"一":{"docs":{},"下":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"作":{"docs":{},"为":{"docs":{},"横":{"docs":{},"轴":{"docs":{},",":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"纵":{"docs":{},"轴":{"docs":{},",":{"docs":{},"将":{"docs":{},"上":{"docs":{},"面":{"docs":{},"的":{"docs":{},"表":{"docs":{},"格":{"docs":{},"以":{"docs":{},"折":{"docs":{},"线":{"docs":{},"图":{"docs":{},"的":{"docs":{},"形":{"docs":{},"式":{"docs":{},"画":{"docs":{},"出":{"docs":{},"来":{"docs":{},"就":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}},"准":{"docs":{},"确":{"docs":{},"度":{"docs":{},"的":{"docs":{},"缺":{"docs":{},"陷":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}},"这":{"docs":{},"个":{"docs":{},"概":{"docs":{},"念":{"docs":{},"相":{"docs":{},"信":{"docs":{},"对":{"docs":{},"于":{"docs":{},"大":{"docs":{},"家":{"docs":{},"来":{"docs":{},"说":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"并":{"docs":{},"不":{"docs":{},"陌":{"docs":{},"生":{"docs":{},",":{"docs":{},"就":{"docs":{},"是":{"docs":{},"正":{"docs":{},"确":{"docs":{},"率":{"docs":{},"。":{"docs":{},"例":{"docs":{},"如":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"与":{"docs":{},"数":{"docs":{},"据":{"docs":{},"真":{"docs":{},"实":{"docs":{},"结":{"docs":{},"果":{"docs":{},"如":{"docs":{},"下":{"docs":{},"表":{"docs":{},"所":{"docs":{},"示":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"却":{"docs":{},"预":{"docs":{},"测":{"docs":{},"成":{"docs":{},"了":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"只":{"docs":{},"有":{"docs":{},"编":{"docs":{},"号":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"是":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}},"多":{"docs":{},"了":{"docs":{},"一":{"docs":{},"道":{"docs":{},"程":{"docs":{},"序":{"docs":{},",":{"docs":{},"为":{"docs":{},"真":{"docs":{},"实":{"docs":{},"世":{"docs":{},"界":{"docs":{},"建":{"docs":{},"模":{"docs":{},",":{"docs":{},"也":{"docs":{},"可":{"docs":{},"以":{"docs":{},"说":{"docs":{},"他":{"docs":{},"们":{"docs":{},"都":{"docs":{},"是":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}},"能":{"docs":{},"按":{"docs":{},"部":{"docs":{},"就":{"docs":{},"班":{"docs":{},",":{"docs":{},"一":{"docs":{},"步":{"docs":{},"一":{"docs":{},"步":{"docs":{},"等":{"docs":{},"待":{"docs":{},"真":{"docs":{},"实":{"docs":{},"世":{"docs":{},"界":{"docs":{},"的":{"docs":{},"反":{"docs":{},"馈":{"docs":{},",":{"docs":{},"再":{"docs":{},"根":{"docs":{},"据":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"采":{"docs":{},"取":{"docs":{},"下":{"docs":{},"一":{"docs":{},"步":{"docs":{},"行":{"docs":{},"动":{"docs":{},"。":{"docs":{},"而":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"(":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"a":{"docs":{},"l":{"docs":{},"l":{"docs":{},")":{"docs":{},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},"我":{"docs":{},"们":{"docs":{},"关":{"docs":{},"注":{"docs":{},"的":{"docs":{},"事":{"docs":{},"件":{"docs":{},"发":{"docs":{},"生":{"docs":{},"了":{"docs":{},",":{"docs":{},"并":{"docs":{},"且":{"docs":{},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{},"正":{"docs":{},"确":{"docs":{},"了":{"docs":{},"的":{"docs":{},"比":{"docs":{},"值":{"docs":{},",":{"docs":{},"其":{"docs":{},"计":{"docs":{},"算":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"小":{"docs":{},"于":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"就":{"docs":{},"是":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"这":{"docs":{},"么":{"docs":{},"一":{"docs":{},"个":{"docs":{},"指":{"docs":{},"标":{"docs":{},",":{"docs":{},"公":{"docs":{},"式":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}},"用":{"docs":{},"模":{"docs":{},"型":{"docs":{},"来":{"docs":{},"表":{"docs":{},"示":{"docs":{},"环":{"docs":{},"境":{"docs":{},",":{"docs":{},"理":{"docs":{},"解":{"docs":{},"环":{"docs":{},"境":{"docs":{},"就":{"docs":{},"是":{"docs":{},"学":{"docs":{},"会":{"docs":{},"了":{"docs":{},"用":{"docs":{},"一":{"docs":{},"个":{"docs":{},"模":{"docs":{},"型":{"docs":{},"来":{"docs":{},"代":{"docs":{},"表":{"docs":{},"环":{"docs":{},"境":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"这":{"docs":{},"种":{"docs":{},"就":{"docs":{},"是":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"您":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"觉":{"docs":{},"得":{"docs":{},",":{"docs":{},"哇":{"docs":{},",":{"docs":{},"这":{"docs":{},"么":{"docs":{},"高":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"度":{"docs":{},"!":{"docs":{},"这":{"docs":{},"个":{"docs":{},"系":{"docs":{},"统":{"docs":{},"肯":{"docs":{},"定":{"docs":{},"很":{"docs":{},"牛":{"docs":{},"逼":{"docs":{},"!":{"docs":{},"但":{"docs":{},"是":{"docs":{},"我":{"docs":{},"们":{"docs":{},"知":{"docs":{},"道":{"docs":{},",":{"docs":{},"一":{"docs":{},"般":{"docs":{},"年":{"docs":{},"轻":{"docs":{},"人":{"docs":{},"患":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"非":{"docs":{},"常":{"docs":{},"低":{"docs":{},",":{"docs":{},"假":{"docs":{},"设":{"docs":{},"患":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"的":{"docs":{},"概":{"docs":{},"率":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"会":{"docs":{},"发":{"docs":{},"现":{"docs":{},"∑":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"n":{"docs":{},")":{"docs":{},"\\":{"docs":{},"s":{"docs":{},"u":{"docs":{},"m":{"docs":{},"_":{"docs":{},"{":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"}":{"docs":{},"^":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"t":{"docs":{},"a":{"docs":{},"u":{"docs":{},"^":{"docs":{},"n":{"docs":{},")":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"很":{"docs":{},"好":{"docs":{},"算":{"docs":{},",":{"docs":{},"只":{"docs":{},"要":{"docs":{},"把":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"全":{"docs":{},"部":{"docs":{},"加":{"docs":{},"起":{"docs":{},"来":{"docs":{},"就":{"docs":{},"完":{"docs":{},"事":{"docs":{},"了":{"docs":{},",":{"docs":{},"难":{"docs":{},"算":{"docs":{},"的":{"docs":{},"是":{"docs":{},"∇":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"n":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{},"\\":{"docs":{},"n":{"docs":{},"a":{"docs":{},"b":{"docs":{},"l":{"docs":{},"a":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"想":{"docs":{},"要":{"docs":{},"得":{"docs":{},"到":{"docs":{},"公":{"docs":{},"式":{"docs":{},"中":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}},"计":{"docs":{},"算":{"docs":{},"上":{"docs":{},"述":{"docs":{},"指":{"docs":{},"标":{"docs":{},"来":{"docs":{},"度":{"docs":{},"量":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},",":{"docs":{},"首":{"docs":{},"先":{"docs":{},"需":{"docs":{},"要":{"docs":{},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"a":{"docs":{},"a":{"docs":{},"a":{"docs":{},",":{"docs":{},"c":{"docs":{},"c":{"docs":{},"c":{"docs":{},",":{"docs":{},"d":{"docs":{},"d":{"docs":{},"d":{"docs":{},",":{"docs":{},"e":{"docs":{},"e":{"docs":{},"e":{"docs":{},"。":{"docs":{},"假":{"docs":{},"设":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"e":{"docs":{},"=":{"docs":{},"{":{"docs":{},"x":{"1":{"docs":{},",":{"docs":{},"x":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"docs":{},"m":{"docs":{},"}":{"docs":{},"e":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"x":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"x":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"docs":{},"_":{"docs":{},"m":{"docs":{},"\\":{"docs":{},"}":{"docs":{},"e":{"docs":{},"=":{"docs":{},"{":{"docs":{},"x":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"x":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"}":{"docs":{},"。":{"docs":{},"通":{"docs":{},"过":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"模":{"docs":{},"型":{"docs":{},"给":{"docs":{},"出":{"docs":{},"的":{"docs":{},"簇":{"docs":{},"划":{"docs":{},"分":{"docs":{},"为":{"docs":{},"c":{"docs":{},"=":{"docs":{},"{":{"docs":{},"c":{"1":{"docs":{},",":{"docs":{},"c":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"c":{"docs":{},"k":{"docs":{},"}":{"docs":{},"c":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"c":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"c":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"c":{"docs":{},"_":{"docs":{},"k":{"docs":{},"\\":{"docs":{},"}":{"docs":{},"c":{"docs":{},"=":{"docs":{},"{":{"docs":{},"c":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"c":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"c":{"docs":{},"​":{"docs":{},"k":{"docs":{},"​":{"docs":{},"​":{"docs":{},"}":{"docs":{},",":{"docs":{},"参":{"docs":{},"考":{"docs":{},"模":{"docs":{},"型":{"docs":{},"给":{"docs":{},"出":{"docs":{},"的":{"docs":{},"簇":{"docs":{},"划":{"docs":{},"分":{"docs":{},"为":{"docs":{},"d":{"docs":{},"=":{"docs":{},"{":{"docs":{},"d":{"1":{"docs":{},",":{"docs":{},"d":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"d":{"docs":{},"s":{"docs":{},"}":{"docs":{},"d":{"docs":{},"=":{"docs":{},"\\":{"docs":{},"{":{"docs":{},"d":{"docs":{},"_":{"1":{"docs":{},",":{"docs":{},"d":{"docs":{},"_":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"d":{"docs":{},"_":{"docs":{},"s":{"docs":{},"\\":{"docs":{},"}":{"docs":{},"d":{"docs":{},"=":{"docs":{},"{":{"docs":{},"d":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"d":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"d":{"docs":{},"​":{"docs":{},"s":{"docs":{},"​":{"docs":{},"​":{"docs":{},"}":{"docs":{},"。":{"docs":{},"λ":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"λ":{"docs":{},"与":{"docs":{},"λ":{"docs":{},"∗":{"docs":{},"\\":{"docs":{},"l":{"docs":{},"a":{"docs":{},"m":{"docs":{},"b":{"docs":{},"d":{"docs":{},"a":{"docs":{},"^":{"docs":{},"*":{"docs":{},"λ":{"docs":{},"​":{"docs":{},"∗":{"docs":{},"​":{"docs":{},"​":{"docs":{},"分":{"docs":{},"别":{"docs":{},"表":{"docs":{},"示":{"docs":{},"c":{"docs":{},"c":{"docs":{},"c":{"docs":{},"与":{"docs":{},"d":{"docs":{},"d":{"docs":{},"d":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{},"簇":{"docs":{},"标":{"docs":{},"记":{"docs":{},",":{"docs":{},"则":{"docs":{},"有":{"docs":{},":":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}}}}}}}}}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"使":{"docs":{},"用":{"docs":{},"这":{"docs":{},"个":{"docs":{},"数":{"docs":{},"据":{"docs":{},"很":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}},"识":{"docs":{},"别":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},",":{"docs":{},"首":{"docs":{},"先":{"docs":{},"需":{"docs":{},"要":{"docs":{},"有":{"docs":{},"数":{"docs":{},"据":{"docs":{},"。":{"docs":{},"s":{"docs":{},"k":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}},"调":{"docs":{},"整":{"docs":{},"的":{"docs":{},"参":{"docs":{},"数":{"docs":{},"的":{"docs":{},"字":{"docs":{},"典":{"docs":{},",":{"docs":{},"字":{"docs":{},"典":{"docs":{},"的":{"docs":{},"k":{"docs":{},"e":{"docs":{},"y":{"docs":{},"为":{"docs":{},"参":{"docs":{},"数":{"docs":{},"名":{"docs":{},"字":{"docs":{},",":{"docs":{},"v":{"docs":{},"a":{"docs":{},"l":{"docs":{},"u":{"docs":{},"e":{"docs":{},"为":{"docs":{},"想":{"docs":{},"要":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"参":{"docs":{},"数":{"docs":{},"值":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"玩":{"docs":{},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{},",":{"docs":{},"首":{"docs":{},"先":{"docs":{},"得":{"docs":{},"有":{"docs":{},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"。":{"docs":{},"o":{"docs":{},"p":{"docs":{},"e":{"docs":{},"n":{"docs":{},"a":{"docs":{},"i":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}},"进":{"docs":{},"一":{"docs":{},"步":{"docs":{},"的":{"docs":{},"考":{"docs":{},"量":{"docs":{},"分":{"docs":{},"类":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"如":{"docs":{},"何":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"其":{"docs":{},"他":{"docs":{},"的":{"docs":{},"一":{"docs":{},"些":{"docs":{},"性":{"docs":{},"能":{"docs":{},"指":{"docs":{},"标":{"docs":{},",":{"docs":{},"例":{"docs":{},"如":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"。":{"docs":{},"但":{"docs":{},"这":{"docs":{},"些":{"docs":{},"指":{"docs":{},"标":{"docs":{},"计":{"docs":{},"算":{"docs":{},"的":{"docs":{},"基":{"docs":{},"础":{"docs":{},"是":{"docs":{},"混":{"docs":{},"淆":{"docs":{},"矩":{"docs":{},"阵":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"才":{"docs":{},"会":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},"。":{"docs":{},"这":{"docs":{},"也":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}},"排":{"docs":{},"序":{"docs":{},"后":{"docs":{},"的":{"docs":{},"表":{"docs":{},"格":{"docs":{},"中":{"docs":{},",":{"docs":{},"真":{"docs":{},"实":{"docs":{},"类":{"docs":{},"别":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}},"描":{"docs":{},"述":{"docs":{},"的":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"曲":{"docs":{},"线":{"docs":{},"与":{"docs":{},"横":{"docs":{},"轴":{"docs":{},"所":{"docs":{},"围":{"docs":{},"成":{"docs":{},"的":{"docs":{},"面":{"docs":{},"积":{"docs":{},"越":{"docs":{},"大":{"docs":{},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"分":{"docs":{},"类":{"docs":{},"性":{"docs":{},"能":{"docs":{},"就":{"docs":{},"越":{"docs":{},"高":{"docs":{},"。":{"docs":{},"而":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}},"如":{"docs":{},"下":{"docs":{},"图":{"docs":{},"所":{"docs":{},"示":{"docs":{},"(":{"docs":{},"其":{"docs":{},"中":{"docs":{},"模":{"docs":{},"型":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}},"更":{"docs":{},"高":{"docs":{},"。":{"docs":{},"由":{"docs":{},"由":{"docs":{},"于":{"docs":{},"随":{"docs":{},"着":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"好":{"docs":{},"地":{"docs":{},"验":{"docs":{},"证":{"docs":{},"算":{"docs":{},"法":{"docs":{},"性":{"docs":{},"能":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}},"正":{"docs":{},"确":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}}}}},"混":{"docs":{},"淆":{"docs":{},"矩":{"docs":{},"阵":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"中":{"docs":{},"每":{"docs":{},"个":{"docs":{},"格":{"docs":{},"子":{"docs":{},"所":{"docs":{},"代":{"docs":{},"表":{"docs":{},"的":{"docs":{},"的":{"docs":{},"意":{"docs":{},"义":{"docs":{},"也":{"docs":{},"很":{"docs":{},"明":{"docs":{},"显":{"docs":{},",":{"docs":{},"意":{"docs":{},"义":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}},"看":{"docs":{},"到":{"docs":{},"这":{"docs":{},"里":{"docs":{},"您":{"docs":{},"应":{"docs":{},"该":{"docs":{},"已":{"docs":{},"经":{"docs":{},"体":{"docs":{},"会":{"docs":{},"到":{"docs":{},"了":{"docs":{},",":{"docs":{},"一":{"docs":{},"个":{"docs":{},"分":{"docs":{},"类":{"docs":{},"模":{"docs":{},"型":{"docs":{},"如":{"docs":{},"果":{"docs":{},"光":{"docs":{},"看":{"docs":{},"准":{"docs":{},"确":{"docs":{},"度":{"docs":{},"是":{"docs":{},"不":{"docs":{},"够":{"docs":{},"的":{"docs":{},",":{"docs":{},"尤":{"docs":{},"其":{"docs":{},"是":{"docs":{},"对":{"docs":{},"这":{"docs":{},"种":{"docs":{},"样":{"docs":{},"本":{"docs":{},"极":{"docs":{},"度":{"docs":{},"不":{"docs":{},"平":{"docs":{},"衡":{"docs":{},"的":{"docs":{},"情":{"docs":{},"况":{"docs":{},"(":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"成":{"docs":{},"是":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}},"看":{"docs":{},"分":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},"的":{"docs":{},"衡":{"docs":{},"量":{"docs":{},"标":{"docs":{},"准":{"docs":{},"就":{"docs":{},"是":{"docs":{},"正":{"docs":{},"确":{"docs":{},"率":{"docs":{},",":{"docs":{},"而":{"docs":{},"正":{"docs":{},"确":{"docs":{},"率":{"docs":{},"又":{"docs":{},"在":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}},"d":{"docs":{},"a":{"docs":{},"t":{"docs":{},"a":{"docs":{},"的":{"docs":{},"前":{"5":{"docs":{},"行":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"docs":{}}}}}}}},"上":{"docs":{},"去":{"docs":{},"好":{"docs":{},"想":{"docs":{},"女":{"docs":{},"性":{"docs":{},"船":{"docs":{},"客":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"高":{"docs":{},"一":{"docs":{},"些":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"再":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"一":{"docs":{},"下":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"了":{"docs":{},"这":{"docs":{},"么":{"docs":{},"多":{"docs":{},"特":{"docs":{},"征":{"docs":{},"对":{"docs":{},"于":{"docs":{},"生":{"docs":{},"还":{"docs":{},"的":{"docs":{},"影":{"docs":{},"响":{"docs":{},",":{"docs":{},"可":{"docs":{},"能":{"docs":{},"有":{"docs":{},"点":{"docs":{},"懵":{"docs":{},",":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"先":{"docs":{},"简":{"docs":{},"单":{"docs":{},"总":{"docs":{},"结":{"docs":{},"一":{"docs":{},"下":{"docs":{},"根":{"docs":{},"据":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"结":{"docs":{},"果":{"docs":{},"所":{"docs":{},"获":{"docs":{},"得":{"docs":{},"的":{"docs":{},"信":{"docs":{},"息":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},"(":{"docs":{},"p":{"docs":{},"r":{"docs":{},"e":{"docs":{},"c":{"docs":{},"i":{"docs":{},"s":{"docs":{},"i":{"docs":{},"o":{"docs":{},"n":{"docs":{},")":{"docs":{},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"预":{"docs":{},"测":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}},"与":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}},"继":{"docs":{},"续":{"docs":{},"以":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},"为":{"docs":{},"例":{"docs":{},",":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"检":{"docs":{},"测":{"docs":{},"系":{"docs":{},"统":{"docs":{},"的":{"docs":{},"输":{"docs":{},"出":{"docs":{},"不":{"docs":{},"是":{"docs":{},"有":{"docs":{},"癌":{"docs":{},"症":{"docs":{},"就":{"docs":{},"是":{"docs":{},"健":{"docs":{},"康":{"docs":{},",":{"docs":{},"这":{"docs":{},"里":{"docs":{},"为":{"docs":{},"了":{"docs":{},"方":{"docs":{},"便":{"docs":{},",":{"docs":{},"就":{"docs":{},"用":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"能":{"docs":{},"够":{"docs":{},"同":{"docs":{},"时":{"docs":{},"兼":{"docs":{},"顾":{"docs":{},"精":{"docs":{},"准":{"docs":{},"率":{"docs":{},"和":{"docs":{},"召":{"docs":{},"回":{"docs":{},"率":{"docs":{},"的":{"docs":{},"原":{"docs":{},"因":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}},"超":{"docs":{},"越":{"docs":{},"人":{"docs":{},"类":{"docs":{},"的":{"docs":{},"原":{"docs":{},"因":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}},"越":{"docs":{},"低":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}},"高":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}},",":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"二":{"docs":{},"分":{"docs":{},"类":{"docs":{},"性":{"docs":{},"能":{"docs":{},"就":{"docs":{},"越":{"docs":{},"强":{"docs":{},"。":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}}}}}}}}},"较":{"docs":{},"低":{"docs":{},"时":{"docs":{},"所":{"docs":{},"对":{"docs":{},"应":{"docs":{},"的":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}},"都":{"docs":{},"等":{"docs":{},"于":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}},"是":{"docs":{},"从":{"docs":{},"环":{"docs":{},"境":{"docs":{},"中":{"docs":{},"得":{"docs":{},"到":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"然":{"docs":{},"后":{"docs":{},"从":{"docs":{},"中":{"docs":{},"学":{"docs":{},"习":{"docs":{},"。":{"docs":{},"而":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}},"错":{"docs":{},"误":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}}}}},"预":{"docs":{},"测":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.007079646017699115}},"概":{"docs":{},"率":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0035398230088495575}}}},"结":{"docs":{},"果":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}},"(":{"docs":{},"假":{"docs":{},"设":{"docs":{},"分":{"docs":{},"类":{"docs":{},"阈":{"docs":{},"值":{"docs":{},"为":{"docs":{"classification_metrics.html":{"ref":"classification_metrics.html","tf":0.0017699115044247787}}}}}}}}}},"√":{"docs":{},"​":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"i":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"m":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"y":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"−":{"docs":{},"p":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}},"docs":{}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}},"例":{"docs":{},"如":{"docs":{},":":{"docs":{},"要":{"docs":{},"做":{"docs":{},"房":{"docs":{},"价":{"docs":{},"预":{"docs":{},"测":{"docs":{},",":{"docs":{},"每":{"docs":{},"平":{"docs":{},"方":{"docs":{},"是":{"docs":{},"万":{"docs":{},"元":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"也":{"docs":{},"是":{"docs":{},"万":{"docs":{},"元":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"差":{"docs":{},"值":{"docs":{},"的":{"docs":{},"平":{"docs":{},"方":{"docs":{},"单":{"docs":{},"位":{"docs":{},"应":{"docs":{},"该":{"docs":{},"是":{"docs":{},"千":{"docs":{},"万":{"docs":{},"级":{"docs":{},"别":{"docs":{},"的":{"docs":{},"。":{"docs":{},"那":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"太":{"docs":{},"好":{"docs":{},"描":{"docs":{},"述":{"docs":{},"自":{"docs":{},"己":{"docs":{},"做":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"效":{"docs":{},"果":{"docs":{},"。":{"docs":{},"怎":{"docs":{},"么":{"docs":{},"说":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"误":{"docs":{},"差":{"docs":{},"是":{"docs":{},"多":{"docs":{},"少":{"docs":{},"千":{"docs":{},"万":{"docs":{},"?":{"docs":{},"于":{"docs":{},"是":{"docs":{},"干":{"docs":{},"脆":{"docs":{},"就":{"docs":{},"开":{"docs":{},"个":{"docs":{},"根":{"docs":{},"号":{"docs":{},"就":{"docs":{},"好":{"docs":{},"了":{"docs":{},"。":{"docs":{},"我":{"docs":{},"们":{"docs":{},"误":{"docs":{},"差":{"docs":{},"的":{"docs":{},"结":{"docs":{},"果":{"docs":{},"就":{"docs":{},"跟":{"docs":{},"我":{"docs":{},"们":{"docs":{},"数":{"docs":{},"据":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"级":{"docs":{},"别":{"docs":{},"的":{"docs":{},"了":{"docs":{},",":{"docs":{},"在":{"docs":{},"描":{"docs":{},"述":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"时":{"docs":{},"候":{"docs":{},"就":{"docs":{},"说":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"误":{"docs":{},"差":{"docs":{},"是":{"docs":{},"多":{"docs":{},"少":{"docs":{},"万":{"docs":{},"元":{"docs":{},"。":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"虽":{"docs":{},"然":{"docs":{},"不":{"docs":{},"作":{"docs":{},"为":{"docs":{},"损":{"docs":{},"失":{"docs":{},"函":{"docs":{},"数":{"docs":{},",":{"docs":{},"确":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"非":{"docs":{},"常":{"docs":{},"直":{"docs":{},"观":{"docs":{},"的":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{},",":{"docs":{},"它":{"docs":{},"表":{"docs":{},"示":{"docs":{},"每":{"docs":{},"个":{"docs":{},"样":{"docs":{},"本":{"docs":{},"的":{"docs":{},"预":{"docs":{},"测":{"docs":{},"标":{"docs":{},"签":{"docs":{},"值":{"docs":{},"与":{"docs":{},"真":{"docs":{},"实":{"docs":{},"标":{"docs":{},"签":{"docs":{},"值":{"docs":{},"的":{"docs":{"regression_metrics.html":{"ref":"regression_metrics.html","tf":0.0136986301369863}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"土":{"docs":{},"豪":{"docs":{},"们":{"docs":{},"基":{"docs":{},"本":{"docs":{},"上":{"docs":{},"都":{"docs":{},"是":{"docs":{},"在":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}},"说":{"docs":{},"钱":{"docs":{},"不":{"docs":{},"是":{"docs":{},"万":{"docs":{},"能":{"docs":{},"的":{"docs":{},",":{"docs":{},"但":{"docs":{},"从":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"结":{"docs":{},"果":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},",":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"最":{"docs":{},"高":{"docs":{},",":{"docs":{},"大":{"docs":{},"于":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"μ":{"1":{"docs":{},"=":{"docs":{},"(":{"docs":{},"(":{"3":{"docs":{},"+":{"2":{"docs":{},"+":{"3":{"docs":{},")":{"3":{"docs":{},",":{"docs":{},"(":{"4":{"docs":{},"+":{"3":{"docs":{},"+":{"4":{"docs":{},")":{"3":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"2":{"docs":{},".":{"6":{"7":{"docs":{},",":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"2":{"docs":{},"=":{"docs":{},"(":{"docs":{},"(":{"6":{"docs":{},"+":{"7":{"docs":{},"+":{"8":{"docs":{},")":{"3":{"docs":{},",":{"docs":{},"(":{"9":{"docs":{},"+":{"1":{"0":{"docs":{},"+":{"1":{"1":{"docs":{},")":{"3":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"7":{"docs":{},",":{"1":{"0":{"docs":{},")":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}},"docs":{}}},"docs":{}}}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}},"docs":{}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"(":{"docs":{},"​":{"3":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"3":{"docs":{},"+":{"2":{"docs":{},"+":{"3":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"​":{"3":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"4":{"docs":{},"+":{"3":{"docs":{},"+":{"4":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"2":{"docs":{},".":{"6":{"7":{"docs":{},",":{"3":{"docs":{},".":{"6":{"7":{"docs":{},")":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"docs":{}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"docs":{}}}}}}},"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},"=":{"docs":{},"(":{"docs":{},"​":{"3":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"6":{"docs":{},"+":{"7":{"docs":{},"+":{"8":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"​":{"3":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"9":{"docs":{},"+":{"1":{"0":{"docs":{},"+":{"1":{"1":{"docs":{},")":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"=":{"docs":{},"(":{"7":{"docs":{},",":{"1":