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Summary: This removes the deprecated `tensor.new_*` constructors (see #16770) from `torch.distributions` module. Pull Request resolved: https://github.com/pytorch/pytorch/pull/19979 Differential Revision: D15195618 Pulled By: soumith fbshipit-source-id: 46b519bfd32017265e90bd5c53f12cfe4a138021
132 lines
4.9 KiB
Python
132 lines
4.9 KiB
Python
import torch
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from torch._six import nan
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from torch.distributions import constraints
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from torch.distributions.distribution import Distribution
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from torch.distributions.utils import probs_to_logits, logits_to_probs, lazy_property
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class Categorical(Distribution):
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r"""
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Creates a categorical distribution parameterized by either :attr:`probs` or
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:attr:`logits` (but not both).
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.. note::
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It is equivalent to the distribution that :func:`torch.multinomial`
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samples from.
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Samples are integers from :math:`\{0, \ldots, K-1\}` where `K` is ``probs.size(-1)``.
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If :attr:`probs` is 1D with length-`K`, each element is the relative
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probability of sampling the class at that index.
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If :attr:`probs` is 2D, it is treated as a batch of relative probability
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vectors.
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.. note:: :attr:`probs` must be non-negative, finite and have a non-zero sum,
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and it will be normalized to sum to 1.
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See also: :func:`torch.multinomial`
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Example::
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>>> m = Categorical(torch.tensor([ 0.25, 0.25, 0.25, 0.25 ]))
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>>> m.sample() # equal probability of 0, 1, 2, 3
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tensor(3)
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Args:
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probs (Tensor): event probabilities
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logits (Tensor): event log probabilities
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"""
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arg_constraints = {'probs': constraints.simplex,
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'logits': constraints.real}
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has_enumerate_support = True
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def __init__(self, probs=None, logits=None, validate_args=None):
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if (probs is None) == (logits is None):
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raise ValueError("Either `probs` or `logits` must be specified, but not both.")
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if probs is not None:
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if probs.dim() < 1:
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raise ValueError("`probs` parameter must be at least one-dimensional.")
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self.probs = probs / probs.sum(-1, keepdim=True)
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else:
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if logits.dim() < 1:
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raise ValueError("`logits` parameter must be at least one-dimensional.")
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self.logits = logits - logits.logsumexp(dim=-1, keepdim=True)
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self._param = self.probs if probs is not None else self.logits
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self._num_events = self._param.size()[-1]
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batch_shape = self._param.size()[:-1] if self._param.ndimension() > 1 else torch.Size()
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super(Categorical, self).__init__(batch_shape, validate_args=validate_args)
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def expand(self, batch_shape, _instance=None):
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new = self._get_checked_instance(Categorical, _instance)
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batch_shape = torch.Size(batch_shape)
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param_shape = batch_shape + torch.Size((self._num_events,))
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if 'probs' in self.__dict__:
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new.probs = self.probs.expand(param_shape)
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new._param = new.probs
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if 'logits' in self.__dict__:
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new.logits = self.logits.expand(param_shape)
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new._param = new.logits
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new._num_events = self._num_events
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super(Categorical, new).__init__(batch_shape, validate_args=False)
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new._validate_args = self._validate_args
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return new
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def _new(self, *args, **kwargs):
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return self._param.new(*args, **kwargs)
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@constraints.dependent_property
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def support(self):
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return constraints.integer_interval(0, self._num_events - 1)
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@lazy_property
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def logits(self):
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return probs_to_logits(self.probs)
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@lazy_property
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def probs(self):
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return logits_to_probs(self.logits)
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@property
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def param_shape(self):
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return self._param.size()
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@property
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def mean(self):
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return torch.full(self._extended_shape(), nan, dtype=self.probs.dtype, device=self.probs.device)
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@property
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def variance(self):
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return torch.full(self._extended_shape(), nan, dtype=self.probs.dtype, device=self.probs.device)
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def sample(self, sample_shape=torch.Size()):
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sample_shape = self._extended_shape(sample_shape)
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param_shape = sample_shape + torch.Size((self._num_events,))
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probs = self.probs.expand(param_shape)
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if self.probs.dim() == 1 or self.probs.size(0) == 1:
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probs_2d = probs.view(-1, self._num_events)
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else:
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probs_2d = probs.contiguous().view(-1, self._num_events)
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sample_2d = torch.multinomial(probs_2d, 1, True)
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return sample_2d.contiguous().view(sample_shape)
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def log_prob(self, value):
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if self._validate_args:
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self._validate_sample(value)
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value = value.long().unsqueeze(-1)
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value, log_pmf = torch.broadcast_tensors(value, self.logits)
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value = value[..., :1]
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return log_pmf.gather(-1, value).squeeze(-1)
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def entropy(self):
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p_log_p = self.logits * self.probs
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return -p_log_p.sum(-1)
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def enumerate_support(self, expand=True):
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num_events = self._num_events
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values = torch.arange(num_events, dtype=torch.long, device=self._param.device)
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values = values.view((-1,) + (1,) * len(self._batch_shape))
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if expand:
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values = values.expand((-1,) + self._batch_shape)
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return values
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