| import warnings |
| |
| from .distance import PairwiseDistance |
| from .module import Module |
| from .. import functional as F |
| from .. import _reduction as _Reduction |
| |
| from torch import Tensor |
| from typing import Callable, Optional |
| |
| __all__ = ['L1Loss', 'NLLLoss', 'NLLLoss2d', 'PoissonNLLLoss', 'GaussianNLLLoss', 'KLDivLoss', |
| 'MSELoss', 'BCELoss', 'BCEWithLogitsLoss', 'HingeEmbeddingLoss', 'MultiLabelMarginLoss', |
| 'SmoothL1Loss', 'HuberLoss', 'SoftMarginLoss', 'CrossEntropyLoss', 'MultiLabelSoftMarginLoss', |
| 'CosineEmbeddingLoss', 'MarginRankingLoss', 'MultiMarginLoss', 'TripletMarginLoss', |
| 'TripletMarginWithDistanceLoss', 'CTCLoss'] |
| |
| class _Loss(Module): |
| reduction: str |
| |
| def __init__(self, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__() |
| if size_average is not None or reduce is not None: |
| self.reduction: str = _Reduction.legacy_get_string(size_average, reduce) |
| else: |
| self.reduction = reduction |
| |
| |
| class _WeightedLoss(_Loss): |
| def __init__(self, weight: Optional[Tensor] = None, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.register_buffer('weight', weight) |
| self.weight: Optional[Tensor] |
| |
| |
| class L1Loss(_Loss): |
| r"""Creates a criterion that measures the mean absolute error (MAE) between each element in |
| the input :math:`x` and target :math:`y`. |
| |
| The unreduced (i.e. with :attr:`reduction` set to ``'none'``) loss can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_n = \left| x_n - y_n \right|, |
| |
| where :math:`N` is the batch size. If :attr:`reduction` is not ``'none'`` |
| (default ``'mean'``), then: |
| |
| .. math:: |
| \ell(x, y) = |
| \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| :math:`x` and :math:`y` are tensors of arbitrary shapes with a total |
| of :math:`n` elements each. |
| |
| The sum operation still operates over all the elements, and divides by :math:`n`. |
| |
| The division by :math:`n` can be avoided if one sets ``reduction = 'sum'``. |
| |
| Supports real-valued and complex-valued inputs. |
| |
| Args: |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then |
| :math:`(*)`, same shape as the input. |
| |
| Examples:: |
| |
| >>> loss = nn.L1Loss() |
| >>> input = torch.randn(3, 5, requires_grad=True) |
| >>> target = torch.randn(3, 5) |
| >>> output = loss(input, target) |
| >>> output.backward() |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.l1_loss(input, target, reduction=self.reduction) |
| |
| |
| class NLLLoss(_WeightedLoss): |
| r"""The negative log likelihood loss. It is useful to train a classification |
| problem with `C` classes. |
| |
| If provided, the optional argument :attr:`weight` should be a 1D Tensor assigning |
| weight to each of the classes. This is particularly useful when you have an |
| unbalanced training set. |
| |
| The `input` given through a forward call is expected to contain |
| log-probabilities of each class. `input` has to be a Tensor of size either |
| :math:`(minibatch, C)` or :math:`(minibatch, C, d_1, d_2, ..., d_K)` |
| with :math:`K \geq 1` for the `K`-dimensional case. The latter is useful for |
| higher dimension inputs, such as computing NLL loss per-pixel for 2D images. |
| |
| Obtaining log-probabilities in a neural network is easily achieved by |
| adding a `LogSoftmax` layer in the last layer of your network. |
| You may use `CrossEntropyLoss` instead, if you prefer not to add an extra |
| layer. |
| |
| The `target` that this loss expects should be a class index in the range :math:`[0, C-1]` |
| where `C = number of classes`; if `ignore_index` is specified, this loss also accepts |
| this class index (this index may not necessarily be in the class range). |
| |
| The unreduced (i.e. with :attr:`reduction` set to ``'none'``) loss can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_n = - w_{y_n} x_{n,y_n}, \quad |
| w_{c} = \text{weight}[c] \cdot \mathbb{1}\{c \not= \text{ignore\_index}\}, |
| |
| where :math:`x` is the input, :math:`y` is the target, :math:`w` is the weight, and |
| :math:`N` is the batch size. If :attr:`reduction` is not ``'none'`` |
| (default ``'mean'``), then |
| |
| .. math:: |
| \ell(x, y) = \begin{cases} |
| \sum_{n=1}^N \frac{1}{\sum_{n=1}^N w_{y_n}} l_n, & |
| \text{if reduction} = \text{`mean';}\\ |
| \sum_{n=1}^N l_n, & |
| \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| Args: |
| weight (Tensor, optional): a manual rescaling weight given to each |
| class. If given, it has to be a Tensor of size `C`. Otherwise, it is |
| treated as if having all ones. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``None`` |
| ignore_index (int, optional): Specifies a target value that is ignored |
| and does not contribute to the input gradient. When |
| :attr:`size_average` is ``True``, the loss is averaged over |
| non-ignored targets. |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``None`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will |
| be applied, ``'mean'``: the weighted mean of the output is taken, |
| ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in |
| the meantime, specifying either of those two args will override |
| :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(N, C)` or :math:`(C)`, where `C = number of classes`, or |
| :math:`(N, C, d_1, d_2, ..., d_K)` with :math:`K \geq 1` |
| in the case of `K`-dimensional loss. |
| - Target: :math:`(N)` or :math:`()`, where each value is |
| :math:`0 \leq \text{targets}[i] \leq C-1`, or |
| :math:`(N, d_1, d_2, ..., d_K)` with :math:`K \geq 1` in the case of |
| K-dimensional loss. |
| - Output: If :attr:`reduction` is ``'none'``, shape :math:`(N)` or |
| :math:`(N, d_1, d_2, ..., d_K)` with :math:`K \geq 1` in the case of K-dimensional loss. |
| Otherwise, scalar. |
| |
| Examples:: |
| |
| >>> m = nn.LogSoftmax(dim=1) |
| >>> loss = nn.NLLLoss() |
| >>> # input is of size N x C = 3 x 5 |
| >>> input = torch.randn(3, 5, requires_grad=True) |
| >>> # each element in target has to have 0 <= value < C |
| >>> target = torch.tensor([1, 0, 4]) |
| >>> output = loss(m(input), target) |
| >>> output.backward() |
| >>> |
| >>> |
| >>> # 2D loss example (used, for example, with image inputs) |
| >>> N, C = 5, 4 |
| >>> loss = nn.NLLLoss() |
| >>> # input is of size N x C x height x width |
| >>> data = torch.randn(N, 16, 10, 10) |
| >>> conv = nn.Conv2d(16, C, (3, 3)) |
| >>> m = nn.LogSoftmax(dim=1) |
| >>> # each element in target has to have 0 <= value < C |
| >>> target = torch.empty(N, 8, 8, dtype=torch.long).random_(0, C) |
| >>> output = loss(m(conv(data)), target) |
| >>> output.backward() |
| """ |
| __constants__ = ['ignore_index', 'reduction'] |
| ignore_index: int |
| |
| def __init__(self, weight: Optional[Tensor] = None, size_average=None, ignore_index: int = -100, |
| reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(weight, size_average, reduce, reduction) |
| self.ignore_index = ignore_index |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.nll_loss(input, target, weight=self.weight, ignore_index=self.ignore_index, reduction=self.reduction) |
| |
| |
| class NLLLoss2d(NLLLoss): |
| def __init__(self, weight: Optional[Tensor] = None, size_average=None, ignore_index: int = -100, |
| reduce=None, reduction: str = 'mean') -> None: |
| warnings.warn("NLLLoss2d has been deprecated. " |
| "Please use NLLLoss instead as a drop-in replacement and see " |
| "https://pytorch.org/docs/master/nn.html#torch.nn.NLLLoss for more details.") |
| super().__init__(weight, size_average, ignore_index, reduce, reduction) |
| |
| |
| class PoissonNLLLoss(_Loss): |
| r"""Negative log likelihood loss with Poisson distribution of target. |
| |
| The loss can be described as: |
| |
| .. math:: |
| \text{target} \sim \mathrm{Poisson}(\text{input}) |
| |
| \text{loss}(\text{input}, \text{target}) = \text{input} - \text{target} * \log(\text{input}) |