{"0":{"docs":{},")":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}},"docs":{}}},"docs":{}}}}}}}},"docs":{}},"docs":{}}},"docs":{}},"docs":{}}},"docs":{}}}}},"docs":{}}}}}}},"docs":{}}},"docs":{}}},"docs":{}}}}},"docs":{}}}}}}},"docs":{}}},"公":{"docs":{},"式":{"docs":{},"中":{"docs":{},"的":{"docs":{},"表":{"docs":{},"达":{"docs":{},"式":{"docs":{},"其":{"docs":{},"实":{"docs":{},"很":{"docs":{},"好":{"docs":{},"理":{"docs":{},"解":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{},"k":{"docs":{},"k":{"docs":{},"k":{"docs":{},"代":{"docs":{},"表":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"有":{"docs":{},"多":{"docs":{},"少":{"docs":{},"个":{"docs":{},"簇":{"docs":{},",":{"docs":{},"d":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"(":{"docs":{},"c":{"docs":{},"i":{"docs":{},",":{"docs":{},"c":{"docs":{},"j":{"docs":{},")":{"docs":{},"d":{"docs":{},"_":{"docs":{},"{":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"}":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{},"c":{"docs":{},"_":{"docs":{},"j":{"docs":{},")":{"docs":{},"d":{"docs":{},"​":{"docs":{},"m":{"docs":{},"i":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"c":{"docs":{},"​":{"docs":{},"j":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"代":{"docs":{},"表":{"docs":{},"第":{"docs":{},"i":{"docs":{},"i":{"docs":{},"i":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"中":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"与":{"docs":{},"第":{"docs":{},"j":{"docs":{},"j":{"docs":{},"j":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"中":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"最":{"docs":{},"短":{"docs":{},"距":{"docs":{},"离":{"docs":{},",":{"docs":{},"d":{"docs":{},"i":{"docs":{},"a":{"docs":{},"m":{"docs":{},"(":{"docs":{},"c":{"docs":{},"l":{"docs":{},")":{"docs":{},"d":{"docs":{},"i":{"docs":{},"a":{"docs":{},"m":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"docs":{},"l":{"docs":{},")":{"docs":{},"d":{"docs":{},"i":{"docs":{},"a":{"docs":{},"m":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"docs":{},"l":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"代":{"docs":{},"表":{"docs":{},"第":{"docs":{},"l":{"docs":{},"l":{"docs":{},"l":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"中":{"docs":{},"相":{"docs":{},"距":{"docs":{},"最":{"docs":{},"远":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"μ":{"docs":{},"i":{"docs":{},"\\":{"docs":{},"m":{"docs":{},"u":{"docs":{},"_":{"docs":{},"i":{"docs":{},"μ":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"代":{"docs":{},"表":{"docs":{},"第":{"docs":{},"i":{"docs":{},"i":{"docs":{},"i":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"中":{"docs":{},"心":{"docs":{},"点":{"docs":{},",":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"i":{"docs":{},")":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},")":{"docs":{},"a":{"docs":{},"v":{"docs":{},"g":{"docs":{},"(":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"代":{"docs":{},"表":{"docs":{},"c":{"docs":{},"i":{"docs":{},"c":{"docs":{},"_":{"docs":{},"i":{"docs":{},"c":{"docs":{},"​":{"docs":{},"i":{"docs":{},"​":{"docs":{},"​":{"docs":{},"第":{"docs":{},"i":{"docs":{},"i":{"docs":{},"i":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"中":{"docs":{},"所":{"docs":{},"有":{"docs":{},"数":{"docs":{},"据":{"docs":{},"与":{"docs":{},"第":{"docs":{},"i":{"docs":{},"i":{"docs":{},"i":{"docs":{},"个":{"docs":{},"簇":{"docs":{},"的":{"docs":{},"中":{"docs":{},"心":{"docs":{},"点":{"docs":{},"的":{"docs":{},"平":{"docs":{},"均":{"docs":{},"距":{"docs":{},"离":{"docs":{},"。":{"docs":{},"d":{"docs":{},"c":{"docs":{},"(":{"docs":{},"μ":{"docs":{},"i":{"docs":{},",":{"docs":{},"μ":{"docs":{},"j":{"docs":{},")":{"docs":{},"d":{"docs":{},"_":{"docs":{},"c":{"docs":{},"(":{"docs":{},"\\":{"docs":{},"m":{"docs":{},"u":{"docs":{},"_":{"docs":{},"i":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"内":{"docs":{},"部":{"docs":{},"指":{"docs":{},"标":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"通":{"docs":{},"常":{"docs":{},"使":{"docs":{},"用":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}},"参":{"docs":{},"考":{"docs":{},"簇":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}},"外":{"docs":{},"部":{"docs":{},"指":{"docs":{},"标":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}},"通":{"docs":{},"常":{"docs":{},"使":{"docs":{},"用":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}},"国":{"docs":{},"人":{"docs":{},"的":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"和":{"docs":{},"我":{"docs":{},"们":{"docs":{},"中":{"docs":{},"国":{"docs":{},"人":{"docs":{},"的":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"不":{"docs":{},"太":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{},"一":{"docs":{},"般":{"docs":{},"都":{"docs":{},"会":{"docs":{},"有":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}},"满":{"docs":{},"足":{"docs":{},"b":{"docs":{},"b":{"docs":{},"b":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"为":{"docs":{},"(":{"3":{"docs":{},",":{"4":{"docs":{},")":{"docs":{},"(":{"3":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}},"d":{"docs":{},"d":{"docs":{},"d":{"docs":{},"的":{"docs":{},"样":{"docs":{},"本":{"docs":{},"对":{"docs":{},"为":{"docs":{},"(":{"1":{"docs":{},",":{"4":{"docs":{},")":{"docs":{},"(":{"1":{"docs":{},",":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}},"docs":{}}}},"docs":{}}},"docs":{}}}}}}}}}}}},"还":{"docs":{},"是":{"docs":{},"这":{"docs":{},"个":{"docs":{},"例":{"docs":{},"子":{"docs":{},",":{"docs":{},"现":{"docs":{},"在":{"docs":{},"有":{"docs":{"cluster_metrics.html":{"ref":"cluster_metrics.html","tf":0.0038910505836575876}}}}}}}}}}}},"下":{"docs":{},"面":{"docs":{},"是":{"docs":{},"使":{"docs":{},"用":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"识":{"docs":{},"别":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"的":{"docs":{},"完":{"docs":{},"整":{"docs":{},"代":{"docs":{},"码":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}},"了":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}},"解":{"docs":{},"了":{"docs":{},"数":{"docs":{},"据":{"docs":{},"种":{"docs":{},"各":{"docs":{},"个":{"docs":{},"属":{"docs":{},"性":{"docs":{},"的":{"docs":{},"含":{"docs":{},"义":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"看":{"docs":{},"这":{"docs":{},"个":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"中":{"docs":{},"有":{"docs":{},"没":{"docs":{},"有":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"值":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"份":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"作":{"docs":{},"为":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},",":{"docs":{},"剩":{"docs":{},"下":{"docs":{},"的":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}},"类":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},",":{"docs":{},"然":{"docs":{},"后":{"docs":{},"试":{"docs":{},"图":{"docs":{},"让":{"docs":{},"每":{"docs":{},"一":{"docs":{},"份":{"docs":{},"子":{"docs":{},"集":{"docs":{},"都":{"docs":{},"能":{"docs":{},"成":{"docs":{},"为":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},",":{"docs":{},"并":{"docs":{},"循":{"docs":{},"环":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}},"像":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}},"素":{"docs":{},"(":{"docs":{},"实":{"docs":{},"际":{"docs":{},"上":{"docs":{},"是":{"docs":{},"一":{"docs":{},"条":{"docs":{},"样":{"docs":{},"本":{"docs":{},"有":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}},"写":{"docs":{},"在":{"docs":{},"前":{"docs":{},"面":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"的":{"docs":{},"话":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}}}}}}},"创":{"docs":{},"建":{"docs":{},"一":{"docs":{},"个":{"docs":{},"将":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"随":{"docs":{},"机":{"docs":{},"划":{"docs":{},"分":{"docs":{},"成":{"5":{"docs":{},"份":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}},"docs":{}}}}}}}}}},"有":{"5":{"0":{"docs":{},"棵":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"的":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}}},"docs":{}},"docs":{}},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},"对":{"docs":{},"象":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}},"加":{"docs":{},"载":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}}}},"模":{"docs":{},"型":{"docs":{},"玩":{"docs":{},"游":{"docs":{},"戏":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}},"即":{"docs":{},"可":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}},"完":{"docs":{},"整":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}},"实":{"docs":{},"现":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"库":{"docs":{},"。":{"docs":{},"s":{"docs":{},"k":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}},"训":{"docs":{},"推":{"docs":{},"荐":{"docs":{"recommand.html":{"ref":"recommand.html","tf":10.028571428571428}}}}}},"导":{"docs":{},"入":{"docs":{},"k":{"docs":{},"f":{"docs":{},"o":{"docs":{},"l":{"docs":{},"d":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}},"好":{"docs":{},"接":{"docs":{},"口":{"docs":{},"后":{"docs":{},",":{"docs":{},"就":{"docs":{},"可":{"docs":{},"以":{"docs":{},"创":{"docs":{},"建":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"对":{"docs":{},"象":{"docs":{},"了":{"docs":{},"。":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"对":{"docs":{},"象":{"docs":{},"有":{"docs":{},"用":{"docs":{},"来":{"docs":{},"训":{"docs":{},"练":{"docs":{},"的":{"docs":{},"函":{"docs":{},"数":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"计":{"docs":{},"算":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"的":{"docs":{},"接":{"docs":{},"口":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}}}}}}},"已":{"docs":{},"经":{"docs":{},"为":{"docs":{},"我":{"docs":{},"们":{"docs":{},"提":{"docs":{},"供":{"docs":{},"了":{"docs":{},"计":{"docs":{},"算":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"的":{"docs":{},"接":{"docs":{},"口":{"docs":{},",":{"docs":{},"使":{"docs":{},"用":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}},"建":{"docs":{},"议":{"docs":{},"查":{"docs":{},"阅":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}},"得":{"docs":{},"到":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"需":{"docs":{},"要":{"docs":{},"将":{"docs":{},"其":{"docs":{},"与":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"真":{"docs":{},"实":{"docs":{},"答":{"docs":{},"案":{"docs":{},"进":{"docs":{},"行":{"docs":{},"比":{"docs":{},"对":{"docs":{},",":{"docs":{},"计":{"docs":{},"算":{"docs":{},"出":{"docs":{},"预":{"docs":{},"测":{"docs":{},"的":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{},"。":{"docs":{},"s":{"docs":{},"k":{"docs":{},"l":{"docs":{},"e":{"docs":{},"a":{"docs":{},"r":{"docs":{},"n":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"帧":{"docs":{},"差":{"docs":{},"图":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}},"打":{"docs":{},"印":{"5":{"docs":{},"折":{"docs":{},"验":{"docs":{},"证":{"docs":{},"的":{"docs":{},"平":{"docs":{},"均":{"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}}}}}}}}},"docs":{},"准":{"docs":{},"确":{"docs":{},"率":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0048543689320388345}}}}},"最":{"docs":{},"佳":{"docs":{},"参":{"docs":{},"数":{"docs":{},"组":{"docs":{},"合":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}},"时":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"最":{"docs":{},"佳":{"docs":{},"性":{"docs":{},"能":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"不":{"docs":{},"如":{"docs":{},"通":{"docs":{},"过":{"docs":{},"一":{"docs":{},"个":{"docs":{},"实":{"docs":{},"例":{"docs":{},"来":{"docs":{},"感":{"docs":{},"受":{"docs":{},"一":{"docs":{},"下":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"来":{"docs":{},"实":{"docs":{},"现":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"识":{"docs":{},"别":{"docs":{},"了":{"docs":{},",":{"docs":{},"例":{"docs":{},"如":{"docs":{},"想":{"docs":{},"要":{"docs":{},"使":{"docs":{},"用":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"来":{"docs":{},"进":{"docs":{},"行":{"docs":{},"识":{"docs":{},"别":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"首":{"docs":{},"先":{"docs":{},"要":{"docs":{},"导":{"docs":{},"入":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"算":{"docs":{},"法":{"docs":{},"接":{"docs":{},"口":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"来":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"对":{"docs":{},"一":{"docs":{},"些":{"docs":{},"特":{"docs":{},"征":{"docs":{},"进":{"docs":{},"行":{"docs":{},"处":{"docs":{},"理":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}},"着":{"docs":{},"可":{"docs":{},"以":{"docs":{},"根":{"docs":{},"据":{"docs":{},"前":{"docs":{},"缀":{"docs":{},"来":{"docs":{},"填":{"docs":{},"充":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"的":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"提":{"docs":{},"供":{"docs":{},"的":{"docs":{},"接":{"docs":{},"口":{"docs":{},"都":{"docs":{},"封":{"docs":{},"装":{"docs":{},"在":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"目":{"docs":{},"录":{"docs":{},"下":{"docs":{},"的":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}},"数":{"docs":{},"据":{"docs":{},"之":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"还":{"docs":{},"需":{"docs":{},"要":{"docs":{},"将":{"docs":{},"这":{"docs":{},"些":{"docs":{},"数":{"docs":{},"据":{"docs":{},"进":{"docs":{},"行":{"docs":{},"划":{"docs":{},"分":{"docs":{},",":{"docs":{},"划":{"docs":{},"分":{"docs":{},"成":{"docs":{},"两":{"docs":{},"个":{"docs":{},"部":{"docs":{},"分":{"docs":{},",":{"docs":{},"一":{"docs":{},"部":{"docs":{},"分":{"docs":{},"是":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},",":{"docs":{},"另":{"docs":{},"一":{"docs":{},"部":{"docs":{},"分":{"docs":{},"是":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"。":{"docs":{},"因":{"docs":{},"为":{"docs":{},"如":{"docs":{},"果":{"docs":{},"没":{"docs":{},"有":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"的":{"docs":{},"话":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"并":{"docs":{},"不":{"docs":{},"知":{"docs":{},"道":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"识":{"docs":{},"别":{"docs":{},"程":{"docs":{},"序":{"docs":{},"识":{"docs":{},"别":{"docs":{},"得":{"docs":{},"准":{"docs":{},"不":{"docs":{},"准":{"docs":{},"。":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"划":{"docs":{},"分":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"步":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}},"每":{"docs":{},"一":{"docs":{},"次":{"docs":{},"挑":{"docs":{},"选":{"docs":{},"其":{"docs":{},"中":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}},"用":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"测":{"docs":{},"试":{"docs":{},",":{"docs":{},"r":{"docs":{},"e":{"docs":{},"s":{"docs":{},"u":{"docs":{},"l":{"docs":{},"t":{"docs":{},"为":{"docs":{},"预":{"docs":{},"测":{"docs":{},"结":{"docs":{},"果":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}}}}}}}}}}}}}},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"训":{"docs":{},"练":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.007281553398058253}}}}}}},"这":{"docs":{},"个":{"docs":{},"模":{"docs":{},"型":{"docs":{},"在":{"docs":{},"相":{"docs":{},"应":{"docs":{},"的":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"上":{"docs":{},"测":{"docs":{},"试":{"docs":{},",":{"docs":{},"计":{"docs":{},"算":{"docs":{},"并":{"docs":{},"保":{"docs":{},"存":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"评":{"docs":{},"估":{"docs":{},"指":{"docs":{},"标":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"目":{"docs":{},"录":{"docs":{},"下":{"docs":{},"都":{"docs":{},"是":{"docs":{},"聚":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},"接":{"docs":{},"口":{"docs":{},",":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}},"集":{"docs":{},"成":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"的":{"docs":{},"接":{"docs":{},"口":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}},"标":{"docs":{},"为":{"1":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}},"docs":{}}}},"级":{"docs":{},"教":{"docs":{},"程":{"docs":{},",":{"docs":{},"想":{"docs":{},"要":{"docs":{},"更":{"docs":{},"加":{"docs":{},"系":{"docs":{},"统":{"docs":{},"更":{"docs":{},"加":{"docs":{},"全":{"docs":{},"面":{"docs":{},"的":{"docs":{},"学":{"docs":{},"习":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}},"组":{"docs":{},"测":{"docs":{},"试":{"docs":{},"结":{"docs":{},"果":{"docs":{},"的":{"docs":{},"平":{"docs":{},"均":{"docs":{},"值":{"docs":{},"作":{"docs":{},"为":{"docs":{},"算":{"docs":{},"法":{"docs":{},"性":{"docs":{},"能":{"docs":{},"的":{"docs":{},"估":{"docs":{},"计":{"docs":{},"。":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}},"而":{"docs":{},"且":{"docs":{},"我":{"docs":{},"们":{"docs":{},"不":{"docs":{},"仅":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"来":{"docs":{},"实":{"docs":{},"现":{"docs":{},"手":{"docs":{},"写":{"docs":{},"数":{"docs":{},"字":{"docs":{},"识":{"docs":{},"别":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"还":{"docs":{},"可":{"docs":{},"以":{"docs":{},"使":{"docs":{},"用":{"docs":{},"别":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"实":{"docs":{},"现":{"docs":{},",":{"docs":{},"比":{"docs":{},"如":{"docs":{},"逻":{"docs":{},"辑":{"docs":{},"回":{"docs":{},"归":{"docs":{},",":{"docs":{},"代":{"docs":{},"码":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"sklearn.html":{"ref":"sklearn.html","tf":0.0024271844660194173}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"名":{"docs":{},"乘":{"docs":{},"客":{"docs":{},"丧":{"docs":{},"生":{"docs":{},"。":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}}}},"中":{"docs":{},"有":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}}}}},"船":{"docs":{},"客":{"docs":{},"中":{"docs":{},",":{"docs":{},"只":{"docs":{},"有":{"docs":{},"约":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"称":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}},"泰":{"docs":{},"坦":{"docs":{},"尼":{"docs":{},"克":{"docs":{},"号":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"是":{"docs":{},"目":{"docs":{},"标":{"docs":{},"是":{"docs":{},"给":{"docs":{},"出":{"docs":{},"一":{"docs":{},"个":{"docs":{},"模":{"docs":{},"型":{"docs":{},"来":{"docs":{},"预":{"docs":{},"测":{"docs":{},"某":{"docs":{},"位":{"docs":{},"泰":{"docs":{},"坦":{"docs":{},"尼":{"docs":{},"克":{"docs":{},"号":{"docs":{},"的":{"docs":{},"乘":{"docs":{},"客":{"docs":{},"在":{"docs":{},"沉":{"docs":{},"船":{"docs":{},"事":{"docs":{},"件":{"docs":{},"中":{"docs":{},"是":{"docs":{},"生":{"docs":{},"还":{"docs":{},"是":{"docs":{},"死":{"docs":{},"。":{"docs":{},"而":{"docs":{},"且":{"docs":{},"该":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"非":{"docs":{},"常":{"docs":{},"好":{"docs":{},"的":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},",":{"docs":{},"能":{"docs":{},"够":{"docs":{},"让":{"docs":{},"您":{"docs":{},"快":{"docs":{},"速":{"docs":{},"的":{"docs":{},"开":{"docs":{},"始":{"docs":{},"数":{"docs":{},"据":{"docs":{},"科":{"docs":{},"学":{"docs":{},"之":{"docs":{},"旅":{"docs":{},"。":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"沉":{"docs":{},"船":{"docs":{},"事":{"docs":{},"件":{"docs":{},"是":{"docs":{},"是":{"docs":{},"历":{"docs":{},"史":{"docs":{},"上":{"docs":{},"最":{"docs":{},"臭":{"docs":{},"名":{"docs":{},"昭":{"docs":{},"著":{"docs":{},"的":{"docs":{},"沉":{"docs":{},"船":{"docs":{},"事":{"docs":{},"件":{"docs":{},"之":{"docs":{},"一":{"docs":{},"。":{"1":{"9":{"1":{"2":{"docs":{},"年":{"4":{"docs":{},"月":{"1":{"5":{"docs":{},"日":{"docs":{},",":{"docs":{},"泰":{"docs":{},"坦":{"docs":{},"尼":{"docs":{},"克":{"docs":{},"在":{"docs":{},"航":{"docs":{},"线":{"docs":{},"中":{"docs":{},"与":{"docs":{},"冰":{"docs":{},"山":{"docs":{},"相":{"docs":{},"撞":{"docs":{},",":{"2":{"2":{"2":{"4":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}},"docs":{}}},"docs":{}},"docs":{}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}},"生":{"docs":{},"还":{"docs":{},"预":{"docs":{},"测":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}},"生":{"docs":{},"还":{"docs":{},"问":{"docs":{},"题":{"docs":{},"简":{"docs":{},"介":{"docs":{"titanic/introduction.html":{"ref":"titanic/introduction.html","tf":0.125}}}}}}}}}}}},"_":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381},"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}},"v":{"0":{"docs":{},"\"":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"'":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}},"docs":{},"s":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.02619047619047619},"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.02857142857142857}}}},"、":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.009523809523809525}},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}},"d":{"docs":{},"o":{"docs":{},"n":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"r":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"l":{"docs":{},"a":{"docs":{},"d":{"docs":{},"i":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"m":{"docs":{},"a":{"docs":{},"j":{"docs":{},"o":{"docs":{},"r":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"s":{"docs":{},"i":{"docs":{},"r":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"乘":{"docs":{},"客":{"docs":{},"i":{"docs":{},"d":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"儿":{"docs":{},"童":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"随":{"docs":{},"着":{"docs":{},"船":{"docs":{},"舱":{"docs":{},"等":{"docs":{},"级":{"docs":{},"的":{"docs":{},"增":{"docs":{},"加":{"docs":{},"而":{"docs":{},"增":{"docs":{},"加":{"docs":{},",":{"1":{"0":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{}}}}}}}}}}}}}}}}}}},"兄":{"docs":{},"弟":{"docs":{},"姐":{"docs":{},"妹":{"docs":{},"父":{"docs":{},"母":{"docs":{},"爱":{"docs":{},"人":{"docs":{},"数":{"docs":{},"量":{"docs":{},":":{"docs":{},"有":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"先":{"docs":{},"把":{"docs":{},"口":{"docs":{},"岸":{"docs":{},"和":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{},"画":{"docs":{},"出":{"docs":{},"来":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}},"初":{"docs":{},"窥":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"口":{"docs":{},"岸":{"docs":{},"上":{"docs":{},"船":{"docs":{},"的":{"docs":{},"人":{"docs":{},"中":{"docs":{},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},"都":{"docs":{},"是":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"是":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"和":{"docs":{},"二":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"船":{"docs":{},"客":{"docs":{},"吧":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},",":{"docs":{},"但":{"docs":{},"是":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"登":{"docs":{},"记":{"docs":{},"信":{"docs":{},"息":{"docs":{},"时":{"docs":{},"漏":{"docs":{},"了":{"docs":{},"几":{"docs":{},"位":{"docs":{},"船":{"docs":{},"客":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"不":{"docs":{},"妨":{"docs":{},"用":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"最":{"docs":{},"低":{"docs":{},"。":{"docs":{},"这":{"docs":{},"是":{"docs":{},"因":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}},":":{"docs":{},"即":{"docs":{},"使":{"docs":{},"大":{"docs":{},"多":{"docs":{},"数":{"docs":{},"一":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"在":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}},"嗯":{"docs":{},",":{"docs":{},"女":{"docs":{},"性":{"docs":{},"和":{"docs":{},"小":{"docs":{},"孩":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}},"填":{"docs":{},"充":{"docs":{},"完":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"值":{"docs":{},"后":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"一":{"docs":{},"下":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}},"缺":{"docs":{},"失":{"docs":{},"口":{"docs":{},"岸":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"年":{"docs":{},"龄":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"多":{"docs":{},"人":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"女":{"docs":{},"人":{"docs":{},"生":{"docs":{},"还":{"docs":{},"的":{"docs":{},"人":{"docs":{},"数":{"docs":{},"几":{"docs":{},"乎":{"docs":{},"是":{"docs":{},"男":{"docs":{},"人":{"docs":{},"生":{"docs":{},"还":{"docs":{},"的":{"docs":{},"人":{"docs":{},"数":{"docs":{},"的":{"docs":{},"两":{"docs":{},"倍":{"docs":{},",":{"docs":{},"女":{"docs":{},"人":{"docs":{},"的":{"docs":{},"存":{"docs":{},"活":{"docs":{},"率":{"docs":{},"约":{"docs":{},"为":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"都":{"docs":{},"是":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}},"出":{"docs":{},"了":{"docs":{},"一":{"docs":{},"个":{"docs":{},"虚":{"docs":{},"拟":{"docs":{},"环":{"docs":{},"境":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"先":{"docs":{},"在":{"docs":{},"虚":{"docs":{},"拟":{"docs":{},"环":{"docs":{},"境":{"docs":{},"中":{"docs":{},"尝":{"docs":{},"试":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"没":{"docs":{},"问":{"docs":{},"题":{"docs":{},",":{"docs":{},"再":{"docs":{},"拿":{"docs":{},"到":{"docs":{},"现":{"docs":{},"实":{"docs":{},"环":{"docs":{},"境":{"docs":{},"中":{"docs":{},"来":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"岁":{"docs":{},"。":{"docs":{},"这":{"docs":{},"个":{"docs":{},"还":{"docs":{},"是":{"docs":{},"符":{"docs":{},"合":{"docs":{},"常":{"docs":{},"理":{"docs":{},"的":{"docs":{},"。":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