mindspore.nn.probability.distribution.gamma 源代码

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"""Gamma Distribution"""
import numpy as np
from mindspore.ops import operations as P
from mindspore.ops import composite as C
import mindspore.nn as nn
from mindspore import _checkparam as Validator
from mindspore.common import dtype as mstype
from .distribution import Distribution
from ._utils.utils import check_greater_zero, check_distribution_name
from ._utils.custom_ops import log_generic


[文档]class Gamma(Distribution): r""" Gamma distribution. A Gamma distributio is a continuous distribution with the range :math:`(0, \inf)` and the probability density function: .. math:: f(x, \alpha, \beta) = \beta^\alpha / \Gamma(\alpha) x^{\alpha - 1} \exp(-\beta x). where :math:`G` is the Gamma function, and :math:`\alpha` and :math:`\beta` are the concentration and the rate of the distribution respectively. Args: concentration (int, float, list, numpy.ndarray, Tensor): The concentration, also know as alpha of the Gamma distribution. Default: ``None`` . rate (int, float, list, numpy.ndarray, Tensor): The rate, also know as beta of the Gamma distribution. Default: ``None`` . seed (int): The seed used in sampling. The global seed is used if it is None. Default: ``None`` . dtype (mindspore.dtype): The type of the event samples. Default: ``mstype.float32`` . name (str): The name of the distribution. Default: ``'Gamma'`` . Note: `concentration` and `rate` must be greater than zero. `dist_spec_args` are `concentration` and `rate`. `dtype` must be a float type because Gamma distributions are continuous. Raises: ValueError: When concentration <= 0 or rate <= 0. TypeError: When the input `dtype` is not a subclass of float. Supported Platforms: ``Ascend`` Examples: >>> import mindspore >>> import mindspore.nn as nn >>> import mindspore.nn.probability.distribution as msd >>> from mindspore import Tensor >>> # To initialize a Gamma distribution of the concentration 3.0 and the rate 4.0. >>> g1 = msd.Gamma([3.0], [4.0], dtype=mindspore.float32) >>> # A Gamma distribution can be initialized without arguments. >>> # In this case, `concentration` and `rate` must be passed in through arguments. >>> g2 = msd.Gamma(dtype=mindspore.float32) >>> # Here are some tensors used below for testing >>> value = Tensor([1.0, 2.0, 3.0], dtype=mindspore.float32) >>> concentration_a = Tensor([2.0], dtype=mindspore.float32) >>> rate_a = Tensor([2.0, 2.0, 2.0], dtype=mindspore.float32) >>> concentration_b = Tensor([1.0], dtype=mindspore.float32) >>> rate_b = Tensor([1.0, 1.5, 2.0], dtype=mindspore.float32) >>> >>> # Private interfaces of probability functions corresponding to public interfaces, including >>> # `prob`, `log_prob`, `cdf`, `log_cdf`, `survival_function`, and `log_survival`, >>> # have the same arguments as follows. >>> # Args: >>> # value (Tensor): the value to be evaluated. >>> # concentration (Tensor): the concentration of the distribution. Default: self._concentration. >>> # rate (Tensor): the rate of the distribution. Default: self._rate. >>> # Examples of `prob`. >>> # Similar calls can be made to other probability functions >>> # by replacing 'prob' by the name of the function >>> ans = g1.prob(value) >>> print(ans.shape) (3,) >>> # Evaluate with respect to the distribution b. >>> ans = g1.prob(value, concentration_b, rate_b) >>> print(ans.shape) (3,) >>> # `concentration` and `rate` must be passed in during function calls for g2. >>> ans = g2.prob(value, concentration_a, rate_a) >>> print(ans.shape) (3,) >>> # Functions `mean`, `sd`, `mode`, `var`, and `entropy` have the same arguments. >>> # Args: >>> # concentration (Tensor): the concentration of the distribution. Default: self._concentration. >>> # rate (Tensor): the rate of the distribution. Default: self._rate. >>> # Example of `mean`, `sd`, `mode`, `var`, and `entropy` are similar. >>> ans = g1.mean() >>> print(ans.shape) (1,) >>> ans = g1.mean(concentration_b, rate_b) >>> print(ans.shape) (3,) >>> # `concentration` and `rate` must be passed in during function calls. >>> ans = g2.mean(concentration_a, rate_a) >>> print(ans.shape) (3,) >>> # Interfaces of 'kl_loss' and 'cross_entropy' are the same: >>> # Args: >>> # dist (str): the type of the distributions. Only "Gamma" is supported. >>> # concentration_b (Tensor): the concentration of distribution b. >>> # rate_b (Tensor): the rate of distribution