| + \log(\text{target!}) |
| |
| The last term can be omitted or approximated with Stirling formula. The |
| approximation is used for target values more than 1. For targets less or |
| equal to 1 zeros are added to the loss. |
| |
| Args: |
| log_input (bool, optional): if ``True`` the loss is computed as |
| :math:`\exp(\text{input}) - \text{target}*\text{input}`, if ``False`` the loss is |
| :math:`\text{input} - \text{target}*\log(\text{input}+\text{eps})`. |
| full (bool, optional): whether to compute full loss, i. e. to add the |
| Stirling approximation term |
| |
| .. math:: |
| \text{target}*\log(\text{target}) - \text{target} + 0.5 * \log(2\pi\text{target}). |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| eps (float, optional): Small value to avoid evaluation of :math:`\log(0)` when |
| :attr:`log_input = False`. Default: 1e-8 |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Examples:: |
| |
| >>> loss = nn.PoissonNLLLoss() |
| >>> log_input = torch.randn(5, 2, requires_grad=True) |
| >>> target = torch.randn(5, 2) |
| >>> output = loss(log_input, target) |
| >>> output.backward() |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar by default. If :attr:`reduction` is ``'none'``, then :math:`(*)`, |
| the same shape as the input. |
| """ |
| __constants__ = ['log_input', 'full', 'eps', 'reduction'] |
| log_input: bool |
| full: bool |
| eps: float |
| |
| def __init__(self, log_input: bool = True, full: bool = False, size_average=None, |
| eps: float = 1e-8, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.log_input = log_input |
| self.full = full |
| self.eps = eps |
| |
| def forward(self, log_input: Tensor, target: Tensor) -> Tensor: |
| return F.poisson_nll_loss(log_input, target, log_input=self.log_input, full=self.full, |
| eps=self.eps, reduction=self.reduction) |
| |
| |
| class GaussianNLLLoss(_Loss): |
| r"""Gaussian negative log likelihood loss. |
| |
| The targets are treated as samples from Gaussian distributions with |
| expectations and variances predicted by the neural network. For a |
| ``target`` tensor modelled as having Gaussian distribution with a tensor |
| of expectations ``input`` and a tensor of positive variances ``var`` the loss is: |
| |
| .. math:: |
| \text{loss} = \frac{1}{2}\left(\log\left(\text{max}\left(\text{var}, |
| \ \text{eps}\right)\right) + \frac{\left(\text{input} - \text{target}\right)^2} |
| {\text{max}\left(\text{var}, \ \text{eps}\right)}\right) + \text{const.} |
| |
| where :attr:`eps` is used for stability. By default, the constant term of |
| the loss function is omitted unless :attr:`full` is ``True``. If ``var`` is not the same |
| size as ``input`` (due to a homoscedastic assumption), it must either have a final dimension |
| of 1 or have one fewer dimension (with all other sizes being the same) for correct broadcasting. |
| |
| Args: |
| full (bool, optional): include the constant term in the loss |
| calculation. Default: ``False``. |
| eps (float, optional): value used to clamp ``var`` (see note below), for |
| stability. Default: 1e-6. |
| reduction (str, optional): specifies the reduction to apply to the |
| output:``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction |
| will be applied, ``'mean'``: the output is the average of all batch |
| member losses, ``'sum'``: the output is the sum of all batch member |
| losses. Default: ``'mean'``. |
| |
| Shape: |
| - Input: :math:`(N, *)` or :math:`(*)` where :math:`*` means any number of additional |
| dimensions |
| - Target: :math:`(N, *)` or :math:`(*)`, same shape as the input, or same shape as the input |
| but with one dimension equal to 1 (to allow for broadcasting) |
| - Var: :math:`(N, *)` or :math:`(*)`, same shape as the input, or same shape as the input but |
| with one dimension equal to 1, or same shape as the input but with one fewer |
| dimension (to allow for broadcasting) |
| - Output: scalar if :attr:`reduction` is ``'mean'`` (default) or |
| ``'sum'``. If :attr:`reduction` is ``'none'``, then :math:`(N, *)`, same |
| shape as the input |
| |
| Examples:: |
| >>> loss = nn.GaussianNLLLoss() |
| >>> input = torch.randn(5, 2, requires_grad=True) |
| >>> target = torch.randn(5, 2) |
| >>> var = torch.ones(5, 2, requires_grad=True) # heteroscedastic |
| >>> output = loss(input, target, var) |
| >>> output.backward() |
| |
| >>> loss = nn.GaussianNLLLoss() |
| >>> input = torch.randn(5, 2, requires_grad=True) |
| >>> target = torch.randn(5, 2) |
| >>> var = torch.ones(5, 1, requires_grad=True) # homoscedastic |
| >>> output = loss(input, target, var) |
| >>> output.backward() |
| |
| Note: |
| The clamping of ``var`` is ignored with respect to autograd, and so the |
| gradients are unaffected by it. |
| |
| Reference: |
| Nix, D. A. and Weigend, A. S., "Estimating the mean and variance of the |
| target probability distribution", Proceedings of 1994 IEEE International |
| Conference on Neural Networks (ICNN'94), Orlando, FL, USA, 1994, pp. 55-60 |
| vol.1, doi: 10.1109/ICNN.1994.374138. |
| """ |
| __constants__ = ['full', 'eps', 'reduction'] |
| full: bool |
| eps: float |
| |
| def __init__(self, *, full: bool = False, eps: float = 1e-6, reduction: str = 'mean') -> None: |
| super().__init__(None, None, reduction) |
| self.full = full |
| self.eps = eps |
| |
| def forward(self, input: Tensor, target: Tensor, var: Tensor) -> Tensor: |
| return F.gaussian_nll_loss(input, target, var, full=self.full, eps=self.eps, reduction=self.reduction) |
| |
| |
| class KLDivLoss(_Loss): |
| r"""The Kullback-Leibler divergence loss. |
| |
| For tensors of the same shape :math:`y_{\text{pred}},\ y_{\text{true}}`, |
| where :math:`y_{\text{pred}}` is the :attr:`input` and :math:`y_{\text{true}}` is the |
| :attr:`target`, we define the **pointwise KL-divergence** as |
| |
| .. math:: |
| |
| L(y_{\text{pred}},\ y_{\text{true}}) |
| = y_{\text{true}} \cdot \log \frac{y_{\text{true}}}{y_{\text{pred}}} |
| = y_{\text{true}} \cdot (\log y_{\text{true}} - \log y_{\text{pred}}) |
| |
| To avoid underflow issues when computing this quantity, this loss expects the argument |
| :attr:`input` in the log-space. The argument :attr:`target` may also be provided in the |
| log-space if :attr:`log_target`\ `= True`. |
| |
| To summarise, this function is roughly equivalent to computing |
| |
| .. code-block:: python |
| |
| if not log_target: # default |
| loss_pointwise = target * (target.log() - input) |
| else: |
| loss_pointwise = target.exp() * (target - input) |
| |
| and then reducing this result depending on the argument :attr:`reduction` as |
| |
| .. code-block:: python |
| |
| if reduction == "mean": # default |
| loss = loss_pointwise.mean() |
| elif reduction == "batchmean": # mathematically correct |
| loss = loss_pointwise.sum() / input.size(0) |
| elif reduction == "sum": |
| loss = loss_pointwise.sum() |
| else: # reduction == "none" |
| loss = loss_pointwise |
| |
| .. note:: |
| As all the other losses in PyTorch, this function expects the first argument, |
| :attr:`input`, to be the output of the model (e.g. the neural network) |
| and the second, :attr:`target`, to be the observations in the dataset. |
| This differs from the standard mathematical notation :math:`KL(P\ ||\ Q)` where |
| :math:`P` denotes the distribution of the observations and :math:`Q` denotes the model. |
| |
| .. warning:: |
| :attr:`reduction`\ `= "mean"` doesn't return the true KL divergence value, please use |
| :attr:`reduction`\ `= "batchmean"` which aligns with the mathematical definition. |
| In a future release, `"mean"` will be changed to be the same as `"batchmean"`. |
| |
| Args: |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to `False`, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is `False`. Default: `True` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is `False`, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: `True` |