"我":{"docs":{},"们":{"docs":{},"看":{"docs":{},"看":{"docs":{},"船":{"docs":{},"舱":{"docs":{},"等":{"docs":{},"级":{"docs":{},",":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"和":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{},",":{"docs":{},"以":{"docs":{},"及":{"docs":{},"性":{"docs":{},"别":{"docs":{},",":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"和":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"以":{"docs":{},"下":{"docs":{},"的":{"docs":{},"小":{"docs":{},"屁":{"docs":{},"孩":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},",":{"8":{"0":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{}}}}}}}}}}},"朋":{"docs":{},"友":{"docs":{},"存":{"docs":{},"活":{"docs":{},"率":{"docs":{},"仿":{"docs":{},"佛":{"docs":{},"都":{"docs":{},"还":{"docs":{},"挺":{"docs":{},"高":{"docs":{},"的":{"docs":{},",":{"docs":{},"跟":{"docs":{},"船":{"docs":{},"舱":{"docs":{},"等":{"docs":{},"级":{"docs":{},"好":{"docs":{},"像":{"docs":{},"没":{"docs":{},"有":{"docs":{},"太":{"docs":{},"大":{"docs":{},"关":{"docs":{},"系":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"存":{"docs":{},"活":{"docs":{},"率":{"docs":{},"比":{"docs":{},"较":{"docs":{},"高":{"docs":{},",":{"1":{"5":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{}}}}}}}}}}}}}}},"显":{"docs":{},"然":{"docs":{},"是":{"docs":{},"不":{"docs":{},"合":{"docs":{},"适":{"docs":{},"的":{"docs":{},"。":{"docs":{},"那":{"docs":{},"有":{"docs":{},"没":{"docs":{},"有":{"docs":{},"能":{"docs":{},"够":{"docs":{},"更":{"docs":{},"加":{"docs":{},"准":{"docs":{},"确":{"docs":{},"地":{"docs":{},"知":{"docs":{},"道":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"的":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"是":{"docs":{},"多":{"docs":{},"少":{"docs":{},"的":{"docs":{},"方":{"docs":{},"法":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"有":{"docs":{},"!":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"根":{"docs":{},"据":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"来":{"docs":{},"推":{"docs":{},"断":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"的":{"docs":{},"年":{"docs":{},"龄":{"docs":{},",":{"docs":{},"因":{"docs":{},"为":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"中":{"docs":{},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},"类":{"docs":{},"似":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"小":{"docs":{},"屁":{"docs":{},"孩":{"docs":{},",":{"docs":{},"但":{"docs":{},"是":{"docs":{},"你":{"docs":{},"把":{"docs":{},"人":{"docs":{},"家":{"docs":{},"强":{"docs":{},"行":{"docs":{},"改":{"docs":{},"成":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"年":{"docs":{},"轻":{"docs":{},"人":{"docs":{},"存":{"docs":{},"活":{"docs":{},"率":{"docs":{},"低":{"docs":{},"。":{"docs":{},"可":{"docs":{},"能":{"docs":{},"年":{"docs":{},"轻":{"docs":{},"人":{"docs":{},"就":{"docs":{},"是":{"docs":{},"炮":{"docs":{},"灰":{"docs":{},"吧":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}},"老":{"docs":{},"人":{"docs":{},"活":{"docs":{},"下":{"docs":{},"来":{"docs":{},"了":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"船":{"docs":{},"客":{"docs":{},"的":{"docs":{},"存":{"docs":{},"活":{"docs":{},"率":{"docs":{},"很":{"docs":{},"高":{"docs":{},",":{"docs":{},"而":{"docs":{},"且":{"docs":{},"对":{"docs":{},"女":{"docs":{},"性":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"一":{"docs":{},"如":{"docs":{},"既":{"docs":{},"往":{"docs":{},"的":{"docs":{},"高":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"置":{"docs":{},"为":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}},"左":{"docs":{},"右":{"docs":{},"的":{"docs":{},"人":{"docs":{},"幸":{"docs":{},"免":{"docs":{},"于":{"docs":{},"难":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"接":{"docs":{},"下":{"docs":{},"来":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"使":{"docs":{},"用":{"docs":{},"数":{"docs":{},"据":{"docs":{},"集":{"docs":{},"中":{"docs":{},"不":{"docs":{},"同":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"来":{"docs":{},"看":{"docs":{},"看":{"docs":{},"他":{"docs":{},"们":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"有":{"docs":{},"多":{"docs":{},"少":{"docs":{},"。":{"docs":{},"其":{"docs":{},"实":{"docs":{},"这":{"docs":{},"样":{"docs":{},"一":{"docs":{},"个":{"docs":{},"过":{"docs":{},"程":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"看":{"docs":{},"出":{"docs":{},"大":{"docs":{},"概":{"docs":{},"有":{"docs":{},"哪":{"docs":{},"些":{"docs":{},"类":{"docs":{},"型":{"docs":{},"的":{"docs":{},"船":{"docs":{},"客":{"docs":{},"活":{"docs":{},"了":{"docs":{},"下":{"docs":{},"来":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"因":{"docs":{},"此":{"docs":{},"平":{"docs":{},"均":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"年":{"docs":{},"纪":{"docs":{},"最":{"docs":{},"大":{"docs":{},"的":{"docs":{},"是":{"8":{"0":{"docs":{},"岁":{"docs":{},"的":{"docs":{},"老":{"docs":{},"爷":{"docs":{},"爷":{"docs":{},"或":{"docs":{},"者":{"docs":{},"老":{"docs":{},"太":{"docs":{},"太":{"docs":{},",":{"docs":{},"最":{"docs":{},"小":{"docs":{},"的":{"docs":{},"是":{"docs":{},"刚":{"docs":{},"出":{"docs":{},"生":{"docs":{},"的":{"docs":{},"小":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}},"龄":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},":":{"1":{"0":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}},"docs":{}},"docs":{},"由":{"docs":{},"于":{"docs":{},"已":{"docs":{},"经":{"docs":{},"根":{"docs":{},"据":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"生":{"docs":{},"成":{"docs":{},"了":{"docs":{},"新":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"“":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"段":{"docs":{},"”":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"这":{"docs":{},"个":{"docs":{},"特":{"docs":{},"征":{"docs":{},"也":{"docs":{},"需":{"docs":{},"要":{"docs":{},"删":{"docs":{},"除":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"连":{"docs":{},"续":{"docs":{},"型":{"docs":{},"的":{"docs":{},"数":{"docs":{},"值":{"docs":{},"特":{"docs":{},"征":{"docs":{},",":{"docs":{},"有":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"算":{"docs":{},"法":{"docs":{},"对":{"docs":{},"于":{"docs":{},"连":{"docs":{},"续":{"docs":{},"性":{"docs":{},"数":{"docs":{},"值":{"docs":{},"特":{"docs":{},"征":{"docs":{},"不":{"docs":{},"太":{"docs":{},"友":{"docs":{},"好":{"docs":{},",":{"docs":{},"例":{"docs":{},"如":{"docs":{},"决":{"docs":{},"策":{"docs":{},"树":{"docs":{},"、":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{},"等":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"离":{"docs":{},"散":{"docs":{},"化":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}},"惊":{"docs":{},"奇":{"docs":{},"的":{"docs":{},"发":{"docs":{},"现":{"docs":{},",":{"docs":{},"居":{"docs":{},"然":{"docs":{},"有":{"docs":{},"人":{"docs":{},"可":{"docs":{},"以":{"docs":{},"享":{"docs":{},"受":{"docs":{},"免":{"docs":{},"费":{"docs":{},"豪":{"docs":{},"华":{"docs":{},"邮":{"docs":{},"轮":{"docs":{},"!":{"docs":{},"!":{"docs":{},"!":{"docs":{},"!":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}},"意":{"docs":{},"义":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"探":{"docs":{},"索":{"docs":{},"性":{"docs":{},"数":{"docs":{},"据":{"docs":{},"分":{"docs":{},"析":{"docs":{},"(":{"docs":{},"e":{"docs":{},"d":{"docs":{},"a":{"docs":{},")":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":10.002380952380953}},"说":{"docs":{},"白":{"docs":{},"了":{"docs":{},"就":{"docs":{},"是":{"docs":{},"通":{"docs":{},"过":{"docs":{},"可":{"docs":{},"视":{"docs":{},"化":{"docs":{},"的":{"docs":{},"方":{"docs":{},"式":{"docs":{},"来":{"docs":{},"看":{"docs":{},"看":{"docs":{},"数":{"docs":{},"据":{"docs":{},"中":{"docs":{},"特":{"docs":{},"征":{"docs":{},"与":{"docs":{},"特":{"docs":{},"征":{"docs":{},"之":{"docs":{},"间":{"docs":{},",":{"docs":{},"特":{"docs":{},"征":{"docs":{},"与":{"docs":{},"目":{"docs":{},"标":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"潜":{"docs":{},"在":{"docs":{},"关":{"docs":{},"系":{"docs":{},",":{"docs":{},"看":{"docs":{},"看":{"docs":{},"有":{"docs":{},"什":{"docs":{},"么":{"docs":{},"有":{"docs":{},"用":{"docs":{},"的":{"docs":{},"线":{"docs":{},"索":{"docs":{},"可":{"docs":{},"以":{"docs":{},"挖":{"docs":{},"掘":{"docs":{},",":{"docs":{},"例":{"docs":{},"如":{"docs":{},"哪":{"docs":{},"些":{"docs":{},"数":{"docs":{},"据":{"docs":{},"是":{"docs":{},"噪":{"docs":{},"声":{"docs":{},",":{"docs":{},"有":{"docs":{},"哪":{"docs":{},"些":{"docs":{},"特":{"docs":{},"征":{"docs":{},"的":{"docs":{},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},"比":{"docs":{},"较":{"docs":{},"低":{"docs":{},",":{"docs":{},"后":{"docs":{},"续":{"docs":{},"可":{"docs":{},"以":{"docs":{},"造":{"docs":{},"出":{"docs":{},"哪":{"docs":{},"些":{"docs":{},"新":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{},"等":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"父":{"docs":{},"母":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}},"特":{"docs":{},"征":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},"系":{"docs":{},"数":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}},"工":{"docs":{},"程":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":10.014285714285714}}}}}},"生":{"docs":{},"还":{"docs":{},"数":{"docs":{},"量":{"docs":{},"直":{"docs":{},"方":{"docs":{},"图":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}},"比":{"docs":{},"例":{"docs":{},"饼":{"docs":{},"图":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}},"登":{"docs":{},"船":{"docs":{},"口":{"docs":{},"岸":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}},"相":{"docs":{},"关":{"docs":{},"性":{"docs":{},"分":{"docs":{},"为":{"docs":{},"正":{"docs":{},"相":{"docs":{},"关":{"docs":{},"与":{"docs":{},"负":{"docs":{},"相":{"docs":{},"关":{"docs":{},",":{"docs":{},"正":{"docs":{},"相":{"docs":{},"关":{"docs":{},"指":{"docs":{},"的":{"docs":{},"是":{"docs":{},":":{"docs":{},"如":{"docs":{},"果":{"docs":{},"特":{"docs":{},"征":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}},"等":{"docs":{},"前":{"docs":{},"缀":{"docs":{},",":{"docs":{},"接":{"docs":{},"着":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"将":{"docs":{},"这":{"docs":{},"些":{"docs":{},"前":{"docs":{},"缀":{"docs":{},"替":{"docs":{},"换":{"docs":{},"成":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}},"特":{"docs":{},"殊":{"docs":{},"前":{"docs":{},"缀":{"docs":{},"。":{"docs":{},"所":{"docs":{},"以":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"先":{"docs":{},"提":{"docs":{},"取":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"中":{"docs":{},"的":{"docs":{},"前":{"docs":{},"缀":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}},"船":{"docs":{},"客":{"docs":{},"在":{"docs":{},"船":{"docs":{},"上":{"docs":{},"所":{"docs":{},"花":{"docs":{},"的":{"docs":{},"钱":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"姓":{"docs":{},"名":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"年":{"docs":{},"龄":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}},"性":{"docs":{},"别":{"docs":{},":":{"docs":{},"f":{"docs":{},"e":{"docs":{},"m":{"docs":{},"a":{"docs":{},"l":{"docs":{},"e":{"docs":{},",":{"docs":{},"m":{"docs":{},"a":{"docs":{},"l":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"登":{"docs":{},"船":{"docs":{},"的":{"docs":{},"口":{"docs":{},"岸":{"docs":{},":":{"docs":{},"c":{"docs":{},",":{"docs":{},"q":{"docs":{},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}},"的":{"docs":{},"兄":{"docs":{},"弟":{"docs":{},"姐":{"docs":{},"妹":{"docs":{},"妻":{"docs":{},"子":{"docs":{},"丈":{"docs":{},"夫":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}},"父":{"docs":{},"母":{"docs":{},",":{"docs":{},"孩":{"docs":{},"子":{"docs":{},"的":{"docs":{},"数":{"docs":{},"量":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}},"船":{"docs":{},"舱":{"docs":{},"号":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"i":{"docs":{},"d":{"docs":{},":":{"docs":{},"i":{"docs":{},"d":{"docs":{},"和":{"docs":{},"生":{"docs":{},"死":{"docs":{},"应":{"docs":{},"该":{"docs":{},"没":{"docs":{},"啥":{"docs":{},"关":{"docs":{},"系":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"删":{"docs":{},"掉":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}},"票":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}},"类":{"docs":{},"型":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"分":{"docs":{},"三":{"docs":{},"个":{"docs":{},"档":{"docs":{},"次":{"docs":{},",":{"docs":{},"其":{"docs":{},"中":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}},",":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}},"舱":{"docs":{},"等":{"docs":{},"级":{"docs":{},":":{"docs":{},"越":{"docs":{},"有":{"docs":{},"钱":{"docs":{},"越":{"docs":{},"容":{"docs":{},"易":{"docs":{},"活":{"docs":{},"下":{"docs":{},"来":{"docs":{},",":{"docs":{},"头":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"最":{"docs":{},"高":{"docs":{},",":{"docs":{},"三":{"docs":{},"等":{"docs":{},"舱":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"最":{"docs":{},"低":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},":":{"docs":{},"由":{"docs":{},"于":{"docs":{},"有":{"docs":{},"很":{"docs":{},"多":{"docs":{},"缺":{"docs":{},"失":{"docs":{},"值":{"docs":{},",":{"docs":{},"不":{"docs":{},"好":{"docs":{},"填":{"docs":{},"充":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"可":{"docs":{},"以":{"docs":{},"考":{"docs":{},"虑":{"docs":{},"删":{"docs":{},"掉":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}},"花":{"docs":{},"费":{"docs":{},"与":{"docs":{},"生":{"docs":{},"还":{"docs":{},"率":{"docs":{},"的":{"docs":{},"关":{"docs":{},"系":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}},"离":{"docs":{},"散":{"docs":{},"化":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}},":":{"docs":{},"和":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"一":{"docs":{},"样":{"docs":{},",":{"docs":{},"删":{"docs":{},"掉":{"docs":{},"。":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}},"首":{"docs":{},"先":{"docs":{},"可":{"docs":{},"以":{"docs":{},"先":{"docs":{},"看":{"docs":{},"一":{"docs":{},"下":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"中":{"docs":{},"船":{"docs":{},"客":{"docs":{},"的":{"docs":{},"年":{"docs":{},"龄":{"docs":{},"的":{"docs":{},"最":{"docs":{},"值":{"docs":{},"和":{"docs":{},"均":{"docs":{},"值":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"先":{"docs":{},"看":{"docs":{},"一":{"docs":{},"下":{"docs":{},"花":{"docs":{},"费":{"docs":{},"的":{"docs":{},"最":{"docs":{},"值":{"docs":{},"和":{"docs":{},"均":{"docs":{},"值":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}},"看":{"docs":{},"看":{"docs":{},"不":{"docs":{},"同":{"docs":{},"性":{"docs":{},"别":{"docs":{},"的":{"docs":{},"生":{"docs":{},"还":{"docs":{},"者":{"docs":{},"数":{"docs":{},"量":{"docs":{},"。":{"docs":{"titanic/EDA.html":{"ref":"titanic/EDA.html","tf":0.002380952380952381}}}}}}}}}}}}}}}},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"将":{"docs":{},"每":{"docs":{},"一":{"docs":{},"把":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"看":{"docs":{},"成":{"docs":{},"一":{"docs":{},"个":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"docs":{},"(":{"docs":{},"状":{"docs":{},"态":{"1":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}},"删":{"docs":{},"掉":{"docs":{},"没":{"docs":{},"多":{"docs":{},"大":{"docs":{},"用":{"docs":{},"处":{"docs":{},"的":{"docs":{},"特":{"docs":{},"征":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}},"姓":{"docs":{},"名":{"docs":{},":":{"docs":{},"难":{"docs":{},"道":{"docs":{},"姓":{"docs":{},"名":{"docs":{},"和":{"docs":{},"生":{"docs":{},"死":{"docs":{},"有":{"docs":{},"关":{"docs":{},"系":{"docs":{},"?":{"docs":{},"这":{"docs":{},"也":{"docs":{},"太":{"docs":{},"玄":{"docs":{},"乎":{"docs":{},"了":{"docs":{},",":{"docs":{},"我":{"docs":{},"不":{"docs":{},"信":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"把":{"docs":{},"它":{"docs":{},"删":{"docs":{},"掉":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"家":{"docs":{},"庭":{"docs":{},"成":{"docs":{},"员":{"docs":{},"数":{"docs":{},"量":{"docs":{},"与":{"docs":{},"是":{"docs":{},"否":{"docs":{},"孤":{"docs":{},"身":{"docs":{},"一":{"docs":{},"人":{"docs":{"titanic/feature engerning.html":{"ref":"titanic/feature engerning.html","tf":0.014285714285714285}}}}}}}}}}}}}}},"'":{"docs":{},"i":{"docs":{},"n":{"docs":{},"i":{"docs":{},"t":{"docs":{},"i":{"docs":{},"a":{"docs":{},"l":{"docs":{},"'":{"docs":{},"]":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}},".":{"docs":{},"r":{"docs":{},"e":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"(":{"docs":{},"[":{"docs":{},"'":{"docs":{},"m":{"docs":{},"l":{"docs":{},"l":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"m":{"docs":{},"e":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"d":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"a":{"docs":{},"j":{"docs":{},"o":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"l":{"docs":{},"a":{"docs":{},"d":{"docs":{},"y":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"o":{"docs":{},"u":{"docs":{},"n":{"docs":{},"t":{"docs":{},"e":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"j":{"docs":{},"o":{"docs":{},"n":{"docs":{},"k":{"docs":{},"h":{"docs":{},"e":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"o":{"docs":{},"l":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"r":{"docs":{},"e":{"docs":{},"v":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"c":{"docs":{},"a":{"docs":{},"p":{"docs":{},"t":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"s":{"docs":{},"i":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"d":{"docs":{},"o":{"docs":{},"n":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"[":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"i":{"docs":{},"s":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"o":{"docs":{},"t":{"docs":{},"h":{"docs":{},"e":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},",":{"docs":{},"'":{"docs":{},"m":{"docs":{},"r":{"docs":{},"'":{"docs":{},"]":{"docs":{},",":{"docs":{},"i":{"docs":{},"n":{"docs":{},"p":{"docs":{},"l":{"docs":{},"a":{"docs":{},"c":{"docs":{},"e":{"docs":{},"=":{"docs":{},"t":{"docs":{},"r":{"docs":{},"u":{"docs":{},"e":{"docs":{},")":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"r":{"docs":{},"b":{"docs":{},"'":{"docs":{},")":{"docs":{},")":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}},"做":{"docs":{},"好":{"docs":{},"数":{"docs":{},"据":{"docs":{},"预":{"docs":{},"处":{"docs":{},"理":{"docs":{},"后":{"docs":{},",":{"docs":{},"可":{"docs":{},"以":{"docs":{},"将":{"docs":{},"数":{"docs":{},"据":{"docs":{},"喂":{"docs":{},"给":{"docs":{},"我":{"docs":{},"们":{"docs":{},"的":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"模":{"docs":{},"型":{"docs":{},"来":{"docs":{},"进":{"docs":{},"行":{"docs":{},"训":{"docs":{},"练":{"docs":{},"和":{"docs":{},"预":{"docs":{},"测":{"docs":{},"了":{"docs":{},"。":{"docs":{},"不":{"docs":{},"过":{"docs":{},"在":{"docs":{},"构":{"docs":{},"建":{"docs":{},"模":{"docs":{},"型":{"docs":{},"之":{"docs":{},"前":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"要":{"docs":{},"使":{"docs":{},"用":{"docs":{},"处":{"docs":{},"理":{"docs":{},"训":{"docs":{},"练":{"docs":{},"集":{"docs":{},"数":{"docs":{},"据":{"docs":{},"的":{"docs":{},"方":{"docs":{},"式":{"docs":{},"来":{"docs":{},"处":{"docs":{},"理":{"docs":{},"测":{"docs":{},"试":{"docs":{},"集":{"docs":{},"。":{"docs":{"titanic/fit and predict.html":{"ref":"titanic/fit and predict.html","tf":0.017241379310344827}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"{":{"docs":{},"'":{"docs":{},"n":{"docs":{},"_":{"docs":{},"e":{"docs":{},"s":{"docs":{},"t":{"docs":{},"i":{"docs":{},"m":{"docs":{},"a":{"docs":{},"t":{"docs":{},"o":{"docs":{},"r":{"docs":{},"s":{"docs":{},"'":{"docs":{},":":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}},"}":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"网":{"docs":{},"格":{"docs":{},"搜":{"docs":{},"索":{"docs":{},"的":{"docs":{},"意":{"docs":{},"思":{"docs":{},"其":{"docs":{},"实":{"docs":{},"就":{"docs":{},"是":{"docs":{},"遍":{"docs":{},"历":{"docs":{},"所":{"docs":{},"有":{"docs":{},"我":{"docs":{},"们":{"docs":{},"想":{"docs":{},"要":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"的":{"docs":{},"参":{"docs":{},"数":{"docs":{},"组":{"docs":{},"合":{"docs":{},",":{"docs":{},"看":{"docs":{},"看":{"docs":{},"哪":{"docs":{},"个":{"docs":{},"参":{"docs":{},"数":{"docs":{},"组":{"docs":{},"合":{"docs":{},"的":{"docs":{},"性":{"docs":{},"能":{"docs":{},"最":{"docs":{},"高":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"这":{"docs":{},"组":{"docs":{},"参":{"docs":{},"数":{"docs":{},"组":{"docs":{},"合":{"docs":{},"就":{"docs":{},"是":{"docs":{},"模":{"docs":{},"型":{"docs":{},"的":{"docs":{},"最":{"docs":{},"佳":{"docs":{},"参":{"docs":{},"数":{"docs":{},"。":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"调":{"docs":{},"参":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":10.014084507042254}}}},"采":{"docs":{},"用":{"5":{"docs":{},"折":{"docs":{},"验":{"docs":{},"证":{"docs":{},"的":{"docs":{},"方":{"docs":{},"式":{"docs":{},"进":{"docs":{},"行":{"docs":{},"网":{"docs":{},"格":{"docs":{},"搜":{"docs":{},"索":{"docs":{},",":{"docs":{},"分":{"docs":{},"类":{"docs":{},"器":{"docs":{},"为":{"docs":{},"随":{"docs":{},"机":{"docs":{},"森":{"docs":{},"林":{"docs":{"titanic/tuning.html":{"ref":"titanic/tuning.html","tf":0.014084507042253521}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}},"它":{"docs":{},"主":{"docs":{},"要":{"docs":{},"包":{"docs":{},"含":{"docs":{},"四":{"docs":{},"个":{"docs":{},"元":{"docs":{},"素":{"docs":{},",":{"docs":{},"a":{"docs":{},"g":{"docs":{},"e":{"docs":{},"n":{"docs":{},"t":{"docs":{},"、":{"docs":{},"环":{"docs":{},"境":{"docs":{},"状":{"docs":{},"态":{"docs":{},"、":{"docs":{},"行":{"docs":{},"动":{"docs":{},"、":{"docs":{},"奖":{"docs":{},"励":{"docs":{},",":{"docs":{},"强":{"docs":{},"化":{"docs":{},"学":{"docs":{},"习":{"docs":{},"的":{"docs":{},"目":{"docs":{},"标":{"docs":{},"就":{"docs":{},"是":{"docs":{},"获":{"docs":{},"得":{"docs":{},"最":{"docs":{},"多":{"docs":{},"的":{"docs":{},"累":{"docs":{},"计":{"docs":{},"奖":{"docs":{},"励":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"强":{"docs":{},"化":{"docs":{},"学":{"docs":{},"习":{"docs":{},"是":{"docs":{},"一":{"docs":{},"类":{"docs":{},"算":{"docs":{},"法":{"docs":{},",":{"docs":{},"是":{"docs":{},"让":{"docs":{},"计":{"docs":{},"算":{"docs":{},"机":{"docs":{},"实":{"docs":{},"现":{"docs":{},"从":{"docs":{},"一":{"docs":{},"开":{"docs":{},"始":{"docs":{},"完":{"docs":{},"全":{"docs":{},"随":{"docs":{},"机":{"docs":{},"的":{"docs":{},"进":{"docs":{},"行":{"docs":{},"操":{"docs":{},"作":{"docs":{},",":{"docs":{},"通":{"docs":{},"过":{"docs":{},"不":{"docs":{},"断":{"docs":{},"地":{"docs":{},"尝":{"docs":{},"试":{"docs":{},",":{"docs":{},"从":{"docs":{},"错":{"docs":{},"误":{"docs":{},"中":{"docs":{},"学":{"docs":{},"习":{"docs":{},",":{"docs":{},"最":{"docs":{},"后":{"docs":{},"找":{"docs":{},"到":{"docs":{},"规":{"docs":{},"律":{"docs":{},",":{"docs":{},"学":{"docs":{},"会":{"docs":{},"了":{"docs":{},"达":{"docs":{},"到":{"docs":{},"目":{"docs":{},"的":{"docs":{},"的":{"docs":{},"方":{"docs":{},"法":{"docs":{},"。":{"docs":{},"这":{"docs":{},"就":{"docs":{},"是":{"docs":{},"一":{"docs":{},"个":{"docs":{},"完":{"docs":{},"整":{"docs":{},"的":{"docs":{},"强":{"docs":{},"化":{"docs":{},"学":{"docs":{},"习":{"docs":{},"过":{"docs":{},"程":{"docs":{},"。":{"docs":{},"让":{"docs":{},"计":{"docs":{},"算":{"docs":{},"机":{"docs":{},"在":{"docs":{},"不":{"docs":{},"断":{"docs":{},"的":{"docs":{},"尝":{"docs":{},"试":{"docs":{},"中":{"docs":{},"更":{"docs":{},"新":{"docs":{},"自":{"docs":{},"己":{"docs":{},"的":{"docs":{},"行":{"docs":{},"为":{"docs":{},",":{"docs":{},"从":{"docs":{},"而":{"docs":{},"一":{"docs":{},"步":{"docs":{},"步":{"docs":{},"学":{"docs":{},"习":{"docs":{},"如":{"docs":{},"何":{"docs":{},"操":{"docs":{},"自":{"docs":{},"己":{"docs":{},"的":{"docs":{},"行":{"docs":{},"为":{"docs":{},"得":{"docs":{},"到":{"docs":{},"高":{"docs":{},"分":{"docs":{},"。":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"让":{"docs":{},"我":{"docs":{},"们":{"docs":{},"想":{"docs":{},"象":{"docs":{},"一":{"docs":{},"下":{"docs":{},"比":{"docs":{},"赛":{"docs":{},"现":{"docs":{},"场":{"docs":{},":":{"docs":{"pingpong/what is reinforce learning.html":{"ref":"pingpong/what is reinforce