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295 lines
11 KiB
295 lines
11 KiB
from .module import Module
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from .. import functional as F
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from torch import Tensor
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__all__ = ['Dropout', 'Dropout1d', 'Dropout2d', 'Dropout3d', 'AlphaDropout', 'FeatureAlphaDropout']
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class _DropoutNd(Module):
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__constants__ = ['p', 'inplace']
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p: float
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inplace: bool
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def __init__(self, p: float = 0.5, inplace: bool = False) -> None:
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super().__init__()
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if p < 0 or p > 1:
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raise ValueError(f"dropout probability has to be between 0 and 1, but got {p}")
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self.p = p
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self.inplace = inplace
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def extra_repr(self) -> str:
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return f'p={self.p}, inplace={self.inplace}'
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class Dropout(_DropoutNd):
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r"""During training, randomly zeroes some of the elements of the input tensor with probability :attr:`p`.
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The zeroed elements are chosen independently for each forward call and are sampled from a Bernoulli distribution.
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Each channel will be zeroed out independently on every forward call.
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This has proven to be an effective technique for regularization and
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preventing the co-adaptation of neurons as described in the paper
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`Improving neural networks by preventing co-adaptation of feature
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detectors`_ .
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Furthermore, the outputs are scaled by a factor of :math:`\frac{1}{1-p}` during
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training. This means that during evaluation the module simply computes an
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identity function.
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Args:
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p: probability of an element to be zeroed. Default: 0.5
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inplace: If set to ``True``, will do this operation in-place. Default: ``False``
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Shape:
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- Input: :math:`(*)`. Input can be of any shape
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- Output: :math:`(*)`. Output is of the same shape as input
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Examples::
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>>> m = nn.Dropout(p=0.2)
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>>> input = torch.randn(20, 16)
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>>> output = m(input)
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.. _Improving neural networks by preventing co-adaptation of feature
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detectors: https://arxiv.org/abs/1207.0580
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"""
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def forward(self, input: Tensor) -> Tensor:
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return F.dropout(input, self.p, self.training, self.inplace)
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class Dropout1d(_DropoutNd):
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r"""Randomly zero out entire channels.
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A channel is a 1D feature map,
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e.g., the :math:`j`-th channel of the :math:`i`-th sample in the
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batched input is a 1D tensor :math:`\text{input}[i, j]`.
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Each channel will be zeroed out independently on every forward call with
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probability :attr:`p` using samples from a Bernoulli distribution.
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Usually the input comes from :class:`nn.Conv1d` modules.
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As described in the paper
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`Efficient Object Localization Using Convolutional Networks`_ ,
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if adjacent pixels within feature maps are strongly correlated
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(as is normally the case in early convolution layers) then i.i.d. dropout
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will not regularize the activations and will otherwise just result
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in an effective learning rate decrease.
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In this case, :func:`nn.Dropout1d` will help promote independence between
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feature maps and should be used instead.
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Args:
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p (float, optional): probability of an element to be zero-ed.
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inplace (bool, optional): If set to ``True``, will do this operation
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in-place
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Shape:
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- Input: :math:`(N, C, L)` or :math:`(C, L)`.
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- Output: :math:`(N, C, L)` or :math:`(C, L)` (same shape as input).
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Examples::
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>>> m = nn.Dropout1d(p=0.2)
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>>> input = torch.randn(20, 16, 32)
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>>> output = m(input)
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.. _Efficient Object Localization Using Convolutional Networks:
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https://arxiv.org/abs/1411.4280
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"""
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def forward(self, input: Tensor) -> Tensor:
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return F.dropout1d(input, self.p, self.training, self.inplace)
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class Dropout2d(_DropoutNd):
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r"""Randomly zero out entire channels.
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A channel is a 2D feature map,
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e.g., the :math:`j`-th channel of the :math:`i`-th sample in the
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batched input is a 2D tensor :math:`\text{input}[i, j]`.
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Each channel will be zeroed out independently on every forward call with
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probability :attr:`p` using samples from a Bernoulli distribution.
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Usually the input comes from :class:`nn.Conv2d` modules.
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As described in the paper
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`Efficient Object Localization Using Convolutional Networks`_ ,
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if adjacent pixels within feature maps are strongly correlated
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(as is normally the case in early convolution layers) then i.i.d. dropout
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will not regularize the activations and will otherwise just result
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in an effective learning rate decrease.
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In this case, :func:`nn.Dropout2d` will help promote independence between
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feature maps and should be used instead.
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Args:
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p (float, optional): probability of an element to be zero-ed.
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inplace (bool, optional): If set to ``True``, will do this operation
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in-place
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.. warning ::
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Due to historical reasons, this class will perform 1D channel-wise dropout
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for 3D inputs (as done by :class:`nn.Dropout1d`). Thus, it currently does NOT
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support inputs without a batch dimension of shape :math:`(C, H, W)`. This
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behavior will change in a future release to interpret 3D inputs as no-batch-dim
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inputs. To maintain the old behavior, switch to :class:`nn.Dropout1d`.
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Shape:
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- Input: :math:`(N, C, H, W)` or :math:`(N, C, L)`.
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- Output: :math:`(N, C, H, W)` or :math:`(N, C, L)` (same shape as input).