| reduction (str, optional): Specifies the reduction to apply to the output. Default: `"mean"` |
| log_target (bool, optional): Specifies whether `target` is the log space. Default: `False` |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar by default. If :attr:`reduction` is `'none'`, then :math:`(*)`, |
| same shape as the input. |
| |
| Examples:: |
| |
| >>> import torch.nn.functional as F |
| >>> kl_loss = nn.KLDivLoss(reduction="batchmean") |
| >>> # input should be a distribution in the log space |
| >>> input = F.log_softmax(torch.randn(3, 5, requires_grad=True), dim=1) |
| >>> # Sample a batch of distributions. Usually this would come from the dataset |
| >>> target = F.softmax(torch.rand(3, 5), dim=1) |
| >>> output = kl_loss(input, target) |
| |
| >>> kl_loss = nn.KLDivLoss(reduction="batchmean", log_target=True) |
| >>> log_target = F.log_softmax(torch.rand(3, 5), dim=1) |
| >>> output = kl_loss(input, log_target) |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, size_average=None, reduce=None, reduction: str = 'mean', log_target: bool = False) -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.log_target = log_target |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.kl_div(input, target, reduction=self.reduction, log_target=self.log_target) |
| |
| |
| class MSELoss(_Loss): |
| r"""Creates a criterion that measures the mean squared error (squared L2 norm) between |
| each element in the input :math:`x` and target :math:`y`. |
| |
| The unreduced (i.e. with :attr:`reduction` set to ``'none'``) loss can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_n = \left( x_n - y_n \right)^2, |
| |
| where :math:`N` is the batch size. If :attr:`reduction` is not ``'none'`` |
| (default ``'mean'``), then: |
| |
| .. math:: |
| \ell(x, y) = |
| \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| :math:`x` and :math:`y` are tensors of arbitrary shapes with a total |
| of :math:`n` elements each. |
| |
| The mean operation still operates over all the elements, and divides by :math:`n`. |
| |
| The division by :math:`n` can be avoided if one sets ``reduction = 'sum'``. |
| |
| Args: |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| |
| Examples:: |
| |
| >>> loss = nn.MSELoss() |
| >>> input = torch.randn(3, 5, requires_grad=True) |
| >>> target = torch.randn(3, 5) |
| >>> output = loss(input, target) |
| >>> output.backward() |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.mse_loss(input, target, reduction=self.reduction) |
| |
| |
| class BCELoss(_WeightedLoss): |
| r"""Creates a criterion that measures the Binary Cross Entropy between the target and |
| the input probabilities: |
| |
| The unreduced (i.e. with :attr:`reduction` set to ``'none'``) loss can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_n = - w_n \left[ y_n \cdot \log x_n + (1 - y_n) \cdot \log (1 - x_n) \right], |
| |
| where :math:`N` is the batch size. If :attr:`reduction` is not ``'none'`` |
| (default ``'mean'``), then |
| |
| .. math:: |
| \ell(x, y) = \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| This is used for measuring the error of a reconstruction in for example |
| an auto-encoder. Note that the targets :math:`y` should be numbers |
| between 0 and 1. |
| |
| Notice that if :math:`x_n` is either 0 or 1, one of the log terms would be |
| mathematically undefined in the above loss equation. PyTorch chooses to set |
| :math:`\log (0) = -\infty`, since :math:`\lim_{x\to 0} \log (x) = -\infty`. |
| However, an infinite term in the loss equation is not desirable for several reasons. |
| |
| For one, if either :math:`y_n = 0` or :math:`(1 - y_n) = 0`, then we would be |
| multiplying 0 with infinity. Secondly, if we have an infinite loss value, then |
| we would also have an infinite term in our gradient, since |
| :math:`\lim_{x\to 0} \frac{d}{dx} \log (x) = \infty`. |
| This would make BCELoss's backward method nonlinear with respect to :math:`x_n`, |
| and using it for things like linear regression would not be straight-forward. |
| |
| Our solution is that BCELoss clamps its log function outputs to be greater than |
| or equal to -100. This way, we can always have a finite loss value and a linear |
| backward method. |
| |
| |
| Args: |
| weight (Tensor, optional): a manual rescaling weight given to the loss |
| of each batch element. If given, has to be a Tensor of size `nbatch`. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then :math:`(*)`, same |
| shape as input. |
| |
| Examples:: |
| |
| >>> m = nn.Sigmoid() |
| >>> loss = nn.BCELoss() |
| >>> input = torch.randn(3, requires_grad=True) |
| >>> target = torch.empty(3).random_(2) |
| >>> output = loss(m(input), target) |
| >>> output.backward() |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, weight: Optional[Tensor] = None, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(weight, size_average, reduce, reduction) |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.binary_cross_entropy(input, target, weight=self.weight, reduction=self.reduction) |
| |
| |
| class BCEWithLogitsLoss(_Loss): |
| r"""This loss combines a `Sigmoid` layer and the `BCELoss` in one single |
| class. This version is more numerically stable than using a plain `Sigmoid` |
| followed by a `BCELoss` as, by combining the operations into one layer, |
| we take advantage of the log-sum-exp trick for numerical stability. |
| |
| The unreduced (i.e. with :attr:`reduction` set to ``'none'``) loss can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_n = - w_n \left[ y_n \cdot \log \sigma(x_n) |
| + (1 - y_n) \cdot \log (1 - \sigma(x_n)) \right], |
| |
| where :math:`N` is the batch size. If :attr:`reduction` is not ``'none'`` |
| (default ``'mean'``), then |
| |
| .. math:: |
| \ell(x, y) = \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| This is used for measuring the error of a reconstruction in for example |
| an auto-encoder. Note that the targets `t[i]` should be numbers |
| between 0 and 1. |
| |
| It's possible to trade off recall and precision by adding weights to positive examples. |
| In the case of multi-label classification the loss can be described as: |
| |
| .. math:: |
| \ell_c(x, y) = L_c = \{l_{1,c},\dots,l_{N,c}\}^\top, \quad |
| l_{n,c} = - w_{n,c} \left[ p_c y_{n,c} \cdot \log \sigma(x_{n,c}) |
| + (1 - y_{n,c}) \cdot \log (1 - \sigma(x_{n,c})) \right], |
| |
| where :math:`c` is the class number (:math:`c > 1` for multi-label binary classification, |
| :math:`c = 1` for single-label binary classification), |
| :math:`n` is the number of the sample in the batch and |
| :math:`p_c` is the weight of the positive answer for the class :math:`c`. |
| |
| :math:`p_c > 1` increases the recall, :math:`p_c < 1` increases the precision. |
| |
| For example, if a dataset contains 100 positive and 300 negative examples of a single class, |
| then `pos_weight` for the class should be equal to :math:`\frac{300}{100}=3`. |
| The loss would act as if the dataset contains :math:`3\times 100=300` positive examples. |
| |
| Examples:: |
| |
| >>> target = torch.ones([10, 64], dtype=torch.float32) # 64 classes, batch size = 10 |
| >>> output = torch.full([10, 64], 1.5) # A prediction (logit) |
| >>> pos_weight = torch.ones([64]) # All weights are equal to 1 |
| >>> criterion = torch.nn.BCEWithLogitsLoss(pos_weight=pos_weight) |
| >>> criterion(output, target) # -log(sigmoid(1.5)) |
| tensor(0.20...) |
| |
| Args: |
| weight (Tensor, optional): a manual rescaling weight given to the loss |
| of each batch element. If given, has to be a Tensor of size `nbatch`. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| pos_weight (Tensor, optional): a weight of positive examples. |
| Must be a vector with length equal to the number of classes. |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then :math:`(*)`, same |
| shape as input. |
| |
| Examples:: |
| |
| >>> loss = nn.BCEWithLogitsLoss() |