learning.html","tf":0.017543859649122806}}}}}}}}}}}}}},",":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}},"τ":{"docs":{},"=":{"docs":{},"{":{"docs":{},"s":{"1":{"docs":{},",":{"docs":{},"a":{"1":{"docs":{},",":{"docs":{},"r":{"1":{"docs":{},",":{"docs":{},"s":{"2":{"docs":{},",":{"docs":{},"a":{"2":{"docs":{},",":{"docs":{},"r":{"2":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"s":{"docs":{},"t":{"docs":{},",":{"docs":{},"a":{"docs":{},"t":{"docs":{},",":{"docs":{},"r":{"docs":{},"t":{"docs":{},"}":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}},"docs":{}}}},"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"a":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"r":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"s":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"a":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"r":{"docs":{},"​":{"2":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},",":{"docs":{},"s":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"a":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},",":{"docs":{},"r":{"docs":{},"​":{"docs":{},"t":{"docs":{},"​":{"docs":{},"​":{"docs":{},"}":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}}},"docs":{}}}}}},"∇":{"docs":{},"r":{"docs":{},"θ":{"docs":{},"‾":{"docs":{},"≈":{"1":{"docs":{},"n":{"docs":{},"∑":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"n":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"n":{"docs":{},")":{"docs":{},"∇":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"n":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}},"docs":{}}}}},"​":{"docs":{},"r":{"docs":{},"​":{"docs":{},"θ":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"​":{"docs":{},"≈":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"1":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∑":{"docs":{},"​":{"docs":{},"n":{"docs":{},"=":{"1":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"r":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},")":{"docs":{},"∇":{"docs":{},"l":{"docs":{},"o":{"docs":{},"g":{"docs":{},"p":{"docs":{},"(":{"docs":{},"τ":{"docs":{},"​":{"docs":{},"n":{"docs":{},"​":{"docs":{},"​":{"docs":{},"∣":{"docs":{},"θ":{"docs":{},")":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"docs":{}}}}}}}},"docs":{}}}}}}}}}}}}}}}},"动":{"docs":{},"作":{"docs":{},"是":{"docs":{},"从":{"docs":{},"一":{"docs":{},"个":{"docs":{},"概":{"docs":{},"率":{"docs":{},"分":{"docs":{},"布":{"docs":{},"中":{"docs":{},"采":{"docs":{},"样":{"docs":{},"出":{"docs":{},"来":{"docs":{},"的":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}},"又":{"docs":{},"由":{"docs":{},"于":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}},"尽":{"docs":{},"量":{"docs":{},"拿":{"docs":{},"高":{"docs":{},"分":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"应":{"docs":{},"该":{"docs":{},"怎":{"docs":{},"样":{"docs":{},"来":{"docs":{},"找":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"我":{"docs":{},"相":{"docs":{},"信":{"docs":{},"您":{"docs":{},"应":{"docs":{},"该":{"docs":{},"猜":{"docs":{},"到":{"docs":{},"了":{"docs":{},"!":{"docs":{},"没":{"docs":{},"错":{"docs":{},"!":{"docs":{},"就":{"docs":{},"是":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"!":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"把":{"docs":{},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"可":{"docs":{},"能":{"docs":{},"会":{"docs":{},"有":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"一":{"docs":{},"个":{"docs":{},"统":{"docs":{},"计":{"docs":{},"结":{"docs":{},"果":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}},"游":{"docs":{},"戏":{"docs":{},"打":{"docs":{},"的":{"docs":{},"好":{"docs":{},"还":{"docs":{},"是":{"docs":{},"不":{"docs":{},"好":{"docs":{},"呢":{"docs":{},"?":{"docs":{},"也":{"docs":{},"很":{"docs":{},"明":{"docs":{},"细":{"docs":{},",":{"docs":{},"把":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}},"的":{"docs":{},"所":{"docs":{},"有":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"全":{"docs":{},"部":{"docs":{},"都":{"docs":{},"加":{"docs":{},"起":{"docs":{},"来":{"docs":{},"就":{"docs":{},"好":{"docs":{},"了":{"docs":{},"。":{"docs":{},"如":{"docs":{},"果":{"docs":{},"把":{"docs":{},"这":{"docs":{},"些":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"的":{"docs":{},"和":{"docs":{},"称":{"docs":{},"为":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"(":{"docs":{},"总":{"docs":{},"得":{"docs":{},"分":{"docs":{},")":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"就":{"docs":{},"有":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"(":{"docs":{},"总":{"docs":{},"得":{"docs":{},"分":{"docs":{},")":{"docs":{},"=":{"docs":{},"第":{"1":{"docs":{},"把":{"docs":{},"反":{"docs":{},"馈":{"1":{"docs":{},"+":{"docs":{},"第":{"1":{"docs":{},"把":{"docs":{},"反":{"docs":{},"馈":{"2":{"docs":{},"+":{"docs":{},".":{"docs":{},".":{"docs":{},".":{"docs":{},"+":{"docs":{},"第":{"1":{"0":{"docs":{},"把":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"m":{"docs":{},"。":{"docs":{},"也":{"docs":{},"就":{"docs":{},"是":{"docs":{},"说":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},"越":{"docs":{},"高":{"docs":{},"越":{"docs":{},"好":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}},"docs":{}},"docs":{}}}}}}}},"docs":{}}}}},"docs":{}}}},"docs":{}}}}},"docs":{}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},",":{"docs":{},"就":{"docs":{},"会":{"docs":{},"有":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}},"相":{"docs":{},"当":{"docs":{},"于":{"docs":{},"得":{"docs":{},"到":{"docs":{},"了":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}},"计":{"docs":{},"算":{"docs":{},"一":{"docs":{},"次":{"docs":{},"总":{"docs":{},"反":{"docs":{},"馈":{"docs":{},",":{"docs":{},"那":{"docs":{},"么":{"docs":{},"这":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}},",":{"docs":{},"每":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"docs":{},"n":{"docs":{},")":{"docs":{},"。":{"docs":{},"那":{"docs":{},"么":{"docs":{},"我":{"docs":{},"们":{"docs":{},"在":{"docs":{},"玩":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"时":{"docs":{},"所":{"docs":{},"得":{"docs":{},"到":{"docs":{},"的":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"序":{"docs":{},"列":{"docs":{},"实":{"docs":{},"际":{"docs":{},"上":{"docs":{},"就":{"docs":{},"是":{"docs":{},"从":{"docs":{},"这":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"状":{"docs":{},"态":{"docs":{},"实":{"docs":{},"时":{"docs":{},"在":{"docs":{},"变":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"环":{"docs":{},"境":{"docs":{},"状":{"docs":{},"态":{"docs":{},"不":{"docs":{},"可":{"docs":{},"能":{"docs":{},"一":{"docs":{},"直":{"docs":{},"是":{"docs":{},"一":{"docs":{},"样":{"docs":{},"的":{"docs":{},"。":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}}}},"画":{"docs":{},"面":{"docs":{},"是":{"docs":{},"逐":{"docs":{},"帧":{"docs":{},"组":{"docs":{},"成":{"docs":{},"的":{"docs":{},",":{"docs":{},"如":{"docs":{},"果":{"docs":{},"我":{"docs":{},"们":{"docs":{},"将":{"docs":{},"当":{"docs":{},"前":{"docs":{},"帧":{"docs":{},"和":{"docs":{},"上":{"docs":{},"一":{"docs":{},"帧":{"docs":{},"的":{"docs":{},"图":{"docs":{},"像":{"docs":{},"相":{"docs":{},"减":{"docs":{},"就":{"docs":{},"能":{"docs":{},"得":{"docs":{},"到":{"docs":{},"能":{"docs":{},"够":{"docs":{},"表":{"docs":{},"示":{"docs":{},"两":{"docs":{},"帧":{"docs":{},"之":{"docs":{},"间":{"docs":{},"的":{"docs":{},"变":{"docs":{},"化":{"docs":{},"的":{"docs":{},"帧":{"docs":{},"差":{"docs":{},"图":{"docs":{},",":{"docs":{},"将":{"docs":{},"这":{"docs":{},"样":{"docs":{},"的":{"docs":{},"帧":{"docs":{},"差":{"docs":{},"图":{"docs":{},"作":{"docs":{},"为":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"的":{"docs":{},"输":{"docs":{},"入":{"docs":{},"的":{"docs":{},"话":{"docs":{},"会":{"docs":{},"是":{"docs":{},"个":{"docs":{},"不":{"docs":{},"错":{"docs":{},"的":{"docs":{},"选":{"docs":{},"择":{"docs":{},"。":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"画":{"docs":{},"面":{"docs":{},"预":{"docs":{},"处":{"docs":{},"理":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.013043478260869565}}}}}}}}},"状":{"docs":{},"态":{"docs":{},"n":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}},"稍":{"docs":{},"微":{"docs":{},"整":{"docs":{},"理":{"docs":{},"一":{"docs":{},"下":{"docs":{},"可":{"docs":{},"知":{"docs":{},":":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}},"说":{"docs":{},"到":{"docs":{},"这":{"docs":{},",":{"docs":{},"有":{"docs":{},"一":{"docs":{},"个":{"docs":{},"问":{"docs":{},"题":{"docs":{},"需":{"docs":{},"要":{"docs":{},"弄":{"docs":{},"清":{"docs":{},"楚":{"docs":{},":":{"docs":{},"假":{"docs":{},"设":{"docs":{},"总":{"docs":{},"共":{"docs":{},"玩":{"docs":{},"了":{"docs":{"pingpong/Policy Gradient.html":{"ref":"pingpong/Policy Gradient.html","tf":0.0070921985815602835}}}}}}}}}}}}}}}}}}}}}}},"!":{"docs":{},"=":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}},"安":{"docs":{},"装":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}}},"开":{"docs":{},"启":{"docs":{},"乒":{"docs":{},"乓":{"docs":{},"球":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"环":{"docs":{},"境":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}},"游":{"docs":{},"戏":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}},"搭":{"docs":{},"建":{"docs":{},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}},"神":{"docs":{},"经":{"docs":{},"网":{"docs":{},"络":{"docs":{},"中":{"docs":{},"神":{"docs":{},"经":{"docs":{},"元":{"docs":{},"的":{"docs":{},"参":{"docs":{},"数":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}},"可":{"docs":{},"以":{"docs":{},"根":{"docs":{},"据":{"docs":{},"自":{"docs":{},"己":{"docs":{},"的":{"docs":{},"喜":{"docs":{},"好":{"docs":{},"来":{"docs":{},"搭":{"docs":{},"建":{"docs":{},",":{"docs":{},"在":{"docs":{},"这":{"docs":{},"里":{"docs":{},"我":{"docs":{},"使":{"docs":{},"用":{"docs":{},"最":{"docs":{},"简":{"docs":{},"单":{"docs":{},"的":{"docs":{},"只":{"docs":{},"有":{"docs":{},"两":{"docs":{},"层":{"docs":{},"全":{"docs":{},"连":{"docs":{},"接":{"docs":{},"层":{"docs":{},"的":{"docs":{},"网":{"docs":{},"络":{"docs":{},"模":{"docs":{},"型":{"docs":{},"来":{"docs":{},"进":{"docs":{},"行":{"docs":{},"预":{"docs":{},"测":{"docs":{},",":{"docs":{},"由":{"docs":{},"于":{"docs":{},"我":{"docs":{},"们":{"docs":{},"挡":{"docs":{},"板":{"docs":{},"的":{"docs":{},"动":{"docs":{},"作":{"docs":{},"只":{"docs":{},"有":{"docs":{},"上":{"docs":{},"和":{"docs":{},"下":{"docs":{},",":{"docs":{},"所":{"docs":{},"以":{"docs":{},"最":{"docs":{},"后":{"docs":{},"的":{"docs":{},"激":{"docs":{},"活":{"docs":{},"函":{"docs":{},"数":{"docs":{},"为":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"的":{"docs":{},"前":{"docs":{},"向":{"docs":{},"传":{"docs":{},"播":{"docs":{},",":{"docs":{},"x":{"docs":{},"为":{"docs":{},"输":{"docs":{},"入":{"docs":{},"的":{"docs":{},"帧":{"docs":{},"差":{"docs":{},"图":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}},"经":{"docs":{},"过":{"docs":{},"漫":{"docs":{},"长":{"docs":{},"的":{"docs":{},"训":{"docs":{},"练":{"docs":{},"过":{"docs":{},"程":{"docs":{},"后":{"docs":{},",":{"docs":{},"我":{"docs":{},"们":{"docs":{},"可":{"docs":{},"以":{"docs":{},"将":{"docs":{},"训":{"docs":{},"练":{"docs":{},"好":{"docs":{},"的":{"docs":{},"模":{"docs":{},"型":{"docs":{},"加":{"docs":{},"载":{"docs":{},"进":{"docs":{},"来":{"docs":{},"开":{"docs":{},"始":{"docs":{},"玩":{"docs":{},"游":{"docs":{},"戏":{"docs":{},"了":{"docs":{},"。":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"背":{"docs":{},"景":{"docs":{},"赋":{"docs":{},"值":{"docs":{},"为":{"0":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.008695652173913044}}},"docs":{}}}}}},"非":{"docs":{},"常":{"docs":{},"简":{"docs":{},"单":{"docs":{},",":{"docs":{},"只":{"docs":{},"要":{"docs":{},"在":{"docs":{},"命":{"docs":{},"令":{"docs":{},"行":{"docs":{},"中":{"docs":{},"输":{"docs":{},"入":{"docs":{},"p":{"docs":{},"i":{"docs":{},"p":{"docs":{"pingpong/coding.html":{"ref":"pingpong/coding.html","tf":0.004347826086956522}}}}}}}}}}}}}}}}}}},"《":{"docs":{},"机":{"docs":{},"器":{"docs":{},"学":{"docs":{},"习":{"docs":{},"》":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.2571428571428571}}}}}}}},"关":{"docs":{},"于":{"docs":{},"本":{"docs":{},"书":{"docs":{},"的":{"docs":{},"实":{"docs":{},"验":{"docs":{},"与":{"docs":{},"涉":{"docs":{},"及":{"docs":{},"的":{"docs":{},"案":{"docs":{},"例":{"docs":{},"均":{"docs":{},"可":{"docs":{},"以":{"docs":{},"在":{"docs":{},"平":{"docs":{},"台":{"docs":{},"进":{"docs":{},"行":{"docs":{},"体":{"docs":{},"验":{"docs":{},",":{"docs":{},"名":{"docs":{},"称":{"docs":{},"与":{"docs":{},"链":{"docs":{},"接":{"docs":{},"如":{"docs":{},"下":{"docs":{},":":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}}},"绪":{"docs":{},"论":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}},"链":{"docs":{},"接":{"docs":{"recommand.html":{"ref":"recommand.html","tf":0.02857142857142857}}}}},"length":2289},"corpusTokens":["!=","\"experience\"","\"performance\"。","#","#c中簇的数量","#c为聚类结果","#data.corr()","#let","#loss","#scale","#不要上面的记分牌","#从动作概率分布中采样","#从动作概率分布中采样,action=2表示往上挪,action=3表示往下挪","#假设数据集为d,想要聚成的簇的数量为k","#前向传播","#将二维图压成一维的数组","#将每个样本看成一个簇","$bagging$","&","'initial']","'initial'].replace(['mlle','mme','ms','dr','major','lady','countess','jonkheer','col','rev','capt','sir','don'],['miss','miss','miss','other','mr','mrs','mrs','other','other','other','mr','mr','mr'],inplace=true)","'rb'))","(","(0,1)(0,1)(0,1)","(1","(1,1)(1,1)(1,1)","(1.0","(1.5,1.5)(1.5,1.5)(1.5,1.5)。","(1/5)log(1/5)","(10/15)log(10/15)=0.9182","(2/7)log(2/7)","(3/8)log(3/8)","(4/15)*活跃度为低的熵=0.6776","(4/4)*log(4/4)","(4/5)log(4/5)=0.7219","(5/15)活跃度为中的熵","(5/7)log(5/7)=0.8631","(5/8)log(5/8)=0.9543","(6/15)活跃度为高的熵","(6/6)*log(6/6)=0","(7/15)性别为女的熵=0.0064","(8/15)性别为男的熵","(db指数)以及","(h_\\theta(x)","(i)y​(​^​​i)表示的是预测房价)。","(i)y​(​^​​i),那么线性回归的损失函数j(θ)j(\\theta)j(θ)就是:","(wx+b)​p​^​​=σ(wx+b)。","(不基于模型)两大类。","(基于模型)和","(特征数量)。",")。","),假设与我离得最近的","*","+",",","...","...,","/","0","0')","0.001","0.0030.0030.003","0.0560.0560.056","0.08","0.1","0.111","0.12","0.13","0.14","0.2","0.21","0.24","0.26","0.3","0.30.30.3","0.30.30.3(也就是说类别","0.30.30.3);情况b:现在有个样本的真实类别是","0.31111","0.3150.3150.315","0.330.330.33","0.35","0.37","0.4","0.40.40.4","0.41","0.42","0.5","0.50.50.5","0.51","0.53","0.56","0.5,所以i是高为80,宽为80的单通道图","0.60.60.6(也就是说类别","0.7","0.70.70.7","0.70.70.7(也就是说类别","0.71","0.74667","0.7490.7490.749","0.8","0.82","0.8275","0.8323","0.8525。","0.90.90.9","0.92","0.93","0.95。","0.96","0.999","000","0=0","0]","0~1","1","1%","1')","1)}","1)}=\\frac{2}{3}randi=​6∗(6−1)​​2∗(2+8)​​=​3​​2​​。","1,","1.0","1.1","1.19","1.2","1.33","1.5","1.随机初始k个样本,作为类别中心。","10","10%10\\%10%","10)^2})/3=0.94281","10)^2}+\\sqrt{(7","10)^2}+\\sqrt{(8","10)^2}=7.67391","10,","100","100%,","100,","1000","10000","100100100","101010","109]","10。","11","11)^2}=2.828","11.2","111","111,但是模型预测出来该样本是类别","111,其他的数值以此类推)","12","13","14","144]","15","15,","15.2","150,","1502","151515","16","1797","19%","1]","1][0,1],值越大说明聚类性能越好,假设mmm为样本数量,公式如下:","1][0,1],值越大说明聚类性能越好,公式如下:","1m∑i=1m(yi−pi)2","1m∑i=1m∣yi−pi∣","1−1","2","2')","2)(1,2)(因为111号样本与222号样本的参考簇都为000,聚类簇都为000),(5,6)(5,","2)^2+(4","2)^2}=1.414","2.1.","2.2","2.2.","2.3","2.5","2.67)^2+(3","2.67)^2+(4","2.对每个样本将其标记为距离类别中心最近的类别。","20","20,","200","200],'max_depth':","202020","22","222","23.3","25,","29","29),我就会认为这个人没有买过车。所以呢,关键问题就是怎样来构造决策树了。","2\\epsilon)^2)","3","3')","3)(1,3)(因为111号样本与333号样本的聚类簇不同,但参考簇都为000),(2,3)(2,","3)(2,3)(因为222号样本与333号样本的聚类簇不同,但参考簇都为000),(4,5)(4,","3,","3.3","3.3。","3.5","3.6","3.67)^2})/3=0.628539","3.67)^2}+\\sqrt{(2","3.67)^2}+\\sqrt{(3","3.将每个类别的质心更新为新的类别中心。","3/5","30","30%30\\%30%,而","30]}","32","333","34%","35","37.6","38%","3]","3],","4","4)(1,4)(因为111号样本与444号样本的参考簇不同,聚类簇也不同),(1,5)(1,","4)(2,4)(因为222号样本与444号样本的参考簇不同,聚类簇也不同),(2,5)(2,","4)(3,4)(因为333号样本与444号样本的参考簇不同,但聚类簇都为111)。总共有111个样本对满足bbb,因此b=1b=1b=1。","4.2","4.重复步骤2、3,直到类别中心的变化小于阈值。","40","40%40\\%40%。","48%","4],","4]]。","4]。又因表格中真是类别为","5","5)","5)(1,5)(因为111号样本与555号样本的参考簇不同,聚类簇也不同),(1,6)(1,","5)(2,5)(因为222号样本与555号样本的参考簇不同,聚类簇也不同),(2,6)(2,","5)(3,5)(因为333号样本与555号样本的参考簇不同,聚类簇也不同),(3,6)(3,","5)(4,5)(因为444号样本与555号样本的聚类簇不同,但参考簇都为111),(4,6)(4,","5.8","5/15)log(5/15)","5/155/155/15","50","50,","505050","555","5],","6","6)(1,6)(因为111号样本与666号样本的参考簇不同,聚类簇也不同),(2,4)(2,","6)(2,6)(因为222号样本与666号样本的参考簇不同,聚类簇也不同),(3,5)(3,","6)(3,6)(因为333号样本与666号样本的参考簇不同,聚类簇也不同)。总共有888个样本对满足ddd,因此d=8d=8d=8。","6)(4,6)(因为444号样本与666号样本的聚类簇不同,但参考簇都为111)。总共有444个样本对满足ccc,因此c=4c=4c=4。","6)(5,6)(因为555号样本与666号样本的参考簇都为111,聚类簇都为222)。总共有222个样本对满足aaa,因此a=2a=2a=2。","6)^2+(4","6.9","63%,二等舱的生还率约为","64","65","7","7)^2+(10","7)^2+(11","7)^2+(3.67","7)^2+(9","7.1","7.7","75%","8","8):","8)^2+(9","8*8","80","80%","888","891","9","9)^2}=5.831","9.5","90%","90%90\\%90%","9978","9]",":","::2,","=","==",">",">correl",">动作1",">动作2",">动作n",">反馈1",">反馈2",">反馈n)。那么每一个游戏序列(即每一把游戏)的反馈=反馈1+反馈2+...+反馈n。因此,若假设r(τ)r(\\tau)r(τ)表示游戏序列τ\\tauτ的反馈,则有:r(τ)=∑n=1nτnr(\\tau)=\\sum_{n=1}^n\\tau_nr(τ)=∑​n=1​n​​τ​n​​。",">状态2","[","[0,","[1,","[10,","[2,","[2],","[3],","[4],","[5,","[5]]","[5]]。","[]","\\approx","\\end{cases}​y​^​​={​0​1​​​​p​^​​0.5​​p​^​​>0.5​​(其中y^\\hat","\\epsilon)^k\\epsilon","\\frac{(4+3+4)}{3})=(2.67,3.67)","\\frac{(9+10+11)}{3})=(7,10)","\\frac{1}{2}t(1","\\frac{1}{m}\\sum_{i=1}^m(y^i","\\frac{1}{m}\\sum_{i=1}^m|y^i","\\frac{1}{n}\\sum_{n=1}^nr(\\tau^n)","\\frac{2(2+1)}{2}}{2*2}=0.75","\\frac{\\parti","\\frac{\\sum_i(p^i","\\frac{m(m+1)}{2}}{m*n}","\\hat","\\infty,+\\infty)(−∞,+∞)","\\infty,+\\infty)(−∞,+∞)的实数转换成(0,1)(0,1)(0,1)的概率值的需求。因此逻辑回归在预测时可以看成p^=1/(1+e−wx+b)\\hat","\\infty,+\\infty)(−∞,+∞),如果能够将值域为(−∞,+∞)(","\\infty−∞时函数值趋近于000,当ttt趋近于+∞+\\infty+∞时函数值趋近于111。可见sigmoidsigmoidsigmoid函数的值域是(0,1)(0,1)(0,1),满足我们要将(−∞,+∞)(","\\lambda^*_i=\\lambda^*_j,","\\lambda^*_i=\\lambda^*_j,i","\\lambda^*_i\\neq\\lambda^*_j,","\\leq","\\leq1r​2​​≤1,当我们的模型不犯任何错误时,取最大值","\\mu_1=(\\frac{(3+2+3)}{3},","\\mu_2)=\\sqrt{(2.67","\\mu_2=(\\frac{(6+7+8)}{3},","\\mu_j)d​c​​(μ​i​​,μ​j​​)代表第iii个簇的中心点与第jjj个簇的中心点的距离。","\\nabla","\\neq","\\overline{r_\\theta}","\\sqrt{\\frac{1}{m}\\sum_{i=1}^m(y^i","\\sum_\\tau","\\sum_{i=1}^np_ilogp_ih(x)=−∑​i=1​n​​p​i​​logp​i​​","\\tau=\\{s_1,","\\tau_2,","\\tau_{10}τ​1​​,τ​2​​,...,τ​10​​]。这","^{t","_","a)g(d,a)","a=|\\{(x_i,","a=∣{(xi,xj)∣λi=λj,λi∗=λj∗,ij}∣","a=∣{(x​i​​,x​j​​)∣λ​i​​=λ​j​​,λ​i​∗​​=λ​j​∗​​,ij}∣","a_1,","a_2,","a_t,","aaa","aboslut","acc","accuracy_scor","accuracy_score(y_test,","action","actionπ(state)→action。","ag","agent","agent,他试图通过采取行动来操纵环境,并且从一个状态转变到另一个状态,当他完成任务时给高分(奖励),但是当他没完成任务时,给低分(无奖励)。这也是强化学习的核心思想。","age,cabin","aggreg","agn","agnes(d,","agnes算法","alpha","alphago","aprob,","atari_pi","auc","auc=(2+4)−2(2+1)22∗2=0.75","auc=\\frac{(2+4)","auc=\\frac{\\sum_{i","auc=​2∗2​​(2+4)−​2​​2(2+1)​​​​=0.75。","auc=​m∗n​​∑​iepositiveclass​​rank​i​​−​2​​m(m+1)​​​​","auc=∑iepositiveclassranki−m(m+1)2m∗n","auc。","avg(c1)=((3−2.67)2+(4−3.67)2+(2−2.67)2+(3−3.67)2+(3−2.67)2+(4−3.67)2)/3=0.628539","avg(c2)=((6−7)2+(9−10)2+(7−7)2+(10−10)2+(8−7)2+(11−10)2)/3=0.94281","avg(c_1)=(\\sqrt{(3","avg(c_2)=(\\sqrt{(6","avg(c​1​​)=(√​(3−2.67)​2​​+(4−3.67)​2​​​​​+√​(2−2.67)​2​​+(3−3.67)​2​​​​​+√​(3−2.67)​2​​+(4−3.67)​2​​​​​)/3=0.628539","avg(c​2​​)=(√​(6−7)​2​​+(9−10)​2​​​​​+√​(7−7)​2​​+(10−10)​2​​​​​+√​(8−7)​2​​+(11−10)​2​​​​​)/3=0.94281","ax[0,0].set_title('no.","ax[0,1].set_title('mal","ax[0].set_title('family_s","ax[0].set_title('far","ax[0].set_title('numb","ax[0].set_title('parch","ax[0].set_title('pclass","ax[0].set_title('sibsp","ax[0].set_title('surviv","ax[0].set_title('survived')","ax[0].set_title('survived=","ax[0].set_xticks(x1)","ax[0].set_ylabel('')","ax[0].set_ylabel('count')","ax[0].set_yticks(range(0,110,10))","ax[1,0].set_title('embark","ax[1,1].set_title('embark","ax[1].set_title('alon","ax[1].set_title('far","ax[1].set_title('parch","ax[1].set_title('pclass:surviv","ax[1].set_title('sex","ax[1].set_title('sex:surviv","ax[1].set_title('sibsp","ax[1].set_title('survived')","ax[1].set_title('survived=","ax[1].set_xticks(x2)","ax[1].set_yticks(range(0,110,10))","ax[2].set_title('far","axis=1)","b","b=|\\{(x_i,","b=∣{(xi,xj)∣λi=λj,λi∗≠λj∗,ij}∣","b=∣{(x​i​​,x​j​​)∣λ​i​​=λ​j​​,λ​i​∗​​≠λ​j​∗​​,ij}∣","baby,","bag","bagging在预测时非常简单,就是投票!比如现在有","bagging方法如何训练","bagging方法如何预测","bagging训练过程如下图所示:","bagging预测过程如下图所示:","base","based,能通过想象来预判断接下来将要发生的所有情况,然后选择这些想象情况中最好的那种,并依据这种情况来采取下一步的策略,这也就是围棋场上","baseline模型,以方便后期更好的挖掘业务相关信息或提升模型性能。","bbb","boarded')","bootstrap","bouldin","b(参数)的情况下,我随便给一个","c","c.append(d)","c=[[1,","c=[[1],","c=|\\{(x_i,","c=∣{(xi,xj)∣λi≠λj,λi∗=λj∗,ij}∣","c=∣{(x​i​​,x​j​​)∣λ​i​​≠λ​j​​,λ​i​∗​​=λ​j​∗​​,ij}∣","cabin","ccc","characterist","class","class}rank_i","clf","clf.fit(x_train,","clf.predict(x_test)","cluster","coefficient(jc系数)、fowlk","comput","cost=","cost=−ylog(p^)−(1−y)log(1−p^)","cost=−ylog(​p​^​​)−(1−y)log(1−​p​^​​)","costcostcost","cur_it","cur_x","cur_x为预处理后的游戏画面","curve)描述的","cv=5)","d","d)","d:","d=|\\{(x_i,","d=∣{(xi,xj)∣λi≠λj,λi∗≠λj∗,ij}∣","d=∣{(x​i​​,x​j​​)∣λ​i​​≠λ​j​​,λ​i​∗​​≠λ​j​∗​​,ij}∣","d_c(\\mu_1,","d_{min}(c_1,c_2)=\\sqrt{(3","data.drop(['name','age','ticket','fare','cabin','passengerid'],axis=1,inplace=true)","data.drop(['survived'],","data.groupby('initial')['age'].mean()","data.groupby(['sex','survived'])['survived'].count()","data.head()","data.isnull().sum()","data.loc[(data.age.isnull())&(data.initial=='miss'),'age']=22","data.loc[(data.age.isnull())&(data.initial=='mr'),'age']=33","data.loc[(data.age.isnull())&(data.initial=='mrs'),'age']=36","data.loc[(data.age.isnull())&(data.initial=='other'),'age']=46","data.loc[data.family_size==0,'alone']=1","data.loc[data['age']16)&(data['age']32)&(data['age']48)&(data['age']64,'age_band']=4","data.loc[data['fare']7.91)&(data['fare']14.454)&(data['fare']31)&(data['fare']","data:","data=data,split=true,ax=ax[0])","data=data,split=true,ax=ax[1])","data=pd.read_csv('./titanic/train.csv')","data['age_band']=0","data['alone']=0","data['embarked'].fillna('s',inplace=true)","data['embarked'].replace(['s','c','q'],[0,1,2],inplace=true)","data['family_size']=0","data['family_size']=data['parch']+data['sibsp']","data['fare_cat']=0","data['initial'].replace(['mlle','mme','ms','dr','major','lady','countess','jonkheer','col','rev','capt','sir','don'],['miss','miss','miss','mr','mr','mrs','mrs','other','other','other','mr','mr','mr'],inplace=true)","data['initial'].replace(['mr','mrs','miss','master','other'],[0,1,2,3,4],inplace=true)","data['initial']=0","data['initial']=data.name.str.extract('([a","data['pclass'].value_counts().plot.bar(ax=ax[0])","data['sex'].replace(['male','female'],[0,1],inplace=true)","data['survived']","data['survived'].value_counts().plot.pie(explode=[0,0.1],autopct='%1.1f%%',ax=ax[0],shadow=true)","data[['sex','survived']].groupby(['sex']).mean().plot.bar(ax=ax[0])","data[data['survived']==0].age.plot.hist(ax=ax[0],bins=20,edgecolor='black',color='red')","data[data['survived']==1].age.plot.hist(ax=ax[1],color='green',bins=20,edgecolor='black')","dataset","datasets.load_digits()","davi","dbi","dbi=1k∑i=1kmax(avg(ci)+avg(cj)dc(μi,μj)),i≠j","dbi=1k∑i=1kmax(avg(ci)+avg(cj)dc(μi,μj))=0.204765","dbi=\\frac{1}{k}\\sum_{i=1}^kmax(\\frac{avg(c_i)+avg(c_j)}{d_c(\\mu_i,\\mu_j)}),","dbi=\\frac{1}{k}\\sum_{i=1}^kmax(\\frac{avg(c_i)+avg(c_j)}{d_c(\\mu_i,\\mu_j)})=0.204765","dbi=​k​​1​​∑​i=1​k​​max(​d​c​​(μ​i​​,μ​j​​)​​avg(c​i​​)+avg(c​j​​)​​),i≠j","dbi=​k​​1​​∑​i=1​k​​max(​d​c​​(μ​i​​,μ​j​​)​​avg(c​i​​)+avg(c​j​​)​​)=0.204765","db指数","db指数又称","db指数越小就越就意味着簇内距离越小同时簇间距离越大,也就是说db指数越小越好。","dc(μ1,μ2)=(2.67−7)2+(3.67−10)2=7.67391","ddd","dead')","def","di=min1≤i≤k{mini≠j(dmin(ci,cj)max1≤l≤kdiam(cl))}","di=min1≤i≤k{mini≠j(dmin(ci,cj)max1≤l≤kdiam(cl))}=2.061553","di=min_{1\\leq","di=min​1≤i≤k​​{min​i≠j​​(​max​1≤l≤k​​diam(c​l​​)​​d​m​​in(c​i​​,c​j​​)​​)}","di=min​1≤i≤k​​{min​i≠j​​(​max​1≤l≤k​​diam(c​l​​)​​d​m​​in(c​i​​,c​j​​)​​)}=2.061553","diam(c1)=(3−2)2+(4−2)2=1.414","diam(c2)=(6−8)2+(9−11)2=2.828","diam(c_1)=\\sqrt{(3","diam(c_2)=\\sqrt{(6","diam(c​1​​)=√​(3−2)​2​​+(4−2)​2​​​​​=1.414","diam(c​2​​)=√​(6−8)​2​​+(9−11)​2​​​​​=2.828","digit","digits.data","digits.target","dj(theta,","dmin(c1,c2)=(3−6)2+(4−9)2=5.831","done,","dunn","dunn指数","dunn指数又称di,计算公式如下:","dunn指数越大意味着簇内距离越小同时簇间距离越大,也就是说dunn指数越大越好。","d​c​​(μ​1​​,μ​2​​)=√​(2.67−7)​2​​+(3.67−10)​2​​​​​=7.67391","d​min​​(c​1​​,c​2​​)=√​(3−6)​2​​+(4−9)​2​​​​​=5.831","e","e.\"","eda","embark","embarked')","ensem","env","env.render()","env.reset()","env.step(env.action_space.sample())","epsilon=1","error),公式如下:","error)叫做均方误差,其实就是线性回归的损失函数。公式如下:","error)均方根误差,公式如下:","except:","exp(","experi","experience指的根据历史数据总结归纳出规律的过程,即学习过程,或模型的训练过程。模型这个词看上去很高大上,其实我们可以把他看成是一个函数。例如:现在想用机器学习来识别图片里的是香蕉还是苹果,那么机器学习所的事情就是得到一个比较好的函数,当我们输入一张香蕉图片时,能得到识别结果为香蕉的输出,当我们输入一张苹果图片时,能得到识别结果为苹果的输出。","extract","f","f(x))=\\epsilonp(h​i​​(x)≠f(x))=ϵ。","f(x))=\\sum_{k=0}^{t/2}c_t^k(1","f,ax=plt.subplots(1,2,figsize=(18,6))","f,ax=plt.subplots(1,2,figsize=(18,8))","f,ax=plt.subplots(1,2,figsize=(20,10))","f,ax=plt.subplots(1,2,figsize=(20,8))","f,ax=plt.subplots(1,3,figsize=(20,8))","f,ax=plt.subplots(2,2,figsize=(20,15))","f1","f1=2∗precision∗recallprecision+recal","f1=\\frac{2*precision*recall}{precision+recall}","f1=​precision+recall​​2∗precision∗recall​​","fals","fare","femal","fig.set_size_inches(10,8)","fig.set_size_inches(5,3)","fig=plt.gcf()","fit","float","float('inf')","fmi=\\sqrt{\\frac{a}{a+b}*\\frac{a}{a+c}}","fmi=aa+b∗aa+c","fmi=√​​a+b​​a​​∗​a+c​​a​​​​​","fm指数","fm指数根据上面所提到的aaa,bbb,ccc来计算,并且值域为[0,1][0,","fn","fp","fpr","fpr=\\frac{fp}{fp+tn}","fpr=fpfp+tn","fpr=​fp+tn​​fp​​","fpr(fals","free","free,这里的","g(d,a)g(d,","gradient","gradient_descent(x_b,","gradient。在介绍该算法之前,我们先要明确一下这个雅达利乒乓球游戏中的环境状态是游戏画面,agent是我们操作的挡板,奖励是分数,动作是上或者下。","gradient原理","gradient玩乒乓球游戏","gradient的核心思想","grid_search","grid_search.fit(x_train,","gridsearchcv","gridsearchcv(randomforestclassifier(),","gym","gym.make(\"pong","gym.make('pong","gym即可。","h","h(d|a)g(d,a)=h(d)−h(d∣a)。","h(x)=sign(∑i=1thi(x))h(x)=sign(\\sum_{i=1}^th_i(x))h(x)=sign(∑​i=1​t​​h​i​​(x))。","h(y∣x)h(y|x)h(y∣x)","h[h","hello","hi(x)h_i(x)h​i​​(x)","https://github.com/kojoley/atari","https://www.educoder.net/shixuns/4awq25iv/challeng","https://www.educoder.net/shixuns/4fhemfr9/challeng","https://www.educoder.net/shixuns/aw9bxy75/challeng","https://www.educoder.net/shixuns/cbsfh3r5/challeng","https://www.educoder.net/shixuns/hl7wacq5/challeng","https://www.educoder.net/shixuns/k6fp4saq/challeng","https://www.educoder.net/shixuns/kz3fixv9/challeng","https://www.educoder.net/shixuns/qy9gozt8/challeng","https://www.educoder.net/shixuns/tw9up75v/challeng","https://www.educoder.net/shixuns/ya8h7utx/challeng","hue=\"survived\",","i,z\\in","i.astype(np.float).ravel()","i=1,2,...,n;","i=1,2,...,np(x=x​i​​)=p​i​​,i=1,2,...,n。","i[35:195]","i[::2,","i[i","i\\leq","id3算法","id3算法其实就是依据特征的信息增益来构建树的。