提交 d27de69d 编写于 作者: M mindspore-ci-bot 提交者: Gitee

!5789 Add private interface specification in distribution docs

Merge pull request !5789 from XunDeng/pp_issue_branch
......@@ -33,7 +33,7 @@ class Bernoulli(Distribution):
Note:
probs should be proper probabilities (0 < p < 1).
Dist_spec_args is probs.
dist_spec_args is probs.
Examples:
>>> # To initialize a Bernoulli distribution of prob 0.5
......@@ -57,32 +57,50 @@ class Bernoulli(Distribution):
>>> # All the following calls in construct are valid
>>> def construct(self, value, probs_b, probs_a):
>>>
>>> # Private interfaces of probability functions corresponding to public interfaces, including
>>> # 'prob', 'log_prob', 'cdf', 'log_cdf', 'survival_function', 'log_survival', have the form:
>>> # Args:
>>> # value (Tensor): value to be evaluated.
>>> # probs1 (Tensor): probability of success. Default: self.probs.
>>>
>>> # Example of prob.
>>> # Similar calls can be made to other probability functions
>>> # by replacing 'prob' with the name of the function
>>> ans = self.b1.prob(value)
>>> # Evaluate with the respect to distribution b
>>> ans = self.b1.prob(value, probs_b)
>>>
>>> # probs must be passed in during function calls
>>> ans = self.b2.prob(value, probs_a)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same usage as 'mean'
>>> # Will return 0.5
>>> ans = self.b1.mean()
>>> # Will return probs_b
>>> ans = self.b1.mean(probs_b)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same args.
>>> # Args:
>>> # probs1 (Tensor): probability of success. Default: self.probs.
>>>
>>> # Example of mean. sd, var have similar usage.
>>> ans = self.b1.mean() # return 0.5
>>> ans = self.b1.mean(probs_b) # return probs_b
>>> # probs must be passed in during function calls
>>> ans = self.b2.mean(probs_a)
>>>
>>> # Usage of 'kl_loss' and 'cross_entropy' are similar
>>>
>>> # Interfaces of 'kl_loss' and 'cross_entropy' are similar:
>>> # Args:
>>> # dist (str): name of the distribution. Only 'Bernoulli' is supported.
>>> # probs1_b (Tensor): probability of success of distribution b.
>>> # probs1_a (Tensor): probability of success of distribution a. Default: self.probs.
>>>
>>> # Example of kl_loss (cross_entropy is similar):
>>> ans = self.b1.kl_loss('Bernoulli', probs_b)
>>> ans = self.b1.kl_loss('Bernoulli', probs_b, probs_a)
>>>
>>> # Additional probs_a must be passed in through
>>> # Additional probs_a must be passed in
>>> ans = self.b2.kl_loss('Bernoulli', probs_b, probs_a)
>>>
>>> # Sample
>>>
>>> # sample
>>> # Args:
>>> # shape (tuple): shape of the sample. Default: ()
>>> # probs1 (Tensor): probability of success. Default: self.probs.
>>> ans = self.b1.sample()
>>> ans = self.b1.sample((2,3))
>>> ans = self.b1.sample((2,3), probs_b)
......
......@@ -34,7 +34,8 @@ class Exponential(Distribution):
Note:
rate should be strictly greater than 0.
Dist_spec_args is rate.
dist_spec_args is rate.
dtype should be float type because Exponential distributions are continuous.
Examples:
>>> # To initialize an Exponential distribution of rate 0.5
......@@ -58,32 +59,50 @@ class Exponential(Distribution):
>>> # All the following calls in construct are valid
>>> def construct(self, value, rate_b, rate_a):
>>>
>>> # Private interfaces of probability functions corresponding to public interfaces, including
>>> # 'prob', 'log_prob', 'cdf', 'log_cdf', 'survival_function', 'log_survival', have the form:
>>> # Args:
>>> # value (Tensor): value to be evaluated.
>>> # rate (Tensor): rate of the distribution. Default: self.rate.
>>>
>>> # Example of prob.
>>> # Similar calls can be made to other probability functions
>>> # by replacing 'prob' with the name of the function
>>> ans = self.e1.prob(value)
>>> # Evaluate with the respect to distribution b
>>> ans = self.e1.prob(value, rate_b)
>>>
>>> # Rate must be passed in during function calls
>>> ans = self.e2.prob(value, rate_a)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same usage as'mean'
>>> # Will return 2
>>> ans = self.e1.mean()
>>> # Will return 1 / rate_b
>>> ans = self.e1.mean(rate_b)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same args.
>>> # Args:
>>> # rate (Tensor): rate of the distribution. Default: self.rate.
>>>
>>> # Example of mean. sd, var have similar usage.
>>> ans = self.e1.mean() # return 2
>>> ans = self.e1.mean(rate_b) # return 1 / rate_b
>>> # Rate must be passed in during function calls
>>> ans = self.e2.mean(rate_a)
>>>
>>> # Usage of 'kl_loss' and 'cross_entropy' are similar
>>>
>>> # Interfaces of 'kl_loss' and 'cross_entropy' are similar:
>>> # Args:
>>> # dist (str): name of the distribution. Only 'Exponential' is supported.
>>> # rate_b (Tensor): rate of distribution b.
>>> # rate_a (Tensor): rate of distribution a. Default: self.rate.