| >>> input = torch.randn(3, requires_grad=True) |
| >>> target = torch.empty(3).random_(2) |
| >>> output = loss(input, target) |
| >>> output.backward() |
| """ |
| def __init__(self, weight: Optional[Tensor] = None, size_average=None, reduce=None, reduction: str = 'mean', |
| pos_weight: Optional[Tensor] = None) -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.register_buffer('weight', weight) |
| self.register_buffer('pos_weight', pos_weight) |
| self.weight: Optional[Tensor] |
| self.pos_weight: Optional[Tensor] |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.binary_cross_entropy_with_logits(input, target, |
| self.weight, |
| pos_weight=self.pos_weight, |
| reduction=self.reduction) |
| |
| |
| class HingeEmbeddingLoss(_Loss): |
| r"""Measures the loss given an input tensor :math:`x` and a labels tensor :math:`y` |
| (containing 1 or -1). |
| This is usually used for measuring whether two inputs are similar or |
| dissimilar, e.g. using the L1 pairwise distance as :math:`x`, and is typically |
| used for learning nonlinear embeddings or semi-supervised learning. |
| |
| The loss function for :math:`n`-th sample in the mini-batch is |
| |
| .. math:: |
| l_n = \begin{cases} |
| x_n, & \text{if}\; y_n = 1,\\ |
| \max \{0, \Delta - x_n\}, & \text{if}\; y_n = -1, |
| \end{cases} |
| |
| and the total loss functions is |
| |
| .. math:: |
| \ell(x, y) = \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| where :math:`L = \{l_1,\dots,l_N\}^\top`. |
| |
| Args: |
| margin (float, optional): Has a default value of `1`. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(*)` where :math:`*` means, any number of dimensions. The sum operation |
| operates over all the elements. |
| - Target: :math:`(*)`, same shape as the input |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then same shape as the input |
| """ |
| __constants__ = ['margin', 'reduction'] |
| margin: float |
| |
| def __init__(self, margin: float = 1.0, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.margin = margin |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.hinge_embedding_loss(input, target, margin=self.margin, reduction=self.reduction) |
| |
| |
| class MultiLabelMarginLoss(_Loss): |
| r"""Creates a criterion that optimizes a multi-class multi-classification |
| hinge loss (margin-based loss) between input :math:`x` (a 2D mini-batch `Tensor`) |
| and output :math:`y` (which is a 2D `Tensor` of target class indices). |
| For each sample in the mini-batch: |
| |
| .. math:: |
| \text{loss}(x, y) = \sum_{ij}\frac{\max(0, 1 - (x[y[j]] - x[i]))}{\text{x.size}(0)} |
| |
| where :math:`x \in \left\{0, \; \cdots , \; \text{x.size}(0) - 1\right\}`, \ |
| :math:`y \in \left\{0, \; \cdots , \; \text{y.size}(0) - 1\right\}`, \ |
| :math:`0 \leq y[j] \leq \text{x.size}(0)-1`, \ |
| and :math:`i \neq y[j]` for all :math:`i` and :math:`j`. |
| |
| :math:`y` and :math:`x` must have the same size. |
| |
| The criterion only considers a contiguous block of non-negative targets that |
| starts at the front. |
| |
| This allows for different samples to have variable amounts of target classes. |
| |
| Args: |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(C)` or :math:`(N, C)` where `N` is the batch size and `C` |
| is the number of classes. |
| - Target: :math:`(C)` or :math:`(N, C)`, label targets padded by -1 ensuring same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then :math:`(N)`. |
| |
| Examples:: |
| |
| >>> loss = nn.MultiLabelMarginLoss() |
| >>> x = torch.FloatTensor([[0.1, 0.2, 0.4, 0.8]]) |
| >>> # for target y, only consider labels 3 and 0, not after label -1 |
| >>> y = torch.LongTensor([[3, 0, -1, 1]]) |
| >>> # 0.25 * ((1-(0.1-0.2)) + (1-(0.1-0.4)) + (1-(0.8-0.2)) + (1-(0.8-0.4))) |
| >>> loss(x, y) |
| tensor(0.85...) |
| |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.multilabel_margin_loss(input, target, reduction=self.reduction) |
| |
| |
| class SmoothL1Loss(_Loss): |
| r"""Creates a criterion that uses a squared term if the absolute |
| element-wise error falls below beta and an L1 term otherwise. |
| It is less sensitive to outliers than :class:`torch.nn.MSELoss` and in some cases |
| prevents exploding gradients (e.g. see the paper `Fast R-CNN`_ by Ross Girshick). |
| |
| For a batch of size :math:`N`, the unreduced loss can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1, ..., l_N\}^T |
| |
| with |
| |
| .. math:: |
| l_n = \begin{cases} |
| 0.5 (x_n - y_n)^2 / beta, & \text{if } |x_n - y_n| < beta \\ |
| |x_n - y_n| - 0.5 * beta, & \text{otherwise } |
| \end{cases} |
| |
| If `reduction` is not `none`, then: |
| |
| .. math:: |
| \ell(x, y) = |
| \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| .. note:: |
| Smooth L1 loss can be seen as exactly :class:`L1Loss`, but with the :math:`|x - y| < beta` |
| portion replaced with a quadratic function such that its slope is 1 at :math:`|x - y| = beta`. |
| The quadratic segment smooths the L1 loss near :math:`|x - y| = 0`. |
| |
| .. note:: |
| Smooth L1 loss is closely related to :class:`HuberLoss`, being |
| equivalent to :math:`huber(x, y) / beta` (note that Smooth L1's beta hyper-parameter is |
| also known as delta for Huber). This leads to the following differences: |
| |
| * As beta -> 0, Smooth L1 loss converges to :class:`L1Loss`, while :class:`HuberLoss` |
| converges to a constant 0 loss. When beta is 0, Smooth L1 loss is equivalent to L1 loss. |
| * As beta -> :math:`+\infty`, Smooth L1 loss converges to a constant 0 loss, while |
| :class:`HuberLoss` converges to :class:`MSELoss`. |
| * For Smooth L1 loss, as beta varies, the L1 segment of the loss has a constant slope of 1. |
| For :class:`HuberLoss`, the slope of the L1 segment is beta. |
| |
| .. _`Fast R-CNN`: https://arxiv.org/abs/1504.08083 |
| |
| Args: |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| beta (float, optional): Specifies the threshold at which to change between L1 and L2 loss. |
| The value must be non-negative. Default: 1.0 |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then :math:`(*)`, same shape as the input. |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, size_average=None, reduce=None, reduction: str = 'mean', beta: float = 1.0) -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.beta = beta |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.smooth_l1_loss(input, target, reduction=self.reduction, beta=self.beta) |
| |
| |
| class HuberLoss(_Loss): |
| r"""Creates a criterion that uses a squared term if the absolute |
| element-wise error falls below delta and a delta-scaled L1 term otherwise. |
| This loss combines advantages of both :class:`L1Loss` and :class:`MSELoss`; the |
| delta-scaled L1 region makes the loss less sensitive to outliers than :class:`MSELoss`, |
| while the L2 region provides smoothness over :class:`L1Loss` near 0. See |
| `Huber loss <https://en.wikipedia.org/wiki/Huber_loss>`_ for more information. |
| |
| For a batch of size :math:`N`, the unreduced loss can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1, ..., l_N\}^T |
| |
| with |
| |
| .. math:: |
| l_n = \begin{cases} |
| 0.5 (x_n - y_n)^2, & \text{if } |x_n - y_n| < delta \\ |
| delta * (|x_n - y_n| - 0.5 * delta), & \text{otherwise } |
| \end{cases} |
| |
| If `reduction` is not `none`, then: |
| |
| .. math:: |
| \ell(x, y) = |
| \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| .. note:: |
| When delta is set to 1, this loss is equivalent to :class:`SmoothL1Loss`. |
| In general, this loss differs from :class:`SmoothL1Loss` by a factor of delta (AKA beta |
| in Smooth L1). |
| See :class:`SmoothL1Loss` for additional discussion on the differences in behavior |
| between the two losses. |
| |
| Args: |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Default: ``'mean'`` |
| delta (float, optional): Specifies the threshold at which to change between delta-scaled L1 and L2 loss. |