具体套路就是从根节点开始,对节点计算所有可能的特征的信息增益,然后选择信息增益最大的特征作为节点的特征,由该特征的不同取值建立子节点,然后对子节点递归执行上面的套路直到信息增益很小或者没有特征可以继续选择为止。","iii","import","improv","index","index(fm指数)以及","index(dunn指数)。","index(rand指数)。","initial_theta","initial_theta,","inplace=true)","instal","i}\\sum_{z\\in","j","j(\\theta)=\\frac{1}{2}\\sum^m_{i=1}(h_\\theta(x^i)","j(\\theta_j)}{\\theta_j}","j(theta,","j(θ)=12∑i=1m(hθ(xi)−yi)2","j(θ)=​2​​1​​∑​i=1​m​​(h​θ​​(x​i​​)−y​i​​)​2​​","j=1,2,...,m","jaccard","jc=\\frac{a}{a+b+c}","jc=aa+b+c","jc=​a+b+c​​a​​","jc系数","jc系数根据上面所提到的aaa,bbb,ccc来计算,并且值域为[0,1][0,","jjj","j}(\\frac{d_min(c_i,c_j)}{max_{1\\leq","j}dist(x,","j}dist(x,z)d​min​​=max​x∈i,z∈j​​dist(x,z)","j}dist(x,z)d​min​​=min​x∈i,z∈j​​dist(x,z)","k","k):","k:","k=2","kf","kf.split(x):","kfold","kfold(n_split","kkk","kmean","knn","knn算法","knn算法其实是众多机器学习算法中最简单的一种,因为该算法的思想完全可以用","knn算法解决分类问题","knn算法解决回归问题","k}","k}\\{min_{i\\neq","k}diam(c_l)})\\}","k}diam(c_l)})\\}=2.061553","k−1","k(参数)和","l1","l\\leq","labellabellabel","labellabellabel。","learn","learn(简记sklearn),是用","learning、sarsa、polici","len(c)","len(y)","leraning_rate,","log2log2log2","logisticregress","logisticregression()","logloglog","logp(\\tau^n|\\theta)","logp(\\tau^n|\\theta)∇logp(τ​n​​∣θ)。所以我们来看一下∇logp(τn∣θ)\\nabla","logp(\\tau^n|\\theta)∇logp(τ​n​​∣θ)应该怎么算。","logp(\\tau|\\theta)=\\sum_{t=1}^t\\nabla","logp(a_t|s_t,\\theta)","logp(τ∣θ)=∑t=1t∇logp(at∣st,θ)","logp(τ∣θ)=∑​t=1​t​​∇logp(a​t​​∣s​t​​,θ)","low","m","mae","mae(mean","mallow","matplotlib.pyplot","matrix","max_depth=5)","mean","mean_acc","means是属于机器学习里面的非监督学习,通常是大家接触到的第一个聚类算法,其原理非常简单,是一种典型的基于距离的聚类算法。距离指的是每个样本到质心的距离。那么,这里所说的质心是什么呢?","means来聚类时需要首先定义参数k,k的意思是我想将数据聚成几个类别。假设k=3,就是将数据划分成3个类别。接下来就可以开始k","means算法流程","means算法的流程了。","means算法的流程了,流程如下:","measur","miss","mmm","model","model['w1']","model['w2']","model。所以我们可以考虑将年龄转换成年龄段。例如将年龄小于","mr","mse","mse(mean","n","n(n很大很大)","n_estimators表示决策树的数量","n_iters=1e4,","name","negtiv","negtive)。在不同的分类阈值下,模型所对应的","nnn","none","np","np.dot(model['w1'],","np.exp(","np.random.randn(h)","np.random.randn(h,","np.random.uniform()","np.sqrt(d)","np.sqrt(h)","np.sum(y*np.log(y_hat)+(1","np.zeros(80*80)","np.zeros(d)","numpi","observ","observation,","of:',data['age'].max(),'years')","of:',data['age'].min(),'years')","ok。现在我们知道了梯度的方向是函数增长最快的方向,那我在梯度前面取个负号(反方向),那不就是函数下降最快的方向了么。所以,梯度下降它的本质就是更新权重的时候是沿着梯度的反方向更新。好比下面这个图,假如我是个瞎子,然后莫名其妙的来到了一个山谷里。现在我要做的事情就是走到山谷的谷底。因为我是瞎子,所以我只能一点一点的挪。要挪的话,那我肯定是那我的脚在我四周扫一遍,觉得哪里感觉起来更像是在下山那我就往哪里走。然后这样循环反复一发我最终就能走到山谷的谷底。","ok,到这里,polici","ok,现在已经知道了什么是熵,什么是条件熵。接下来就可以看看什么是信息增益了。所谓的信息增益就是表示我已知条件","oper","p","p(\\tau|\\theta)=p(s_1)\\prod_{t=1}^tp(a_t|s_t,\\theta)p(\\tau_t,s_{t+1}|s_t,a_t)","p(\\tau|\\theta)=p(s_1)p(a_1|s_1,\\theta)p(r_1,s_2|s_1,a_1)p(a_2|s_2,\\theta)p(r_2,s_3|s_2,a_2)...","p(at∣st,θ)p(a_t|s_t,\\theta)p(a​t​​∣s​t​​,θ)其实就是我们神经网络根据环境状态预测出来的下一步的动作概率分布。","p(h(x)\\neq","p(h(x)≠f(x))=∑k=0t/2ctk(1−ϵ)kϵt−k≤exp(−12t(1−2ϵ)2)","p(h(x)≠f(x))=∑​k=0​t/2​​c​t​k​​(1−ϵ)​k​​ϵ​t−k​​≤exp(−​2​​1​​t(1−2ϵ)​2​​)","p(hi(x)≠f(x))=ϵp(h_i(x)\\neq","p(x=x_i,","p(x=xi,y=yj)=pij,i=1,2,...,n;j=1,2,...,m","p(x=x​i​​,y=y​j​​)=p​ij​​,i=1,2,...,n;j=1,2,...,m","p(τ∣θ)=p(s1)p(a1∣s1,θ)p(r1,s2∣s1,a1)p(a2∣s2,θ)p(r2,s3∣s2,a2)...","p(τ∣θ)=p(s1)∏t=1tp(at∣st,θ)p(τt,st+1∣st,at)","p(τ∣θ)=p(s​1​​)p(a​1​​∣s​1​​,θ)p(r​1​​,s​2​​∣s​1​​,a​1​​)p(a​2​​∣s​2​​,θ)p(r​2​​,s​3​​∣s​2​​,a​2​​)...","p(τ∣θ)=p(s​1​​)∏​t=1​t​​p(a​t​​∣s​t​​,θ)p(τ​t​​,s​t+1​​∣s​t​​,a​t​​)","p)","p,","p=1/(1+e^{","p=\\sigma","p=f(x)​p​^​​=f(x)。若得到了样本xxx属于标签111的概率后,很自然的就能想到当p^>0.5\\hat","p>0.5​p​^​​>0.5时xxx属于标签111,否则属于标签","p>0.5​p​^​​>0.5时预测为一种类别,否则预测为另一种类别。","p^=σ(wx+b)\\hat","p^\\hat","p^i)^2","p^i)^2}","p^i|","panda","param_grid","param_grid,","parch","passeng","passengerid","pclass","pclass')","pd","perform","performance指的是模型的性能。对于不同的任务,我们有不同的衡量模型性能的标准。例如分类时可能会根据模型的准确率,精准率,召回率,auc等指标来衡量模型的好坏,回归时会看看模型的mse,rmse,r2","pickl","pickle.load(open('save.p',","pip","plt","plt.close(2)","plt.close(3)","plt.show()","plt.subplots_adjust(wspace=0.2,hspace=0.5)","polici","policy_forward(x)","policy_forward(x):","posit","precisioin=\\frac{tp}{tp+fp}","precisioin=tptp+fp","precisioin=​tp+fp​​tp​​","predict","predict))","predict。fit函数需要训练集的特征和训练集的标签作为输入,predict函数需要测试集的特征作为输入。所以代码如下:","prepro(i):","prepro(observation)","prev_x","print('averag","print('highest","print('lowest","print('oldest","print('youngest","print(acc)","print(accuracy_score(y_test,","print(grid_search.best_params_)","print(grid_search.best_score_)","print(mean_acc/5)","program","py","py/releas","python","p​p​^​​","p​p​^​​。从另外一个角度来说,假设现在有一个样本的真实类别为","q","q=len(c)","r","r(\\tau)p(\\tau|\\theta)","r(\\tau)p(\\tau|\\theta)​r​θ​​​​​=∑​τ​​r(τ)p(τ∣θ)。这个公式看起来复杂,其实不难理解。","r2=1−∑i(pi−yi)2∑i(ymeani−yi)2","r2≤1r^2","r^2=1","r_1,","r_2,","r_t\\}","rand","randi=2(a+d)m(m−1)","randi=\\frac{2(a+d)}{m(m","randi=​m(m−1)​​2(a+d)​​","randomforestclassifi","randomforestclassifier()","randomforestclassifier(n_estimators=10)","randomforestclassifier(n_estimators=50)","randomforestclassifier(n_estimators=50,","rand指数","rand指数根据上面所提到的aaa和ddd来计算,并且值域为[0,1][0,","rank","rank=[2,","ranki","rate)与","rate)之间关系的曲线。","recall=\\frac{tp}{fn+tp}","recall=tpfn+tp","recall=​fn+tp​​tp​​","relu","respect","result","result)","return","reward,","rf","rf.fit(x_train,","rf.predict(x_test)","rmse","rmse(root","roc","roc曲线","roc曲线(receiv","rθ‾=∑τr(τ)p(τ∣θ)≈1n∑n=1nr(τn)","rθ‾≈1n∑n=1nr(τn)","r​2​​=1−​∑​i​​(y​mean​i​​−y​i​​)​2​​​​∑​i​​(p​i​​−y​i​​)​2​​​​","s","s_2,","s_t,","salut","scikit","score","score来作为性能度量指标了。","score等指标,回归时会以fm指数,db指数等指标来衡量聚类的效果怎么样。对各种性能指标感兴趣可以阅读模型评估指标章节。","seaborn","self._sigmoid(x_b.dot(theta))","sex","sex')","ship:',data['age'].mean(),'years')","sibsp","sibsp与parch,值为","sigmoid","sigmoid(x):","sigmoidsigmoidsigmoid","sigmoid函数","sklearn","sklearn.ensembl","sklearn.linear_model","sklearn.metr","sklearn.model_select","sklearn的安装","sklearn的目录结构","sklearn简介","sn","sns.barplot('parch','survived',data=data,ax=ax[0])","sns.barplot('sibsp','survived',data=data,ax=ax[0])","sns.countplot('embarked',data=data,ax=ax[0,0])","sns.countplot('embarked',hue='pclass',data=data,ax=ax[1,1])","sns.countplot('embarked',hue='sex',data=data,ax=ax[0,1])","sns.countplot('embarked',hue='survived',data=data,ax=ax[1,0])","sns.countplot('pclass',hue='survived',data=data,ax=ax[1])","sns.countplot('sex',hue='survived',data=data,ax=ax[1])","sns.countplot('survived',data=data,ax=ax[1])","sns.distplot(data[data['pclass']==1].fare,ax=ax[0])","sns.distplot(data[data['pclass']==2].fare,ax=ax[1])","sns.distplot(data[data['pclass']==3].fare,ax=ax[2])","sns.factorplot('age_band','survived',data=data,col='pclass')","sns.factorplot('alone','survived',data=data,ax=ax[1])","sns.factorplot('alone','survived',data=data,hue='sex',col='pclass')","sns.factorplot('embarked','survived',data=data)","sns.factorplot('family_size','survived',data=data,ax=ax[0])","sns.factorplot('parch','survived',data=data,ax=ax[1])","sns.factorplot('pclass','survived',col='initial',data=data)","sns.factorplot('pclass','survived',hue='sex',col='embarked',data=data)","sns.factorplot('pclass','survived',hue='sex',data=data)","sns.factorplot('sibsp','survived',data=data,ax=ax[1])","sns.heatmap(data.corr(),annot=true,cmap='rdylgn',linewidths=0.2)","sns.violinplot(\"pclass\",\"age\",","sns.violinplot(\"sex\",\"age\",","split","squar","squard","surviv","survived')","t","t,","task","test_data.drop(['survived'],","test_data.loc[(test_data.age.isnull())&(test_data.initial=='miss'),'age']=22","test_data.loc[(test_data.age.isnull())&(test_data.initial=='mr'),'age']=33","test_data.loc[(test_data.age.isnull())&(test_data.initial=='mrs'),'age']=36","test_data.loc[(test_data.age.isnull())&(test_data.initial=='other'),'age']=46","test_data.loc[:,","test_data.loc[test_data.family_size==1,'alone']=1","test_data.loc[test_data['age']16)&(test_data['age']32)&(test_data['age']48)&(test_data['age']64,'age_band']=4","test_data.loc[test_data['fare']7.91)&(test_data['fare']14.454)&(test_data['fare']31)&(test_data['fare']","test_data.name.str.extract('([a","test_data:","test_data=pd.read_csv('./titanic/test.csv')","test_data['age_band']=0","test_data['alone']=0","test_data['embarked'].fillna('s',","test_data['family_size']=0","test_data['family_size']=test_data['parch']+test_data['sibsp']+1","test_data['fare_cat']=0","test_data['initial']=0","test_data['survived']","test_index","test_index表示剩下的一份作为测试集的索引","test_size=0.2)","theta","ticket","tn","tp","tpr","tpr=\\frac{tp}{tp+fn}","tpr=tptp+fn","tpr=​tp+fn​​tp​​","tpr(true","train_index,","train_index表示从5份中挑出来4份所拼出来的训练集的索引","train_test_split(x,","tree","true","true:","try:","ttt","t}σ(t)=1/1+e​−t​​。函数图像如下图所示:","v0\")","v0')","vs","was:',data['fare'].max())","was:',data['fare'].mean())","was:',data['fare'].min())","world","www","wx+b})​p​^​​=1/(1+e​−wx+b​​),如果p^>0.5\\hat","x","x)","x))","x1=list(range(0,85,5))","x2=list(range(0,85,5))","x[test_index],","x[train_index],","x_b,","x_b.t.dot(self._sigmoid(x_b.dot(theta))","x_j)|\\lambda_i=\\lambda_j,","x_j)|\\lambda_i\\neq\\lambda_j,","x_test","x_test,","x_train","x_train,","x_train表示训练集的特征,x_test表示测试集的特征,y_train表示训练集的标签,y_test表示测试集的标签","xijx_i^jx​i​j​​","xxx","x为帧差图","x表示特征,即1797行64列的矩阵","x,i","y","y)","y)*np.log(1","y):","y)log(1","y)x(​y​^​​−y)x。","y)x_j","y,","y=\\begin{cases}","y=wx+b​y​^​​=wx+b","y=y_j)=p_{ij},","y[test_index]","y[train_index]","y\\hat{^{(i)}})^2∑​i=1​m​​(y​(i)​​−y​​(i)​​​^​​)​2​​(其中y(i)y(i)y(i)表示的是实际房价,y(^i)i","y^i)^2","y^i)^2j(θ)=​2​​1​​∑​i=1​m​​(h​θ​​(x​i​​)−y​i​​)​2​​,其中θ\\thetaθ为线性回归的解。使用梯度下降来求解,最关键的一步是算梯度(也就是算偏导),通过计算可知第$j$个权重的偏导为:","y^i)^2}","y^i)^2}{\\sum_i(y_{mean}^i","y_hat","y_hat))","y_test","y_train","y_train)","y_train,","ylog(\\hat","yyi","y​y​^​​为样本","y​y​^​​的值域是(−∞,+∞)(","y表示标签,即1797个元素的一维数组","z)d​min​​=​∣c​i​​∣∣c​j​​∣​​1​​∑​x∈i​​∑​z∈j​​dist(x,z)","z]+)\\.')","z]+)\\.',expand=false)","za","{'n_estimators':","{}","α\\alphaα","μ1=((3+2+3)3,(4+3+4)3)=(2.67,3.67)","μ2=((6+7+8)3,(9+10+11)3)=(7,10)","μ​1​​=(​3​​(3+2+3)​​,​3​​(4+3+4)​​)=(2.67,3.67)","μ​2​​=(​3​​(6+7+8)​​,​3​​(9+10+11)​​)=(7,10)","σ\\sigmaσ","τ={s1,a1,r1,s2,a2,r2,...,st,at,rt}","τ={s​1​​,a​1​​,r​1​​,s​2​​,a​2​​,r​2​​,...,s​t​​,a​t​​,r​t​​}","​m​​1​​∑​i=1​m​​(y​i​​−p​i​​)​2​​","​m​​1​​∑​i=1​m​​∣y​i​​−p​i​​∣","​r​θ​​​​​=∑​τ​​r(τ)p(τ∣θ)≈​n​​1​​∑​n=1​n​​r(τ​n​​)","​r​θ​​​​​≈​n​​1​​∑​n=1​n​​r(τ​n​​)","​θ​j​​​​∂j(θ​j​​)​​=(h​θ​​(x)−y)x​j​​。","∂j(θj)θj=(hθ(x)−y)xj","∇rθ‾≈1n∑n=1nr(τn)∇logp(τn∣θ)","∇​r​θ​​​​​≈​n​​1​​∑​n=1​n​​r(τ​n​​)∇logp(τ​n​​∣θ)","−1","√​​m​​1​​∑​i=1​m​​(y​i​​−p​i​​)​2​​​​​","、","、col","、don","、dr","、ladi","、major","、miss","、sir","。","。不过y^\\hat","。从结果可以看出,村民的数量越大,那么投票后犯错的错误率就越小。这也是bagging性能强的原因之一。","。假设该模型在不同的分类阈值下其对应的","。其公式如下:","。如果是负数,则考虑非线性相关。很直观,而且不同模型一样的。那么线性回归有没有这样的衡量标准呢?","。如果该模型的分类边界向左或者向右移动的话,模型所对应的精准率和召回率如下图所示:","。您认为这样的系统的预测性能好不好呢?","。所以","。所以从这个角度来看,逻辑回归的损失函数与","。所以就有y^={0p^0.51p^>0.5\\hat","。所以这个时候树是这样的:","。然后将上表中的文字替换掉,混淆矩阵如下:","。然后您可能觉得哎呀,我的模型很厉害了,但其实并不然,因为这样的测试集让您的模型的性能有了误解。那有没有更加公正的验证算法性能的方法呢?有,那就是k","。然后您可能觉得哎呀,我的模型很厉害了,但其实并不然,因为这样的验证集让您的模型的性能有了误解。那有没有更加公正的验证算法性能的方法呢?有,那就是k","。目录结构如下:","。(因为这种情况下我随机变量的不确定性是最低的),那如果我的概率是","。(就像扔硬币,你永远都猜不透你下次扔到的是正面还是反面,所以它的不确定性非常高)。所以呢,熵越大,不确定性就越高。","《机器学习》","一开始我们已经算过信息增益最大的是活跃度,所以决策树的根节点是活跃度","一开始,每个样本都看成是一个簇(","一直渲染游戏画面","一等舱和二等舱的女性的生还率几乎为","上一关中提到了精准率变高,召回率会变低,精准率变低,召回率会变高。那如果想要同时兼顾精准率和召回率,这个时候就可以使用f1","上流女性与生还率的关系","上船人数最多的口岸是","上面的几种衡量标准针对不同的模型会有不同的值。比如说预测房价","下面是使用随机森林识别手写数字的完整代码:","不理解环境,环境给了什么就是什么,我们就把这种方法叫做","不甜","不过我们的年龄是有缺失值的,如果图简单,可以使用平均年龄来填充缺失的年龄。但是这样做并不合适,比如人家只是个","不重复抽样将整个数据集随机拆分成","与","与簇","两种情况哪种情况的误差更大?很显然,情况","个⼦数据集来训练模型。在这","个不重合的⼦数据集,然后我们做","个人被预测成患有癌症,那么其中有","个兄弟姐妹,配偶在船上,或","个分类器的训练数据集。","个分类器认为属于","个分类器认为当前样本属于","个分类器(随便什么分类器),那么就重复","个分类器,在boosting中,111","个分类器,有","个字来概括:“近朱者赤,近墨者黑”。","个实践任务,涵盖了《机器学习》中的前十章内容,并已在南京大学投入使用。","个患有癌症的病人使用这个系统进行癌症检测,系统能够检测出","个是不流失,五五开。所以可以考虑随机选个结果当输出了。性别为女的用户中有全部都流失,所以性别为女时输出是流失。所以呢,树就成了这样:","个是流失,111","个权重。如果靠瞎猜权重的话。应该这辈子都猜不中了。所以找权重的找个套路来找,这个套路就是梯度。梯度其实就是让函数值为","个权重,10000","个村民认为","个村民,h(x)h(x)h(x)","个村民,每个村民的错误率为","个标签(survived)组成的。其中各个特征和标签的意义如下:","个样本(","个样本与我的总距离和属于文艺青年的","个样本与我的总距离进行比较。然后选择总距离最小的标签作为预测结果。在这个例子中预测结果为文艺青年(宅男的总距离为","个样本的标签值加起来再算个平均,而不是投票。例如离待预测样本最近的","个样本的标签和距离如下:","个样本的标签如下:","个样本的标签进行统计,并将票数最多的标签作为预测结果即可。如上表中,宅男是","个样本的真实标签,pip^ip​i​​表示模型对第","个样本的第","个样本的预测标签。线性回归的目的就是让损失函数最小。那么模型训练出来了,我们在测试集上用损失函数来评估模型就行了。","个样本,每个样本包括","个样本,每个样本有","个模型的各种性能可以看出,模型c的精准率和召回率都比较高,因此它的","个游戏序列(游戏序列1,游戏序列2,游戏序列3,","个游戏序列[τ1,τ2,...,τ10\\tau_1,","个游戏序列中采样得到的。","个游戏序列就相当于从","个父母的人来说,生还率还是比较高的。","个父母的生还率比较高,独自一人或者一个大家庭都在船上的生还率比较低。","个特征中随机选取","个特征和","个特征就对应着","个特征构成训练数据子集,然后将这个子集作为训练集扔给决策树去训练。其中","个特征,从这","个特征,则它们的质心为:cmass=(∑j=1mx1jm,∑j=1mx2jm,...,∑j=1mxnjm)cmass=(\\frac{\\sum_{j=1}^mx_1^j}{m},\\frac{\\sum_{j=1}^mx_2^j}{m},...,\\frac{\\sum_{j=1}^mx_n^j}{m})cmass=(​m​​∑​j=1​m​​x​1​j​​​​,​m​​∑​j=1​m​​x​2​j​​​​,...,​m​​∑​j=1​m​​x​n​j​​​​)。","个特征,每个像素看成是一个特征,每个特征都是","个特征,用","个簇。","个簇中哪两个簇之间的最小距离最小,我们发现","个西瓜,聚成了两类,一类是小西瓜,另一类是大西瓜。","个采样集分别作为","中,","中只有两个簇了,达到了我们的预期目标(想要聚成两类),所以算法停止。算法停止后会发现,我们已经将","中基于策略的一种算法,polici","中已经为我们准备好了一些比较经典且质量较高的数据集,其中就包括手写数字数据集。该数据集有","中样本的数量,则平均距离为:dmin=1∣ci∣∣cj∣∑x∈i∑z∈jdist(x,z)d_{min}=\\frac{1}{|c_i||c_j|}\\sum_{x\\in","中模型认为样本是类别","中的一些值作为模型的分类阈值。若模型认为当前数据是","中计算每个特征的信息增益,然后看哪个最大就选哪个作为当前节点。然后继续重复刚刚的步骤来构建决策树。","中采样了","为","为2。所以根据","为2,n","为一等舱,","为三等舱。既然船舱分三六九等,那么是不是越高级的舱,它的生还率越高呢?","为二等舱,","为什么需要距离","为底):h(x)=−∑i=1npilogpih(x)=","为我们提供了将数据划分成","为我们提供了模拟游戏的环境。使得我们能够很方便地得到游戏的环境状态,并作出动作。想要安装","为我们提供了网格搜索的接口,我们能很方便的进行网格搜索。","为真实类别为","为蓝色):","为黄色,模型","为:j(θ)=12∑i=1m(hθ(xi)−yi)2j(\\theta)=\\frac{1}{2}\\sum^m_{i=1}(h_\\theta(x^i)","举个例子,参考模型给出的簇与聚类模型给出的簇划分如下:","举个例子,现在先要将西瓜数据聚成两类,数据如下表所示:","举个例子,现在有666条西瓜数据{x1,x2,...,x6}\\{x_1,x_2,...,x_6\\}{x​1​​,x​2​​,...,x​6​​},这些数据已经聚类成了222个簇。","举个例子,现有预测概率与真实类别的表格如下所示(其中","之类的。没有什么可读性,到底多少才算好呢?不知道,那要根据模型的应用场景来。","之类的。那么预测身高就可能是","之间也存在关系。假设有这么一组数据,菱形代表","之间,最高百分之百。最低","乌黑","乘客id","也会增大。所以","也会越低。这与精准率和召回率之间的关系刚好相反。并且,模型的分类阈值一但改变,就有一组对应的","也会越高,","也可通过扫码查看整套课程,二维码如下:","也就是五五开的时候,我的熵是最大也就是","也就是说我如果一直朝着最终的那个方向努力的话,理论上来说我就能以最快的速度成为郊区王者。","也很方便,只需在命令行中输入pip","也比较高。而其他模型的精准率和召回率要么都比较低,要么一个低一个高,所以它们的","了解了数据种各个属性的含义之后,我们可以看看这个数据集中有没有缺失值。","了,所以","人是患有癌症的。也就是说,召回率越高,那么我们感兴趣的对象成为漏网之鱼的可能性越低。","人是真的患有癌症。也就是说,精准率越高,那么癌症检测系统预测某人患有癌症的可信度就越高。","人的家庭来说生还率也比较低。感觉,这可能也是一个比较好的特征,可以再深入的看一下。","什么是bag","什么是决策树","什么是强化学习","什么是机器学习","什么是梯度下降","什么是特征工程?其实每当我们拿到数据时,并不是所有的特征都是有用的,可能有许多冗余的特征需要删掉,或者根据","什么是线性回归","什么是逻辑回归","从sigmoidsigmoidsigmoid函数的图像可以看出当ttt趋近于−∞","从上图可知,模型的精准率变高,召回率会变低,精准率变低,召回率会变高。","从上述","从前两次可视化结果可以看出,女性,上流人士成为了是否能够活下来的关键,那么上流女性(两者的结合)的生还率会不会很高呢?","从可视化结果可以看出:","从图上看会发现结果和上面的比较相似,父母在船上的船客有更大的生还机会。而且对于那些在船上有","从图中可以很明显的看出,如果你是一个人,那么生还的几率比较低,而且对于人数大于","从图中可以看出","从图中可以看出一个比较有趣的现象,船上的男人是比女人多了","从图中可以看出平均花费其实是二等舱的普遍消费水平,但是三等舱的人数是最多的,而三等舱的人群中花费人数最多的是","从图中可以看出数据是由","从图中可以看出泰坦尼克沉船事件中还是凶多吉少的。因为在","从图中可以看出,当模型的","从图可以看出,如果一位船客是单独一个人上船旅游,没有兄弟姐妹而且是单身,那么他有大约","从热力图上可以看出这些特征之间没有太大的相关性,最高的也就","从理论上来说,这式子满足线性系统的性质(至于线性系统是什么,可以查阅相关资料,这里就不多做赘述了,不然没完没了)。您可能会觉得疑惑,这一节要说的是线性回归,我说个这么","从表格可以看出:","从计算出的召回率可以看出,假设有","从这个公式也可以看出,如果我概率是","从这张图可以看出一等舱的女性(上流女性)的生还率非常高!几乎接近了百分之百!而且二等舱和三等舱的女性的生还率也远比男性的生还率高。这也验证了我们的猜测,在沉船后是优先女性和一等舱的船客的。","代表不是狼人,","代表了真实类别为","代表恶性肿瘤)。","代表是狼人),f(x)f(x)f(x)","代表良性肿瘤,111","以距离为尺","份","份作为测试集,剩下的","份作为训练集","份类","份,然后试图让每一份子集都能成为测试集,并循环","伪代码如下:","但如果仅仅是从训练集中抽取一小部分作为验证集的话,有可能会让我们对模型的性能有一种偏见或者误解。","但是活跃度为中的时候就不一定流失了,所以这个时候就可以把活跃度为低和为高的数据屏蔽掉,屏蔽掉之后","但生还率不是最高的。","但预测成了","位朋友来找这条直线就可能找出","体积","体验整套机器学习实训课程。该课程是与南京大学合作共建的实训课程,总共有","作为横轴,","作为纵轴,将上面的表格以折线图的形式画出来就是","使用k","使用polici","使用sklearn识别手写数字","使用sklearn进行机器学习","使用回归的思想进行分类","使用梯度下降求解线性回归的解","例如:要做房价预测,每平方是万元,我们预测结果也是万元。那么差值的平方单位应该是千万级别的。那我们不太好描述自己做的模型效果。怎么说呢?我们的模型误差是多少千万?于是干脆就开个根号就好了。我们误差的结果就跟我们数据是一个级别的了,在描述模型的时候就说,我们模型的误差是多少万元。","假如现在有一个人本身已经患有癌症,但是他自己不知道自己患有癌症。这个时候用我的癌症检测系统检测发现他没有得癌症,那很显然我这个系统已经把他给坑了(耽误了治疗)。","假如现在有一些水果的图片作为训练集(无标签),现在想要机器学习算法能够根据训练集中的图片将这些图片进行归类,但是并不知道这些类别是什么。像这样的任务我们称为聚类任务。","假如现在有一些苹果、西瓜和香蕉的图片作为训练集(有标签),现在想要机器学习算法能够根据新的测试图片来分辨出该图片中的是苹果、西瓜还是香蕉。像这样的任务我们称为分类任务。","假如现在有一些苹果的售价数据作为训练集(有标签),现在想要机器学习算法能够根据新的测试图片来分辨出该图片中的苹果能卖多少钱。像这样的任务我们称为回归任务。","假如癌症检测系统的混淆矩阵如下:","假设使用簇间最小距离来度量两个簇之间的远近,从表中可以看出","假设我们收集了一份西瓜数据:","假设我们玩了","假设我在这个样本空间中用黄圈表示,如下图所示:","假设有","假设有这么一组数据,菱形代表","假设模型","假设现在又有两种情况,情况a:","假设现在有模型","假设现在有这样的一个样本空间(由样本组成的一个空间),该样本空间里有宅男和文艺青年这两个类别,其中红圈表示宅男,绿圈表示文艺青年。如下图所示:","假设给定簇cic_ic​i​​与cjc_jc​j​​,∣ci∣,∣cj∣|c_i|,|c_j|∣c​i​​∣,∣c​j​​∣分别表示簇","假设给定簇cic_ic​i​​与cjc_jc​j​​,则最大距离为:dmin=maxx∈i,z∈jdist(x,z)d_{min}=max_{x\\in","假设给定簇cic_ic​i​​与cjc_jc​j​​,则最小距离为:dmin=minx∈i,z∈jdist(x,z)d_{min}=min_{x\\in","假设训练数据集有","做好数据预处理后,可以将数据喂给我们的机器学习模型来进行训练和预测了。不过在构建模型之前,我们要使用处理训练集数据的方式来处理测试集。","像","像素(实际上是一条样本有","儿童的数量随着船舱等级的增加而增加,10","兄弟姐妹父母爱人数量:有","兄弟姐妹的数量与生还率的关系","先把口岸和生还率的关系画出来。","公式中的表达式其实很好理解,其中kkk代表聚类有多少个簇,dmin(ci,cj)d_{min}(c_i,c_j)d​min​​(c​i​​,c​j​​)代表第iii个簇中的样本与第jjj个簇中的样本之间的最短距离,diam(cl)diam(c_l)diam(c​l​​)代表第lll个簇中相距最远的样本之间的距离。","公式中的表达式其实很好理解,其中kkk代表聚类有多少个簇,μi\\mu_iμ​i​​代表第iii个簇的中心点,avg(ci)avg(c_i)avg(c​i​​)代表cic_ic​i​​第iii个簇中所有数据与第iii个簇的中心点的平均距离。dc(μi,μj)d_c(\\mu_i,","关于本书的实验与涉及的案例均可以在平台进行体验,名称与链接如下:","其中","其中yiy^iy​i​​表示第","其中ymeany_{mean}y​mean​​表示所有测试样本标签值的均值。为什么这个指标会有刚刚我们提到的性能呢?我们分析下公式:","其实","其实从目录名字可以看出目录中的","其实分子表示的是模型预测时产生的误差,分母表示的是对任意样本都预测为所有标签均值时产生的误差,由此可知:","其实就是mse开个根号。有什么意义呢?其实实质是一样的。只不过用于数据更好的描述。","其实就是接下来要介绍的sigmoidsigmoidsigmoid函数。","其实构建出这样的样本空间的过程就是knn算法的训练过程。可想而知knn算法是没有训练过程的,所以knn算法属于懒惰学习算法。","其实梯度下降不是一个机器学习算法,而是一种基于搜索的最优化方法。因为很多算法都没有正规解的,所以需要通过一次一次的迭代来找到找到一组参数能让我们的损失函数最小。损失函数的大概套路可以参看这个图:","其实欠拟合与过拟合的区别和我们生活中学生考试的例子很像。如果一个学生在平时的练习中题目的正确率都不高,那么说明这个学生可能基础不牢或者心思没花在学习上,所以这位学生可能欠缺基础知识或者智商可能不太高或者其他种种原因,像这种情况可以看成是欠拟合。那如果这位学生平时练习的正确率非常高,但是他不怎么灵光,喜欢死记硬背,只会做已经做过的题,一碰到没见过的新题就不知所措了。像这种情况可以看成时是过拟合。","其实这样一种脑回路的形式就是我们所说的决策树。所以从图中能看出决策树是一个类似于人们决策过程的树结构,从根节点开始,每个分枝代表一个新的决策事件,会生成两个或多个分枝,每个叶子代表一个最终判定所属的类别。很明显,如果我现在已经构造好了一颗决策树的话,现在我得到一条数据(男,","其实,质心指的是样本每个特征的均值所构成的一个坐标。举个例子:假如有两个数据","内部指标","内部指标通常使用","写在前面","写在前面的话","决策树","决策树构流程","决策树说白了就是一棵能够替我们做决策的树,或者说是我们人的脑回路的一种表现形式。比如我看到一个人,然后我会思考这个男人有没有买车。那我的脑回路可能是这样的:","准确度的缺陷","准确度这个概念相信对于大家来说肯定并不陌生,就是正确率。例如模型的预测结果与数据真实结果如下表所示:","函数π\\piπ其实可以看成是一个模型,那么想在无数次尝试中寻找出能让","函数。","函数的公式为:σ(t)=1/1+e−t\\sigma(t)=1/1+e^{","分类","分类性能评估指标","分类模型性能评估指标","则表示两个特征之间没有相关性(线性的)。","则表示完全负相关,若为","则该系统的召回率=8/(8+2)=0.8。","则该系统的精准率=8/(8+12)=0.4","则这两个样本的质心为","创建一个将数据集随机划分成5份","创建一个有50棵决策树的随机森林,","创建一个逻辑回归对象","初窥","删掉没多大用处的特征","到","加载手写数字数据集","加载模型玩游戏","动作是从一个概率分布中采样出来的。","即可。","却预测成了","参考簇","又由于:","发生的前提下,事件","发生的熵是多少的话,这种熵我们叫它条件熵。条件熵","口岸上船的人中有很多都是三等舱的船客。","口岸上船的人是一等舱和二等舱船客吧。","口岸上船的,但是","口岸登记信息时漏了几位船客,所以不妨用","口岸的的生还率最低。这是因为","口岸:即使大多数一等舱的船客在","只是","只是多了一道程序,为真实世界建模,也可以说他们都是","只有编号为","只能按部就班,一步一步等待真实世界的反馈,再根据反馈采取下一步行动。而","召回率","召回率(recall)指的是我们关注的事件发生了,并且模型预测正确了的比值,其计算公式如下:","可以实现数据预处理、分类、回归、降维、模型选择等常用的机器学习算法。基本上只需要知道一些","可以看作是模型准确率和召回率的一种加权平均,它的最大值是","可以看出","可以看出从","可以看出和我们之前","可以看出宅男和文艺青年的比分是","可以看出,除了三等舱的单身女性的生还率比非单身女性的生还率高外,单身并不是什么好事。","可以看到经过调参之后,我们的随机森林模型的性能提高到了","号分类器的训练,而在bagging中,分类器可以同时进行训练,当所有分类器训练完成之后,整个bagging的训练过程就结束了。","号分类器训练完成之后才能开始222","号口岸。嗯,好像并没有什么线索,我们可以再深入一点。","号口岸上的船,","号口岸上的船,我们可以假设由于人多,所以在","号口岸上船并且是三等舱的,不管是男的还是女的,生还率都很低。金钱决定命运。。。","号口岸上船的人中有","号口岸上船的人大多数都是三等舱的船客。","号口岸上船的基本上都是三等舱船客。","号口岸上船的生还率最高,可能大部分","号口岸上船的生还率最高,最低的是","号口岸上船的男性几乎团灭,因为q","号口岸填充缺失值。","号口岸的基本上是三等舱的船客。","号口岸,而且在","号样本看成是","号簇),假设簇的集合为","号簇与","号簇合并,那么此时簇的集合","号簇和","号簇的最小距离最小,因此我们要进行合并,合并之后","号簇的簇间最小距离最小。因此需要将","号簇,","号簇,...,","同样的,如果一份数据有","名乘客丧生。","名乘客中有","名称","名船客中,只有约","后能得到信息","和","和(2,2)(2,2)(2,2)","和安装其他第三方库一样简单,只需要在命令行中输入","和年龄一样,花费也是一个连续性的数值特征,所以我们不妨将其离散化。","和标签","和模型","和用来预测的函数","和精准率与召回率一样,","和编号为","喏,其实找直线的过程就是在做线性回归,只不过这个叫法更有高大上而已。","嗯,女性和小孩的生还率比较高。","回归","回归性能评估指标","回归模型性能评估指标","因此","因此刚刚的例子中,fmi=22+1∗22+4=418fmi=\\sqrt{\\frac{2}{2+1}*\\frac{2}{2+4}}=\\sqrt{\\frac{4}{18}}fmi=√​​2+1​​2​​∗​2+4​​2​​​​​=√​​18​​4​​​​​","因此刚刚的例子中,jc=22+1+4=27jc=\\frac{2}{2+1+4}=\\frac{2}{7}jc=​2+1+4​​2​​=​7​​2​​","因此刚刚的例子中,randi=2∗(2+8)6∗(6−1)=23randi=\\frac{2*(2+8)}{6*(6","因此有:","因此,这份数据是一个有4个样本,3个特征的训练集,训练集的标签是“甜不甜”。","在k","在使用knn算法解决回归问题时的思路和解决分类问题的思路基本一致,只不过预测标签值是多少的的时候是将距离最近的","在信息论和概率统计中呢,为了表示某个随机变量的不确定性,就借用了热力学的一个概念叫熵。如果假设","在划分训练集与测试集时会有这样的情况,可能模型对于数字","在强化学习中有很多算法,如果按类别划分可以划分成","在我们实际情况下,我们要研究的随机变量基本上都是多随机变量的情况,所以假设有随便量(x,y),那么它的联合概率分布是这样的:","在每个训练集上训练后得到一个模型","在真实业务中,我们可能没有真正意义上的测试集,或者说不知道测试集中的数据长什么样子。那么我们怎样在没有测试集的情况下来验证我们的模型好还是不好呢?这个时候就需要验证集了。","在训练时的特点就是随机有放回采样和并行。","在这里主要介绍一下","在预测样本属于哪个类别时取决于算出来的p^\\hat","基学习器:bagging的基学习器可以是任意学习器,而随机森林则是以决策树作为基学习器。","填充完缺失值后,可以尝试可视化一下。","填充缺失口岸","填充缺失年龄","声音","外国人的姓名和我们中国人的姓名不太一样,一般都会有","外部指标","外部指标通常使用","多人,但是女人生还的人数几乎是男人生还的人数的两倍,女人的存活率约为","多出了一个虚拟环境,我们可以先在虚拟环境中尝试,如果没问题,再拿到现实环境中来。","多都是三等舱的船客。","好了,决策树构造好了。从图可以看出决策树有一个非常好的地方就是模型的解释性非常强!!很明显,如果现在来了一条数据(男,","如下图所示(竖线代表分类阈值,模型会将竖线左边的数据分类成","如下表所示:","如果为负数,则说明我们训练出来的模型还不如基准模型,此时,很有可能我们的数据不存在任何线性关系。","如果假设h(θ)(x)h_{(\\theta)}(x)h​(θ)​​(x)表示当权重为θ\\thetaθ,输入为xxx时计算出来的y(^i)i","如果将整个聚类过程中的合并,与合并的次序可视化出来,就能看出为什么说","如果将正确看成是","如果我们将每个村民看成是一个分类器,那么每个村民的任务就是二分类,假设","如果我们把整个乒乓球游戏所有可能出现的状态,动作,反馈组合起来看成是玩了","如果我们把这些结果组成如下矩阵,则该矩阵就成为混淆矩阵。","如果我们的","如果现在两个特征高度相关或者完全相关,这就意味着这两个特征都包含高度相似的信息,并且信息的差异非常小,所以其中一个特征是多余的。在构建模型时,我们应该尽量消除这种多余的特征,因为这样能减少训练的时间,也可以在某种程度上缓解过拟合。","如果看到这一堆公式可能会懵逼,那不如举个栗子来看看信息增益怎么算。假设我现在有这一个数据表,第一列是性别,第二列是活跃度,","姓名:难道姓名和生死有关系?这也太玄乎了,我不信,所以把它删掉","它主要包含四个元素,agent、环境状态、行动、奖励,强化学习的目标就是获得最多的累计奖励。","宅男","安装","完整代码如下:","实现的机器学习算法库。sklearn","实训推荐","家庭成员数量与是否孤身一人","对于男性来说,年纪越大,生还率越低。","对训练集","寻找距离最小的两个簇a和b","导入kfold","导入好接口后,就可以创建随机森林对象了。随机森林对象有用来训练的函数","导入计算准确率的接口","将a和b合并,并修改c","将x,y划分成训练集和测试集,其中训练集的比例为80%,测试集的比例为20%","将上一帧更新为当前帧","将字符串特征转换为数值型特征","将当前帧更新为上一帧","将整个数据集划分成5份","小于","就是召回率。所以","就是用模型来表示环境,理解环境就是学会了用一个模型来代表环境,所以这种就是","就是这么一个指标,公式如下:","尽量拿高分的模型应该怎样来找呢?我相信您应该猜到了!没错!就是神经网络!","岁。这个还是符合常理的。接下来我们看看船舱等级,年龄和生还率的关系,以及性别,年龄和生还率的关系。","岁之间的置为","岁以下的小屁孩的生还率比较高,80","岁以下的小朋友存活率仿佛都还挺高的,跟船舱等级好像没有太大关系。","岁以下的小朋友的存活率比较高,15","岁显然是不合适的。那有没有能够更加准确地知道缺失的年龄是多少的方法呢?有!我们可以根据姓名来推断缺失的年龄,因为姓名中有很多类似","岁的小屁孩,但是你把人家强行改成","岁的年轻人存活率低。可能年轻人就是炮灰吧。","岁的老人活下来了。","岁的船客的存活率很高,而且对女性的生还率一如既往的高。","左右的人幸免于难,那么接下来尝试使用数据集中不同的特征,来看看他们的生还率有多少。其实这样一个过程我们可以看出大概有哪些类型的船客活了下来。","左右,因此平均","已经为我们提供了计算准确率的接口,使用代码如下:","常见机器学习算法","平均年龄快","平均距离","平均距离描述的是两个簇之间样本的平均距离。例如下图中圆圈和菱形分别代表两个簇,计算两个簇之间的所有样本之间的欧式距离并求其平均值。","年纪最大的是80岁的老爷爷或者老太太,最小的是刚出生的小","年龄与生还率的关系","年龄是一个连续型的数值特征,有的机器学习算法对于连续性数值特征不太友好,例如决策树、随机森林等","年龄离散化","年龄:10","年龄:由于已经根据年龄生成了新的特征“年龄段”,所以这个特征也需要删除。","并且预测正确的数量占真实类别为","并且预测错了的数量占真实类别为","并假设现在已经使用机器学习算法根据这份数据的特点训练出了一个很厉害的模型,成为了一个挑瓜好手,只需告诉它这个西瓜的色泽,纹理和声音就能告诉你这个西瓜甜不甜。","并行:","并避免低分的行为。","建议查阅","开启乒乓球游戏环境","开启游戏","强化学习是一类算法,是让计算机实现从一开始完全随机的进行操作,通过不断地尝试,从错误中学习,最后找到规律,学会了达到目的的方法。这就是一个完整的强化学习过程。让计算机在不断的尝试中更新自己的行为,从而一步步学习如何操自己的行为得到高分。","当","当θ\\thetaθ更新好了之后,就相当于得到了一个线性回归模型。也就是说只要将数据放到模型中进行计算就能得到预测输出了。","当一看到“回归”这两个字,可能会认为逻辑回归是一种解决回归问题的算法,然而逻辑回归是通过回归的思想来解决二分类问题的算法。","当安装好所需要的库之后,我们可以使用如下代码开始游戏:","当我们的模型性能跟基模型性能相同时,取","当我们的模型过于简单,很可能会导致欠拟合。如果模型过于复杂,就很可能会导致过拟合。","当然条件熵的一个性质也熵的性质一样,我概率越确定,条件熵就越小,概率越五五开,条件熵就越大。","当然逻辑回归的损失函数不仅仅与","当然,在eda之前先要加载数据,我们不妨先将训练集train.csv读到内存中,并看一看。","很多机器学习算法有很多可以调整的参数(即超参数),例如我们用的随机森林需要我们指定森林中有多少棵决策树,没棵决策树的最大深度等。这些超参数都或多或少的会影响这模型的性能。那么怎样才能找到合适的超参数,来让我们的模型性能达到比较好的效果呢?可以使用网格搜索!","很明显模型的","很明显,刚刚我们使用knn算法解决了一个分类问题,那knn算法能解决回归问题吗?当然可以!","很明显,当","很明显,花费越多生还率越高,金钱决定命运。","很明显,连小朋友都能算出来该模型的准确度为","得到","得到帧差图","得到预测结果后,我们需要将其与测试集的真实答案进行比对,计算出预测的准确率。sklearn","循环干的事情就相当于我下山的时候在迈步子,代码里的","循环若干次","怎样处理数据,使用什么样的机器学习模型并没有所谓的正确答案。这篇文章只是抛砖引玉,若您是刚刚接触数据科学,我相信这一篇不错的指引;若您已经是老手,我相信文中的一些技巧您肯定也用过,可以温故而知新;所以希望这篇文章对您或多或少的有所帮助。","怎样计算出线性回归的解?","性别与生还率的关系","性别为女的熵=","性别为男的熵=","性别的信息增益=总的熵","性别:女性的生还率高","总共3种类型:1(一等舱),2(二等舱),3(三等舱)","总熵=","您会发现∑n=1nr(τn)\\sum_{n=1}^nr(\\tau^n)∑​n=1​n​​r(τ​n​​)很好算,只要把反馈全部加起来就完事了,难算的是∇logp(τn∣θ)\\nabla","您可能会觉得,哇,这么高的准确度!这个系统肯定很牛逼!但是我们知道,一般年轻人患癌症的概率非常低,假设患癌症的概率为","情况","惊奇的发现,居然有人可以享受免费豪华邮轮!!!!","想要使用这个数据很简单,代码如下:","想要得到公式中的","想要玩乒乓球游戏,首先得有乒乓球游戏。openai","想要计算上述指标来度量聚类的性能,首先需要计算出aaa,ccc,ddd,eee。假设数据集e={x1,x2,...,xm}e=\\{x_1,x_2,...,x_m\\}e={x​1​​,x​2​​,...,x​m​​}。通过聚类模型给出的簇划分为c={c1,c2,...ck}c=\\{c_1,c_2,...c_k\\}c={c​1​​,c​2​​,...c​k​​},参考模型给出的簇划分为d={d1,d2,...ds}d=\\{d_1,d_2,...d_s\\}d={d​1​​,d​2​​,...d​s​​}。λ\\lambdaλ与λ∗\\lambda^*λ​∗​​分别表示ccc与ddd对应的簇标记,则有:","想要识别手写数字,首先需要有数据。sklearn","想要调整的参数的字典,字典的key为参数名字,value为想要尝试参数值","想进一步的考量分类模型的性能如何,可以使用其他的一些性能指标,例如精准率和召回率。但这些指标计算的基础是混淆矩阵。","意义","我们可以将游戏画面传给神经网络作为输入,然后神经网络预测一下当前游戏画面下,下一步动作的概率分布。","我们可以看一下转换成年龄段后,年龄段与生还率的关系。","我们可以看出:","我们知道线性回归的损失函数","我们通常将这种喂给机器学习算法来训练模型的数据称为训练集,用来让机器学习算法预测的数据称为测试集。","我们首先可以看看训练集中有多少人活了下来。","我都能通过这个方程算出","或者","或者是","或者这样","所代表的含义是根据业务决定的,比如在癌细胞识别中可以使","所以","所以信息增益如果套上机器学习的话就是,如果把特征","所以就有:","所以待预测样本的标签为:(1.2+1.5+0.8+1.33+1.19)/5=1.204","所以很自然的可以想到,使用梯度下降求解线性回归的解的流程如下:","所以我们游戏的总的反馈期望rθ‾\\overline{r_\\theta}​r​θ​​​​​可表示为:rθ‾=∑τr(τ)p(τ∣θ)\\overline{r_\\theta}=\\sum_\\tau","所以接下来用热力图对相关性系数进行可视化。","所以模型分类性能越好,混淆矩阵中非对角线上的数值越小。","所以说,梯度下降的作用是不断的寻找靠谱的权重是多少。","所以逻辑回归梯度下降的代码如下:","所以逻辑回归的损失函数如下,其中","所以,梯度下降的伪代码如下:","所以:","所对应的","才会比较高。