b. >>> # concentration_a (Tensor): the concentration of distribution a. Default: self._concentration. >>> # rate_a (Tensor): the rate of distribution a. Default: self._rate. >>> # Examples of `kl_loss`. `cross_entropy` is similar. >>> ans = g1.kl_loss('Gamma', concentration_b, rate_b) >>> print(ans.shape) (3,) >>> ans = g1.kl_loss('Gamma', concentration_b, rate_b, concentration_a, rate_a) >>> print(ans.shape) (3,) >>> # Additional `concentration` and `rate` must be passed in. >>> ans = g2.kl_loss('Gamma', concentration_b, rate_b, concentration_a, rate_a) >>> print(ans.shape) (3,) >>> # Examples of `sample`. >>> # Args: >>> # shape (tuple): the shape of the sample. Default: () >>> # concentration (Tensor): the concentration of the distribution. Default: self._concentration. >>> # rate (Tensor): the rate of the distribution. Default: self._rate. >>> ans = g1.sample() >>> print(ans.shape) (1,) >>> ans = g1.sample((2,3)) >>> print(ans.shape) (2, 3, 1) >>> ans = g1.sample((2,3), concentration_b, rate_b) >>> print(ans.shape) (2, 3, 3) >>> ans = g2.sample((2,3), concentration_a, rate_a) >>> print(ans.shape) (2, 3, 3) """ def __init__(self, concentration=None, rate=None, seed=None, dtype=mstype.float32, name="Gamma"): """ Constructor of Gamma. """ param = dict(locals()) param['param_dict'] = {'concentration': concentration, 'rate': rate} valid_dtype = mstype.float_type Validator.check_type_name( "dtype", dtype, valid_dtype, type(self).__name__) # As some operators can't accept scalar input, check the type here if isinstance(concentration, (int, float)): raise TypeError("Input concentration can't be scalar") if isinstance(rate, (int, float)): raise TypeError("Input rate can't be scalar") super(Gamma, self).__init__(seed, dtype, name, param) self._concentration = self._add_parameter( concentration, 'concentration') self._rate = self._add_parameter(rate, 'rate') if self._concentration is not None: check_greater_zero(self._concentration, "concentration") if self._rate is not None: check_greater_zero(self._rate, "rate") # ops needed for the class self.log = log_generic self.square = P.Square() self.sqrt = P.Sqrt() self.squeeze = P.Squeeze(0) self.cast = P.Cast() self.dtypeop = P.DType() self.fill = P.Fill() self.shape = P.Shape() self.select = P.Select() self.greater = P.Greater() self.lgamma = P.Lgamma() self.digamma = nn.DiGamma() self.igamma = P.Igamma() def extend_repr(self): """Display instance object as string.""" if self.is_scalar_batch: s = 'concentration = {}, rate = {}'.format( self._concentration, self._rate) else: s = 'batch_shape = {}'.format(self._broadcast_shape) return s @property def concentration(self): """ Return the concentration, also know as the alpha of the Gamma distribution, after casting to dtype. Output: Tensor, the concentration parameter of the distribution. """ return self._concentration @property def rate(self): """ Return the rate, also know as the beta of the Gamma distribution, after casting to dtype. Output: Tensor, the rate parameter of the distribution. """ return self._rate def _get_dist_type(self): return "Gamma" def _get_dist_args(self, concentration=None, rate=None): if concentration is not None: self.checktensor(concentration, 'concentration') else: concentration = self._concentration if rate is not None: self.checktensor(rate, 'rate') else: rate = self._rate return concentration, rate def _mean(self, concentration=None, rate=None): """ The mean of the distribution. """ concentration, rate = self._check_param_type(concentration, rate) return concentration / rate def _var(self, concentration=None, rate=None): """ The variance of the distribution. """ concentration, rate = self._check_param_type(concentration, rate) return concentration / self.square(rate) def _sd(self, concentration=None, rate=None): """ The standard deviation of the distribution. """ concentration, rate = self._check_param_type(concentration, rate) return self.sqrt(concentration) / rate def _mode(self, concentration=None, rate=None): """ The mode of the distribution. """ concentration, rate = self._check_param_type(concentration, rate) mode = (concentration - 1.) / rate nan = self.fill(self.dtypeop(concentration), self.shape(concentration), np.nan) comp = self.greater(concentration, 1.) return self.select(comp, mode, nan) def _entropy(self, concentration=None, rate=None): r""" Evaluate entropy. .. math:: H(X) = \alpha - \log(\beta) + \log(\Gamma(\alpha)) + (1 - \alpha) * \digamma(\alpha) """ concentration, rate = self._check_param_type(concentration, rate) return concentration - self.log(rate) + self.lgamma(concentration) \ + (1. - concentration) * self.digamma(concentration) def _cross_entropy(self, dist, concentration_b, rate_b, concentration_a=None, rate_a=None): r""" Evaluate cross entropy between Gamma distributions. Args: dist (str): Type of the distributions. Should be "Gamma" in this case. concentration_b (Tensor): concentration of distribution b. rate_b (Tensor): rate of distribution b. concentration_a (Tensor): concentration of distribution a. Default: self._concentration. rate_a (Tensor): rate of distribution a. Default: self._rate. """ check_distribution_name(dist, 'Gamma') return self._entropy(concentration_a, rate_a) +\ self._kl_loss(dist, concentration_b, rate_b, concentration_a, rate_a) def _log_prob(self, value, concentration=None, rate=None): r""" Evaluate log probability. Args: value (Tensor): The value to be evaluated. concentration (Tensor): The concentration of the distribution. Default: self._concentration. rate (Tensor): The rate the distribution. Default: self._rate. .. math:: L(x) = (\alpha - 1) * \log(x) - \beta * x - \log(\gamma(\alpha)) - \alpha * \log(\beta) """ value = self._check_value(value, 'value') value = self.cast(value, self.dtype) concentration, rate = self._check_param_type(concentration, rate) unnormalized_log_prob = (concentration - 1.) * \ self.log(value) - rate * value log_normalization = self.lgamma( concentration) - concentration * self.log(rate) return unnormalized_log_prob - log_normalization def _cdf(self, value, concentration=None, rate=None): r""" Evaluate the cumulative distribution function on the given value. Note that igamma returns the regularized incomplete gamma function, which is what we want for the CDF. Args: value (Tensor): The value to be evaluated. concentration (Tensor): The concentration of the distribution. Default: self._concentration. rate (Tensor): The rate the distribution. Default: self._rate. .. math:: cdf(x) = \igamma(\alpha, \beta * x) """ value = self._check_value(value, 'value') value = self.cast(value, self.dtype) concentration, rate = self._check_param_type(concentration, rate) return self.igamma(concentration, rate * value) def _kl_loss(self, dist, concentration_b, rate_b, concentration_a=None, rate_a=None): r""" Evaluate Gamma-Gamma KL divergence, i.e. KL(a||b). Args: dist (str): The type of the distributions. Should be "Gamma" in this case. concentration_b (Tensor): The concentration of distribution b. rate_b (Tensor): The rate distribution b. concentration_a (Tensor): The concentration of distribution a. Default: self._concentration. rate_a (Tensor): The rate distribution a. Default: self._rate. .. math:: KL(a||b) = (\alpha_{a} - \alpha_{b}) * \digamma(\alpha_{a}) + \log(\gamma(\alpha_{b})) - \log(\gamma(\alpha_{a})) + \alpha_{b} * \log(\beta{a}) - \alpha_{b} * \log(\beta{b}) + \alpha_{a} * \frac{\beta{b}}{\beta{a} - 1} """ check_distribution_name(dist, 'Gamma') concentration_b = self._check_value(concentration_b, 'concentration_b') rate_b = self._check_value(rate_b, 'rate_b') concentration_b = self.cast(concentration_b, self.parameter_type) rate_b = self.cast(rate_b, self.parameter_type) concentration_a, rate_a = self._check_param_type( concentration_a, rate_a) return (concentration_a - concentration_b) * self.digamma(concentration_a) \ + self.lgamma(concentration_b) - self.lgamma(concentration_a) \ + concentration_b * self.log(rate_a) - concentration_b * self.log(rate_b) \ + concentration_a * (rate_b / rate_a - 1.) def _sample(self, shape=(), concentration=None, rate=None): """ Sampling. Args: shape (tuple): The shape of the sample. Default: (). concentration (Tensor): The concentration of the samples. Default: self._concentration. rate (Tensor): The rate of the samples. Default: self._rate. Returns: Tensor, with the shape being shape + batch_shape. """ shape = self.checktuple(shape, 'shape') concentration, rate = self._check_param_type(concentration, rate) batch_shape = self.shape(concentration + rate) origin_shape = shape + batch_shape if origin_shape == (): sample_shape = (1,) else: sample_shape = origin_shape sample_gamma = C.gamma(sample_shape, concentration, rate, self.seed) value = self.cast(sample_gamma, self.dtype) if origin_shape == (): value = self.squeeze(value) return value