| The value must be positive. Default: 1.0 |
| |
| Shape: |
| - Input: :math:`(*)` where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then :math:`(*)`, same shape as the input. |
| """ |
| __constants__ = ['reduction', 'delta'] |
| |
| def __init__(self, reduction: str = 'mean', delta: float = 1.0) -> None: |
| super().__init__(reduction=reduction) |
| self.delta = delta |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.huber_loss(input, target, reduction=self.reduction, delta=self.delta) |
| |
| |
| class SoftMarginLoss(_Loss): |
| r"""Creates a criterion that optimizes a two-class classification |
| logistic loss between input tensor :math:`x` and target tensor :math:`y` |
| (containing 1 or -1). |
| |
| .. math:: |
| \text{loss}(x, y) = \sum_i \frac{\log(1 + \exp(-y[i]*x[i]))}{\text{x.nelement}()} |
| |
| Args: |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(*)`, where :math:`*` means any number of dimensions. |
| - Target: :math:`(*)`, same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then :math:`(*)`, same |
| shape as input. |
| |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.soft_margin_loss(input, target, reduction=self.reduction) |
| |
| |
| class CrossEntropyLoss(_WeightedLoss): |
| r"""This criterion computes the cross entropy loss between input logits |
| and target. |
| |
| It is useful when training a classification problem with `C` classes. |
| If provided, the optional argument :attr:`weight` should be a 1D `Tensor` |
| assigning weight to each of the classes. |
| This is particularly useful when you have an unbalanced training set. |
| |
| The `input` is expected to contain the unnormalized logits for each class (which do `not` need |
| to be positive or sum to 1, in general). |
| `input` has to be a Tensor of size :math:`(C)` for unbatched input, |
| :math:`(minibatch, C)` or :math:`(minibatch, C, d_1, d_2, ..., d_K)` with :math:`K \geq 1` for the |
| `K`-dimensional case. The last being useful for higher dimension inputs, such |
| as computing cross entropy loss per-pixel for 2D images. |
| |
| The `target` that this criterion expects should contain either: |
| |
| - Class indices in the range :math:`[0, C)` where :math:`C` is the number of classes; if |
| `ignore_index` is specified, this loss also accepts this class index (this index |
| may not necessarily be in the class range). The unreduced (i.e. with :attr:`reduction` |
| set to ``'none'``) loss for this case can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_n = - w_{y_n} \log \frac{\exp(x_{n,y_n})}{\sum_{c=1}^C \exp(x_{n,c})} |
| \cdot \mathbb{1}\{y_n \not= \text{ignore\_index}\} |
| |
| where :math:`x` is the input, :math:`y` is the target, :math:`w` is the weight, |
| :math:`C` is the number of classes, and :math:`N` spans the minibatch dimension as well as |
| :math:`d_1, ..., d_k` for the `K`-dimensional case. If |
| :attr:`reduction` is not ``'none'`` (default ``'mean'``), then |
| |
| .. math:: |
| \ell(x, y) = \begin{cases} |
| \sum_{n=1}^N \frac{1}{\sum_{n=1}^N w_{y_n} \cdot \mathbb{1}\{y_n \not= \text{ignore\_index}\}} l_n, & |
| \text{if reduction} = \text{`mean';}\\ |
| \sum_{n=1}^N l_n, & |
| \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| Note that this case is equivalent to the combination of :class:`~torch.nn.LogSoftmax` and |
| :class:`~torch.nn.NLLLoss`. |
| |
| - Probabilities for each class; useful when labels beyond a single class per minibatch item |
| are required, such as for blended labels, label smoothing, etc. The unreduced (i.e. with |
| :attr:`reduction` set to ``'none'``) loss for this case can be described as: |
| |
| .. math:: |
| \ell(x, y) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_n = - \sum_{c=1}^C w_c \log \frac{\exp(x_{n,c})}{\sum_{i=1}^C \exp(x_{n,i})} y_{n,c} |
| |
| where :math:`x` is the input, :math:`y` is the target, :math:`w` is the weight, |
| :math:`C` is the number of classes, and :math:`N` spans the minibatch dimension as well as |
| :math:`d_1, ..., d_k` for the `K`-dimensional case. If |
| :attr:`reduction` is not ``'none'`` (default ``'mean'``), then |
| |
| .. math:: |
| \ell(x, y) = \begin{cases} |
| \frac{\sum_{n=1}^N l_n}{N}, & |
| \text{if reduction} = \text{`mean';}\\ |
| \sum_{n=1}^N l_n, & |
| \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| .. note:: |
| The performance of this criterion is generally better when `target` contains class |
| indices, as this allows for optimized computation. Consider providing `target` as |
| class probabilities only when a single class label per minibatch item is too restrictive. |
| |
| Args: |
| weight (Tensor, optional): a manual rescaling weight given to each class. |
| If given, has to be a Tensor of size `C` |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| ignore_index (int, optional): Specifies a target value that is ignored |
| and does not contribute to the input gradient. When :attr:`size_average` is |
| ``True``, the loss is averaged over non-ignored targets. Note that |
| :attr:`ignore_index` is only applicable when the target contains class indices. |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will |
| be applied, ``'mean'``: the weighted mean of the output is taken, |
| ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in |
| the meantime, specifying either of those two args will override |
| :attr:`reduction`. Default: ``'mean'`` |
| label_smoothing (float, optional): A float in [0.0, 1.0]. Specifies the amount |
| of smoothing when computing the loss, where 0.0 means no smoothing. The targets |
| become a mixture of the original ground truth and a uniform distribution as described in |
| `Rethinking the Inception Architecture for Computer Vision <https://arxiv.org/abs/1512.00567>`__. Default: :math:`0.0`. |
| |
| Shape: |
| - Input: Shape :math:`(C)`, :math:`(N, C)` or :math:`(N, C, d_1, d_2, ..., d_K)` with :math:`K \geq 1` |
| in the case of `K`-dimensional loss. |
| - Target: If containing class indices, shape :math:`()`, :math:`(N)` or :math:`(N, d_1, d_2, ..., d_K)` with |
| :math:`K \geq 1` in the case of K-dimensional loss where each value should be between :math:`[0, C)`. |
| If containing class probabilities, same shape as the input and each value should be between :math:`[0, 1]`. |
| - Output: If reduction is 'none', shape :math:`()`, :math:`(N)` or :math:`(N, d_1, d_2, ..., d_K)` with :math:`K \geq 1` |
| in the case of K-dimensional loss, depending on the shape of the input. Otherwise, scalar. |
| |
| |
| where: |
| |
| .. math:: |
| \begin{aligned} |
| C ={} & \text{number of classes} \\ |
| N ={} & \text{batch size} \\ |
| \end{aligned} |
| |
| Examples:: |
| |
| >>> # Example of target with class indices |
| >>> loss = nn.CrossEntropyLoss() |
| >>> input = torch.randn(3, 5, requires_grad=True) |
| >>> target = torch.empty(3, dtype=torch.long).random_(5) |
| >>> output = loss(input, target) |
| >>> output.backward() |
| >>> |
| >>> # Example of target with class probabilities |
| >>> input = torch.randn(3, 5, requires_grad=True) |
| >>> target = torch.randn(3, 5).softmax(dim=1) |
| >>> output = loss(input, target) |
| >>> output.backward() |
| """ |
| __constants__ = ['ignore_index', 'reduction', 'label_smoothing'] |
| ignore_index: int |
| label_smoothing: float |
| |
| def __init__(self, weight: Optional[Tensor] = None, size_average=None, ignore_index: int = -100, |
| reduce=None, reduction: str = 'mean', label_smoothing: float = 0.0) -> None: |
| super().__init__(weight, size_average, reduce, reduction) |
| self.ignore_index = ignore_index |
| self.label_smoothing = label_smoothing |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.cross_entropy(input, target, weight=self.weight, |
| ignore_index=self.ignore_index, reduction=self.reduction, |
| label_smoothing=self.label_smoothing) |
| |
| |
| class MultiLabelSoftMarginLoss(_WeightedLoss): |
| r"""Creates a criterion that optimizes a multi-label one-versus-all |