这也是","打印5折验证的平均准确率","打印准确率","打印最佳参数组合","打印最佳参数组合时模型的最佳性能","批量梯度下降","把乒乓球游戏,那么可能会有这样的一个统计结果。","把游戏打的好还是不好呢?也很明细,把","把游戏的所有反馈全部都加起来就好了。如果把这些反馈的和称为总反馈(总得分),那么就有总反馈(总得分)=第1把反馈1+第1把反馈2+...+第10把反馈m。也就是说总反馈越高越好。","把游戏,就会有","把游戏,就相当于得到了","把计算一次总反馈,那么这","把,每","折交叉验证。","折交叉验证中,我们把原始训练数据集分割成","折交叉验证!","折验证的大体思路是将整个数据集分成","折验证的流程如下:","折验证!","指的是机器学习所需要完成的任务。机器学习能够完成的任务主要有:分类、回归、聚类。","损失函数","排序后的表格中,真实类别为","探索性数据分析(eda)","探索性数据分析(eda)说白了就是通过可视化的方式来看看数据中特征与特征之间,特征与目标之间的潜在关系,看看有什么有用的线索可以挖掘,例如哪些数据是噪声,有哪些特征的相关性比较低,后续可以造出哪些新的特征等。","接下来不如通过一个实例来感受一下","接下来我们来尝试对一些特征进行处理。","接下来,可以使用机器学习算法来实现手写数字识别了,例如想要使用随机森林来进行识别,那么首先要导入随机森林算法接口。","接着可以根据前缀来填充缺失的年龄。","描述的是模型预测","描述的模型预测","提供的接口都封装在不同的目录下的不同的","搭建神经网络","数据之后,我们还需要将这些数据进行划分,划分成两个部分,一部分是训练集,另一部分是测试集。因为如果没有测试集的话,我们并不知道我们的手写数字识别程序识别得准不准。数据集划分代码如下:","整个id3算法其实主要就是围绕着信息增益来的,所以要弄清楚id3算法的流程,首先要弄清楚什么是信息增益,但要弄清楚信息增益之前有个概念必须要懂,就是熵。所以先看看什么是熵。","整数的标签。比如下图的标签是","文件中,所以对","文件是干啥的。比如","文艺青年","方法。","方法如此有效呢,举个例子。狼人杀我相信您应该玩过,在天黑之前,村民们都要根据当天所发生的事和别人的发现来投票决定谁可能是狼人。","方法的核心思想就是三个臭皮匠顶个诸葛亮。如果使用","既然总反馈一直会变,那么我们可以尝试换一种思路,即计算总反馈的期望,即总反馈的期望越高越好。那这个期望怎么算呢?","既然有决策树,那有没有用多棵决策树组成森林的算法呢?有!那就是随机森林。随机森林是一种叫bagging的算法框架的变体。所以想要理解随机森林首先要理解bagging。","时与我离得最近的样本如下:","时其中各个变量的偏导所组成的向量,而且梯度方向是使得函数值增长最快的方向。","时的预测准确度,其计算公式如下:","时,模型的性能应该是最好的,因为模型并没有在预测的时候犯错误。即如下混淆矩阵:","是","是一个有限个取值的离散型随机变量的话,很显然它的概率分布或者分布律就是这样的:p(x=xi)=pi,i=1,2,...,np(x=x_i)=p_i,","是一个超参数,需要自己设置,一般默认为","是一张rgb的三通道图,而且我们的挡板怎么移动只跟挡板和球有关系,所以我们可以尝试将三通道图转换成一张二值化的图,其中挡板和球是","是一款非常好用的","是一种算法,bag","是不是狼人(","是以","是否生还,1表示是,0表示否","是并行式集成学习方法。大名鼎鼎的随机森林算法就是在","是统计学中用来衡量二分类模型精确度的一种指标。它同时兼顾了分类模型的准确率和召回率。f1","是自底向上的层次聚类算法了。","是通过神经网络来训练模型,该模型需要根据环境状态来预测出下一步动作的概率分布,并根据这个概率分布进行采样,将采样到的动作作为下一步的动作。","是集成学习中的学习框架,","曲线与横轴所围成的面积越大,模型的分类性能就越高。而","曲线如下图所示(其中模型","更好地验证算法性能","更高。由由于随着","最后只需要对这","最大距离","最大距离描述的是两个簇之间距离最远的两个样本所对应的距离。例如下图中圆圈和菱形分别代表两个簇,两个簇之间离得最远的样本的欧式距离为","最好的情况下,我们的模型应该不管在训练集上还是测试集上,它的性能都不错。但是有的时候,我们的模型在训练集上的性能比较差,那么这种情况我们称为欠拟合。那如果我们的模型在训练集上的性能好到爆炸,但在测试集上的性能却不尽人意,那么这种情况我们称为过拟合。","最小距离","最小距离描述的是两个簇之间距离最近的两个样本所对应的距离。例如下图中圆圈和菱形分别代表两个簇,两个簇之间离得最近的样本的欧式距离为","最接近人类思维的分类算法","最接近人类思维的算法","最简单的回归算法","有","有了概率分布后,则这个随机变量","有关。","有关,它还与真实类别有关。假设现在有两种情况,情况","有多少人活了下来","本章主要介绍一些常见的机器学习算法(模型)的原理,理解模型的原理对于以后使用一些机器学习库实现业务功能时是有好处的。","本章主要介绍分类,回归以及聚类时常用的模型性能评估指标。","本资料主要介绍一些机器学习的入门知识,例如什么是机器学习,常见的机器学习算法原理,常用的模型性能评估指标,怎样快速入门sklearn等内容。","机器学习常用术语","机器学习库。","机器学习概述","机器学习的定义有很多种,但是最准确的定义是:\"a","条。因此","条健康信息数据中,只有","条数据中随机取一条数据放入采样集,然后将其返回,让下一次采样有机会仍然能被采样。然后重复","条数据当成训练集来继续算哪个特征的信息增益最高,很明显算完之后是性别这个特征,所以这时候树变成了这样:","条数据来进行测试,其中有","条数据的真实类别是","条数据的采样集,该采样集作为","条数据,接着把这","条是","条样本数据,每次从这","条样本里面","条的类别是患有癌症,其他的类别都是健康)。","条西瓜数据{x1,x2,...,x6}\\{x_1,x_2,...,x_6\\}{x​1​​,x​2​​,...,x​6​​},这些数据已经聚类成了","条里有","条,3/83/83/8","条,negtiv","条,然后这","来。而且呢,这个式子是线性的,为什么呢?因为从直觉上来说,你都知道,这个式子的函数图像是条直线。","来实现雅达利环境的模拟。安装","来拟合样本数据,线性回归的输出为y^=wx+b\\hat","来自一等舱的","来表示第","构建模型进行预测","构造决策树时会遵循一个指标,有的是按照信息增益来构建,这种叫id3算法,有的是信息增益比来构建,这种叫c4.5算法,有的是按照基尼系数来构建的,这种叫cart算法。在这里主要介绍一下id3算法。","标签","样本的比例。","样本的比例。而","样本编号","根据上式可知,如果","根据模型预测出的标签结果,标签","根据狼人杀的规则,村民们需要投票决定天黑前谁是狼人,也就是说如果有超过半数的村民投票时猜对了,那么这一轮就猜对了。那么假设现在有","模型评估与选择","模型评估指标","模糊","欠拟合与过拟合","次τ\\tauτ。所以总反馈期望rθ‾\\overline{r_\\theta}​r​θ​​​​​又可以近似的表示为:","次在验证集上的性能求平均。","次模型的性能的平均值作为性能的估计。一般来说","次模型训练和验证。每⼀次,我们使⽤⼀个⼦数据集验证模型,并使⽤其它","次的总反馈会不会是一模一样的呢?其实仔细想想会发现不会一摸一样,因为:","次训练和验证中,每次⽤来验证模型的⼦数据集都不同。最后,我们对这","次,就能得到拥有","次,总后计算","次,这样每份都有一次机会作为测试集,其他机会作为训练集","正确的数量","此时您会发现我们短短的几行代码实现的手写数字识别程序的准确率高于","此时看到预测的准确率达到了","此随机有放回采样,构建出","步","每一次挑选其中","比如我们现在要对手写数字进行识别,那么我就可能会训练一个分类模型。但可能模型对于数字","比模型","比较低。","注意:有的时候可能会有票数一致的情况,比如","泰坦尼克号数据集是目标是给出一个模型来预测某位泰坦尼克号的乘客在沉船事件中是生还是死。而且该数据集是一个非常好的数据集,能够让您快速的开始数据科学之旅。","泰坦尼克号生还预测","泰坦尼克号的沉船事件是是历史上最臭名昭著的沉船事件之一。1912年4月15日,泰坦尼克在航线中与冰山相撞,2224","泰坦尼克生还问题简介","活跃度为中的熵=","活跃度为低的熵=","活跃度为高的熵=","活跃度的信息增益=总的熵","浑浊","混淆矩阵","混淆矩阵中每个格子所代表的的意义也很明显,意义如下:","清晰","清脆","游戏序列n)。那么我们在玩游戏时所得到的游戏序列实际上就是从这","游戏画面预处理","游戏的状态实时在变,所以环境状态不可能一直是一样的。","游戏的画面是逐帧组成的,如果我们将当前帧和上一帧的图像相减就能得到能够表示两帧之间的变化的帧差图,将这样的帧差图作为神经网络的输入的话会是个不错的选择。","满足bbb的样本对为(3,4)(3,","满足ddd的样本对为(1,4)(1,","然后两边取logloglog会得到:","然后再可视化看一下","然后发现训练集中的数据表示当我活跃度低的时候一定会流失,活跃度高的时候一定不流失,所以可以先在根节点上接上两个叶子节点。","然后可以使用机器学习模型来训练并预测了,这里使用的是随机森林。","然后呢,线性回归就是要找一条直线,并且让这条直线尽可能地拟合图中的数据点。","然后找出与我距离最小的","然后把每条小竖线的长度加起来就等于我们现在通过这条直线预测出的房价与实际房价之间的差距。那每条小竖线的长度的加和怎么算?其实就是欧式距离加和,公式为:∑i=1m(y(i)−y(i)^)2\\sum_{i=1}^m(y^{(i)}","然后继续看这","熵、条件熵、信息增益","父母的数量与生还率的关系","物以类聚人以群分","特征","特征之间的相关性系数","特征工程","状态n","现在使用knn算法来鉴别一下我是宅男还是文艺青年。首先需要计算我与样本空间中所有样本的距离。假设计算得到的距离表格如下:","现在假设每个村民都是有主见的人,对于谁是狼人都有自己的想法,那么他们的错误率也是相互独立的。那么根据hoeffding不等式可知,h(x)h(x)h(x)","现在已经知道","现在您应该已经弄明白了一个事实,那就是我只要找到一组参数(也就是线性方程每一项上的系数)能让我的损失函数的值最小,那我这一组参数就能最好的拟合我现在的训练数据。ok,那怎么来找到这一组参数呢?其实有两种套路,一种就是用大名鼎鼎的梯度下降,其大概思想就是根据每个参数对损失函数的偏导来更新参数。另一种是线性回归的正规方程解,这名字听起来高大上,其实本质就是根据一个固定的式子计算出参数。由于正规方程解在数据量比较大的时候时间复杂度比较高,所以在这一部分中,主要聊聊怎样使用梯度下降的方法来更新参数。","现在我们已经知道了梯度下降就是用来找权重的,那怎么找权重呢?瞎猜?不可能的。。这辈子都不可能猜的。想想都知道,权重的取值范围可以看成是个实数空间,那","现在有个样本的真实类别是","现在有了总的熵和条件熵之后我们就能算出性别和活跃度这两个特征的信息增益了。","现在能看出很多信息了:","现在需要训练一个模型对数据进行分类,假如该模型非常简单,就是在数据上画一条线作为分类边界。模型认为边界的左边是","现在需要训练一个逻辑回归的模型对数据进行分类,假如将从","甜","甜不甜","生还数量直方图","生还比例饼图","用测试集测试,result为预测结果","用训练集训练","用这个模型在相应的测试集上测试,计算并保存模型的评估指标","由于env.step返回出来的","由于rθ‾\\overline{r_\\theta}​r​θ​​​​​的值越大越好,所以我们可以使用梯度上升的方式来更新θ\\thetaθ。所以就有如下数学推导:","由于一个游戏序列τ\\tauτ是由多个状态,动作,反馈构成的,即:","由于乒乓球游戏是雅达利游戏机上的游戏,所以需要安装","由于大多数人都是从","由于家庭成员数量和是否孤身一人好想对于是否生还有影响,所以我们不妨添加新的特征。","由于我们的机器学习模型不支持字符串,所以需要将一些有用的字符串类型的特征转换成数值型的特征,比如:性别,口岸,姓名前缀。","由于是分类问题,所以导入的是randomforestclassifi","由于概率是","登船口岸与生还率的关系","的","的不确定性。条件熵的计算公式是这样的:h(y∣x)=∑i=1npih(y∣x=xi)h(y|x)=\\sum^n_{i=1}p_ih(y|x=x_i)h(y∣x)=∑​i=1​n​​p​i​​h(y∣x=x​i​​)。","的不确定性的减少程度。就好比,我在玩读心术。您心里想一件东西,我来猜。我已开始什么都没问你,我要猜的话,肯定是瞎猜。这个时候我的熵就非常高对不对。然后我接下来我会去试着问你是非题,当我问了是非题之后,我就能减小猜测你心中想到的东西的范围,这样其实就是减小了我的熵。那么我熵的减小程度就是我的信息增益。","的众多分类器中的一个作为训练数据集。假设有","的低","的信息增益记为","的值为","的值由我们自己来指定,如以下为","的准确率。然后我们使用最佳参数构造随机森林,并对测试集测试会发现,测试集的准确率达到了","的原理","的取值一般为","的可能性为","的可能性只有","的基础上修改的算法。","的基础语法知识就能学会怎样使用","的增大,","的官方网站。","的实数转换成","的实数,所以逻辑回归若只需要计算出样本所属标签的概率就是一种回归算法,若需要计算出样本所属标签,则就是一种二分类算法。","的并不是每次都选取概率最高的动作,而是根据动作的概率分布进行采样。也就是说就算我预测出来的向上挪的概率为","的强化学习,","的强大。","的性能好,因为模型","的性能比模型","的意思是性别为男的样本有","的意思是总共有","的数值变大。通常使用","的数值变大会导致特征","的数值变大;负相关指的是:如果特征","的数值变小会导致特征","的数值来表示两个特征之间的相关性,这个值称为相关性系数。若该系数为","的数学推导全部推导完毕了。我们不妨用一张图来总结一下","的数据排在第","的数据有","的数据,并且编号为","的数量。","的数量;","的方法有很多,","的时候,我的熵就是","的条件下随机变量","的样子。所以","的样本数量。","的样本数量,","的样本有","的样本点额预测概率从小到大排序后,该预测概率排在第几。","的样本,然后用测试集测试完后得到的准确率为","的样本,然后用验证集测试完后得到的准确率为","的核心思想非常简单,就是找一个函数π\\piπ,这个函数π\\piπ能够根据现在环境的状态(state)来产生接下来要采取的行动或者动作(action)。即π(state)→action\\pi(state)\\rightarrow","的概率为","的概率值的话问题就解决了。要解决这个问题很自然地就能想到将线性回归的输出作为输入,输入到另一个函数中,这个函数能够进行转换工作,假设函数为","的概率小于分类阈值则分类为","的概率是","的熵的计算公式就是(pspsps:这里的","的生还率,生还率比较低。如果兄弟姐妹的数量变多,那么生还率还是呈下降趋势的。这其实挺合理的,因为如果是一个家庭在船上的话,可能会设法救他们而不是救自己,这样一来可能谁都救不了。","的目录结构有一个大致的了解,有助于我们更加深刻地理解","的算法流程。流程如下:","的精准率为","的结果相符,年龄越大,生还率越低。","的结果,我们可以根据已有的特征来添加新的特征,这其实就是特征工程。","的船客置为","的花费是被有钱的大佬给提上去的。","的英文缩写,刚接触的您不要误认为","的计算公式可知:","的计算公式如下:","的计算公式就是:g(d,a)=h(d)−h(d∣a)g(d,a)=h(d)","的计算公式您可能有点眼熟,没错!就是召回率的计算公式。也就是说","的识别准确率比较低","的话,就意味着这个模型认为当前样本的类别有","的话,那么","的误差更大!因为情况","的错误率为:","的面积称为","目录下都是聚类算法接口,","目录下都是集成学习算法的接口。","目标为1","直线方程干啥?其实,说白了,线性回归就是在","相关性分为正相关与负相关,正相关指的是:如果特征","看上去好想女性船客的生还率高一些,我们不妨再可视化一下。","看了这么多特征对于生还的影响,可能有点懵,不妨先简单总结一下根据可视化结果所获得的信息。","看到这里您应该已经体会到了,一个分类模型如果光看准确度是不够的,尤其是对这种样本极度不平衡的情况(","看成是","看看data的前5行","看看分类算法的衡量标准就是正确率,而正确率又在","真实\\预测","真实类别","真实结果","真正的身份(是不是狼人),ϵ\\epsilonϵ","知道了逻辑回归的损失函数之后,逻辑回归的训练流程就很明显了,就是寻找一组合适的","知道什么是质心后,就可以看看k","神经网络中神经元的参数","神经网络可以根据自己的喜好来搭建,在这里我使用最简单的只有两层全连接层的网络模型来进行预测,由于我们挡板的动作只有上和下,所以最后的激活函数为","神经网络的前向传播,x为输入的帧差图","票,所以我是宅男。","票,文艺青年是","票:票这个特征感觉是一堆随机的字符串,所以删掉。","种直线来,比如这样","秒钟,ab","秒钟,ab两种情况哪种情况的误差更大?很显然,一样大!","稍微整理一下可知:","第三列是客户是否流失的","等。","等前缀,接着我们可以将这些前缀替换成","等特殊前缀。所以我们可以先提取姓名中的前缀。","简介","简单总结一下","算theta对loss的偏导","算法中可根据具体业务选择其中一种距离作为度量标准。","算法前需要先理解一些距离准则。","算法是一种聚类算法,最初将每个对象作为一个簇,然后这些簇根据某些距离准则被一步步地合并。两个簇间的相似度有多种不同的计算方法。聚类的合并过程反复进行直到所有的对象最终满足簇数目。所以理解","算法是一种自底向上聚合的层次聚类算法,它先会将数据集中的每个样本看作一个初始簇,然后在算法运行的每一步中找出距离最近的两个簇进行合并,直至达到预设的簇的数量。","算法是一种自底向上聚合的层次聚类算法,它先会将数据集中的每个样本看作一个初始簇,然后在算法运行的每一步中找出距离最近的两个簇进行合并,直至达到预设的簇的数量。所以agnes算法需要不断的计算簇之间的距离,这也符合聚类的核心思想(物以类聚,人以群分),因此怎样度量两个簇之间的距离成为了关键。","算法流程","簇","簇的最小距离最小,因此我们要进行合并,合并之后","类型的数值)的图像和一个","类的票数最高)。","类(因为","类,111","类,那么bagging的结果会是","精准率","精准率(precision)指的是模型预测为","精准率与召回率之间的关系","级教程,想要更加系统更加全面的学习","纹理","线性回归","线性回归是什么意思?我们可以拆字释义。回归肯定不用我多说了,那什么是线性呢?我们可以回忆一下初中时学过的直线方程:y=k∗x+by=k*x+by=k∗x+b","组测试结果的平均值作为算法性能的估计。","细心的您可能会发现,如果每次取概率最高的动作作为下一步的动作,那不就成分类了么。其实","细心的您可能已经发现,不管使用哪种分类算法来进行手写数字识别,不同的只是创建的算法对象不一样而已。有了算法对象后,就可以fit,predict大法了。","细心的您可能注意到了,分类和回归问题的训练集中都是带有标签的。也就是说数据已经告诉了机器学习算法我这条数据的答案是这个,那条数据的答案是那个,就像有老师在监督学生做题目一样,一看到学生做错了就告诉他题目做错了,看到学生做对了就鼓励他。所以用来解决分类和回归问题的机器学习算法又称为监督学习。而像用来解决聚类问题的机器学习算法又称为无监督学习。","经过漫长的训练过程后,我们可以将训练好的模型加载进来开始玩游戏了。","继续以癌症检测系统为例,癌症检测系统的输出不是有癌症就是健康,这里为了方便,就用","绪论","维空间中找一个形式像直线方程一样的函数来拟合数据而已。比如说,我现在有这么一张图,横坐标代表房子的面积,纵坐标代表房价。","编号","网格搜索的意思其实就是遍历所有我们想要尝试的参数组合,看看哪个参数组合的性能最高,那么这组参数组合就是模型的最佳参数。","群众的力量是伟大的","而且我们不仅可以使用随机森林来实现手写数字识别,我们还可以使用别的机器学习算法实现,比如逻辑回归,代码如下:","聚类","聚类性能评估指标","聚类模型性能评估指标","聚类的性能度量大致分为两类:一类是将聚类结果与某个参考模型作为参照进行比较,也就是所谓的外部指标;另一类是则是直接度量聚类的性能而不使用参考模型进行比较,也就是内部指标。","聚类簇","背景赋值为0","能够同时兼顾精准率和召回率的原因。","能够超越人类的原因。","至于这样一个函数(模型)里面长什么样子,这就与具体的机器学习算法有关了。对机器学学习算法感兴趣可以阅读常见机器学习算法章节。","船客id:id和生死应该没啥关系,所以删掉。","船客在船上所花的钱","船客姓名","船客年龄","船客性别:female,mal","船客登船的口岸:c,q,","船客的兄弟姐妹妻子丈夫的数量","船客的父母,孩子的数量","船客的船舱号","船票","船票类型与生还率的关系","船票类型分三个档次,其中","船票类型,","船舱等级:越有钱越容易活下来,头等舱的生还率最高,三等舱的生还率最低。","船舱:由于有很多缺失值,不好填充,所以可以考虑删掉。","色泽","花费与生还率的关系","花费离散化","花费:和年龄一样,删掉。","若将","若想更加全面,系统的学习机器学习相关知识,可以输入链接:https://www.educoder.net/paths/194","虽然不作为损失函数,确是一个非常直观的评估指标,它表示每个样本的预测标签值与真实标签值的","虽然有很多一等舱的土豪们基本上都是在","虽然说钱不是万能的,但从可视化结果可以看出,一等舱的生还率最高,大于为","衡量两个簇之间的距离通常分为最小距离、最大距离和平均距离。在","表示","表示为村民判断错误的错误率。则有","表示健康。假设现在拿","表示患有癌症,","表示投票后最终的结果,则有","表示损失函数的值,$y$","表示样本的真实类别:","表示真实类别是","表示第","表示类别的中心,数据点的颜色代表不同的类别):","表示随机变量","解决分类问题,就是将多个分类器的结果整合起来进行投票,选取票数最高的结果作为最终结果。如果使用","解决回归问题,就将多个回归器的结果加起来然后求平均,将平均值作为最终结果。","计算","计算当前参数theta对损失函数的梯度","计算机就是","计算机有一位虚拟的裁判,这个裁判他不会告诉你如何行动,如何做决定,他为你做的事只有给你的行为打分,最开始,计算机完全不知道该怎么做,行为完全是随机的,那计算机应该以什么形式学习这些现有的资源,或者说怎么样只从分数中学习到我应该怎样做决定呢?很简单,只需要记住那些高分,低分对应的行为,下次用同样的行为拿高分,","计算预测准确率","让我们想象一下比赛现场:","训练神经网络","训练集中的所有行称为样本。由于我们的挑瓜好手需要的西瓜信息是色泽、纹理和声音,所以此训练集中每个样本的前3列称为特征。挑瓜好手给出的结果是甜或不甜,所以最后1列称为标签。","训练集,测试集,样本,特征","说到这,有一个问题需要弄清楚:假设总共玩了","调参","越低","越高","越高,模型的二分类性能就越强。","距离","距离。","距离准则","距离的计算","较低时所对应的","过程示意图如下(其中","近朱者赤近墨者黑","还是这个例子,现在有","这三个特征中有缺失值,我们需要处理这些缺失值。怎样处理呢?先不着急,我们可以先看看数据中有哪些信息可以挖掘。","这与女性是一等舱还是二等舱没啥关系。","这个值表示癌症检测系统的预测结果中如果有","这个定义除了非常押韵之外,还体现了机器学习的几个关键点,即:\"task\",","这个式子表达的是,当我知道","这个性质怎么理解呢?举个栗子。假如我是个想要成为英雄联盟郊区王者的死肥宅,然后要成为郊区王者可能有这么几个因素,一个是英雄池的深浅,一个是大局观,还有一个是骚操作。他们对我成为王者来说都有一定的权重。如图所示,每一个因素的箭头都有方向(也就是因素对于我成为王者的偏导的方向)和长度(偏导的值的大小)。然后在这些因素的共同作用下,我最终会朝着一个方向来训练(好比物理中分力和合力的关系),这个时候我就能以最快的速度向郊区王者更进一步。","这个时候","这个欧氏距离加和其实就是用来量化预测结果和真实结果的误差的一个函数。在机器学习中称它为损失函数(说白了就是计算误差的函数)。那有了这个函数,我们就相当于有了一个评判标准,当这个函数的值越小,就越说明我们找到的这条直线越能拟合我们的房价数据。所以说啊,线性回归就是通过这个损失函数做为评判标准来找出一条直线。","这个特征应该是一个能够很好的区分一个人是否生还的特征。而且对于生还来说,好像是女士优先。","这也说明了只有当模型的精准率和召回率都比较高时","这四个类别,并统计这四个类别的平均年龄。","这时候呢,数据集里没有其他特征可以选择了(总共就两个特征,活跃度已经是根节点了),所以就看我性别是男或女的时候那种情况最有可能出现了。此时性别为男的用户中有","这是一个","这样","这样我们能够提取出诸如:capt","这样的前缀,所以我们可以根据姓名的前缀来填充缺失的年龄。","这样的改动通常会使得随机森林具有更加强的泛化性,因为每一棵决策树的训练数据集是随机的,而且训练数据集中的特征也是随机抽取的。如果每一棵决策树模型的差异比较大,那么就很容易能够解决决策树容易过拟合的问题。","这样看上去可能会懵,不如用刚刚的数据来构建一颗决策树。","逻辑回归","逻辑回归大体思想","逻辑回归是属于机器学习里面的监督学习,它是以回归的思想来解决分类问题的一种非常经典的二分类分类器。由于其训练后的参数有较强的可解释性,在诸多领域中,逻辑回归通常用作","逻辑回归的损失函数","那么","那么为什么采样而不是直接选取概率最大的呢?因为这样很有灵性。可以想象一下,我们和别人下棋的时候,如果一直按照套路来下,那么对手很可能能够猜到我们下一步棋会怎么走,从而占据主动。如果我们时不时地不按套路出牌,但是这种不按套路的动作不会降低太多对于我们能够赢下这一局棋的几率。那么对手很可能会不知所措,主动权就掌握在我们手里。就像《天龙八部》中虚竹大破珍珑棋局时一样,可能有灵性一点,会有意想不到的效果。","那么会有一个灵魂拷问,就是怎样来鉴定我的神经网络是好还是坏呢?很显然,当然是赢的越多越好了!所以我们不妨假设,让计算机玩","那么准确对越高就能说明模型的分类性能越好吗?非也!举个例子,现在我开发了一套癌症检测系统,只要输入你的一些基本健康信息,就能预测出你现在是否患有癌症,并且分类的准确度为","那么怎样评价这","那么是什么原因导致了欠拟合和过拟合呢?","那么模型","那么满足aaa的样本对为(1,2)(1,","那么满足ccc的样本对为(1,3)(1,","那么表示两个特征之间完全正相关,若为","那么误差单位就是万元。数子可能是","那么逻辑回归中样本所属标签的概率怎样计算呢?其实和线性回归有关系,学习了线性回归的话肯定知道线性回归就是训练出一组参数","那么问题来了,回归的算法怎样解决分类问题呢?其实很简单,逻辑回归是将样本特征和样本所属类别的概率联系在一起,假设现在已经训练好了一个逻辑回归的模型为f(x)f(x)f(x),模型的输出是样本xxx的标签是111的概率,则该模型可以表示成p^=f(x)\\hat","那么验证集从何而来,很明显,我们可以从训练集中抽取一小部分的数据作为验证集,用来验证我们模型的性能。","那信息增益算出来之后有什么意义呢?回到读心术的问题,为了我能更加准确的猜出你心中所想,我肯定是问的问题越好就能猜得越准!换句话来说我肯定是要想出一个信息增益最大的问题来问你,对不对?其实id3算法也是这么想的。id3算法的思想是从训练集","那如果我想知道在我事件","那如果我要算性别和活跃度这两个特征的信息增益的话,首先要先算总的熵和条件熵。(","那如果让","那既然是找直线,那肯定是要有一个评判的标准,来评判哪条直线才是最好的。ok,道理我们都懂,那咋评判呢?其实只要算一下实际房价和我找出的直线根据房子大小预测出来的房价之间的差距就行了。说白了就是算两点的距离。当我们把所有实际房价和预测出来的房价的差距(距离)算出来然后做个加和,我们就能量化出现在我们预测的房价和实际房价之间的误差。例如下图中我画了很多条小数线,每一条小数线就是实际房价和预测房价的差距(距离)。","都是从环境中得到反馈然后从中学习。而","都等于","采用5折验证的方式进行网格搜索,分类器为随机森林","重复第","重量","链接","错误的数量","随机做动作,并得到做完动作之后的环境(observation),反馈(reward),是否结束(done)","随机初始化第一层的神经元参数,总共200个神经元","随机初始化第二层的神经元参数,总共200个神经元","随机属性选择:假设原始训练数据集有","随机有放回采样:","随机森林","随机森林是bagging的一种扩展变体,随机森林的训练过程相对与bagging的训练过程的改变有:","青绿","非常简单,只要在命令行中输入pip","预测","预测概率","预测结果","首先可以先看一下训练集中船客的年龄的最值和均值。","首先我们可以将每一把游戏看成一个游戏序列(状态1","首先,先看一下花费的最值和均值。","首先,看看不同性别的生还者数量。","验证集与交叉验证","高)的话,输出会是不流失。","高端点叫学习率,实际上就是代表我下山的时候步子迈多大。值越小就代表我步子迈得小,害怕一脚下去掉坑里。值越大就代表我胆子越大,步子迈得越大,但是有可能会越过山谷的谷底。","(假设分类阈值为","):",");情况",");请您再思考",");请您思考",",",",0.6",",16",",也不一定会向上挪。",",但是模型预测出来该样本是类别",",使得损失值最小。找到这组参数后模型就确定下来了。怎么找?很明显,用梯度下降,而且不难算出梯度为:(y^−y)x(\\hat",",使用示例如下:",",则最大距离为",",则最小距离为",",则逻辑回归在预测时可以看成",",召回率为",",右边是",",否则就分类为",",圆形代表",",它们的",",就需要将预测概率从小到大排序,排序后如下:",",提升了接近",",文艺青年的总距离为",",最小值是0",",有",",模型认为这条数据是",",模型预测样本为类别",",竖线右边的分类成",",系统预测的类别也是",",编号为",",而且虽然三等舱的船客人数是最多的,但生还率确是最低的。所以不难看出,金钱地位还是很重要的,也许一等舱周围有比较多的救生设备。",",而测试集中没多少个数字为",",而男人的存活率约为",",而验证集中没多少个数字为",",背景是",",计算公式如下:",",转换后的概率为",",那么其实我这个癌症检测系统只要一直输出您没有患癌症,准确度也可能能够达到",",那么可以尝试将属于宅男的",",那么投票的错误率为",",那么模型",",那么模型就认为这条数据是",",错误看成是",",预测结果也是",",预测结果是",",预测结果是negtiv",":",":现在有个样本的真实类别是",";如果"],"pipeline":["stopWordFilter","stemmer"]},"store":{"./":{"url":"./","title":"简介","keywords":"","body":"本资料主要介绍一些机器学习的入门知识,例如什么是机器学习,常见的机器学习算法原理,常用的模型性能评估指标,怎样快速入门sklearn等内容。\n若想更加全面,系统的学习机器学习相关知识,可以输入链接:https://www.educoder.net/paths/194 体验整套机器学习实训课程。该课程是与南京大学合作共建的实训课程,总共有 65 个实践任务,涵盖了《机器学习》中的前十章内容,并已在南京大学投入使用。\n"},"machine_learning.html":{"url":"machine_learning.html","title":"机器学习概述","keywords":"","body":"什么是机器学习\n机器学习的定义有很多种,但是最准确的定义是:\"A computer program is said to learn from experience E with respect to some class of tasks T and performance measure P, if its performance at tasks in T, as measured by P, improves with experience E.\"\n这个定义除了非常押韵之外,还体现了机器学习的几个关键点,即:\"task\", \"experience\" 和 \"performance\"。\ntask\ntask 指的是机器学习所需要完成的任务。机器学习能够完成的任务主要有:分类、回归、聚类。\n分类\n假如现在有一些苹果、西瓜和香蕉的图片作为训练集(有标签),现在想要机器学习算法能够根据新的测试图片来分辨出该图片中的是苹果、西瓜还是香蕉。像这样的任务我们称为分类任务。\n\n回归\n假如现在有一些苹果的售价数据作为训练集(有标签),现在想要机器学习算法能够根据新的测试图片来分辨出该图片中的苹果能卖多少钱。像这样的任务我们称为回归任务。\n\n聚类\n假如现在有一些水果的图片作为训练集(无标签),现在想要机器学习算法能够根据训练集中的图片将这些图片进行归类,但是并不知道这些类别是什么。像这样的任务我们称为聚类任务。\n\n细心的您可能注意到了,分类和回归问题的训练集中都是带有标签的。也就是说数据已经告诉了机器学习算法我这条数据的答案是这个,那条数据的答案是那个,就像有老师在监督学生做题目一样,一看到学生做错了就告诉他题目做错了,看到学生做对了就鼓励他。所以用来解决分类和回归问题的机器学习算法又称为监督学习。而像用来解决聚类问题的机器学习算法又称为无监督学习。\nexperience\nexperience指的根据历史数据总结归纳出规律的过程,即学习过程,或模型的训练过程。模型这个词看上去很高大上,其实我们可以把他看成是一个函数。例如:现在想用机器学习来识别图片里的是香蕉还是苹果,那么机器学习所的事情就是得到一个比较好的函数,当我们输入一张香蕉图片时,能得到识别结果为香蕉的输出,当我们输入一张苹果图片时,能得到识别结果为苹果的输出。\n\n至于这样一个函数(模型)里面长什么样子,这就与具体的机器学习算法有关了。对机器学学习算法感兴趣可以阅读常见机器学习算法章节。\nperformance\nperformance指的是模型的性能。对于不同的任务,我们有不同的衡量模型性能的标准。例如分类时可能会根据模型的准确率,精准率,召回率,AUC等指标来衡量模型的好坏,回归时会看看模型的MSE,RMSE,r2 score等指标,回归时会以FM指数,DB指数等指标来衡量聚类的效果怎么样。对各种性能指标感兴趣可以阅读模型评估指标章节。\n机器学习常用术语\n训练集,测试集,样本,特征\n假设我们收集了一份西瓜数据:\n\n\n\n色泽\n纹理\n声音\n甜不甜\n\n\n\n\n青绿\n清晰\n清脆\n不甜\n\n\n青绿\n模糊\n浑浊\n甜\n\n\n乌黑\n清晰\n清脆\n不甜\n\n\n乌黑\n模糊\n浑浊\n甜\n\n\n\n并假设现在已经使用机器学习算法根据这份数据的特点训练出了一个很厉害的模型,成为了一个挑瓜好手,只需告诉它这个西瓜的色泽,纹理和声音就能告诉你这个西瓜甜不甜。\n我们通常将这种喂给机器学习算法来训练模型的数据称为训练集,用来让机器学习算法预测的数据称为测试集。\n训练集中的所有行称为样本。由于我们的挑瓜好手需要的西瓜信息是色泽、纹理和声音,所以此训练集中每个样本的前3列称为特征。挑瓜好手给出的结果是甜或不甜,所以最后1列称为标签。\n因此,这份数据是一个有4个样本,3个特征的训练集,训练集的标签是“甜不甜”。\n欠拟合与过拟合\n最好的情况下,我们的模型应该不管在训练集上还是测试集上,它的性能都不错。但是有的时候,我们的模型在训练集上的性能比较差,那么这种情况我们称为欠拟合。那如果我们的模型在训练集上的性能好到爆炸,但在测试集上的性能却不尽人意,那么这种情况我们称为过拟合。\n其实欠拟合与过拟合的区别和我们生活中学生考试的例子很像。如果一个学生在平时的练习中题目的正确率都不高,那么说明这个学生可能基础不牢或者心思没花在学习上,所以这位学生可能欠缺基础知识或者智商可能不太高或者其他种种原因,像这种情况可以看成是欠拟合。那如果这位学生平时练习的正确率非常高,但是他不怎么灵光,喜欢死记硬背,只会做已经做过的题,一碰到没见过的新题就不知所措了。像这种情况可以看成时是过拟合。\n那么是什么原因导致了欠拟合和过拟合呢?\n当我们的模型过于简单,很可能会导致欠拟合。如果模型过于复杂,就很可能会导致过拟合。\n\n验证集与交叉验证\n在真实业务中,我们可能没有真正意义上的测试集,或者说不知道测试集中的数据长什么样子。那么我们怎样在没有测试集的情况下来验证我们的模型好还是不好呢?这个时候就需要验证集了。\n那么验证集从何而来,很明显,我们可以从训练集中抽取一小部分的数据作为验证集,用来验证我们模型的性能。\n但如果仅仅是从训练集中抽取一小部分作为验证集的话,有可能会让我们对模型的性能有一种偏见或者误解。\n比如我们现在要对手写数字进行识别,那么我就可能会训练一个分类模型。但可能模型对于数字 1 的识别准确率比较低 ,而验证集中没多少个数字为 1 的样本,然后用验证集测试完后得到的准确率为 0.96 。然后您可能觉得哎呀,我的模型很厉害了,但其实并不然,因为这样的验证集让您的模型的性能有了误解。那有没有更加公正的验证算法性能的方法呢?有,那就是k-折交叉验证!\n在K-折交叉验证中,我们把原始训练数据集分割成 K 个不重合的⼦数据集,然后我们做 K 次模型训练和验证。每⼀次,我们使⽤⼀个⼦数据集验证模型,并使⽤其它 K−1 个⼦数据集来训练模型。在这 K 次训练和验证中,每次⽤来验证模型的⼦数据集都不同。最后,我们对这 K 次在验证集上的性能求平均。\nK 的值由我们自己来指定,如以下为 5 折交叉验证。\n\n"},"algorithm.html":{"url":"algorithm.html","title":"常见机器学习算法","keywords":"","body":"本章主要介绍一些常见的机器学习算法(模型)的原理,理解模型的原理对于以后使用一些机器学习库实现业务功能时是有好处的。\n"},"kNN.html":{"url":"kNN.html","title":"近朱者赤近墨者黑-kNN","keywords":"","body":"近朱者赤近墨者黑-kNN\nkNN算法其实是众多机器学习算法中最简单的一种,因为该算法的思想完全可以用 8 个字来概括:“近朱者赤,近墨者黑”。\nkNN算法解决分类问题\n假设现在有这样的一个样本空间(由样本组成的一个空间),该样本空间里有宅男和文艺青年这两个类别,其中红圈表示宅男,绿圈表示文艺青年。如下图所示:\n\n其实构建出这样的样本空间的过程就是kNN算法的训练过程。可想而知kNN算法是没有训练过程的,所以kNN算法属于懒惰学习算法。\n假设我在这个样本空间中用黄圈表示,如下图所示:\n\n现在使用kNN算法来鉴别一下我是宅男还是文艺青年。首先需要计算我与样本空间中所有样本的距离。假设计算得到的距离表格如下:\n\n\n\n样本编号\n1\n2\n...\n13\n14\n\n\n\n\n标签\n宅男\n宅男\n...\n文艺青年\n文艺青年\n\n\n距离\n11.2\n9.5\n...\n23.3\n37.6\n\n\n\n然后找出与我距离最小的 k 个样本( k 是一个超参数,需要自己设置,一般默认为 5 ),假设与我离得最近的 5 个样本的标签和距离如下:\n\n\n\n样本编号\n4\n5\n6\n7\n8\n\n\n\n\n标签\n宅男\n宅男\n宅男\n宅男\n文艺青年\n\n\n距离\n11.2\n9.5\n7.7\n5.8\n15.2\n\n\n\n最后只需要对这 5 个样本的标签进行统计,并将票数最多的标签作为预测结果即可。如上表中,宅男是 4 票,文艺青年是 1 票,所以我是宅男。\n注意:有的时候可能会有票数一致的情况,比如 k = 4 时与我离得最近的样本如下:\n\n\n\n样本编号\n4\n9\n11\n13\n\n\n\n\n标签\n宅男\n宅男\n文艺青年\n文艺青年\n\n\n距离\n4.2\n9.5\n7.7\n5.8\n\n\n\n可以看出宅男和文艺青年的比分是 2 : 2 ,那么可以尝试将属于宅男的 2 个样本与我的总距离和属于文艺青年的 2 个样本与我的总距离进行比较。然后选择总距离最小的标签作为预测结果。在这个例子中预测结果为文艺青年(宅男的总距离为 4.2 + 9.5 ,文艺青年的总距离为 7.7 + 5.8 )。\nkNN算法解决回归问题\n很明显,刚刚我们使用kNN算法解决了一个分类问题,那kNN算法能解决回归问题吗?当然可以!\n在使用kNN算法解决回归问题时的思路和解决分类问题的思路基本一致,只不过预测标签值是多少的的时候是将距离最近的 k 个样本的标签值加起来再算个平均,而不是投票。例如离待预测样本最近的 5 个样本的标签如下:\n\n\n\n样本编号\n4\n9\n11\n13\n15\n\n\n\n\n标签\n1.2\n1.5\n0.8\n1.33\n1.19\n\n\n\n所以待预测样本的标签为:(1.2+1.5+0.8+1.33+1.19)/5=1.204\n"},"linear_regression.html":{"url":"linear_regression.html","title":"最简单的回归算法-线性回归","keywords":"","body":"最简单的回归算法-线性回归\n什么是线性回归\n线性回归是什么意思?我们可以拆字释义。回归肯定不用我多说了,那什么是线性呢?我们可以回忆一下初中时学过的直线方程:y=k∗x+by=k*x+by=k∗x+b\n这个式子表达的是,当我知道 k(参数)和 b(参数)的情况下,我随便给一个 x 我都能通过这个方程算出 y 来。而且呢,这个式子是线性的,为什么呢?因为从直觉上来说,你都知道,这个式子的函数图像是条直线。\n从理论上来说,这式子满足线性系统的性质(至于线性系统是什么,可以查阅相关资料,这里就不多做赘述了,不然没完没了)。您可能会觉得疑惑,这一节要说的是线性回归,我说个这么 low 直线方程干啥?其实,说白了,线性回归就是在 N 维空间中找一个形式像直线方程一样的函数来拟合数据而已。比如说,我现在有这么一张图,横坐标代表房子的面积,纵坐标代表房价。\n\n然后呢,线性回归就是要找一条直线,并且让这条直线尽可能地拟合图中的数据点。 \n那如果让 1000 位朋友来找这条直线就可能找出 1000 种直线来,比如这样\n\n这样\n\n或者这样\n\n喏,其实找直线的过程就是在做线性回归,只不过这个叫法更有高大上而已。\n损失函数\n那既然是找直线,那肯定是要有一个评判的标准,来评判哪条直线才是最好的。OK,道理我们都懂,那咋评判呢?其实只要算一下实际房价和我找出的直线根据房子大小预测出来的房价之间的差距就行了。说白了就是算两点的距离。当我们把所有实际房价和预测出来的房价的差距(距离)算出来然后做个加和,我们就能量化出现在我们预测的房价和实际房价之间的误差。例如下图中我画了很多条小数线,每一条小数线就是实际房价和预测房价的差距(距离)。\n\n然后把每条小竖线的长度加起来就等于我们现在通过这条直线预测出的房价与实际房价之间的差距。那每条小竖线的长度的加和怎么算?其实就是欧式距离加和,公式为:∑i=1m(y(i)−y(i)^)2\\sum_{i=1}^m(y^{(i)}-y\\hat{^{(i)}})^2∑​i=1​m​​(y​(i)​​−y​​(i)​​​^​​)​2​​(其中y(i)y(i)y(i)表示的是实际房价,y(^i)y \\hat (i)y​(​^​​i)表示的是预测房价)。\n这个欧氏距离加和其实就是用来量化预测结果和真实结果的误差的一个函数。在机器学习中称它为损失函数(说白了就是计算误差的函数)。那有了这个函数,我们就相当于有了一个评判标准,当这个函数的值越小,就越说明我们找到的这条直线越能拟合我们的房价数据。所以说啊,线性回归就是通过这个损失函数做为评判标准来找出一条直线。\n如果假设h(θ)(x)h_{(\\theta)}(x)h​(θ)​​(x)表示当权重为θ\\thetaθ,输入为xxx时计算出来的y(^i)y \\hat (i)y​(​^​​i),那么线性回归的损失函数J(θ)J(\\theta)J(θ)就是:\nJ(θ)=12∑i=1m(hθ(xi)−yi)2\r\nJ(\\theta)=\\frac{1}{2}\\sum^m_{i=1}(h_\\theta(x^i)-y^i)^2\r\nJ(θ)=​2​​1​​∑​i=1​m​​(h​θ​​(x​i​​)−y​i​​)​2​​\n怎样计算出线性回归的解?\n现在您应该已经弄明白了一个事实,那就是我只要找到一组参数(也就是线性方程每一项上的系数)能让我的损失函数的值最小,那我这一组参数就能最好的拟合我现在的训练数据。OK,那怎么来找到这一组参数呢?其实有两种套路,一种就是用大名鼎鼎的梯度下降,其大概思想就是根据每个参数对损失函数的偏导来更新参数。另一种是线性回归的正规方程解,这名字听起来高大上,其实本质就是根据一个固定的式子计算出参数。由于正规方程解在数据量比较大的时候时间复杂度比较高,所以在这一部分中,主要聊聊怎样使用梯度下降的方法来更新参数。\n什么是梯度下降\n其实梯度下降不是一个机器学习算法,而是一种基于搜索的最优化方法。因为很多算法都没有正规解的,所以需要通过一次一次的迭代来找到找到一组参数能让我们的损失函数最小。损失函数的大概套路可以参看这个图:\n\n所以说,梯度下降的作用是不断的寻找靠谱的权重是多少。\n现在我们已经知道了梯度下降就是用来找权重的,那怎么找权重呢?瞎猜?不可能的。。这辈子都不可能猜的。想想都知道,权重的取值范围可以看成是个实数空间,那 100 个特征就对应着 100 个权重,10000 个特征就对应着 10000 个权重。如果靠瞎猜权重的话。应该这辈子都猜不中了。所以找权重的找个套路来找,这个套路就是梯度。梯度其实就是让函数值为 0 时其中各个变量的偏导所组成的向量,而且梯度方向是使得函数值增长最快的方向。\n这个性质怎么理解呢?举个栗子。假如我是个想要成为英雄联盟郊区王者的死肥宅,然后要成为郊区王者可能有这么几个因素,一个是英雄池的深浅,一个是大局观,还有一个是骚操作。他们对我成为王者来说都有一定的权重。如图所示,每一个因素的箭头都有方向(也就是因素对于我成为王者的偏导的方向)和长度(偏导的值的大小)。然后在这些因素的共同作用下,我最终会朝着一个方向来训练(好比物理中分力和合力的关系),这个时候我就能以最快的速度向郊区王者更进一步。\n\n也就是说我如果一直朝着最终的那个方向努力的话,理论上来说我就能以最快的速度成为郊区王者。\nOK。现在我们知道了梯度的方向是函数增长最快的方向,那我在梯度前面取个负号(反方向),那不就是函数下降最快的方向了么。所以,梯度下降它的本质就是更新权重的时候是沿着梯度的反方向更新。好比下面这个图,假如我是个瞎子,然后莫名其妙的来到了一个山谷里。现在我要做的事情就是走到山谷的谷底。因为我是瞎子,所以我只能一点一点的挪。要挪的话,那我肯定是那我的脚在我四周扫一遍,觉得哪里感觉起来更像是在下山那我就往哪里走。然后这样循环反复一发我最终就能走到山谷的谷底。\n\n所以,梯度下降的伪代码如下:\n\n循环干的事情就相当于我下山的时候在迈步子,代码里的 α\\alphaα 高端点叫学习率,实际上就是代表我下山的时候步子迈多大。值越小就代表我步子迈得小,害怕一脚下去掉坑里。值越大就代表我胆子越大,步子迈得越大,但是有可能会越过山谷的谷底。\n使用梯度下降求解线性回归的解\n我们知道线性回归的损失函数 JJJ 为:J(θ)=12∑i=1m(hθ(xi)−yi)2J(\\theta)=\\frac{1}{2}\\sum^m_{i=1}(h_\\theta(x^i)-y^i)^2J(θ)=​2​​1​​∑​i=1​m​​(h​θ​​(x​i​​)−y​i​​)​2​​,其中θ\\thetaθ为线性回归的解。使用梯度下降来求解,最关键的一步是算梯度(也就是算偏导),通过计算可知第$j$个权重的偏导为:\n∂J(θj)θJ=(hθ(x)−y)xj\r\n\\frac{\\partial J(\\theta_j)}{\\theta_J} = (h_\\theta(x)-y)x_j\r\n​θ​J​​​​∂J(θ​j​​)​​=(h​θ​​(x)−y)x​j​​。\n所以很自然的可以想到,使用梯度下降求解线性回归的解的流程如下:\n循环若干次\n 计算当前参数theta对损失函数的梯度 gradient\n theta = theta - alpha * gradient\n\n当θ\\thetaθ更新好了之后,就相当于得到了一个线性回归模型。也就是说只要将数据放到模型中进行计算就能得到预测输出了。\n"},"logistic_regression.html":{"url":"logistic_regression.html","title":"使用回归的思想进行分类-逻辑回归","keywords":"","body":"使用回归的思想进行分类-逻辑回归\n逻辑回归是属于机器学习里面的监督学习,它是以回归的思想来解决分类问题的一种非常经典的二分类分类器。由于其训练后的参数有较强的可解释性,在诸多领域中,逻辑回归通常用作 baseline模型,以方便后期更好的挖掘业务相关信息或提升模型性能。\n逻辑回归大体思想\n什么是逻辑回归\n当一看到“回归”这两个字,可能会认为逻辑回归是一种解决回归问题的算法,然而逻辑回归是通过回归的思想来解决二分类问题的算法。\n那么问题来了,回归的算法怎样解决分类问题呢?其实很简单,逻辑回归是将样本特征和样本所属类别的概率联系在一起,假设现在已经训练好了一个逻辑回归的模型为f(x)f(x)f(x),模型的输出是样本xxx的标签是111的概率,则该模型可以表示成p^=f(x)\\hat p=f(x)​p​^​​=f(x)。若得到了样本xxx属于标签111的概率后,很自然的就能想到当p^>0.5\\hat p>0.5​p​^​​>0.5时xxx属于标签111,否则属于标签 000 。所以就有y^={0p^0.51p^>0.5\\hat y=\\begin{cases}\r\n0 & \\hat p 0.5\r\n\\end{cases}​y​^​​={​0​1​​​​p​^​​0.5​​p​^​​>0.5​​(其中y^\\hat y​y​^​​为样本 xxx 根据模型预测出的标签结果,标签 000 和标签 111 所代表的含义是根据业务决定的,比如在癌细胞识别中可以使 000 代表良性肿瘤,111 代表恶性肿瘤)。\n由于概率是 000 到 111 的实数,所以逻辑回归若只需要计算出样本所属标签的概率就是一种回归算法,若需要计算出样本所属标签,则就是一种二分类算法。\n那么逻辑回归中样本所属标签的概率怎样计算呢?其实和线性回归有关系,学习了线性回归的话肯定知道线性回归就是训练出一组参数 WWW 和 bbb 来拟合样本数据,线性回归的输出为y^=Wx+b\\hat y=Wx+b​y​^​​=Wx+b 。不过y^\\hat y​y​^​​的值域是(−∞,+∞)(-\\infty,+\\infty)(−∞,+∞),如果能够将值域为(−∞,+∞)(-\\infty,+\\infty)(−∞,+∞) 的实数转换成 (0,1)(0,1)(0,1) 的概率值的话问题就解决了。要解决这个问题很自然地就能想到将线性回归的输出作为输入,输入到另一个函数中,这个函数能够进行转换工作,假设函数为 σ\\sigmaσ ,转换后的概率为 p^\\hat p​p​^​​ ,则逻辑回归在预测时可以看成 p^=σ(Wx+b)\\hat p=\\sigma (Wx+b)​p​^​​=σ(Wx+b)。 σ\\sigmaσ 其实就是接下来要介绍的sigmoidsigmoidsigmoid函数。\nsigmoid函数\nsigmoidsigmoidsigmoid 函数的公式为:σ(t)=1/1+e−t\\sigma(t)=1/1+e^{-t}σ(t)=1/1+e​−t​​。函数图像如下图所示:\n\n从sigmoidsigmoidsigmoid函数的图像可以看出当ttt趋近于−∞-\\infty−∞时函数值趋近于000,当ttt趋近于+∞+\\infty+∞时函数值趋近于111。可见sigmoidsigmoidsigmoid函数的值域是(0,1)(0,1)(0,1),满足我们要将(−∞,+∞)(-\\infty,+\\infty)(−∞,+∞)的实数转换成(0,1)(0,1)(0,1)的概率值的需求。因此逻辑回归在预测时可以看成p^=1/(1+e−Wx+b)\\hat p=1/(1+e^{-Wx+b})​p​^​​=1/(1+e​−Wx+b​​),如果p^>0.5\\hat p>0.5​p​^​​>0.5时预测为一种类别,否则预测为另一种类别。\n逻辑回归的损失函数\n在预测样本属于哪个类别时取决于算出来的p^\\hat p​p​^​​。从另外一个角度来说,假设现在有一个样本的真实类别为 111 ,模型预测样本为类别 111 的概率为 0.90.90.9 的话,就意味着这个模型认为当前样本的类别有 90%90\\%90% 的可能性为 111 ,有 10%10\\%10% 的可能性为 000 。所以从这个角度来看,逻辑回归的损失函数与 p^\\hat p​p​^​​ 有关。\n当然逻辑回归的损失函数不仅仅与 p^\\hat p​p​^​​ 有关,它还与真实类别有关。假设现在有两种情况,情况 A :现在有个样本的真实类别是 000 ,但是模型预测出来该样本是类别 111 的概率是 0.70.70.7(也就是说类别 000 的概率为 0.30.30.3 );情况 B :现在有个样本的真实类别是 000 ,但是模型预测出来该样本是类别 111 的概率是 0.60.60.6(也就是说类别 000 的概率为 0.40.40.4 );请您思考 222 秒钟,AB 两种情况哪种情况的误差更大?很显然,情况 A 的误差更大!因为情况 A 中模型认为样本是类别 000 的可能性只有 30%30\\%30%,而 情况 B 有 40%40\\%40%。\n假设现在又有两种情况,情况A: 现在有个样本的真实类别是 000 ,但是模型预测出来该样本是类别 111 的概率是 0.70.70.7(也就是说类别 000 的概率为 0.30.30.3);情况B:现在有个样本的真实类别是 111,但是模型预测出来该样本是类别 111 的概率是 0.30.30.3(也就是说类别 000 的概率为 0.70.70.7 );请您再思考 222 秒钟,AB两种情况哪种情况的误差更大?很显然,一样大!\n所以逻辑回归的损失函数如下,其中 costcostcost 表示损失函数的值,$y$ 表示样本的真实类别:\ncost=−ylog(p^)−(1−y)log(1−p^)\r\ncost=-ylog(\\hat p)-(1-y)log(1-\\hat p)\r\ncost=−ylog(​p​^​​)−(1−y)log(1−​p​^​​)\n知道了逻辑回归的损失函数之后,逻辑回归的训练流程就很明显了,就是寻找一组合适的 WWW 和 bbb ,使得损失值最小。找到这组参数后模型就确定下来了。怎么找?很明显,用梯度下降,而且不难算出梯度为:(y^−y)x(\\hat y - y)x(​y​^​​−y)x。\n所以逻辑回归梯度下降的代码如下:\n#loss\ndef J(theta, X_b, y):\n y_hat = self._sigmoid(X_b.dot(theta))\n try:\n return -np.sum(y*np.log(y_hat)+(1-y)*np.log(1-y_hat)) / len(y)\n except:\n return float('inf')\n\n# 算theta对loss的偏导\ndef dJ(theta, X_b, y):\n return X_b.T.dot(self._sigmoid(X_b.dot(theta)) - y) / len(y)\n\n# 批量梯度下降\ndef gradient_descent(X_b, y, initial_theta, leraning_rate, n_iters=1e4, epsilon=1e-8):\n theta = initial_theta\n cur_iter = 0\n while cur_iter \n"},"decision_tree.html":{"url":"decision_tree.html","title":"最接近人类思维的算法-决策树","keywords":"","body":"最接近人类思维的分类算法-决策树\n什么是决策树\n决策树说白了就是一棵能够替我们做决策的树,或者说是我们人的脑回路的一种表现形式。