# coding: utf-8 import numpy as np def identity_function(x): return x def step_function(x): return np.array(x > 0, dtype=np.int) def sigmoid(x): return 1 / (1 + np.exp(-x)) def sigmoid_grad(x): return (1.0 - sigmoid(x)) * sigmoid(x) def relu(x): return np.maximum(0, x) def relu_grad(x): grad = np.zeros(x) grad[x>=0] = 1 return grad def softmax(x): if x.ndim == 2: x = x.T x = x - np.max(x, axis=0) y = np.exp(x) / np.sum(np.exp(x), axis=0) return y.T x = x - np.max(x) # 溢出对策 return np.exp(x) / np.sum(np.exp(x)) def mean_squared_error(y, t): return 0.5 * np.sum((y-t)**2) def cross_entropy_error(y, t): if y.ndim == 1: t = t.reshape(1, t.size) y = y.reshape(1, y.size) # 监督数据是one-hot-vector的情况下,转换为正确解标签的索引 if t.size == y.size: t = t.argmax(axis=1) batch_size = y.shape[0] return -np.sum(np.log(y[np.arange(batch_size), t] + 1e-7)) / batch_size def softmax_loss(X, t): y = softmax(X) return cross_entropy_error(y, t)