| loss based on max-entropy, between input :math:`x` and target :math:`y` of size |
| :math:`(N, C)`. |
| For each sample in the minibatch: |
| |
| .. math:: |
| loss(x, y) = - \frac{1}{C} * \sum_i y[i] * \log((1 + \exp(-x[i]))^{-1}) |
| + (1-y[i]) * \log\left(\frac{\exp(-x[i])}{(1 + \exp(-x[i]))}\right) |
| |
| where :math:`i \in \left\{0, \; \cdots , \; \text{x.nElement}() - 1\right\}`, |
| :math:`y[i] \in \left\{0, \; 1\right\}`. |
| |
| Args: |
| weight (Tensor, optional): a manual rescaling weight given to each |
| class. If given, it has to be a Tensor of size `C`. Otherwise, it is |
| treated as if having all ones. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(N, C)` where `N` is the batch size and `C` is the number of classes. |
| - Target: :math:`(N, C)`, label targets padded by -1 ensuring same shape as the input. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then :math:`(N)`. |
| """ |
| __constants__ = ['reduction'] |
| |
| def __init__(self, weight: Optional[Tensor] = None, size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(weight, size_average, reduce, reduction) |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.multilabel_soft_margin_loss(input, target, weight=self.weight, reduction=self.reduction) |
| |
| |
| class CosineEmbeddingLoss(_Loss): |
| r"""Creates a criterion that measures the loss given input tensors |
| :math:`x_1`, :math:`x_2` and a `Tensor` label :math:`y` with values 1 or -1. |
| This is used for measuring whether two inputs are similar or dissimilar, |
| using the cosine similarity, and is typically used for learning nonlinear |
| embeddings or semi-supervised learning. |
| |
| The loss function for each sample is: |
| |
| .. math:: |
| \text{loss}(x, y) = |
| \begin{cases} |
| 1 - \cos(x_1, x_2), & \text{if } y = 1 \\ |
| \max(0, \cos(x_1, x_2) - \text{margin}), & \text{if } y = -1 |
| \end{cases} |
| |
| Args: |
| margin (float, optional): Should be a number from :math:`-1` to :math:`1`, |
| :math:`0` to :math:`0.5` is suggested. If :attr:`margin` is missing, the |
| default value is :math:`0`. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input1: :math:`(N, D)` or :math:`(D)`, where `N` is the batch size and `D` is the embedding dimension. |
| - Input2: :math:`(N, D)` or :math:`(D)`, same shape as Input1. |
| - Target: :math:`(N)` or :math:`()`. |
| - Output: If :attr:`reduction` is ``'none'``, then :math:`(N)`, otherwise scalar. |
| """ |
| __constants__ = ['margin', 'reduction'] |
| margin: float |
| |
| def __init__(self, margin: float = 0., size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.margin = margin |
| |
| def forward(self, input1: Tensor, input2: Tensor, target: Tensor) -> Tensor: |
| return F.cosine_embedding_loss(input1, input2, target, margin=self.margin, reduction=self.reduction) |
| |
| |
| class MarginRankingLoss(_Loss): |
| r"""Creates a criterion that measures the loss given |
| inputs :math:`x1`, :math:`x2`, two 1D mini-batch or 0D `Tensors`, |
| and a label 1D mini-batch or 0D `Tensor` :math:`y` (containing 1 or -1). |
| |
| If :math:`y = 1` then it assumed the first input should be ranked higher |
| (have a larger value) than the second input, and vice-versa for :math:`y = -1`. |
| |
| The loss function for each pair of samples in the mini-batch is: |
| |
| .. math:: |
| \text{loss}(x1, x2, y) = \max(0, -y * (x1 - x2) + \text{margin}) |
| |
| Args: |
| margin (float, optional): Has a default value of :math:`0`. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input1: :math:`(N)` or :math:`()` where `N` is the batch size. |
| - Input2: :math:`(N)` or :math:`()`, same shape as the Input1. |
| - Target: :math:`(N)` or :math:`()`, same shape as the inputs. |
| - Output: scalar. If :attr:`reduction` is ``'none'`` and Input size is not :math:`()`, then :math:`(N)`. |
| |
| Examples:: |
| |
| >>> loss = nn.MarginRankingLoss() |
| >>> input1 = torch.randn(3, requires_grad=True) |
| >>> input2 = torch.randn(3, requires_grad=True) |
| >>> target = torch.randn(3).sign() |
| >>> output = loss(input1, input2, target) |
| >>> output.backward() |
| """ |
| __constants__ = ['margin', 'reduction'] |
| margin: float |
| |
| def __init__(self, margin: float = 0., size_average=None, reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(size_average, reduce, reduction) |
| self.margin = margin |
| |
| def forward(self, input1: Tensor, input2: Tensor, target: Tensor) -> Tensor: |
| return F.margin_ranking_loss(input1, input2, target, margin=self.margin, reduction=self.reduction) |
| |
| |
| class MultiMarginLoss(_WeightedLoss): |
| r"""Creates a criterion that optimizes a multi-class classification hinge |
| loss (margin-based loss) between input :math:`x` (a 2D mini-batch `Tensor`) and |
| output :math:`y` (which is a 1D tensor of target class indices, |
| :math:`0 \leq y \leq \text{x.size}(1)-1`): |
| |
| For each mini-batch sample, the loss in terms of the 1D input :math:`x` and scalar |
| output :math:`y` is: |
| |
| .. math:: |
| \text{loss}(x, y) = \frac{\sum_i \max(0, \text{margin} - x[y] + x[i])^p}{\text{x.size}(0)} |
| |
| where :math:`i \in \left\{0, \; \cdots , \; \text{x.size}(0) - 1\right\}` |
| and :math:`i \neq y`. |
| |
| Optionally, you can give non-equal weighting on the classes by passing |
| a 1D :attr:`weight` tensor into the constructor. |
| |
| The loss function then becomes: |
| |
| .. math:: |
| \text{loss}(x, y) = \frac{\sum_i \max(0, w[y] * (\text{margin} - x[y] + x[i]))^p}{\text{x.size}(0)} |
| |
| Args: |
| p (int, optional): Has a default value of :math:`1`. :math:`1` and :math:`2` |
| are the only supported values. |
| margin (float, optional): Has a default value of :math:`1`. |
| weight (Tensor, optional): a manual rescaling weight given to each |
| class. If given, it has to be a Tensor of size `C`. Otherwise, it is |
| treated as if having all ones. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(N, C)` or :math:`(C)`, where :math:`N` is the batch size and :math:`C` is the number of classes. |
| - Target: :math:`(N)` or :math:`()`, where each value is :math:`0 \leq \text{targets}[i] \leq C-1`. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then same shape as the target. |
| |
| Examples:: |
| |
| >>> loss = nn.MultiMarginLoss() |
| >>> x = torch.tensor([[0.1, 0.2, 0.4, 0.8]]) |
| >>> y = torch.tensor([3]) |
| >>> # 0.25 * ((1-(0.8-0.1)) + (1-(0.8-0.2)) + (1-(0.8-0.4))) |
| >>> loss(x, y) |
| tensor(0.32...) |
| """ |
| __constants__ = ['p', 'margin', 'reduction'] |
| margin: float |
| p: int |
| |
| def __init__(self, p: int = 1, margin: float = 1., weight: Optional[Tensor] = None, size_average=None, |
| reduce=None, reduction: str = 'mean') -> None: |
| super().__init__(weight, size_average, reduce, reduction) |
| if p != 1 and p != 2: |
| raise ValueError("only p == 1 and p == 2 supported") |
| assert weight is None or weight.dim() == 1 |
| self.p = p |
| self.margin = margin |
| |
| def forward(self, input: Tensor, target: Tensor) -> Tensor: |
| return F.multi_margin_loss(input, target, p=self.p, margin=self.margin, |
| weight=self.weight, reduction=self.reduction) |
| |
| |
| class TripletMarginLoss(_Loss): |
| r"""Creates a criterion that measures the triplet loss given an input |
| tensors :math:`x1`, :math:`x2`, :math:`x3` and a margin with a value greater than :math:`0`. |
| This is used for measuring a relative similarity between samples. A triplet |
| is composed by `a`, `p` and `n` (i.e., `anchor`, `positive examples` and `negative |
| examples` respectively). The shapes of all input tensors should be |
| :math:`(N, D)`. |
| |
| The distance swap is described in detail in the paper `Learning shallow |
| convolutional feature descriptors with triplet losses`_ by |
| V. Balntas, E. Riba et al. |
| |
| The loss function for each sample in the mini-batch is: |
| |
| .. math:: |