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Examples::
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>>> m = nn.Dropout2d(p=0.2)
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>>> input = torch.randn(20, 16, 32, 32)
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>>> output = m(input)
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.. _Efficient Object Localization Using Convolutional Networks:
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https://arxiv.org/abs/1411.4280
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"""
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def forward(self, input: Tensor) -> Tensor:
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return F.dropout2d(input, self.p, self.training, self.inplace)
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class Dropout3d(_DropoutNd):
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r"""Randomly zero out entire channels.
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A channel is a 3D feature map,
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e.g., the :math:`j`-th channel of the :math:`i`-th sample in the
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batched input is a 3D tensor :math:`\text{input}[i, j]`.
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Each channel will be zeroed out independently on every forward call with
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probability :attr:`p` using samples from a Bernoulli distribution.
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Usually the input comes from :class:`nn.Conv3d` modules.
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As described in the paper
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`Efficient Object Localization Using Convolutional Networks`_ ,
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if adjacent pixels within feature maps are strongly correlated
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(as is normally the case in early convolution layers) then i.i.d. dropout
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will not regularize the activations and will otherwise just result
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in an effective learning rate decrease.
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In this case, :func:`nn.Dropout3d` will help promote independence between
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feature maps and should be used instead.
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Args:
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p (float, optional): probability of an element to be zeroed.
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inplace (bool, optional): If set to ``True``, will do this operation
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in-place
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Shape:
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- Input: :math:`(N, C, D, H, W)` or :math:`(C, D, H, W)`.
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- Output: :math:`(N, C, D, H, W)` or :math:`(C, D, H, W)` (same shape as input).
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Examples::
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>>> m = nn.Dropout3d(p=0.2)
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>>> input = torch.randn(20, 16, 4, 32, 32)
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>>> output = m(input)
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.. _Efficient Object Localization Using Convolutional Networks:
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https://arxiv.org/abs/1411.4280
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"""
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def forward(self, input: Tensor) -> Tensor:
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return F.dropout3d(input, self.p, self.training, self.inplace)
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class AlphaDropout(_DropoutNd):
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r"""Applies Alpha Dropout over the input.
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Alpha Dropout is a type of Dropout that maintains the self-normalizing
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property.
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For an input with zero mean and unit standard deviation, the output of
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Alpha Dropout maintains the original mean and standard deviation of the
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input.
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Alpha Dropout goes hand-in-hand with SELU activation function, which ensures
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that the outputs have zero mean and unit standard deviation.
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During training, it randomly masks some of the elements of the input
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tensor with probability *p* using samples from a bernoulli distribution.
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The elements to masked are randomized on every forward call, and scaled
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and shifted to maintain zero mean and unit standard deviation.
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During evaluation the module simply computes an identity function.
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More details can be found in the paper `Self-Normalizing Neural Networks`_ .
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Args:
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p (float): probability of an element to be dropped. Default: 0.5
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inplace (bool, optional): If set to ``True``, will do this operation
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in-place
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Shape:
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- Input: :math:`(*)`. Input can be of any shape
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- Output: :math:`(*)`. Output is of the same shape as input
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Examples::
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>>> m = nn.AlphaDropout(p=0.2)
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>>> input = torch.randn(20, 16)
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>>> output = m(input)
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.. _Self-Normalizing Neural Networks: https://arxiv.org/abs/1706.02515
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"""
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def forward(self, input: Tensor) -> Tensor:
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return F.alpha_dropout(input, self.p, self.training)
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class FeatureAlphaDropout(_DropoutNd):
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r"""Randomly masks out entire channels.
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A channel is a feature map,
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e.g. the :math:`j`-th channel of the :math:`i`-th sample in the batch input
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is a tensor :math:`\text{input}[i, j]` of the input tensor). Instead of
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setting activations to zero, as in regular Dropout, the activations are set
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to the negative saturation value of the SELU activation function. More details
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can be found in the paper `Self-Normalizing Neural Networks`_ .
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Each element will be masked independently for each sample on every forward
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call with probability :attr:`p` using samples from a Bernoulli distribution.
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The elements to be masked are randomized on every forward call, and scaled
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and shifted to maintain zero mean and unit variance.
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Usually the input comes from :class:`nn.AlphaDropout` modules.
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As described in the paper
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`Efficient Object Localization Using Convolutional Networks`_ ,
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if adjacent pixels within feature maps are strongly correlated
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(as is normally the case in early convolution layers) then i.i.d. dropout
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will not regularize the activations and will otherwise just result
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in an effective learning rate decrease.
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In this case, :func:`nn.AlphaDropout` will help promote independence between
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feature maps and should be used instead.
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Args:
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p (float, optional): probability of an element to be zeroed. Default: 0.5
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inplace (bool, optional): If set to ``True``, will do this operation
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in-place
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Shape:
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- Input: :math:`(N, C, D, H, W)` or :math:`(C, D, H, W)`.
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- Output: :math:`(N, C, D, H, W)` or :math:`(C, D, H, W)` (same shape as input).
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Examples::
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>>> m = nn.FeatureAlphaDropout(p=0.2)
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>>> input = torch.randn(20, 16, 4, 32, 32)
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>>> output = m(input)
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.. _Self-Normalizing Neural Networks: https://arxiv.org/abs/1706.02515
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.. _Efficient Object Localization Using Convolutional Networks:
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https://arxiv.org/abs/1411.4280
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"""
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def forward(self, input: Tensor) -> Tensor:
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return F.feature_alpha_dropout(input, self.p, self.training)
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