比如我看到一个人,然后我会思考这个男人有没有买车。那我的脑回路可能是这样的:\n\n其实这样一种脑回路的形式就是我们所说的决策树。所以从图中能看出决策树是一个类似于人们决策过程的树结构,从根节点开始,每个分枝代表一个新的决策事件,会生成两个或多个分枝,每个叶子代表一个最终判定所属的类别。很明显,如果我现在已经构造好了一颗决策树的话,现在我得到一条数据(男, 29),我就会认为这个人没有买过车。所以呢,关键问题就是怎样来构造决策树了。\n构造决策树时会遵循一个指标,有的是按照信息增益来构建,这种叫ID3算法,有的是信息增益比来构建,这种叫C4.5算法,有的是按照基尼系数来构建的,这种叫CART算法。在这里主要介绍一下ID3算法。\nID3算法\n整个ID3算法其实主要就是围绕着信息增益来的,所以要弄清楚ID3算法的流程,首先要弄清楚什么是信息增益,但要弄清楚信息增益之前有个概念必须要懂,就是熵。所以先看看什么是熵。\n熵、条件熵、信息增益\n在信息论和概率统计中呢,为了表示某个随机变量的不确定性,就借用了热力学的一个概念叫熵。如果假设 XXX 是一个有限个取值的离散型随机变量的话,很显然它的概率分布或者分布律就是这样的:P(X=xi)=pi,i=1,2,...,nP(X=x_i)=p_i, i=1,2,...,nP(X=x​i​​)=p​i​​,i=1,2,...,n。\n有了概率分布后,则这个随机变量 XXX 的熵的计算公式就是(PSPSPS:这里的 logloglog 是以 222 为底):H(X)=−∑i=1npilogpiH(X)=-\\sum_{i=1}^np_ilogp_iH(X)=−∑​i=1​n​​p​i​​logp​i​​\n从这个公式也可以看出,如果我概率是 000 或者是 111 的时候,我的熵就是 000 。(因为这种情况下我随机变量的不确定性是最低的),那如果我的概率是 0.50.50.5 也就是五五开的时候,我的熵是最大也就是 111 。(就像扔硬币,你永远都猜不透你下次扔到的是正面还是反面,所以它的不确定性非常高)。所以呢,熵越大,不确定性就越高。\n在我们实际情况下,我们要研究的随机变量基本上都是多随机变量的情况,所以假设有随便量(X,Y),那么它的联合概率分布是这样的:\nP(X=xi,Y=yj)=pij,i=1,2,...,n;j=1,2,...,m\r\nP(X=x_i, Y=y_j)=p_{ij}, i=1,2,...,n; j=1,2,...,m\r\nP(X=x​i​​,Y=y​j​​)=p​ij​​,i=1,2,...,n;j=1,2,...,m\n那如果我想知道在我事件 XXX 发生的前提下,事件 YYY 发生的熵是多少的话,这种熵我们叫它条件熵。条件熵 H(Y∣X)H(Y|X)H(Y∣X) 表示随机变量 XXX 的条件下随机变量 YYY 的不确定性。条件熵的计算公式是这样的:H(Y∣X)=∑i=1npiH(Y∣X=xi)H(Y|X)=\\sum^n_{i=1}p_iH(Y|X=x_i)H(Y∣X)=∑​i=1​n​​p​i​​H(Y∣X=x​i​​)。\n当然条件熵的一个性质也熵的性质一样,我概率越确定,条件熵就越小,概率越五五开,条件熵就越大。\nOK,现在已经知道了什么是熵,什么是条件熵。接下来就可以看看什么是信息增益了。所谓的信息增益就是表示我已知条件 XXX 后能得到信息 YYY 的不确定性的减少程度。就好比,我在玩读心术。您心里想一件东西,我来猜。我已开始什么都没问你,我要猜的话,肯定是瞎猜。这个时候我的熵就非常高对不对。然后我接下来我会去试着问你是非题,当我问了是非题之后,我就能减小猜测你心中想到的东西的范围,这样其实就是减小了我的熵。那么我熵的减小程度就是我的信息增益。\n所以信息增益如果套上机器学习的话就是,如果把特征 AAA 对训练集 DDD 的信息增益记为 g(D,A)g(D, A)g(D,A) 的话,那么 g(D,A)g(D, A)g(D,A) 的计算公式就是:g(D,A)=H(D)−H(D∣A)g(D,A)=H(D)-H(D|A)g(D,A)=H(D)−H(D∣A)。\n如果看到这一堆公式可能会懵逼,那不如举个栗子来看看信息增益怎么算。假设我现在有这一个数据表,第一列是性别,第二列是活跃度, 第三列是客户是否流失的 labellabellabel。\n\n那如果我要算性别和活跃度这两个特征的信息增益的话,首先要先算总的熵和条件熵。( 5/155/155/15 的意思是总共有 151515 条样本里面 labellabellabel 为 111 的样本有 555 条,3/83/83/8 的意思是性别为男的样本有 888 条,然后这 888 条里有 333 条是 labellabellabel 为 111,其他的数值以此类推)\n总熵= (-5/15)log(5/15)-(10/15)log(10/15)=0.9182\n性别为男的熵= -(3/8)log(3/8)-(5/8)log(5/8)=0.9543\n性别为女的熵= -(2/7)log(2/7)-(5/7)log(5/7)=0.8631\n活跃度为低的熵= -(4/4)*log(4/4)-0=0\n活跃度为中的熵= -(1/5)log(1/5)-(4/5)log(4/5)=0.7219\n活跃度为高的熵= -0-(6/6)*log(6/6)=0\n现在有了总的熵和条件熵之后我们就能算出性别和活跃度这两个特征的信息增益了。\n性别的信息增益=总的熵-(8/15)性别为男的熵-(7/15)性别为女的熵=0.0064\n活跃度的信息增益=总的熵-(6/15)活跃度为高的熵-(5/15)活跃度为中的熵-(4/15)*活跃度为低的熵=0.6776\n那信息增益算出来之后有什么意义呢?回到读心术的问题,为了我能更加准确的猜出你心中所想,我肯定是问的问题越好就能猜得越准!换句话来说我肯定是要想出一个信息增益最大的问题来问你,对不对?其实ID3算法也是这么想的。ID3算法的思想是从训练集 DDD 中计算每个特征的信息增益,然后看哪个最大就选哪个作为当前节点。然后继续重复刚刚的步骤来构建决策树。\n决策树构流程\nID3算法其实就是依据特征的信息增益来构建树的。具体套路就是从根节点开始,对节点计算所有可能的特征的信息增益,然后选择信息增益最大的特征作为节点的特征,由该特征的不同取值建立子节点,然后对子节点递归执行上面的套路直到信息增益很小或者没有特征可以继续选择为止。\n这样看上去可能会懵,不如用刚刚的数据来构建一颗决策树。\n一开始我们已经算过信息增益最大的是活跃度,所以决策树的根节点是活跃度 。所以这个时候树是这样的:\n\n然后发现训练集中的数据表示当我活跃度低的时候一定会流失,活跃度高的时候一定不流失,所以可以先在根节点上接上两个叶子节点。\n\n但是活跃度为中的时候就不一定流失了,所以这个时候就可以把活跃度为低和为高的数据屏蔽掉,屏蔽掉之后 555 条数据,接着把这 555 条数据当成训练集来继续算哪个特征的信息增益最高,很明显算完之后是性别这个特征,所以这时候树变成了这样:\n\n这时候呢,数据集里没有其他特征可以选择了(总共就两个特征,活跃度已经是根节点了),所以就看我性别是男或女的时候那种情况最有可能出现了。此时性别为男的用户中有 111 个是流失,111 个是不流失,五五开。所以可以考虑随机选个结果当输出了。性别为女的用户中有全部都流失,所以性别为女时输出是流失。所以呢,树就成了这样:\n\n好了,决策树构造好了。从图可以看出决策树有一个非常好的地方就是模型的解释性非常强!!很明显,如果现在来了一条数据(男, 高)的话,输出会是不流失。\n"},"random_forest.html":{"url":"random_forest.html","title":"群众的力量是伟大的-随机森林","keywords":"","body":"群众的力量是伟大的-随机森林\n既然有决策树,那有没有用多棵决策树组成森林的算法呢?有!那就是随机森林。随机森林是一种叫Bagging的算法框架的变体。所以想要理解随机森林首先要理解Bagging。\nBagging\n什么是Bagging\nBagging 是 Bootstrap Aggregating 的英文缩写,刚接触的您不要误认为 Bagging 是一种算法,Bagging 是集成学习中的学习框架, Bagging 是并行式集成学习方法。大名鼎鼎的随机森林算法就是在 $Bagging$ 的基础上修改的算法。\n Bagging 方法的核心思想就是三个臭皮匠顶个诸葛亮。如果使用 Bagging 解决分类问题,就是将多个分类器的结果整合起来进行投票,选取票数最高的结果作为最终结果。如果使用 Bagging 解决回归问题,就将多个回归器的结果加起来然后求平均,将平均值作为最终结果。\n那么 Bagging 方法如此有效呢,举个例子。狼人杀我相信您应该玩过,在天黑之前,村民们都要根据当天所发生的事和别人的发现来投票决定谁可能是狼人。\n如果我们将每个村民看成是一个分类器,那么每个村民的任务就是二分类,假设 hi(x)h_i(x)h​i​​(x) 表示第 iii 个村民认为 xxx 是不是狼人( −1-1−1 代表不是狼人, 111 代表是狼人),f(x)f(x)f(x) 表示 xxx 真正的身份(是不是狼人),ϵ\\epsilonϵ 表示为村民判断错误的错误率。则有 P(hi(x)≠f(x))=ϵP(h_i(x)\\neq f(x))=\\epsilonP(h​i​​(x)≠f(x))=ϵ。\n根据狼人杀的规则,村民们需要投票决定天黑前谁是狼人,也就是说如果有超过半数的村民投票时猜对了,那么这一轮就猜对了。那么假设现在有 TTT 个村民,H(x)H(x)H(x) 表示投票后最终的结果,则有 H(x)=sign(∑i=1Thi(x))H(x)=sign(\\sum_{i=1}^Th_i(x))H(x)=sign(∑​i=1​T​​h​i​​(x))。\n现在假设每个村民都是有主见的人,对于谁是狼人都有自己的想法,那么他们的错误率也是相互独立的。那么根据Hoeffding不等式可知,H(x)H(x)H(x) 的错误率为:\nP(H(x)≠f(x))=∑k=0T/2CTk(1−ϵ)kϵT−k≤exp(−12T(1−2ϵ)2)\r\nP(H(x)\\neq f(x))=\\sum_{k=0}^{T/2}C_T^k(1-\\epsilon)^k\\epsilon ^{T-k} \\leq exp(-\\frac{1}{2}T(1-2\\epsilon)^2)\r\nP(H(x)≠f(x))=∑​k=0​T/2​​C​T​k​​(1−ϵ)​k​​ϵ​T−k​​≤exp(−​2​​1​​T(1−2ϵ)​2​​)\n根据上式可知,如果 555 个村民,每个村民的错误率为 0.330.330.33 ,那么投票的错误率为 0.7490.7490.749 ;如果 202020 个村民,每个村民的错误率为 0.330.330.33 ,那么投票的错误率为 0.3150.3150.315 ;如果 505050 个村民,每个村民的错误率为 0.330.330.33 ,那么投票的错误率为 0.0560.0560.056 ;如果 100100100 个村民,每个村民的错误率为 0.330.330.33 ,那么投票的错误率为 0.0030.0030.003 。从结果可以看出,村民的数量越大,那么投票后犯错的错误率就越小。这也是Bagging性能强的原因之一。\nBagging方法如何训练\nBagging 在训练时的特点就是随机有放回采样和并行。\n随机有放回采样: 假设训练数据集有 mmm 条样本数据,每次从这 mmm 条数据中随机取一条数据放入采样集,然后将其返回,让下一次采样有机会仍然能被采样。然后重复 mmm 次,就能得到拥有 mmm 条数据的采样集,该采样集作为 Bagging 的众多分类器中的一个作为训练数据集。假设有 TTT 个分类器(随便什么分类器),那么就重复 TTT 此随机有放回采样,构建出 TTT 个采样集分别作为 TTT 个分类器的训练数据集。\n并行: 假设有 101010 个分类器,在Boosting中,111 号分类器训练完成之后才能开始222 号分类器的训练,而在Bagging中,分类器可以同时进行训练,当所有分类器训练完成之后,整个Bagging的训练过程就结束了。\nBagging训练过程如下图所示:\n\nBagging方法如何预测\nBagging在预测时非常简单,就是投票!比如现在有 555 个分类器,有 333 个分类器认为当前样本属于 AAA 类,111 个分类器认为属于 BBB 类,111 个分类器认为属于 CCC 类,那么Bagging的结果会是 AAA 类(因为 AAA 类的票数最高)。\nBagging预测过程如下图所示:\n\n随机森林\n随机森林是Bagging的一种扩展变体,随机森林的训练过程相对与Bagging的训练过程的改变有:\n\n基学习器:Bagging的基学习器可以是任意学习器,而随机森林则是以决策树作为基学习器。\n随机属性选择:假设原始训练数据集有 101010 个特征,从这 101010 个特征中随机选取 kkk 个特征构成训练数据子集,然后将这个子集作为训练集扔给决策树去训练。其中 kkk 的取值一般为 log2log2log2 (特征数量)。\n\n这样的改动通常会使得随机森林具有更加强的泛化性,因为每一棵决策树的训练数据集是随机的,而且训练数据集中的特征也是随机抽取的。如果每一棵决策树模型的差异比较大,那么就很容易能够解决决策树容易过拟合的问题。\n"},"kMeans.html":{"url":"kMeans.html","title":"物以类聚人以群分-kMeans","keywords":"","body":"物以类聚人以群分-k Means\nk Means是属于机器学习里面的非监督学习,通常是大家接触到的第一个聚类算法,其原理非常简单,是一种典型的基于距离的聚类算法。距离指的是每个样本到质心的距离。那么,这里所说的质心是什么呢?\n其实,质心指的是样本每个特征的均值所构成的一个坐标。举个例子:假如有两个数据 (1,1)(1,1)(1,1) 和(2,2)(2,2)(2,2) 则这两个样本的质心为 (1.5,1.5)(1.5,1.5)(1.5,1.5)。\n同样的,如果一份数据有 mmm 个样本,每个样本有 nnn 个特征,用 xijx_i^jx​i​j​​ 来表示第 jjj 个样本的第 iii 个特征,则它们的质心为:Cmass=(∑j=1mx1jm,∑j=1mx2jm,...,∑j=1mxnjm)Cmass=(\\frac{\\sum_{j=1}^mx_1^j}{m},\\frac{\\sum_{j=1}^mx_2^j}{m},...,\\frac{\\sum_{j=1}^mx_n^j}{m})Cmass=(​m​​∑​j=1​m​​x​1​j​​​​,​m​​∑​j=1​m​​x​2​j​​​​,...,​m​​∑​j=1​m​​x​n​j​​​​)。\n知道什么是质心后,就可以看看k Means算法的流程了。\nk Means算法流程\n使用k Means来聚类时需要首先定义参数k,k的意思是我想将数据聚成几个类别。假设k=3,就是将数据划分成3个类别。接下来就可以开始k Means算法的流程了,流程如下:\n1.随机初始k个样本,作为类别中心。\n2.对每个样本将其标记为距离类别中心最近的类别。\n3.将每个类别的质心更新为新的类别中心。\n4.重复步骤2、3,直到类别中心的变化小于阈值。\n过程示意图如下(其中 X 表示类别的中心,数据点的颜色代表不同的类别):\n\n"},"AGNES.html":{"url":"AGNES.html","title":"以距离为尺-AGNES","keywords":"","body":"以距离为尺-AGNES算法\nAGNES 算法是一种聚类算法,最初将每个对象作为一个簇,然后这些簇根据某些距离准则被一步步地合并。两个簇间的相似度有多种不同的计算方法。聚类的合并过程反复进行直到所有的对象最终满足簇数目。所以理解 AGNES 算法前需要先理解一些距离准则。\n距离准则\n为什么需要距离\nAGNES 算法是一种自底向上聚合的层次聚类算法,它先会将数据集中的每个样本看作一个初始簇,然后在算法运行的每一步中找出距离最近的两个簇进行合并,直至达到预设的簇的数量。所以AGNES算法需要不断的计算簇之间的距离,这也符合聚类的核心思想(物以类聚,人以群分),因此怎样度量两个簇之间的距离成为了关键。\n距离的计算\n衡量两个簇之间的距离通常分为最小距离、最大距离和平均距离。在 AGNES 算法中可根据具体业务选择其中一种距离作为度量标准。\n最小距离\n最小距离描述的是两个簇之间距离最近的两个样本所对应的距离。例如下图中圆圈和菱形分别代表两个簇,两个簇之间离得最近的样本的欧式距离为 3.3 ,则最小距离为 3.3。\n\n假设给定簇CiC_iC​i​​与CjC_jC​j​​,则最小距离为:dmin=minx∈i,z∈jdist(x,z)d_{min}=min_{x\\in i,z\\in j}dist(x,z)d​min​​=min​x∈i,z∈j​​dist(x,z)\n最大距离\n最大距离描述的是两个簇之间距离最远的两个样本所对应的距离。例如下图中圆圈和菱形分别代表两个簇,两个簇之间离得最远的样本的欧式距离为 23.3 ,则最大距离为 23.3 。\n\n假设给定簇CiC_iC​i​​与CjC_jC​j​​,则最大距离为:dmin=maxx∈i,z∈jdist(x,z)d_{min}=max_{x\\in i,z\\in j}dist(x,z)d​min​​=max​x∈i,z∈j​​dist(x,z)\n平均距离\n平均距离描述的是两个簇之间样本的平均距离。例如下图中圆圈和菱形分别代表两个簇,计算两个簇之间的所有样本之间的欧式距离并求其平均值。\n\n假设给定簇CiC_iC​i​​与CjC_jC​j​​,∣Ci∣,∣Cj∣|C_i|,|C_j|∣C​i​​∣,∣C​j​​∣分别表示簇 i 与簇 j 中样本的数量,则平均距离为:dmin=1∣Ci∣∣Cj∣∑x∈i∑z∈jdist(x,z)d_{min}=\\frac{1}{|C_i||C_j|}\\sum_{x\\in i}\\sum_{z\\in j}dist(x, z)d​min​​=​∣C​i​​∣∣C​j​​∣​​1​​∑​x∈i​​∑​z∈j​​dist(x,z)\nAGNES 算法流程\nAGNES 算法是一种自底向上聚合的层次聚类算法,它先会将数据集中的每个样本看作一个初始簇,然后在算法运行的每一步中找出距离最近的两个簇进行合并,直至达到预设的簇的数量。\n举个例子,现在先要将西瓜数据聚成两类,数据如下表所示:\n\n\n\n编号\n体积\n重量\n\n\n\n\n1\n1.2\n2.3\n\n\n2\n3.6\n7.1\n\n\n3\n1.1\n2.2\n\n\n4\n3.5\n6.9\n\n\n5\n1.5\n2.5\n\n\n\n一开始,每个样本都看成是一个簇( 1 号样本看成是 1 号簇, 2 号样本看成是 2 号簇,..., 5 号样本看成是 5 号簇),假设簇的集合为 C=[[1], [2], [3], [4], [5]] 。\n假设使用簇间最小距离来度量两个簇之间的远近,从表中可以看出 1 号簇与 3 号簇的簇间最小距离最小。因此需要将 1 号簇和 3 号簇合并,那么此时簇的集合 C=[[1, 3], [2], [4], [5]]。\n然后继续看这 4 个簇中哪两个簇之间的最小距离最小,我们发现 2 号簇与 4 号簇的最小距离最小,因此我们要进行合并,合并之后 C=[[1, 3], [2, 4], [5]]。\n然后继续看这 3 个簇中哪两个簇之间的最小距离最小,我们发现 5 号簇与 [1, 3] 簇的最小距离最小,因此我们要进行合并,合并之后 C=[[1, 3, 5], [2, 4]]。\n这个时候 C 中只有两个簇了,达到了我们的预期目标(想要聚成两类),所以算法停止。算法停止后会发现,我们已经将 5 个西瓜,聚成了两类,一类是小西瓜,另一类是大西瓜。\n如果将整个聚类过程中的合并,与合并的次序可视化出来,就能看出为什么说 AGNES 是自底向上的层次聚类算法了。\n\n所以 AGNES 伪代码如下:\n#假设数据集为D,想要聚成的簇的数量为k\ndef AGNES(D, k):\n #C为聚类结果\n C = []\n #将每个样本看成一个簇\n for d in D:\n C.append(d)\n\n #C中簇的数量\n q=len(C)\n while q > k:\n 寻找距离最小的两个簇a和b\n 将a和b合并,并修改C\n q = len(C)\n return C\n\n"},"metrics.html":{"url":"metrics.html","title":"模型评估指标","keywords":"","body":"本章主要介绍分类,回归以及聚类时常用的模型性能评估指标。\n"},"classification_metrics.html":{"url":"classification_metrics.html","title":"分类性能评估指标","keywords":"","body":"分类模型性能评估指标\n准确度的缺陷\n准确度这个概念相信对于大家来说肯定并不陌生,就是正确率。例如模型的预测结果与数据真实结果如下表所示:\n\n\n\n编号\n预测结果\n真实结果\n\n\n\n\n1\n1\n2\n\n\n2\n2\n2\n\n\n3\n3\n3\n\n\n4\n1\n1\n\n\n5\n2\n3\n\n\n\n很明显,连小朋友都能算出来该模型的准确度为 3/5 。\n那么准确对越高就能说明模型的分类性能越好吗?非也!举个例子,现在我开发了一套癌症检测系统,只要输入你的一些基本健康信息,就能预测出你现在是否患有癌症,并且分类的准确度为 0.999 。您认为这样的系统的预测性能好不好呢?\n您可能会觉得,哇,这么高的准确度!这个系统肯定很牛逼!但是我们知道,一般年轻人患癌症的概率非常低,假设患癌症的概率为 0.001 ,那么其实我这个癌症检测系统只要一直输出您没有患癌症,准确度也可能能够达到 0.999 。\n假如现在有一个人本身已经患有癌症,但是他自己不知道自己患有癌症。这个时候用我的癌症检测系统检测发现他没有得癌症,那很显然我这个系统已经把他给坑了(耽误了治疗)。\n看到这里您应该已经体会到了,一个分类模型如果光看准确度是不够的,尤其是对这种样本极度不平衡的情况( 10000 条健康信息数据中,只有 1 条的类别是患有癌症,其他的类别都是健康)。\n混淆矩阵\n想进一步的考量分类模型的性能如何,可以使用其他的一些性能指标,例如精准率和召回率。但这些指标计算的基础是混淆矩阵。\n继续以癌症检测系统为例,癌症检测系统的输出不是有癌症就是健康,这里为了方便,就用 1 表示患有癌症, 0 表示健康。假设现在拿 10000 条数据来进行测试,其中有 9978 条数据的真实类别是 0 ,系统预测的类别也是 0 ,有 2 条数据的真实类别是 1 却预测成了 0 ,有 12 条数据的真实类别是 0 但预测成了 1 ,有 8 条数据的真实类别是 1 ,预测结果也是 1 。\n如果我们把这些结果组成如下矩阵,则该矩阵就成为混淆矩阵。\n\n\n\n真实\\预测\n0\n1\n\n\n\n\n0\n9978\n12\n\n\n1\n2\n8\n\n\n\n混淆矩阵中每个格子所代表的的意义也很明显,意义如下:\n\n\n\n真实\\预测\n0\n1\n\n\n\n\n0\n预测 0 正确的数量\n预测 1 错误的数量\n\n\n1\n预测 0 错误的数量\n预测 1 正确的数量\n\n\n\n如果将正确看成是 True ,错误看成是 False , 0 看成是 Negtive , 1 看成是 Positive 。然后将上表中的文字替换掉,混淆矩阵如下:\n\n\n\n真实\\预测\n0\n1\n\n\n\n\n0\nTN\nFP\n\n\n1\nFN\nTP\n\n\n\n因此 TN 表示真实类别是 Negtive ,预测结果也是 Negtive 的数量; FP 表示真实类别是 Negtive ,预测结果是 Positive 的数量; FN 表示真实类别是 Positive ,预测结果是Negtive 的数量; TP 表示真实类别是 Positive ,预测结果也是 Positive 的数量。\n很明显,当 FN 和 FP 都等于 0 时,模型的性能应该是最好的,因为模型并没有在预测的时候犯错误。即如下混淆矩阵:\n\n\n\n真实\\预测\n0\n1\n\n\n\n\n0\n9978\n0\n\n\n1\n0\n22\n\n\n\n所以模型分类性能越好,混淆矩阵中非对角线上的数值越小。\n精准率\n精准率(Precision)指的是模型预测为 Positive 时的预测准确度,其计算公式如下:\nPrecisioin=TPTP+FP\r\nPrecisioin=\\frac{TP}{TP+FP}\r\nPrecisioin=​TP+FP​​TP​​\n假如癌症检测系统的混淆矩阵如下:\n\n\n\n真实\\预测\n0\n1\n\n\n\n\n0\n9978\n12\n\n\n1\n2\n8\n\n\n\n则该系统的精准率=8/(8+12)=0.4 。\n0.4 这个值表示癌症检测系统的预测结果中如果有 100 个人被预测成患有癌症,那么其中有 40 人是真的患有癌症。也就是说,精准率越高,那么癌症检测系统预测某人患有癌症的可信度就越高。\n召回率\n召回率(Recall)指的是我们关注的事件发生了,并且模型预测正确了的比值,其计算公式如下:\nRecall=TPFN+TP\r\nRecall=\\frac{TP}{FN+TP}\r\nRecall=​FN+TP​​TP​​\n假如癌症检测系统的混淆矩阵如下:\n\n\n\n真实\\预测\n0\n1\n\n\n\n\n0\n9978\n12\n\n\n1\n2\n8\n\n\n\n则该系统的召回率=8/(8+2)=0.8。\n从计算出的召回率可以看出,假设有 100 个患有癌症的病人使用这个系统进行癌症检测,系统能够检测出 80 人是患有癌症的。也就是说,召回率越高,那么我们感兴趣的对象成为漏网之鱼的可能性越低。\n精准率与召回率之间的关系\n假设有这么一组数据,菱形代表 Positive ,圆形代表 Negtive 。\n\n现在需要训练一个模型对数据进行分类,假如该模型非常简单,就是在数据上画一条线作为分类边界。模型认为边界的左边是 Negtive ,右边是 Positive 。如果该模型的分类边界向左或者向右移动的话,模型所对应的精准率和召回率如下图所示:\n\n从上图可知,模型的精准率变高,召回率会变低,精准率变低,召回率会变高。\nF1 Score\n上一关中提到了精准率变高,召回率会变低,精准率变低,召回率会变高。那如果想要同时兼顾精准率和召回率,这个时候就可以使用F1 Score来作为性能度量指标了。\nF1 Score 是统计学中用来衡量二分类模型精确度的一种指标。它同时兼顾了分类模型的准确率和召回率。F1 Score 可以看作是模型准确率和召回率的一种加权平均,它的最大值是 1 ,最小值是0 。其公式如下:\nF1=2∗precision∗recallprecision+recall\r\nF1=\\frac{2*precision*recall}{precision+recall}\r\nF1=​precision+recall​​2∗precision∗recall​​\n\n假设模型 A 的精准率为 0.2 ,召回率为 0.7 ,那么模型 A 的 F1 Score 为 0.31111 。\n\n假设模型 B 的精准率为 0.7 ,召回率为 0.2 ,那么模型 B 的 F1 Score 为 0.31111 。\n\n假设模型 C 的精准率为 0.8 ,召回率为 0.7 ,那么模型 C 的 F1 Score 为 0.74667 。\n\n假设模型 D 的精准率为 0.2 ,召回率为 0.3 ,那么模型 D 的 F1 Score 为 0.24 。\n\n\n从上述 4 个模型的各种性能可以看出,模型C的精准率和召回率都比较高,因此它的 F1 Score 也比较高。而其他模型的精准率和召回率要么都比较低,要么一个低一个高,所以它们的 F1 Score 比较低。\n这也说明了只有当模型的精准率和召回率都比较高时 F1 Score 才会比较高。这也是 F1 Score 能够同时兼顾精准率和召回率的原因。\nROC曲线\nROC曲线(Receiver Operating Characteristic Curve)描述的 TPR(True Positive Rate)与 FPR(False Positive Rate)之间关系的曲线。\nTPR 与 FPR 的计算公式如下:\nTPR=TPTP+FN\r\nTPR=\\frac{TP}{TP+FN}\r\nTPR=​TP+FN​​TP​​\nFPR=FPFP+TN\r\nFPR=\\frac{FP}{FP+TN}\r\nFPR=​FP+TN​​FP​​\n其中 TPR 的计算公式您可能有点眼熟,没错!就是召回率的计算公式。也就是说 TPR 就是召回率。所以 TPR 描述的是模型预测 Positive 并且预测正确的数量占真实类别为 Positive 样本的比例。而 FPR 描述的模型预测 Positive 并且预测错了的数量占真实类别为 Negtive 样本的比例。\n和精准率与召回率一样, TPR 与 FPR 之间也存在关系。假设有这么一组数据,菱形代表 Positive ,圆形代表 Negtive 。\n\n现在需要训练一个逻辑回归的模型对数据进行分类,假如将从 0 到 1 中的一些值作为模型的分类阈值。若模型认为当前数据是 Positive 的概率小于分类阈值则分类为 Negtive ,否则就分类为 Positive (假设分类阈值为 0.8 ,模型认为这条数据是 Positive 的概率为 0.7 , 0.7 小于 0.8 ,那么模型就认为这条数据是 Negtive)。在不同的分类阈值下,模型所对应的 TPR 与 FPR 如下图所示(竖线代表分类阈值,模型会将竖线左边的数据分类成 Negtive ,竖线右边的分类成 Positive ):\n\n从图中可以看出,当模型的 TPR 越高 FPR 也会越高, TPR 越低 FPR 也会越低。这与精准率和召回率之间的关系刚好相反。并且,模型的分类阈值一但改变,就有一组对应的 TPR 与 FPR 。假设该模型在不同的分类阈值下其对应的 TPR 与 FPR 如下表所示:\n\n\n\nTPR\nFPR\n\n\n\n\n0.2\n0.08\n\n\n0.35\n0.1\n\n\n0.37\n0.111\n\n\n0.51\n0.12\n\n\n0.53\n0.13\n\n\n0.56\n0.14\n\n\n0.71\n0.21\n\n\n0.82\n0.26\n\n\n0.92\n0.41\n\n\n0.93\n0.42\n\n\n\n若将 FPR 作为横轴, TPR 作为纵轴,将上面的表格以折线图的形式画出来就是 ROC曲线 。\n\n假设现在有模型 A 和模型 B ,它们的 ROC 曲线如下图所示(其中模型 A 的 ROC曲线 为黄色,模型 B 的 ROC曲线 为蓝色):\n\n那么模型 A 的性能比模型 B 的性能好,因为模型 A 当 FPR 较低时所对应的 TPR 比模型 B 的低 FPR 所对应的 TPR 更高。由由于随着 FPR 的增大, TPR 也会增大。所以 ROC 曲线与横轴所围成的面积越大,模型的分类性能就越高。而 ROC曲线 的面积称为 AUC。\nAUC\n很明显模型的 AUC 越高,模型的二分类性能就越强。 AUC 的计算公式如下:\nAUC=∑iepositiveclassranki−M(M+1)2M∗N\r\nAUC=\\frac{\\sum_{ie positive class}rank_i-\\frac{M(M+1)}{2}}{M*N}\r\nAUC=​M∗N​​∑​iepositiveclass​​rank​i​​−​2​​M(M+1)​​​​\n其中 M 为真实类别为 Positive 的样本数量, N 为真实类别为 Negtive 的样本数量。 ranki 代表了真实类别为 Positive 的样本点额预测概率从小到大排序后,该预测概率排在第几。\n举个例子,现有预测概率与真实类别的表格如下所示(其中 0 表示 Negtive , 1 表示 Positive ):\n\n\n\n编号\n预测概率\n真实类别\n\n\n\n\n1\n0.1\n0\n\n\n2\n0.4\n0\n\n\n3\n0.3\n1\n\n\n4\n0.8\n1\n\n\n\n想要得到公式中的 rank ,就需要将预测概率从小到大排序,排序后如下:\n\n\n\n编号\n预测概率\n真实类别\n\n\n\n\n1\n0.1\n0\n\n\n3\n0.3\n1\n\n\n2\n0.4\n0\n\n\n4\n0.8\n1\n\n\n\n排序后的表格中,真实类别为 Positive 只有编号为 3 和编号为 4 的数据,并且编号为 3 的数据排在第 2 ,编号为 4 的数据排在第 4 。所以 rank=[2, 4]。又因表格中真是类别为 Positive 的数据有 2 条,Negtive 的数据有 2 条。因此 M 为2,N 为2。所以根据 AUC 的计算公式可知:\nAUC=(2+4)−2(2+1)22∗2=0.75\r\nAUC=\\frac{(2+4)-\\frac{2(2+1)}{2}}{2*2}=0.75\r\nAUC=​2∗2​​(2+4)−​2​​2(2+1)​​​​=0.75。\n"},"regression_metrics.html":{"url":"regression_metrics.html","title":"回归性能评估指标","keywords":"","body":"回归模型性能评估指标\nMSE\nMSE(Mean Squared Error)叫做均方误差,其实就是线性回归的损失函数。公式如下:\n1m∑i=1m(yi−pi)2\r\n\\frac{1}{m}\\sum_{i=1}^m(y^i-p^i)^2\r\n​m​​1​​∑​i=1​m​​(y​i​​−p​i​​)​2​​\n其中yiy^iy​i​​表示第 i 个样本的真实标签,pip^ip​i​​表示模型对第 i 个样本的预测标签。线性回归的目的就是让损失函数最小。那么模型训练出来了,我们在测试集上用损失函数来评估模型就行了。\nRMSE\nRMSE(Root Mean Squard Error)均方根误差,公式如下:\n1m∑i=1m(yi−pi)2\r\n\\sqrt{\\frac{1}{m}\\sum_{i=1}^m(y^i-p^i)^2}\r\n√​​m​​1​​∑​i=1​m​​(y​i​​−p​i​​)​2​​​​​\nRMSE 其实就是MSE开个根号。有什么意义呢?其实实质是一样的。只不过用于数据更好的描述。\n例如:要做房价预测,每平方是万元,我们预测结果也是万元。那么差值的平方单位应该是千万级别的。那我们不太好描述自己做的模型效果。怎么说呢?我们的模型误差是多少千万?于是干脆就开个根号就好了。我们误差的结果就跟我们数据是一个级别的了,在描述模型的时候就说,我们模型的误差是多少万元。\nMAE\nMAE(Mean Aboslute Error),公式如下:\n1m∑i=1m∣yi−pi∣\r\n\\frac{1}{m}\\sum_{i=1}^m|y^i-p^i|\r\n​m​​1​​∑​i=1​m​​∣y​i​​−p​i​​∣\nMAE 虽然不作为损失函数,确是一个非常直观的评估指标,它表示每个样本的预测标签值与真实标签值的 L1 距离。\nR-Squared\n上面的几种衡量标准针对不同的模型会有不同的值。比如说预测房价 那么误差单位就是万元。数子可能是 3 , 4 , 5 之类的。那么预测身高就可能是 0.1 ,0.6 之类的。没有什么可读性,到底多少才算好呢?不知道,那要根据模型的应用场景来。 看看分类算法的衡量标准就是正确率,而正确率又在 0~1 之间,最高百分之百。最低 0 。如果是负数,则考虑非线性相关。很直观,而且不同模型一样的。那么线性回归有没有这样的衡量标准呢?\nR-Squared 就是这么一个指标,公式如下:\nR2=1−∑i(pi−yi)2∑i(ymeani−yi)2\r\nR^2=1-\\frac{\\sum_i(p^i-y^i)^2}{\\sum_i(y_{mean}^i-y^i)^2}\r\nR​2​​=1−​∑​i​​(y​mean​i​​−y​i​​)​2​​​​∑​i​​(p​i​​−y​i​​)​2​​​​\n其中ymeany_{mean}y​mean​​表示所有测试样本标签值的均值。为什么这个指标会有刚刚我们提到的性能呢?我们分析下公式:\n\n其实分子表示的是模型预测时产生的误差,分母表示的是对任意样本都预测为所有标签均值时产生的误差,由此可知:\n\nR2≤1R^2 \\leq1R​2​​≤1,当我们的模型不犯任何错误时,取最大值 1 。\n\n当我们的模型性能跟基模型性能相同时,取 0 。\n\n如果为负数,则说明我们训练出来的模型还不如基准模型,此时,很有可能我们的数据不存在任何线性关系。\n\n\n"},"cluster_metrics.html":{"url":"cluster_metrics.html","title":"聚类性能评估指标","keywords":"","body":"聚类模型性能评估指标\n聚类的性能度量大致分为两类:一类是将聚类结果与某个参考模型作为参照进行比较,也就是所谓的外部指标;另一类是则是直接度量聚类的性能而不使用参考模型进行比较,也就是内部指标。\n外部指标\n外部指标通常使用 Jaccard Coefficient(JC系数)、Fowlkes and Mallows Index(FM指数)以及 Rand index(Rand指数)。\n想要计算上述指标来度量聚类的性能,首先需要计算出aaa,ccc,ddd,eee。假设数据集E={x1,x2,...,xm}E=\\{x_1,x_2,...,x_m\\}E={x​1​​,x​2​​,...,x​m​​}。通过聚类模型给出的簇划分为C={C1,C2,...Ck}C=\\{C_1,C_2,...C_k\\}C={C​1​​,C​2​​,...C​k​​},参考模型给出的簇划分为D={D1,D2,...Ds}D=\\{D_1,D_2,...D_s\\}D={D​1​​,D​2​​,...D​s​​}。λ\\lambdaλ与λ∗\\lambda^*λ​∗​​分别表示CCC与DDD对应的簇标记,则有:\na=∣{(xi,xj)∣λi=λj,λi∗=λj∗,ij}∣\r\na=|\\{(x_i, x_j)|\\lambda_i=\\lambda_j, \\lambda^*_i=\\lambda^*_j,i a=∣{(x​i​​,x​j​​)∣λ​i​​=λ​j​​,λ​i​∗​​=λ​j​∗​​,ij}∣\nb=∣{(xi,xj)∣λi=λj,λi∗≠λj∗,ij}∣\r\nb=|\\{(x_i, x_j)|\\lambda_i=\\lambda_j, \\lambda^*_i\\neq\\lambda^*_j, i b=∣{(x​i​​,x​j​​)∣λ​i​​=λ​j​​,λ​i​∗​​≠λ​j​∗​​,ij}∣\nc=∣{(xi,xj)∣λi≠λj,λi∗=λj∗,ij}∣\r\nc=|\\{(x_i, x_j)|\\lambda_i\\neq\\lambda_j, \\lambda^*_i=\\lambda^*_j, i c=∣{(x​i​​,x​j​​)∣λ​i​​≠λ​j​​,λ​i​∗​​=λ​j​∗​​,ij}∣\nd=∣{(xi,xj)∣λi≠λj,λi∗≠λj∗,ij}∣\r\nd=|\\{(x_i, x_j)|\\lambda_i\\neq\\lambda_j, \\lambda^*_i\\neq\\lambda^*_j, i d=∣{(x​i​​,x​j​​)∣λ​i​​≠λ​j​​,λ​i​∗​​≠λ​j​∗​​,ij}∣\n举个例子,参考模型给出的簇与聚类模型给出的簇划分如下:\n\n\n\n编号\n参考簇\n聚类簇\n\n\n\n\n1\n0\n0\n\n\n2\n0\n0\n\n\n3\n0\n1\n\n\n4\n1\n1\n\n\n5\n1\n2\n\n\n6\n1\n2\n\n\n\n那么满足aaa的样本对为(1,2)(1, 2)(1,2)(因为111号样本与222号样本的参考簇都为000,聚类簇都为000),(5,6)(5, 6)(5,6)(因为555号样本与666号样本的参考簇都为111,聚类簇都为222)。总共有222个样本对满足aaa,因此a=2a=2a=2。\n满足bbb的样本对为(3,4)(3, 4)(3,4)(因为333号样本与444号样本的参考簇不同,但聚类簇都为111)。总共有111个样本对满足bbb,因此b=1b=1b=1。\n那么满足ccc的样本对为(1,3)(1, 3)(1,3)(因为111号样本与333号样本的聚类簇不同,但参考簇都为000),(2,3)(2, 3)(2,3)(因为222号样本与333号样本的聚类簇不同,但参考簇都为000),(4,5)(4, 5)(4,5)(因为444号样本与555号样本的聚类簇不同,但参考簇都为111),(4,6)(4, 6)(4,6)(因为444号样本与666号样本的聚类簇不同,但参考簇都为111)。总共有444个样本对满足ccc,因此c=4c=4c=4。\n满足ddd的样本对为(1,4)(1, 4)(1,4)(因为111号样本与444号样本的参考簇不同,聚类簇也不同),(1,5)(1, 5)(1,5)(因为111号样本与555号样本的参考簇不同,聚类簇也不同),(1,6)(1, 6)(1,6)(因为111号样本与666号样本的参考簇不同,聚类簇也不同),(2,4)(2, 4)(2,4)(因为222号样本与444号样本的参考簇不同,聚类簇也不同),(2,5)(2, 5)(2,5)(因为222号样本与555号样本的参考簇不同,聚类簇也不同),(2,6)(2, 6)(2,6)(因为222号样本与666号样本的参考簇不同,聚类簇也不同),(3,5)(3, 5)(3,5)(因为333号样本与555号样本的参考簇不同,聚类簇也不同),(3,6)(3, 6)(3,6)(因为333号样本与666号样本的参考簇不同,聚类簇也不同)。总共有888个样本对满足ddd,因此d=8d=8d=8。\nJC系数\nJC系数根据上面所提到的aaa,bbb,ccc来计算,并且值域为[0,1][0, 1][0,1],值越大说明聚类性能越好,公式如下:\nJC=aa+b+c\r\nJC=\\frac{a}{a+b+c}\r\nJC=​a+b+c​​a​​\n因此刚刚的例子中,JC=22+1+4=27JC=\\frac{2}{2+1+4}=\\frac{2}{7}JC=​2+1+4​​2​​=​7​​2​​\nFM指数\nFM指数根据上面所提到的aaa,bbb,ccc来计算,并且值域为[0,1][0, 1][0,1],值越大说明聚类性能越好,公式如下:\nFMI=aa+b∗aa+c\r\nFMI=\\sqrt{\\frac{a}{a+b}*\\frac{a}{a+c}}\r\nFMI=√​​a+b​​a​​∗​a+c​​a​​​​​\n因此刚刚的例子中,FMI=22+1∗22+4=418FMI=\\sqrt{\\frac{2}{2+1}*\\frac{2}{2+4}}=\\sqrt{\\frac{4}{18}}FMI=√​​2+1​​2​​∗​2+4​​2​​​​​=√​​18​​4​​​​​\nRand指数\nRand指数根据上面所提到的aaa和ddd来计算,并且值域为[0,1][0, 1][0,1],值越大说明聚类性能越好,假设mmm为样本数量,公式如下:\nRandI=2(a+d)m(m−1)\r\nRandI=\\frac{2(a+d)}{m(m-1)}\r\nRandI=​m(m−1)​​2(a+d)​​\n因此刚刚的例子中,RandI=2∗(2+8)6∗(6−1)=23RandI=\\frac{2*(2+8)}{6*(6-1)}=\\frac{2}{3}RandI=​6∗(6−1)​​2∗(2+8)​​=​3​​2​​。\n内部指标\n内部指标通常使用 Davies-Bouldin Index (DB指数)以及 Dunn Index(Dunn指数)。\nDB指数\nDB指数又称 DBI ,计算公式如下:\nDBI=1k∑i=1kmax(avg(Ci)+avg(Cj)dc(μi,μj)),i≠j\r\nDBI=\\frac{1}{k}\\sum_{i=1}^kmax(\\frac{avg(C_i)+avg(C_j)}{d_c(\\mu_i,\\mu_j)}), i \\neq j\r\nDBI=​k​​1​​∑​i=1​k​​max(​d​c​​(μ​i​​,μ​j​​)​​avg(C​i​​)+avg(C​j​​)​​),i≠j\n公式中的表达式其实很好理解,其中kkk代表聚类有多少个簇,μi\\mu_iμ​i​​代表第iii个簇的中心点,avg(Ci)avg(C_i)avg(C​i​​)代表CiC_iC​i​​第iii个簇中所有数据与第iii个簇的中心点的平均距离。dc(μi,μj)d_c(\\mu_i, \\mu_j)d​c​​(μ​i​​,μ​j​​)代表第iii个簇的中心点与第jjj个簇的中心点的距离。\n举个例子,现在有666条西瓜数据{x1,x2,...,x6}\\{x_1,x_2,...,x_6\\}{x​1​​,x​2​​,...,x​6​​},这些数据已经聚类成了222个簇。\n\n\n\n编号\n体积\n重量\n簇\n\n\n\n\n1\n3\n4\n1\n\n\n2\n6\n9\n2\n\n\n3\n2\n3\n1\n\n\n4\n3\n4\n1\n\n\n5\n7\n10\n2\n\n\n6\n8\n11\n2\n\n\n\n从表格可以看出:\nk=2\r\nk=2\r\nk=2\nμ1=((3+2+3)3,(4+3+4)3)=(2.67,3.67)\r\n\\mu_1=(\\frac{(3+2+3)}{3}, \\frac{(4+3+4)}{3})=(2.67,3.67)\r\nμ​1​​=(​3​​(3+2+3)​​,​3​​(4+3+4)​​)=(2.67,3.67)\nμ2=((6+7+8)3,(9+10+11)3)=(7,10)\r\n\\mu_2=(\\frac{(6+7+8)}{3}, \\frac{(9+10+11)}{3})=(7,10)\r\nμ​2​​=(​3​​(6+7+8)​​,​3​​(9+10+11)​​)=(7,10)\ndc(μ1,μ2)=(2.67−7)2+(3.67−10)2=7.67391\r\nd_c(\\mu_1, \\mu_2)=\\sqrt{(2.67-7)^2+(3.67-10)^2}=7.67391\r\nd​c​​(μ​1​​,μ​2​​)=√​(2.67−7)​2​​+(3.67−10)​2​​​​​=7.67391\navg(C1)=((3−2.67)2+(4−3.67)2+(2−2.67)2+(3−3.67)2+(3−2.67)2+(4−3.67)2)/3=0.628539\r\navg(C_1)=(\\sqrt{(3-2.67)^2+(4-3.67)^2}+\\sqrt{(2-2.67)^2+(3-3.67)^2}+\\sqrt{(3-2.67)^2+(4-3.67)^2})/3=0.628539\r\navg(C​1​​)=(√​(3−2.67)​2​​+(4−3.67)​2​​​​​+√​(2−2.67)​2​​+(3−3.67)​2​​​​​+√​(3−2.67)​2​​+(4−3.67)​2​​​​​)/3=0.628539\navg(C2)=((6−7)2+(9−10)2+(7−7)2+(10−10)2+(8−7)2+(11−10)2)/3=0.94281\r\navg(C_2)=(\\sqrt{(6-7)^2+(9-10)^2}+\\sqrt{(7-7)^2+(10-10)^2}+\\sqrt{(8-7)^2+(11-10)^2})/3=0.94281\r\navg(C​2​​)=(√​(6−7)​2​​+(9−10)​2​​​​​+√​(7−7)​2​​+(10−10)​2​​​​​+√​(8−7)​2​​+(11−10)​2​​​​​)/3=0.94281\n因此有:\nDBI=1k∑i=1kmax(avg(Ci)+avg(Cj)dc(μi,μj))=0.204765\r\nDBI=\\frac{1}{k}\\sum_{i=1}^kmax(\\frac{avg(C_i)+avg(C_j)}{d_c(\\mu_i,\\mu_j)})=0.204765\r\nDBI=​k​​1​​∑​i=1​k​​max(​d​c​​(μ​i​​,μ​j​​)​​avg(C​i​​)+avg(C​j​​)​​)=0.204765\nDB指数越小就越就意味着簇内距离越小同时簇间距离越大,也就是说DB指数越小越好。\nDunn指数\nDunn指数又称DI,计算公式如下:\nDI=min1≤i≤k{mini≠j(dmin(Ci,Cj)max1≤l≤kdiam(Cl))}\r\nDI=min_{1\\leq i\\leq k}\\{min_{i\\neq j}(\\frac{d_min(C_i,C_j)}{max_{1\\leq l\\leq k}diam(C_l)})\\}\r\nDI=min​1≤i≤k​​{min​i≠j​​(​max​1≤l≤k​​diam(C​l​​)​​d​m​​in(C​i​​,C​j​​)​​)}\n公式中的表达式其实很好理解,其中kkk代表聚类有多少个簇,dmin(Ci,Cj)d_{min}(C_i,C_j)d​min​​(C​i​​,C​j​​)代表第iii个簇中的样本与第jjj个簇中的样本之间的最短距离,diam(Cl)diam(C_l)diam(C​l​​)代表第lll个簇中相距最远的样本之间的距离。\n还是这个例子,现在有 6 条西瓜数据{x1,x2,...,x6}\\{x_1,x_2,...,x_6\\}{x​1​​,x​2​​,...,x​6​​},这些数据已经聚类成了 2 个簇。\n\n\n\n编号\n体积\n重量\n簇\n\n\n\n\n1\n3\n4\n1\n\n\n2\n6\n9\n2\n\n\n3\n2\n3\n1\n\n\n4\n3\n4\n1\n\n\n5\n7\n10\n2\n\n\n6\n8\n11\n2\n\n\n\n从表格可以看出:\nk=2\r\nk=2\r\nk=2\ndmin(C1,C2)=(3−6)2+(4−9)2=5.831\r\nd_{min}(C_1,C_2)=\\sqrt{(3-6)^2+(4-9)^2}=5.831\r\nd​min​​(C​1​​,C​2​​)=√​(3−6)​2​​+(4−9)​2​​​​​=5.831\ndiam(C1)=(3−2)2+(4−2)2=1.414\r\ndiam(C_1)=\\sqrt{(3-2)^2+(4-2)^2}=1.414\r\ndiam(C​1​​)=√​(3−2)​2​​+(4−2)​2​​​​​=1.414\ndiam(C2)=(6−8)2+(9−11)2=2.828\r\ndiam(C_2)=\\sqrt{(6-8)^2+(9-11)^2}=2.828\r\ndiam(C​2​​)=√​(6−8)​2​​+(9−11)​2​​​​​=2.828\n因此有:\nDI=min1≤i≤k{mini≠j(dmin(Ci,Cj)max1≤l≤kdiam(Cl))}=2.061553\r\nDI=min_{1\\leq i\\leq k}\\{min_{i\\neq j}(\\frac{d_min(C_i,C_j)}{max_{1\\leq l\\leq k}diam(C_l)})\\}=2.061553\r\nDI=min​1≤i≤k​​{min​i≠j​​(​max​1≤l≤k​​diam(C​l​​)​​d​m​​in(C​i​​,C​j​​)​​)}=2.061553\nDunn指数越大意味着簇内距离越小同时簇间距离越大,也就是说Dunn指数越大越好。\n"},"sklearn.html":{"url":"sklearn.html","title":"使用sklearn进行机器学习","keywords":"","body":"使用sklearn进行机器学习\n写在前面\n这是一个 sklearn 的 hello world 级教程,想要更加系统更加全面的学习 sklearn 建议查阅 sklearn 的官方网站。\nsklearn简介\nscikit-learn(简记sklearn),是用 python 实现的机器学习算法库。sklearn 可以实现数据预处理、分类、回归、降维、模型选择等常用的机器学习算法。基本上只需要知道一些 python 的基础语法知识就能学会怎样使用 sklearn 了,所以 sklearn 是一款非常好用的 python 机器学习库。\nsklearn的安装\n和安装其他第三方库一样简单,只需要在命令行中输入 pip install scikit-learn 即可。\nsklearn的目录结构\nsklearn 提供的接口都封装在不同的目录下的不同的 py 文件中,所以对 sklearn 的目录结构有一个大致的了解,有助于我们更加深刻地理解 sklearn 。目录结构如下:\n\n其实从目录名字可以看出目录中的 py 文件是干啥的。比如 cluster 目录下都是聚类算法接口, ensem 目录下都是集成学习算法的接口。\n使用sklearn识别手写数字\n接下来不如通过一个实例来感受一下 sklearn 的强大。\n想要识别手写数字,首先需要有数据。sklearn 中已经为我们准备好了一些比较经典且质量较高的数据集,其中就包括手写数字数据集。该数据集有 1797 个样本,每个样本包括 8*8 像素(实际上是一条样本有 64 个特征,每个像素看成是一个特征,每个特征都是 float 类型的数值)的图像和一个 [0, 9] 整数的标签。比如下图的标签是 2 :\n\n想要使用这个数据很简单,代码如下:\nfrom sklearn import datasets\n\n# 加载手写数字数据集\ndigits = datasets.load_digits()\n\n# X表示特征,即1797行64列的矩阵\nX = digits.data\n# Y表示标签,即1797个元素的一维数组\ny = digits.target\n\n得到 X,y 数据之后,我们还需要将这些数据进行划分,划分成两个部分,一部分是训练集,另一部分是测试集。因为如果没有测试集的话,我们并不知道我们的手写数字识别程序识别得准不准。数据集划分代码如下:\n# 将X,y划分成训练集和测试集,其中训练集的比例为80%,测试集的比例为20%\n# X_train表示训练集的特征,X_test表示测试集的特征,y_train表示训练集的标签,y_test表示测试集的标签\nX_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2)\n\n接下来,可以使用机器学习算法来实现手写数字识别了,例如想要使用随机森林来进行识别,那么首先要导入随机森林算法接口。\n# 由于是分类问题,所以导入的是RandomForestClassifier\nfrom sklearn.ensemble import RandomForestClassifier\n\n导入好接口后,就可以创建随机森林对象了。随机森林对象有用来训练的函数 fit 和用来预测的函数 predict。fit函数需要训练集的特征和训练集的标签作为输入,predict函数需要测试集的特征作为输入。所以代码如下:\n# 创建一个有50棵决策树的随机森林, n_estimators表示决策树的数量\nclf = RandomForestClassifier(n_estimators=50)\n# 用训练集训练\nclf.fit(X_train, Y_train)\n# 用测试集测试,result为预测结果\nresult = clf.predict(X_test)\n\n得到预测结果后,我们需要将其与测试集的真实答案进行比对,计算出预测的准确率。sklearn 已经为我们提供了计算准确率的接口,使用代码如下:\n# 导入计算准确率的接口\nfrom sklearn.metrics import accuracy_score\n\n# 计算预测准确率\nacc = accuracy_score(y_test, result)\n# 打印准确率\nprint(acc)\n\n此时您会发现我们短短的几行代码实现的手写数字识别程序的准确率高于 0.95。\n而且我们不仅可以使用随机森林来实现手写数字识别,我们还可以使用别的机器学习算法实现,比如逻辑回归,代码如下:\nfrom sklearn.linear_model import LogisticRegression\n\n# 创建一个逻辑回归对象\nclf = LogisticRegression()\n# 用训练集训练\nclf.fit(X_train, Y_train)\n# 用测试集测试,result为预测结果\nresult = clf.predict(X_test)\n\n细心的您可能已经发现,不管使用哪种分类算法来进行手写数字识别,不同的只是创建的算法对象不一样而已。有了算法对象后,就可以fit,predict大法了。