| L(a, p, n) = \max \{d(a_i, p_i) - d(a_i, n_i) + {\rm margin}, 0\} |
| |
| |
| where |
| |
| .. math:: |
| d(x_i, y_i) = \left\lVert {\bf x}_i - {\bf y}_i \right\rVert_p |
| |
| See also :class:`~torch.nn.TripletMarginWithDistanceLoss`, which computes the |
| triplet margin loss for input tensors using a custom distance function. |
| |
| Args: |
| margin (float, optional): Default: :math:`1`. |
| p (int, optional): The norm degree for pairwise distance. Default: :math:`2`. |
| swap (bool, optional): The distance swap is described in detail in the paper |
| `Learning shallow convolutional feature descriptors with triplet losses` by |
| V. Balntas, E. Riba et al. Default: ``False``. |
| size_average (bool, optional): Deprecated (see :attr:`reduction`). By default, |
| the losses are averaged over each loss element in the batch. Note that for |
| some losses, there are multiple elements per sample. If the field :attr:`size_average` |
| is set to ``False``, the losses are instead summed for each minibatch. Ignored |
| when :attr:`reduce` is ``False``. Default: ``True`` |
| reduce (bool, optional): Deprecated (see :attr:`reduction`). By default, the |
| losses are averaged or summed over observations for each minibatch depending |
| on :attr:`size_average`. When :attr:`reduce` is ``False``, returns a loss per |
| batch element instead and ignores :attr:`size_average`. Default: ``True`` |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Note: :attr:`size_average` |
| and :attr:`reduce` are in the process of being deprecated, and in the meantime, |
| specifying either of those two args will override :attr:`reduction`. Default: ``'mean'`` |
| |
| Shape: |
| - Input: :math:`(N, D)` or :math:`(D)` where :math:`D` is the vector dimension. |
| - Output: A Tensor of shape :math:`(N)` if :attr:`reduction` is ``'none'`` and |
| input shape is :math:`(N, D)`; a scalar otherwise. |
| |
| Examples:: |
| |
| >>> triplet_loss = nn.TripletMarginLoss(margin=1.0, p=2) |
| >>> anchor = torch.randn(100, 128, requires_grad=True) |
| >>> positive = torch.randn(100, 128, requires_grad=True) |
| >>> negative = torch.randn(100, 128, requires_grad=True) |
| >>> output = triplet_loss(anchor, positive, negative) |
| >>> output.backward() |
| |
| .. _Learning shallow convolutional feature descriptors with triplet losses: |
| http://www.bmva.org/bmvc/2016/papers/paper119/index.html |
| """ |
| __constants__ = ['margin', 'p', 'eps', 'swap', 'reduction'] |
| margin: float |
| p: float |
| eps: float |
| swap: bool |
| |
| def __init__(self, margin: float = 1.0, p: float = 2., eps: float = 1e-6, swap: bool = False, size_average=None, |
| reduce=None, reduction: str = 'mean'): |
| super().__init__(size_average, reduce, reduction) |
| self.margin = margin |
| self.p = p |
| self.eps = eps |
| self.swap = swap |
| |
| def forward(self, anchor: Tensor, positive: Tensor, negative: Tensor) -> Tensor: |
| return F.triplet_margin_loss(anchor, positive, negative, margin=self.margin, p=self.p, |
| eps=self.eps, swap=self.swap, reduction=self.reduction) |
| |
| |
| class TripletMarginWithDistanceLoss(_Loss): |
| r"""Creates a criterion that measures the triplet loss given input |
| tensors :math:`a`, :math:`p`, and :math:`n` (representing anchor, |
| positive, and negative examples, respectively), and a nonnegative, |
| real-valued function ("distance function") used to compute the relationship |
| between the anchor and positive example ("positive distance") and the |
| anchor and negative example ("negative distance"). |
| |
| The unreduced loss (i.e., with :attr:`reduction` set to ``'none'``) |
| can be described as: |
| |
| .. math:: |
| \ell(a, p, n) = L = \{l_1,\dots,l_N\}^\top, \quad |
| l_i = \max \{d(a_i, p_i) - d(a_i, n_i) + {\rm margin}, 0\} |
| |
| where :math:`N` is the batch size; :math:`d` is a nonnegative, real-valued function |
| quantifying the closeness of two tensors, referred to as the :attr:`distance_function`; |
| and :math:`margin` is a nonnegative margin representing the minimum difference |
| between the positive and negative distances that is required for the loss to |
| be 0. The input tensors have :math:`N` elements each and can be of any shape |
| that the distance function can handle. |
| |
| If :attr:`reduction` is not ``'none'`` |
| (default ``'mean'``), then: |
| |
| .. math:: |
| \ell(x, y) = |
| \begin{cases} |
| \operatorname{mean}(L), & \text{if reduction} = \text{`mean';}\\ |
| \operatorname{sum}(L), & \text{if reduction} = \text{`sum'.} |
| \end{cases} |
| |
| See also :class:`~torch.nn.TripletMarginLoss`, which computes the triplet |
| loss for input tensors using the :math:`l_p` distance as the distance function. |
| |
| Args: |
| distance_function (Callable, optional): A nonnegative, real-valued function that |
| quantifies the closeness of two tensors. If not specified, |
| `nn.PairwiseDistance` will be used. Default: ``None`` |
| margin (float, optional): A nonnegative margin representing the minimum difference |
| between the positive and negative distances required for the loss to be 0. Larger |
| margins penalize cases where the negative examples are not distant enough from the |
| anchors, relative to the positives. Default: :math:`1`. |
| swap (bool, optional): Whether to use the distance swap described in the paper |
| `Learning shallow convolutional feature descriptors with triplet losses` by |
| V. Balntas, E. Riba et al. If True, and if the positive example is closer to the |
| negative example than the anchor is, swaps the positive example and the anchor in |
| the loss computation. Default: ``False``. |
| reduction (str, optional): Specifies the (optional) reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the sum of the output will be divided by the number of |
| elements in the output, ``'sum'``: the output will be summed. Default: ``'mean'`` |
| |
| |
| Shape: |
| - Input: :math:`(N, *)` where :math:`*` represents any number of additional dimensions |
| as supported by the distance function. |
| - Output: A Tensor of shape :math:`(N)` if :attr:`reduction` is ``'none'``, or a scalar |
| otherwise. |
| |
| Examples:: |
| |
| >>> # Initialize embeddings |
| >>> embedding = nn.Embedding(1000, 128) |
| >>> anchor_ids = torch.randint(0, 1000, (1,)) |
| >>> positive_ids = torch.randint(0, 1000, (1,)) |
| >>> negative_ids = torch.randint(0, 1000, (1,)) |
| >>> anchor = embedding(anchor_ids) |
| >>> positive = embedding(positive_ids) |
| >>> negative = embedding(negative_ids) |
| >>> |
| >>> # Built-in Distance Function |
| >>> triplet_loss = \ |
| >>> nn.TripletMarginWithDistanceLoss(distance_function=nn.PairwiseDistance()) |
| >>> output = triplet_loss(anchor, positive, negative) |
| >>> output.backward() |
| >>> |
| >>> # Custom Distance Function |
| >>> def l_infinity(x1, x2): |
| >>> return torch.max(torch.abs(x1 - x2), dim=1).values |
| >>> |
| >>> # xdoctest: +SKIP("FIXME: Would call backwards a second time") |
| >>> triplet_loss = ( |
| >>> nn.TripletMarginWithDistanceLoss(distance_function=l_infinity, margin=1.5)) |
| >>> output = triplet_loss(anchor, positive, negative) |
| >>> output.backward() |
| >>> |
| >>> # Custom Distance Function (Lambda) |
| >>> triplet_loss = ( |
| >>> nn.TripletMarginWithDistanceLoss( |
| >>> distance_function=lambda x, y: 1.0 - F.cosine_similarity(x, y))) |
| >>> output = triplet_loss(anchor, positive, negative) |
| >>> output.backward() |
| |
| Reference: |
| V. Balntas, et al.: Learning shallow convolutional feature descriptors with triplet losses: |
| http://www.bmva.org/bmvc/2016/papers/paper119/index.html |
| """ |
| __constants__ = ['margin', 'swap', 'reduction'] |
| margin: float |
| swap: bool |
| |
| def __init__(self, *, distance_function: Optional[Callable[[Tensor, Tensor], Tensor]] = None, |
| margin: float = 1.0, swap: bool = False, reduction: str = 'mean'): |
| super().__init__(size_average=None, reduce=None, reduction=reduction) |
| self.distance_function: Optional[Callable[[Tensor, Tensor], Tensor]] = \ |
| distance_function if distance_function is not None else PairwiseDistance() |
| self.margin = margin |
| self.swap = swap |
| |
| def forward(self, anchor: Tensor, positive: Tensor, negative: Tensor) -> Tensor: |
| return F.triplet_margin_with_distance_loss(anchor, positive, negative, |
| distance_function=self.distance_function, |
| margin=self.margin, swap=self.swap, reduction=self.reduction) |
| |
| |
| class CTCLoss(_Loss): |
| r"""The Connectionist Temporal Classification loss. |
| |
| Calculates loss between a continuous (unsegmented) time series and a target sequence. CTCLoss sums over the |
| probability of possible alignments of input to target, producing a loss value which is differentiable |
| with respect to each input node. The alignment of input to target is assumed to be "many-to-one", which |
| limits the length of the target sequence such that it must be :math:`\leq` the input length. |
| |
| Args: |
| blank (int, optional): blank label. Default :math:`0`. |
| reduction (str, optional): Specifies the reduction to apply to the output: |
| ``'none'`` | ``'mean'`` | ``'sum'``. ``'none'``: no reduction will be applied, |
| ``'mean'``: the output losses will be divided by the target lengths and |
| then the mean over the batch is taken. Default: ``'mean'`` |
| zero_infinity (bool, optional): |
| Whether to zero infinite losses and the associated gradients. |
| Default: ``False`` |
| Infinite losses mainly occur when the inputs are too short |
| to be aligned to the targets. |
| |
| Shape: |
| - Log_probs: Tensor of size :math:`(T, N, C)` or :math:`(T, C)`, |
| where :math:`T = \text{input length}`, |
| :math:`N = \text{batch size}`, and |
| :math:`C = \text{number of classes (including blank)}`. |
| The logarithmized probabilities of the outputs (e.g. obtained with |
| :func:`torch.nn.functional.log_softmax`). |
| - Targets: Tensor of size :math:`(N, S)` or |
| :math:`(\operatorname{sum}(\text{target\_lengths}))`, |
| where :math:`N = \text{batch size}` and |
| :math:`S = \text{max target length, if shape is } (N, S)`. |
| It represent the target sequences. Each element in the target |
| sequence is a class index. And the target index cannot be blank (default=0). |
| In the :math:`(N, S)` form, targets are padded to the |
| length of the longest sequence, and stacked. |
| In the :math:`(\operatorname{sum}(\text{target\_lengths}))` form, |
| the targets are assumed to be un-padded and |
| concatenated within 1 dimension. |
| - Input_lengths: Tuple or tensor of size :math:`(N)` or :math:`()`, |
| where :math:`N = \text{batch size}`. It represent the lengths of the |
| inputs (must each be :math:`\leq T`). And the lengths are specified |
| for each sequence to achieve masking under the assumption that sequences |
| are padded to equal lengths. |
| - Target_lengths: Tuple or tensor of size :math:`(N)` or :math:`()`, |
| where :math:`N = \text{batch size}`. It represent lengths of the targets. |
| Lengths are specified for each sequence to achieve masking under the |
| assumption that sequences are padded to equal lengths. If target shape is |
| :math:`(N,S)`, target_lengths are effectively the stop index |
| :math:`s_n` for each target sequence, such that ``target_n = targets[n,0:s_n]`` for |
| each target in a batch. Lengths must each be :math:`\leq S` |
| If the targets are given as a 1d tensor that is the concatenation of individual |
| targets, the target_lengths must add up to the total length of the tensor. |
| - Output: scalar. If :attr:`reduction` is ``'none'``, then |
| :math:`(N)` if input is batched or :math:`()` if input is unbatched, where :math:`N = \text{batch size}`. |
| |
| Examples:: |
| |
| >>> # Target are to be padded |
| >>> T = 50 # Input sequence length |
| >>> C = 20 # Number of classes (including blank) |
| >>> N = 16 # Batch size |
| >>> S = 30 # Target sequence length of longest target in batch (padding length) |
| >>> S_min = 10 # Minimum target length, for demonstration purposes |
| >>> |
| >>> # Initialize random batch of input vectors, for *size = (T,N,C) |
| >>> input = torch.randn(T, N, C).log_softmax(2).detach().requires_grad_() |
| >>> |
| >>> # Initialize random batch of targets (0 = blank, 1:C = classes) |
| >>> target = torch.randint(low=1, high=C, size=(N, S), dtype=torch.long) |
| >>> |
| >>> input_lengths = torch.full(size=(N,), fill_value=T, dtype=torch.long) |
| >>> target_lengths = torch.randint(low=S_min, high=S, size=(N,), dtype=torch.long) |
| >>> ctc_loss = nn.CTCLoss() |
| >>> loss = ctc_loss(input, target, input_lengths, target_lengths) |
| >>> loss.backward() |
| >>> |
| >>> |
| >>> # Target are to be un-padded |
| >>> T = 50 # Input sequence length |
| >>> C = 20 # Number of classes (including blank) |
| >>> N = 16 # Batch size |
| >>> |
| >>> # Initialize random batch of input vectors, for *size = (T,N,C) |
| >>> input = torch.randn(T, N, C).log_softmax(2).detach().requires_grad_() |
| >>> input_lengths = torch.full(size=(N,), fill_value=T, dtype=torch.long) |
| >>> |
| >>> # Initialize random batch of targets (0 = blank, 1:C = classes) |
| >>> target_lengths = torch.randint(low=1, high=T, size=(N,), dtype=torch.long) |
| >>> target = torch.randint(low=1, high=C, size=(sum(target_lengths),), dtype=torch.long) |
| >>> ctc_loss = nn.CTCLoss() |
| >>> loss = ctc_loss(input, target, input_lengths, target_lengths) |
| >>> loss.backward() |
| >>> |
| >>> |
| >>> # Target are to be un-padded and unbatched (effectively N=1) |
| >>> T = 50 # Input sequence length |
| >>> C = 20 # Number of classes (including blank) |
| >>> |
| >>> # Initialize random batch of input vectors, for *size = (T,C) |
| >>> # xdoctest: +SKIP("FIXME: error in doctest") |
| >>> input = torch.randn(T, C).log_softmax(2).detach().requires_grad_() |
| >>> input_lengths = torch.tensor(T, dtype=torch.long) |
| >>> |
| >>> # Initialize random batch of targets (0 = blank, 1:C = classes) |
| >>> target_lengths = torch.randint(low=1, high=T, size=(), dtype=torch.long) |
| >>> target = torch.randint(low=1, high=C, size=(target_lengths,), dtype=torch.long) |
| >>> ctc_loss = nn.CTCLoss() |
| >>> loss = ctc_loss(input, target, input_lengths, target_lengths) |
| >>> loss.backward() |
| |
| Reference: |
| A. Graves et al.: Connectionist Temporal Classification: |
| Labelling Unsegmented Sequence Data with Recurrent Neural Networks: |
| https://www.cs.toronto.edu/~graves/icml_2006.pdf |
| |
| Note: |
| In order to use CuDNN, the following must be satisfied: :attr:`targets` must be |
| in concatenated format, all :attr:`input_lengths` must be `T`. :math:`blank=0`, |
| :attr:`target_lengths` :math:`\leq 256`, the integer arguments must be of |
| dtype :attr:`torch.int32`. |
| |
| The regular implementation uses the (more common in PyTorch) `torch.long` dtype. |
| |
| |
| Note: |
| In some circumstances when using the CUDA backend with CuDNN, this operator |
| may select a nondeterministic algorithm to increase performance. If this is |
| undesirable, you can try to make the operation deterministic (potentially at |
| a performance cost) by setting ``torch.backends.cudnn.deterministic = |
| True``. |
| Please see the notes on :doc:`/notes/randomness` for background. |
| """ |
| __constants__ = ['blank', 'reduction'] |
| blank: int |
| zero_infinity: bool |
| |
| def __init__(self, blank: int = 0, reduction: str = 'mean', zero_infinity: bool = False): |
| super().__init__(reduction=reduction) |
| self.blank = blank |
| self.zero_infinity = zero_infinity |
| |
| def forward(self, log_probs: Tensor, targets: Tensor, input_lengths: Tensor, target_lengths: Tensor) -> Tensor: |
| return F.ctc_loss(log_probs, targets, input_lengths, target_lengths, self.blank, self.reduction, |
| self.zero_infinity) |
| |
| # TODO: L1HingeEmbeddingCriterion |
| # TODO: MSECriterion weight |
| # TODO: ClassSimplexCriterion |