\n下面是使用随机森林识别手写数字的完整代码:\nfrom sklearn import datasets\n# 由于是分类问题,所以导入的是RandomForestClassifier\nfrom sklearn.ensemble import RandomForestClassifier\n# 导入计算准确率的接口\nfrom sklearn.metrics import accuracy_score\n\n# 加载手写数字数据集\ndigits = datasets.load_digits()\n\n# X表示特征,即1797行64列的矩阵\nX = digits.data\n# Y表示标签,即1797个元素的一维数组\ny = digits.target\n\n# 将X,y划分成训练集和测试集,其中训练集的比例为80%,测试集的比例为20%\n# X_train表示训练集的特征,X_test表示测试集的特征,y_train表示训练集的标签,y_test表示测试集的标签\nX_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2)\n\n# 创建一个有50棵决策树的随机森林, n_estimators表示决策树的数量\nclf = RandomForestClassifier(n_estimators=50)\n# 用训练集训练\nclf.fit(X_train, Y_train)\n# 用测试集测试,result为预测结果\nresult = clf.predict(X_test)\n\n# 计算预测准确率\nacc = accuracy_score(y_test, result)\n# 打印准确率\nprint(acc)\n\n更好地验证算法性能\n在划分训练集与测试集时会有这样的情况,可能模型对于数字 1 的识别准确率比较低 ,而测试集中没多少个数字为 1 的样本,然后用测试集测试完后得到的准确率为 0.96 。然后您可能觉得哎呀,我的模型很厉害了,但其实并不然,因为这样的测试集让您的模型的性能有了误解。那有没有更加公正的验证算法性能的方法呢?有,那就是k-折验证!\nk-折验证的大体思路是将整个数据集分成 k 份,然后试图让每一份子集都能成为测试集,并循环 k 次,总后计算 k 次模型的性能的平均值作为性能的估计。一般来说 k 的值为 5 或者 10。\nk-折验证的流程如下:\n\n不重复抽样将整个数据集随机拆分成 k 份\n每一次挑选其中 1 份作为测试集,剩下的 k-1 份作为训练集\n2.1. 在每个训练集上训练后得到一个模型\n2.2. 用这个模型在相应的测试集上测试,计算并保存模型的评估指标\n重复第 2 步 k 次,这样每份都有一次机会作为测试集,其他机会作为训练集\n计算 k 组测试结果的平均值作为算法性能的估计。\n\nsklearn 为我们提供了将数据划分成 k 份类 KFold ,使用示例如下:\n# 导入KFold\nfrom sklearn.model_selection import KFold\nfrom sklearn.ensemble import RandomForestClassifier\nfrom sklearn.metrics import accuracy_score\n\n# 创建一个将数据集随机划分成5份\nkf = KFold(n_splits = 5)\n\nmean_acc = 0\n\n# 将整个数据集划分成5份\n# train_index表示从5份中挑出来4份所拼出来的训练集的索引\n# test_index表示剩下的一份作为测试集的索引\nfor train_index, test_index in kf.split(X):\n X_train, y_train = X[train_index], y[train_index]\n X_test, y_test = X[test_index], y[test_index]\n rf = RandomForestClassifier()\n rf.fit(X_train, y_train)\n result = rf.predict(X_test)\n mean_acc = accuracy_score(y_test, result)\n\n# 打印5折验证的平均准确率\nprint(mean_acc/5)\n\n完整代码如下:\nfrom sklearn import datasets\n# 由于是分类问题,所以导入的是RandomForestClassifier\nfrom sklearn.ensemble import RandomForestClassifier\n# 导入计算准确率的接口\nfrom sklearn.metrics import accuracy_score\nfrom sklearn.model_selection import KFold\n\n# 加载手写数字数据集\ndigits = datasets.load_digits()\n\n# X表示特征,即1797行64列的矩阵\nX = digits.data\n# Y表示标签,即1797个元素的一维数组\ny = digits.target\n\n# 创建一个将数据集随机划分成5份\nkf = KFold(n_splits = 5)\n\nmean_acc = 0\n\n# 将整个数据集划分成5份\n# train_index表示从5份中挑出来4份所拼出来的训练集的索引\n# test_index表示剩下的一份作为测试集的索引\nfor train_index, test_index in kf.split(X):\n X_train, y_train = X[train_index], y[train_index]\n X_test, y_test = X[test_index], y[test_index]\n rf = RandomForestClassifier()\n rf.fit(X_train, y_train)\n result = rf.predict(X_test)\n mean_acc = accuracy_score(y_test, result)\n\n# 打印5折验证的平均准确率\nprint(mean_acc/5)\n\n"},"titanic/introduction.html":{"url":"titanic/introduction.html","title":"简介","keywords":"","body":"写在前面的话\n怎样处理数据,使用什么样的机器学习模型并没有所谓的正确答案。这篇文章只是抛砖引玉,若您是刚刚接触数据科学,我相信这一篇不错的指引;若您已经是老手,我相信文中的一些技巧您肯定也用过,可以温故而知新;所以希望这篇文章对您或多或少的有所帮助。\n泰坦尼克生还问题简介\n泰坦尼克号的沉船事件是是历史上最臭名昭著的沉船事件之一。1912年4月15日,泰坦尼克在航线中与冰山相撞,2224 名乘客中有 1502 名乘客丧生。\n泰坦尼克号数据集是目标是给出一个模型来预测某位泰坦尼克号的乘客在沉船事件中是生还是死。而且该数据集是一个非常好的数据集,能够让您快速的开始数据科学之旅。\n\n"},"titanic/EDA.html":{"url":"titanic/EDA.html","title":"探索性数据分析(EDA)","keywords":"","body":"探索性数据分析(EDA)\n探索性数据分析(EDA)说白了就是通过可视化的方式来看看数据中特征与特征之间,特征与目标之间的潜在关系,看看有什么有用的线索可以挖掘,例如哪些数据是噪声,有哪些特征的相关性比较低,后续可以造出哪些新的特征等。\n初窥\n当然,在EDA之前先要加载数据,我们不妨先将训练集train.csv读到内存中,并看一看。\nimport numpy as np \nimport pandas as pd\nimport matplotlib.pyplot as plt\nimport seaborn as sns\n\ndata=pd.read_csv('./Titanic/train.csv')\n\n# 看看data的前5行\ndata.head()\n\n\n从图中可以看出数据是由 11 个特征和 1 个标签(Survived)组成的。其中各个特征和标签的意义如下:\n\n\n\n特征\n意义\n\n\n\n\nSurvived\n是否生还,1表示是,0表示否\n\n\nPassengerId\n乘客ID\n\n\nPclass\n船票类型, 总共3种类型:1(一等舱),2(二等舱),3(三等舱)\n\n\nName\n船客姓名\n\n\nSex\n船客性别:female,male\n\n\nAge\n船客年龄\n\n\nSibSp\n船客的兄弟姐妹妻子丈夫的数量\n\n\nParch\n船客的父母,孩子的数量\n\n\nTicket\n船票\n\n\nFare\n船客在船上所花的钱\n\n\nCabin\n船客的船舱号\n\n\nEmbarked\n船客登船的口岸:C,Q,S\n\n\n\n了解了数据种各个属性的含义之后,我们可以看看这个数据集中有没有缺失值。\ndata.isnull().sum()\n\n\n可以看出 Age,Cabin 和 Embarked 这三个特征中有缺失值,我们需要处理这些缺失值。怎样处理呢?先不着急,我们可以先看看数据中有哪些信息可以挖掘。\n有多少人活了下来\n我们首先可以看看训练集中有多少人活了下来。\nf,ax=plt.subplots(1,2,figsize=(18,8))\n# 生还比例饼图\ndata['Survived'].value_counts().plot.pie(explode=[0,0.1],autopct='%1.1f%%',ax=ax[0],shadow=True)\nax[0].set_title('Survived')\nax[0].set_ylabel('')\n# 生还数量直方图\nsns.countplot('Survived',data=data,ax=ax[1])\nax[1].set_title('Survived')\nplt.show()\n\n\n从图中可以看出泰坦尼克沉船事件中还是凶多吉少的。因为在 891 名船客中,只有约 38% 左右的人幸免于难,那么接下来尝试使用数据集中不同的特征,来看看他们的生还率有多少。其实这样一个过程我们可以看出大概有哪些类型的船客活了下来。\n性别与生还率的关系\n首先,看看不同性别的生还者数量。\ndata.groupby(['Sex','Survived'])['Survived'].count()\n\n\n看上去好想女性船客的生还率高一些,我们不妨再可视化一下。\nf,ax=plt.subplots(1,2,figsize=(18,8))\ndata[['Sex','Survived']].groupby(['Sex']).mean().plot.bar(ax=ax[0])\nax[0].set_title('Survived vs Sex')\nsns.countplot('Sex',hue='Survived',data=data,ax=ax[1])\nax[1].set_title('Sex:Survived vs Dead')\nplt.show()\n\n\n从图中可以看出一个比较有趣的现象,船上的男人是比女人多了 200 多人,但是女人生还的人数几乎是男人生还的人数的两倍,女人的存活率约为 75% ,而男人的存活率约为 19% 的样子。所以 Sex 这个特征应该是一个能够很好的区分一个人是否生还的特征。而且对于生还来说,好像是女士优先。\n船票类型与生还率的关系\n船票类型分三个档次,其中 1 为一等舱, 2 为二等舱, 3 为三等舱。既然船舱分三六九等,那么是不是越高级的舱,它的生还率越高呢?\nf,ax=plt.subplots(1,2,figsize=(18,8))\ndata['Pclass'].value_counts().plot.bar(ax=ax[0])\nax[0].set_title('Number Of Passengers By Pclass')\nax[0].set_ylabel('Count')\nsns.countplot('Pclass',hue='Survived',data=data,ax=ax[1])\nax[1].set_title('Pclass:Survived vs Dead')\nplt.show()\n\n\n虽然说钱不是万能的,但从可视化结果可以看出,一等舱的生还率最高,大于为 63%,二等舱的生还率约为 48% ,而且虽然三等舱的船客人数是最多的,但生还率确是最低的。所以不难看出,金钱地位还是很重要的,也许一等舱周围有比较多的救生设备。\n上流女性与生还率的关系\n从前两次可视化结果可以看出,女性,上流人士成为了是否能够活下来的关键,那么上流女性(两者的结合)的生还率会不会很高呢?\nsns.factorplot('Pclass','Survived',hue='Sex',data=data)\nplt.show()\n\n\n从这张图可以看出一等舱的女性(上流女性)的生还率非常高!几乎接近了百分之百!而且二等舱和三等舱的女性的生还率也远比男性的生还率高。这也验证了我们的猜测,在沉船后是优先女性和一等舱的船客的。\n年龄与生还率的关系\n首先可以先看一下训练集中船客的年龄的最值和均值。\nprint('Oldest Passenger was of:',data['Age'].max(),'Years')\nprint('Youngest Passenger was of:',data['Age'].min(),'Years')\nprint('Average Age on the ship:',data['Age'].mean(),'Years')\n\n\n年纪最大的是80岁的老爷爷或者老太太,最小的是刚出生的小 baby, 平均年龄快 30 岁。这个还是符合常理的。接下来我们看看船舱等级,年龄和生还率的关系,以及性别,年龄和生还率的关系。\nf,ax=plt.subplots(1,2,figsize=(18,8))\nsns.violinplot(\"Pclass\",\"Age\", hue=\"Survived\", data=data,split=True,ax=ax[0])\nax[0].set_title('Pclass and Age vs Survived')\nax[0].set_yticks(range(0,110,10))\nsns.violinplot(\"Sex\",\"Age\", hue=\"Survived\", data=data,split=True,ax=ax[1])\nax[1].set_title('Sex and Age vs Survived')\nax[1].set_yticks(range(0,110,10))\nplt.show()\n\n\n从可视化结果可以看出:\n\n儿童的数量随着船舱等级的增加而增加,10 岁以下的小朋友存活率仿佛都还挺高的,跟船舱等级好像没有太大关系。\n\n来自一等舱的 20-50 岁的船客的存活率很高,而且对女性的生还率一如既往的高。\n\n对于男性来说,年纪越大,生还率越低。\n\n\n不过我们的年龄是有缺失值的,如果图简单,可以使用平均年龄来填充缺失的年龄。但是这样做并不合适,比如人家只是个 5 岁的小屁孩,但是你把人家强行改成 29 岁显然是不合适的。那有没有能够更加准确地知道缺失的年龄是多少的方法呢?有!我们可以根据姓名来推断缺失的年龄,因为姓名中有很多类似 Mr 或者 Mrs 这样的前缀,所以我们可以根据姓名的前缀来填充缺失的年龄。\n填充缺失年龄\n外国人的姓名和我们中国人的姓名不太一样,一般都会有 Mr 、 Mrs 、Miss 、Dr 等特殊前缀。所以我们可以先提取姓名中的前缀。\ndata['Initial']=0\nfor _ in data:\n data['Initial']=data.Name.str.extract('([A-Za-z]+)\\.')\n\n这样我们能够提取出诸如:Capt 、Col 、Don 、Lady 、Major 、Sir 等前缀,接着我们可以将这些前缀替换成 Miss 、 Mr 、 Mrs 、 Other 这四个类别,并统计这四个类别的平均年龄。\ndata['Initial'].replace(['Mlle','Mme','Ms','Dr','Major','Lady','Countess','Jonkheer','Col','Rev','Capt','Sir','Don'],['Miss','Miss','Miss','Mr','Mr','Mrs','Mrs','Other','Other','Other','Mr','Mr','Mr'],inplace=True)\n\ndata.groupby('Initial')['Age'].mean()\n\n\n接着可以根据前缀来填充缺失的年龄。\ndata.loc[(data.Age.isnull())&(data.Initial=='Mr'),'Age']=33\ndata.loc[(data.Age.isnull())&(data.Initial=='Mrs'),'Age']=36\ndata.loc[(data.Age.isnull())&(data.Initial=='Miss'),'Age']=22\ndata.loc[(data.Age.isnull())&(data.Initial=='Other'),'Age']=46\n\n填充完缺失值后,可以尝试可视化一下。\nf,ax=plt.subplots(1,2,figsize=(20,10))\ndata[data['Survived']==0].Age.plot.hist(ax=ax[0],bins=20,edgecolor='black',color='red')\nax[0].set_title('Survived= 0')\nx1=list(range(0,85,5))\nax[0].set_xticks(x1)\ndata[data['Survived']==1].Age.plot.hist(ax=ax[1],color='green',bins=20,edgecolor='black')\nax[1].set_title('Survived= 1')\nx2=list(range(0,85,5))\nax[1].set_xticks(x2)\nplt.show()\n\n\n从图中可以看出 5 岁以下的小屁孩的生还率比较高,80 岁的老人活下来了。\nsns.factorplot('Pclass','Survived',col='Initial',data=data)\nplt.show()\n\n\n嗯,女性和小孩的生还率比较高。\n登船口岸与生还率的关系\n先把口岸和生还率的关系画出来。\nsns.factorplot('Embarked','Survived',data=data)\nfig=plt.gcf()\nfig.set_size_inches(5,3)\nplt.show()\n\n\n可以看出从 C 号口岸上船的生还率最高,最低的是 S 号口岸。嗯,好像并没有什么线索,我们可以再深入一点。\nf,ax=plt.subplots(2,2,figsize=(20,15))\nsns.countplot('Embarked',data=data,ax=ax[0,0])\nax[0,0].set_title('No. Of Passengers Boarded')\nsns.countplot('Embarked',hue='Sex',data=data,ax=ax[0,1])\nax[0,1].set_title('Male-Female Split for Embarked')\nsns.countplot('Embarked',hue='Survived',data=data,ax=ax[1,0])\nax[1,0].set_title('Embarked vs Survived')\nsns.countplot('Embarked',hue='Pclass',data=data,ax=ax[1,1])\nax[1,1].set_title('Embarked vs Pclass')\nplt.subplots_adjust(wspace=0.2,hspace=0.5)\nplt.show()\n\n\n现在能看出很多信息了:\n\n上船人数最多的口岸是 S 号口岸,而且在 S 号口岸上船的人大多数都是三等舱的船客。\nC 号口岸上船的生还率最高,可能大部分 C 口岸上船的人是一等舱和二等舱船客吧。\n虽然有很多一等舱的土豪们基本上都是在 S 口岸上船的,但是 S 口岸的的生还率最低。这是因为 S 口岸上船的人中有很多都是三等舱的船客。\nQ 号口岸上船的人中有 90% 多都是三等舱的船客。\n\nsns.factorplot('Pclass','Survived',hue='Sex',col='Embarked',data=data)\nplt.show()\n\n\n我们可以看出:\n\n一等舱和二等舱的女性的生还率几乎为 100%, 这与女性是一等舱还是二等舱没啥关系。\nS 号口岸上船并且是三等舱的,不管是男的还是女的,生还率都很低。金钱决定命运。。。\nQ 号口岸上船的男性几乎团灭,因为Q 号口岸上船的基本上都是三等舱船客。\n\n填充缺失口岸\n由于大多数人都是从 S 号口岸上的船,我们可以假设由于人多,所以在 S 口岸登记信息时漏了几位船客,所以不妨用 S 号口岸填充缺失值。\ndata['Embarked'].fillna('S',inplace=True)\n\n兄弟姐妹的数量与生还率的关系\nf,ax=plt.subplots(1,2,figsize=(20,8))\nsns.barplot('SibSp','Survived',data=data,ax=ax[0])\nax[0].set_title('SibSp vs Survived')\nsns.factorplot('SibSp','Survived',data=data,ax=ax[1])\nax[1].set_title('SibSp vs Survived')\nplt.close(2)\nplt.show()\n\n\n从图可以看出,如果一位船客是单独一个人上船旅游,没有兄弟姐妹而且是单身,那么他有大约 34% 的生还率,生还率比较低。如果兄弟姐妹的数量变多,那么生还率还是呈下降趋势的。这其实挺合理的,因为如果是一个家庭在船上的话,可能会设法救他们而不是救自己,这样一来可能谁都救不了。\n父母的数量与生还率的关系\nf,ax=plt.subplots(1,2,figsize=(20,8))\nsns.barplot('Parch','Survived',data=data,ax=ax[0])\nax[0].set_title('Parch vs Survived')\nsns.factorplot('Parch','Survived',data=data,ax=ax[1])\nax[1].set_title('Parch vs Survived')\nplt.close(2)\nplt.show()\n\n\n从图上看会发现结果和上面的比较相似,父母在船上的船客有更大的生还机会。而且对于那些在船上有 1-3 个父母的人来说,生还率还是比较高的。\n花费与生还率的关系\n首先,先看一下花费的最值和均值。\nprint('Highest Fare was:',data['Fare'].max())\nprint('Lowest Fare was:',data['Fare'].min())\nprint('Average Fare was:',data['Fare'].mean())\n\n\n惊奇的发现,居然有人可以享受免费豪华邮轮!!!!\nf,ax=plt.subplots(1,3,figsize=(20,8))\nsns.distplot(data[data['Pclass']==1].Fare,ax=ax[0])\nax[0].set_title('Fares in Pclass 1')\nsns.distplot(data[data['Pclass']==2].Fare,ax=ax[1])\nax[1].set_title('Fares in Pclass 2')\nsns.distplot(data[data['Pclass']==3].Fare,ax=ax[2])\nax[2].set_title('Fares in Pclass 3')\nplt.show()\n\n\n从图中可以看出平均花费其实是二等舱的普遍消费水平,但是三等舱的人数是最多的,而三等舱的人群中花费人数最多的是 10 左右,因此平均 32 的花费是被有钱的大佬给提上去的。\n简单总结一下\n看了这么多特征对于生还的影响,可能有点懵,不妨先简单总结一下根据可视化结果所获得的信息。\n\n性别:女性的生还率高\n船舱等级:越有钱越容易活下来,头等舱的生还率最高,三等舱的生还率最低。\n年龄:10 岁以下的小朋友的存活率比较高,15-35 岁的年轻人存活率低。可能年轻人就是炮灰吧。\n口岸:即使大多数一等舱的船客在 S 号口岸上的船, 但生还率不是最高的。 Q 号口岸的基本上是三等舱的船客。\n兄弟姐妹父母爱人数量:有 1-2 个兄弟姐妹,配偶在船上,或 1-3 个父母的生还率比较高,独自一人或者一个大家庭都在船上的生还率比较低。\n\n特征之间的相关性系数\n相关性分为正相关与负相关,正相关指的是:如果特征 A 的数值变大会导致特征 B 的数值变大;负相关指的是:如果特征 A 的数值变小会导致特征 B 的数值变大。通常使用 [-1, 1] 的数值来表示两个特征之间的相关性,这个值称为相关性系数。若该系数为 1 那么表示两个特征之间完全正相关,若为 -1 则表示完全负相关,若为 0 则表示两个特征之间没有相关性(线性的)。\n如果现在两个特征高度相关或者完全相关,这就意味着这两个特征都包含高度相似的信息,并且信息的差异非常小,所以其中一个特征是多余的。在构建模型时,我们应该尽量消除这种多余的特征,因为这样能减少训练的时间,也可以在某种程度上缓解过拟合。\n所以接下来用热力图对相关性系数进行可视化。\nsns.heatmap(data.corr(),annot=True,cmap='RdYlGn',linewidths=0.2) #data.corr()-->correlation matrix\nfig=plt.gcf()\nfig.set_size_inches(10,8)\nplt.show()\n\n\n从热力图上可以看出这些特征之间没有太大的相关性,最高的也就 SibSp与Parch,值为 0.41 。\n"},"titanic/feature engerning.html":{"url":"titanic/feature engerning.html","title":"特征工程","keywords":"","body":"特征工程\n什么是特征工程?其实每当我们拿到数据时,并不是所有的特征都是有用的,可能有许多冗余的特征需要删掉,或者根据 EDA 的结果,我们可以根据已有的特征来添加新的特征,这其实就是特征工程。\n接下来我们来尝试对一些特征进行处理。\n年龄离散化\n年龄是一个连续型的数值特征,有的机器学习算法对于连续性数值特征不太友好,例如决策树、随机森林等 tree-base model。所以我们可以考虑将年龄转换成年龄段。例如将年龄小于 16 的船客置为 0 ,16 到 32 岁之间的置为 1 等。\ndata['Age_band']=0\ndata.loc[data['Age']16)&(data['Age']32)&(data['Age']48)&(data['Age']64,'Age_band']=4\n\n\n我们可以看一下转换成年龄段后,年龄段与生还率的关系。\nsns.factorplot('Age_band','Survived',data=data,col='Pclass')\nplt.show()\n\n\n可以看出和我们之前 EDA 的结果相符,年龄越大,生还率越低。\n家庭成员数量与是否孤身一人\n由于家庭成员数量和是否孤身一人好想对于是否生还有影响,所以我们不妨添加新的特征。\ndata['Family_Size']=0\ndata['Family_Size']=data['Parch']+data['SibSp']\ndata['Alone']=0\ndata.loc[data.Family_Size==0,'Alone']=1\n\n然后再可视化看一下\nf,ax=plt.subplots(1,2,figsize=(18,6))\nsns.factorplot('Family_Size','Survived',data=data,ax=ax[0])\nax[0].set_title('Family_Size vs Survived')\nsns.factorplot('Alone','Survived',data=data,ax=ax[1])\nax[1].set_title('Alone vs Survived')\nplt.close(2)\nplt.close(3)\nplt.show()\n\n\n从图中可以很明显的看出,如果你是一个人,那么生还的几率比较低,而且对于人数大于 4 人的家庭来说生还率也比较低。感觉,这可能也是一个比较好的特征,可以再深入的看一下。\nsns.factorplot('Alone','Survived',data=data,hue='Sex',col='Pclass')\nplt.show()\n\n\n可以看出,除了三等舱的单身女性的生还率比非单身女性的生还率高外,单身并不是什么好事。\n花费离散化\n和年龄一样,花费也是一个连续性的数值特征,所以我们不妨将其离散化。\ndata['Fare_cat']=0\ndata.loc[data['Fare']7.91)&(data['Fare']14.454)&(data['Fare']31)&(data['Fare']\n\n很明显,花费越多生还率越高,金钱决定命运。\n将字符串特征转换为数值型特征\n由于我们的机器学习模型不支持字符串,所以需要将一些有用的字符串类型的特征转换成数值型的特征,比如:性别,口岸,姓名前缀。\ndata['Sex'].replace(['male','female'],[0,1],inplace=True)\ndata['Embarked'].replace(['S','C','Q'],[0,1,2],inplace=True)\ndata['Initial'].replace(['Mr','Mrs','Miss','Master','Other'],[0,1,2,3,4],inplace=True)\n\n删掉没多大用处的特征\n\n姓名:难道姓名和生死有关系?这也太玄乎了,我不信,所以把它删掉\n年龄:由于已经根据年龄生成了新的特征“年龄段”,所以这个特征也需要删除。\n票:票这个特征感觉是一堆随机的字符串,所以删掉。\n花费:和年龄一样,删掉。\n船舱:由于有很多缺失值,不好填充,所以可以考虑删掉。\n船客ID:ID和生死应该没啥关系,所以删掉。\n\ndata.drop(['Name','Age','Ticket','Fare','Cabin','PassengerId'],axis=1,inplace=True)\n\n"},"titanic/fit and predict.html":{"url":"titanic/fit and predict.html","title":"构建模型进行预测","keywords":"","body":"构建模型进行预测\n做好数据预处理后,可以将数据喂给我们的机器学习模型来进行训练和预测了。不过在构建模型之前,我们要使用处理训练集数据的方式来处理测试集。\ntest_data=pd.read_csv('./Titanic/test.csv')\n\ntest_data['Initial']=0\nfor i in test_data:\n test_data.loc[:, 'Initial'] = test_data.Name.str.extract('([A-Za-z]+)\\.',expand=False) #lets extract the Salutations\n\ntest_data.loc[:, 'Initial'].replace(['Mlle','Mme','Ms','Dr','Major','Lady','Countess','Jonkheer','Col','Rev','Capt','Sir','Don'],['Miss','Miss','Miss','Other','Mr','Mrs','Mrs','Other','Other','Other','Mr','Mr','Mr'],inplace=True)\n\ntest_data.loc[(test_data.Age.isnull())&(test_data.Initial=='Mr'),'Age']=33\ntest_data.loc[(test_data.Age.isnull())&(test_data.Initial=='Mrs'),'Age']=36\ntest_data.loc[(test_data.Age.isnull())&(test_data.Initial=='Miss'),'Age']=22\ntest_data.loc[(test_data.Age.isnull())&(test_data.Initial=='Other'),'Age']=46\n\ntest_data['Embarked'].fillna('S', inplace=True)\n\ntest_data['Age_band']=0\ntest_data.loc[test_data['Age']16)&(test_data['Age']32)&(test_data['Age']48)&(test_data['Age']64,'Age_band']=4\n\ntest_data['Family_Size']=0\ntest_data['Family_Size']=test_data['Parch']+test_data['SibSp']+1\ntest_data['Alone']=0\ntest_data.loc[test_data.Family_Size==1,'Alone']=1\n\ntest_data['Fare_cat']=0\ntest_data.loc[test_data['Fare']7.91)&(test_data['Fare']14.454)&(test_data['Fare']31)&(test_data['Fare']\n然后可以使用机器学习模型来训练并预测了,这里使用的是随机森林。\nY_train = data['Survived']\nX_train = data.drop(['Survived'], axis=1)\n\nY_test = test_data['Survived']\nX_test = test_data.drop(['Survived'], axis=1)\n\nclf = RandomForestClassifier(n_estimators=10)\nclf.fit(X_train, Y_train)\npredict = clf.predict(X_test)\nprint(accuracy_score(Y_test, predict))\n\n此时看到预测的准确率达到了 0.8275 。\n"},"titanic/tuning.html":{"url":"titanic/tuning.html","title":"调参","keywords":"","body":"调参\n很多机器学习算法有很多可以调整的参数(即超参数),例如我们用的随机森林需要我们指定森林中有多少棵决策树,没棵决策树的最大深度等。这些超参数都或多或少的会影响这模型的性能。那么怎样才能找到合适的超参数,来让我们的模型性能达到比较好的效果呢?可以使用网格搜索!\n网格搜索的意思其实就是遍历所有我们想要尝试的参数组合,看看哪个参数组合的性能最高,那么这组参数组合就是模型的最佳参数。\nsklearn 为我们提供了网格搜索的接口,我们能很方便的进行网格搜索。\nfrom sklearn.model_selection import GridSearchCV\n\n# 想要调整的参数的字典,字典的key为参数名字,value为想要尝试参数值\nparam_grid = {'n_estimators': [10, 20, 50, 100, 150, 200],'max_depth': [5, 10, 15, 20, 25, 30]}\n\n# 采用5折验证的方式进行网格搜索,分类器为随机森林\ngrid_search = GridSearchCV(RandomForestClassifier(), param_grid, cv=5)\ngrid_search.fit(X_train, Y_train)\n\n# 打印最佳参数组合\nprint(grid_search.best_params_)\n# 打印最佳参数组合时模型的最佳性能\nprint(grid_search.best_score_)\n\n\n可以看到经过调参之后,我们的随机森林模型的性能提高到了 0.8323 ,提升了接近 1% 的准确率。然后我们使用最佳参数构造随机森林,并对测试集测试会发现,测试集的准确率达到了 0.8525。\nY_train = data['Survived']\nX_train = data.drop(['Survived'], axis=1)\n\nY_test = test_data['Survived']\nX_test = test_data.drop(['Survived'], axis=1)\n\nclf = RandomForestClassifier(n_estimators=50, max_depth=5)\nclf.fit(X_train, Y_train)\npredict = clf.predict(X_test)\nprint(accuracy_score(Y_test, predict))\n\n"},"pingpong/what is reinforce learning.html":{"url":"pingpong/what is reinforce learning.html","title":"什么是强化学习","keywords":"","body":"什么是强化学习\n强化学习是一类算法,是让计算机实现从一开始完全随机的进行操作,通过不断地尝试,从错误中学习,最后找到规律,学会了达到目的的方法。这就是一个完整的强化学习过程。让计算机在不断的尝试中更新自己的行为,从而一步步学习如何操自己的行为得到高分。\n它主要包含四个元素,Agent、环境状态、行动、奖励,强化学习的目标就是获得最多的累计奖励。\n让我们想象一下比赛现场:\n计算机有一位虚拟的裁判,这个裁判他不会告诉你如何行动,如何做决定,他为你做的事只有给你的行为打分,最开始,计算机完全不知道该怎么做,行为完全是随机的,那计算机应该以什么形式学习这些现有的资源,或者说怎么样只从分数中学习到我应该怎样做决定呢?很简单,只需要记住那些高分,低分对应的行为,下次用同样的行为拿高分, 并避免低分的行为。\n计算机就是 Agent,他试图通过采取行动来操纵环境,并且从一个状态转变到另一个状态,当他完成任务时给高分(奖励),但是当他没完成任务时,给低分(无奖励)。这也是强化学习的核心思想。\n\n在强化学习中有很多算法,如果按类别划分可以划分成 model-based (基于模型)和 model-free (不基于模型)两大类。\n如果我们的 Agent 不理解环境,环境给了什么就是什么,我们就把这种方法叫做 model-free,这里的 model 就是用模型来表示环境,理解环境就是学会了用一个模型来代表环境,所以这种就是 model-based 方法。\nModel-free 的方法有很多, 像 Q learning、Sarsa、Policy Gradients 都是从环境中得到反馈然后从中学习。而 model-based 只是多了一道程序,为真实世界建模,也可以说他们都是 model-free 的强化学习, 只是 Model-based 多出了一个虚拟环境,我们可以先在虚拟环境中尝试,如果没问题,再拿到现实环境中来。\nmodel-free 中, Agent 只能按部就班,一步一步等待真实世界的反馈,再根据反馈采取下一步行动。而 model-based,能通过想象来预判断接下来将要发生的所有情况,然后选择这些想象情况中最好的那种,并依据这种情况来采取下一步的策略,这也就是围棋场上 AlphaGo 能够超越人类的原因。\n\n在这里主要介绍一下 model-free 中基于策略的一种算法,Policy Gradient。在介绍该算法之前,我们先要明确一下这个雅达利乒乓球游戏中的环境状态是游戏画面,Agent是我们操作的挡板,奖励是分数,动作是上或者下。\n\n"},"pingpong/Policy Gradient.html":{"url":"pingpong/Policy Gradient.html","title":"Policy Gradient原理","keywords":"","body":"Policy Gradient\nPolicy Gradient的核心思想\n其实 Policy Gradient 的核心思想非常简单,就是找一个函数π\\piπ,这个函数π\\piπ能够根据现在环境的状态(state)来产生接下来要采取的行动或者动作(action)。即π(state)→action\\pi(state)\\rightarrow actionπ(state)→action。\n函数π\\piπ其实可以看成是一个模型,那么想在无数次尝试中寻找出能让 Agent 尽量拿高分的模型应该怎样来找呢?我相信您应该猜到了!没错!就是神经网络!\n我们可以将游戏画面传给神经网络作为输入,然后神经网络预测一下当前游戏画面下,下一步动作的概率分布。\n\n细心的您可能会发现,如果每次取概率最高的动作作为下一步的动作,那不就成分类了么。其实 Policy Gradient 的并不是每次都选取概率最高的动作,而是根据动作的概率分布进行采样。也就是说就算我预测出来的向上挪的概率为 80% ,也不一定会向上挪。\n那么为什么采样而不是直接选取概率最大的呢?因为这样很有灵性。可以想象一下,我们和别人下棋的时候,如果一直按照套路来下,那么对手很可能能够猜到我们下一步棋会怎么走,从而占据主动。如果我们时不时地不按套路出牌,但是这种不按套路的动作不会降低太多对于我们能够赢下这一局棋的几率。那么对手很可能会不知所措,主动权就掌握在我们手里。就像《天龙八部》中虚竹大破珍珑棋局时一样,可能有灵性一点,会有意想不到的效果。\n\nPolicy Gradient 的原理\n现在已经知道 Policy Gradient 是通过神经网络来训练模型,该模型需要根据环境状态来预测出下一步动作的概率分布,并根据这个概率分布进行采样,将采样到的动作作为下一步的动作。\n那么会有一个灵魂拷问,就是怎样来鉴定我的神经网络是好还是坏呢?很显然,当然是赢的越多越好了!所以我们不妨假设,让计算机玩 10 把乒乓球游戏,那么可能会有这样的一个统计结果。\n\n那么怎样评价这 10 把游戏打的好还是不好呢?也很明细,把 10 把游戏的所有反馈全部都加起来就好了。如果把这些反馈的和称为总反馈(总得分),那么就有总反馈(总得分)=第1把反馈1+第1把反馈2+...+第10把反馈m。也就是说总反馈越高越好。\n说到这,有一个问题需要弄清楚:假设总共玩了 100 把,每 10 把计算一次总反馈,那么这 10 次的总反馈会不会是一模一样的呢?其实仔细想想会发现不会一摸一样,因为:\n\n游戏的状态实时在变,所以环境状态不可能一直是一样的。\n动作是从一个概率分布中采样出来的。\n\n既然总反馈一直会变,那么我们可以尝试换一种思路,即计算总反馈的期望,即总反馈的期望越高越好。那这个期望怎么算呢?\n首先我们可以将每一把游戏看成一个游戏序列(状态1->动作1->反馈1->状态2->动作2->反馈2 ... 状态N->动作N->反馈N)。那么每一个游戏序列(即每一把游戏)的反馈=反馈1+反馈2+...+反馈N。因此,若假设R(τ)R(\\tau)R(τ)表示游戏序列τ\\tauτ的反馈,则有:R(τ)=∑n=1NτnR(\\tau)=\\sum_{n=1}^N\\tau_nR(τ)=∑​n=1​N​​τ​n​​。\n如果我们把整个乒乓球游戏所有可能出现的状态,动作,反馈组合起来看成是玩了 N(N很大很大) 把游戏,就会有 N 个游戏序列(游戏序列1,游戏序列2,游戏序列3, ... , 游戏序列N)。那么我们在玩游戏时所得到的游戏序列实际上就是从这 N 个游戏序列中采样得到的。\n所以我们游戏的总的反馈期望Rθ‾\\overline{R_\\theta}​R​θ​​​​​可表示为:Rθ‾=∑τR(τ)P(τ∣θ)\\overline{R_\\theta}=\\sum_\\tau R(\\tau)P(\\tau|\\theta)​R​θ​​​​​=∑​τ​​R(τ)P(τ∣θ)。这个公式看起来复杂,其实不难理解。\n\n假设我们玩了 10 把游戏,就相当于得到了 10 个游戏序列[τ1,τ2,...,τ10\\tau_1, \\tau_2, ..., \\tau_{10}τ​1​​,τ​2​​,...,τ​10​​]。这 10 个游戏序列就相当于从 P 中采样了 10 次τ\\tauτ。所以总反馈期望Rθ‾\\overline{R_\\theta}​R​θ​​​​​又可以近似的表示为:\n\nRθ‾≈1N∑n=1NR(τn)\r\n\\overline{R_\\theta} \\approx \\frac{1}{N}\\sum_{n=1}^NR(\\tau^n)\r\n​R​θ​​​​​≈​N​​1​​∑​n=1​N​​R(τ​n​​)\n\n\n由于Rθ‾\\overline{R_\\theta}​R​θ​​​​​的值越大越好,所以我们可以使用梯度上升的方式来更新θ\\thetaθ。所以就有如下数学推导:\n\n又由于:\n\nRθ‾=∑τR(τ)P(τ∣θ)≈1N∑n=1NR(τn)\r\n\\overline{R_\\theta} = \\sum_\\tau R(\\tau)P(\\tau|\\theta) \\approx \\frac{1}{N}\\sum_{n=1}^NR(\\tau^n)\r\n​R​θ​​​​​=∑​τ​​R(τ)P(τ∣θ)≈​N​​1​​∑​n=1​N​​R(τ​n​​)\n\n\n所以就有:\n\n∇Rθ‾≈1N∑n=1NR(τn)∇logP(τn∣θ)\r\n\\nabla \\overline{R_\\theta} \\approx \\frac{1}{N}\\sum_{n=1}^NR(\\tau^n) \\nabla logP(\\tau^n|\\theta)\r\n∇​R​θ​​​​​≈​N​​1​​∑​n=1​N​​R(τ​n​​)∇logP(τ​n​​∣θ)\n\n\n您会发现∑n=1NR(τn)\\sum_{n=1}^NR(\\tau^n)∑​n=1​N​​R(τ​n​​)很好算,只要把反馈全部加起来就完事了,难算的是∇logP(τn∣θ)\\nabla logP(\\tau^n|\\theta)∇logP(τ​n​​∣θ)。所以我们来看一下∇logP(τn∣θ)\\nabla logP(\\tau^n|\\theta)∇logP(τ​n​​∣θ)应该怎么算。\n由于一个游戏序列τ\\tauτ是由多个状态,动作,反馈构成的,即:\n\nτ={s1,a1,r1,s2,a2,r2,...,sT,aT,rT}\r\n\\tau=\\{s_1, a_1, r_1, s_2, a_2, r_2, ..., s_T, a_T, r_T\\}\r\nτ={s​1​​,a​1​​,r​1​​,s​2​​,a​2​​,r​2​​,...,s​T​​,a​T​​,r​T​​}\n\n\n所以:\n\nP(τ∣θ)=P(s1)P(a1∣s1,θ)P(r1,s2∣s1,a1)P(a2∣s2,θ)P(r2,s3∣s2,a2)...\r\nP(\\tau|\\theta)=P(s_1)P(a_1|s_1,\\theta)P(r_1,s_2|s_1,a_1)P(a_2|s_2,\\theta)P(r_2,s_3|s_2,a_2)...\r\nP(τ∣θ)=P(s​1​​)P(a​1​​∣s​1​​,θ)P(r​1​​,s​2​​∣s​1​​,a​1​​)P(a​2​​∣s​2​​,θ)P(r​2​​,s​3​​∣s​2​​,a​2​​)...\n\n\n稍微整理一下可知:\n\nP(τ∣θ)=P(s1)∏t=1TP(at∣st,θ)P(τt,st+1∣st,at)\r\nP(\\tau|\\theta)=P(s_1)\\prod_{t=1}^TP(a_t|s_t,\\theta)P(\\tau_t,s_{t+1}|s_t,a_t)\r\nP(τ∣θ)=P(s​1​​)∏​t=1​T​​P(a​t​​∣s​t​​,θ)P(τ​t​​,s​t+1​​∣s​t​​,a​t​​)\n\n\n然后两边取logloglog会得到:\n\nlogP(τ∣θ)=∑t=1T∇logP(at∣st,θ)\r\nlogP(\\tau|\\theta)=\\sum_{t=1}^T\\nabla logP(a_t|s_t,\\theta)\r\nlogP(τ∣θ)=∑​t=1​T​​∇logP(a​t​​∣s​t​​,θ)\n\n\nP(at∣st,θ)P(a_t|s_t,\\theta)P(a​t​​∣s​t​​,θ)其实就是我们神经网络根据环境状态预测出来的下一步的动作概率分布。\n\nOK,到这里,Policy Gradient 的数学推导全部推导完毕了。我们不妨用一张图来总结一下 Policy Gradient 的算法流程。流程如下:\n\n"},"pingpong/coding.html":{"url":"pingpong/coding.html","title":"使用Policy Gradient玩乒乓球游戏","keywords":"","body":"使用Policy Gradient玩乒乓球游戏\n安装 gym\n想要玩乒乓球游戏,首先得有乒乓球游戏。OpenAI 的 gym 为我们提供了模拟游戏的环境。使得我们能够很方便地得到游戏的环境状态,并作出动作。想要安装 gym 非常简单,只要在命令行中输入pip install gym即可。\n安装 atari_py\n由于乒乓球游戏是雅达利游戏机上的游戏,所以需要安装 atari_py 来实现雅达利环境的模拟。安装 atari_py 也很方便,只需在命令行中输入pip install --no-index -f https://github.com/Kojoley/atari-py/releases atari_py 即可。\n开启游戏\n当安装好所需要的库之后,我们可以使用如下代码开始游戏:\n# 开启乒乓球游戏环境\nimport gym\n\nenv = gym.make('Pong-v0')\n\n# 一直渲染游戏画面\nwhile True:\n env.render()\n # 随机做动作,并得到做完动作之后的环境(observation),反馈(reward),是否结束(done)\n observation, reward, done, _ = env.step(env.action_space.sample())\n\n游戏画面预处理\n由于env.step返回出来的 observation 是一张RGB的三通道图,而且我们的挡板怎么移动只跟挡板和球有关系,所以我们可以尝试将三通道图转换成一张二值化的图,其中挡板和球是 1 ,背景是 0 。\n\n# 游戏画面预处理\ndef prepro(I):\n I = I[35:195] #不要上面的记分牌\n I = I[::2, ::2, 0] #scale 0.5,所以I是高为80,宽为80的单通道图\n I[I == 144] = 0 # 背景赋值为0\n I[I == 109] = 0 # 背景赋值为0\n I[I != 0] = 1 # 目标为1\n return I.astype(np.float).ravel() #将二维图压成一维的数组\n\n# cur_x为预处理后的游戏画面\ncur_x = prepro(observation)\n\n游戏的画面是逐帧组成的,如果我们将当前帧和上一帧的图像相减就能得到能够表示两帧之间的变化的帧差图,将这样的帧差图作为神经网络的输入的话会是个不错的选择。\n# x为帧差图\nx = cur_x - prev_x\n# 将当前帧更新为上一帧\nprev_x = cur_x\n\n搭建神经网络\n神经网络可以根据自己的喜好来搭建,在这里我使用最简单的只有两层全连接层的网络模型来进行预测,由于我们挡板的动作只有上和下,所以最后的激活函数为 sigmoid 函数。\n# 神经网络中神经元的参数\nmodel = {}\n# 随机初始化第一层的神经元参数,总共200个神经元\nmodel['W1'] = np.random.randn(H, D) / np.sqrt(D)\n# 随机初始化第二层的神经元参数,总共200个神经元\nmodel['W2'] = np.random.randn(H) / np.sqrt(H)\n\ndef sigmoid(x):\n return 1.0 / (1.0 + np.exp(-x))\n\n# 神经网络的前向传播,x为输入的帧差图\ndef policy_forward(x):\n h = np.dot(model['W1'], x)\n # relu\n h[h \n训练神经网络\nwhile True:\n env.render()\n\n # 游戏画面预处理\n cur_x = prepro(observation)\n # 得到帧差图\n x = cur_x - prev_x if prev_x is not None else np.zeros(D)\n # 将上一帧更新为当前帧\n prev_x = cur_x\n\n #前向传播\n aprob, h = policy_forward(x)\n #从动作概率分布中采样,action=2表示往上挪,action=3表示往下挪\n action = 2 if np.random.uniform() \n加载模型玩游戏\n经过漫长的训练过程后,我们可以将训练好的模型加载进来开始玩游戏了。\nimport numpy as np\nimport pickle\nimport gym\n\nmodel = pickle.load(open('save.p', 'rb'))\n\nenv = gym.make(\"Pong-v0\")\nobservation = env.reset()\n\nwhile True:\n env.render()\n cur_x = prepro(observation)\n x = cur_x - prev_x if prev_x is not None else np.zeros(80*80)\n prev_x = cur_x\n aprob, h = policy_forward(x)\n #从动作概率分布中采样\n action = 2 if np.random.uniform() \n"},"recommand.html":{"url":"recommand.html","title":"实训推荐","keywords":"","body":"实训推荐\n关于本书的实验与涉及的案例均可以在平台进行体验,名称与链接如下:\n\n\n\n名称\n链接\n\n\n\n\n《机器学习》---绪论\nhttps://www.educoder.net/shixuns/4fhemfr9/challenges\n\n\n《机器学习》---模型评估与选择\nhttps://www.educoder.net/shixuns/cbsfh3r5/challenges\n\n\n《机器学习》---线性回归\nhttps://www.educoder.net/shixuns/4awq25iv/challenges\n\n\n《机器学习》---逻辑回归\nhttps://www.educoder.net/shixuns/tw9up75v/challenges\n\n\n《机器学习》---kNN算法\nhttps://www.educoder.net/shixuns/aw9bxy75/challenges\n\n\n《机器学习》---决策树\nhttps://www.educoder.net/shixuns/hl7wacq5/challenges\n\n\n《机器学习》---随机森林\nhttps://www.educoder.net/shixuns/ya8h7utx/challenges\n\n\n《机器学习》---k-means\nhttps://www.educoder.net/shixuns/k6fp4saq/challenges\n\n\n《机器学习》---AGNES\nhttps://www.educoder.net/shixuns/qy9gozt8/challenges\n\n\n泰坦尼克号生还预测\nhttps://www.educoder.net/shixuns/kz3fixv9/challenges\n\n\n\n也可通过扫码查看整套课程,二维码如下:\n\n\n\n\n"}}}