>>>
>>> # Example of kl_loss (cross_entropy is similar):
>>> ans = self.e1.kl_loss('Exponential', rate_b)
>>> ans = self.e1.kl_loss('Exponential', rate_b, rate_a)
>>>
>>> # Additional rate must be passed in
>>> ans = self.e2.kl_loss('Exponential', rate_b, rate_a)
>>>
>>> # Sample
>>>
>>> # sample
>>> # Args:
>>> # shape (tuple): shape of the sample. Default: ()
>>> # probs1 (Tensor): rate of distribution. Default: self.rate.
>>> ans = self.e1.sample()
>>> ans = self.e1.sample((2,3))
>>> ans = self.e1.sample((2,3), rate_b)
......
......@@ -36,7 +36,7 @@ class Geometric(Distribution):
Note:
probs should be proper probabilities (0 < p < 1).
Dist_spec_args is probs.
dist_spec_args is probs.
Examples:
>>> # To initialize a Geometric distribution of prob 0.5
......@@ -60,32 +60,50 @@ class Geometric(Distribution):
>>> # Tthe following calls are valid in construct
>>> def construct(self, value, probs_b, probs_a):
>>>
>>> # Private interfaces of probability functions corresponding to public interfaces, including
>>> # 'prob', 'log_prob', 'cdf', 'log_cdf', 'survival_function', 'log_survival', have the form:
>>> # Args:
>>> # value (Tensor): value to be evaluated.
>>> # probs1 (Tensor): probability of success of a Bernoulli trail. Default: self.probs.
>>>
>>> # Example of prob.
>>> # Similar calls can be made to other probability functions
>>> # by replacing 'prob' with the name of the function
>>> ans = self.g1.prob(value)
>>> # Evaluate with the respect to distribution b
>>> ans = self.g1.prob(value, probs_b)
>>>
>>> # Probs must be passed in during function calls
>>> ans = self.g2.prob(value, probs_a)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same usage as 'mean'
>>> # Will return 1.0
>>> ans = self.g1.mean()
>>> # Another possible usage
>>> ans = self.g1.mean(probs_b)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same args.
>>> # Args:
>>> # probs1 (Tensor): probability of success of a Bernoulli trail. Default: self.probs.
>>>
>>> # Example of mean. sd, var have similar usage.
>>> ans = self.g1.mean() # return 1.0
>>> ans = self.g1.mean(probs_b)
>>> # Probs must be passed in during function calls
>>> ans = self.g2.mean(probs_a)
>>>
>>> # Usage of 'kl_loss' and 'cross_entropy' are similar
>>>
>>> # Interfaces of 'kl_loss' and 'cross_entropy' are similar:
>>> # Args:
>>> # dist (str): name of the distribution. Only 'Geometric' is supported.
>>> # probs1_b (Tensor): probability of success of a Bernoulli trail of distribution b.
>>> # probs1_a (Tensor): probability of success of a Bernoulli trail of distribution a. Default: self.probs.
>>>
>>> # Example of kl_loss (cross_entropy is similar):
>>> ans = self.g1.kl_loss('Geometric', probs_b)
>>> ans = self.g1.kl_loss('Geometric', probs_b, probs_a)
>>>
>>> # Additional probs must be passed in
>>> ans = self.g2.kl_loss('Geometric', probs_b, probs_a)
>>>
>>> # Sample
>>>
>>> # sample
>>> # Args:
>>> # shape (tuple): shape of the sample. Default: ()
>>> # probs1 (Tensor): probability of success of a Bernoulli trail. Default: self.probs.
>>> ans = self.g1.sample()
>>> ans = self.g1.sample((2,3))
>>> ans = self.g1.sample((2,3), probs_b)
......
......@@ -35,7 +35,8 @@ class Normal(Distribution):
Note:
Standard deviation should be greater than zero.
Dist_spec_args are mean and sd.
dist_spec_args are mean and sd.
dtype should be float type because Normal distributions are continuous.
Examples:
>>> # To initialize a Normal distribution of mean 3.0 and standard deviation 4.0
......@@ -59,32 +60,54 @@ class Normal(Distribution):
>>> # The following calls are valid in construct
>>> def construct(self, value, mean_b, sd_b, mean_a, sd_a):
>>>
>>> # Private interfaces of probability functions corresponding to public interfaces, including
>>> # 'prob', 'log_prob', 'cdf', 'log_cdf', 'survival_function', 'log_survival', have the form:
>>> # Args:
>>> # value (Tensor): value to be evaluated.
>>> # mean (Tensor): mean of distribution. Default: self._mean_value.
>>> # sd (Tensor): standard deviation of distribution. Default: self._sd_value.
>>>
>>> # Example of prob.
>>> # Similar calls can be made to other probability functions
>>> # by replacing 'prob' with the name of the function
>>> ans = self.n1.prob(value)
>>> # Evaluate with the respect to distribution b
>>> ans = self.n1.prob(value, mean_b, sd_b)
>>>
>>> # mean and sd must be passed in during function calls
>>> ans = self.n2.prob(value, mean_a, sd_a)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same usage as 'mean'
>>> # will return [0.0]
>>> ans = self.n1.mean()
>>> # will return mean_b
>>> ans = self.n1.mean(mean_b, sd_b)
>>>
>>> # mean and sd must be passed during function calls
>>> # Functions 'sd', 'var', 'entropy' have the same args.
>>> # Args:
>>> # mean (Tensor): mean of distribution. Default: self._mean_value.
>>> # sd (Tensor): standard deviation of distribution. Default: self._sd_value.
>>>
>>> # Example of mean. sd, var have similar usage.
>>> ans = self.n1.mean() # return 0.0
>>> ans = self.n1.mean(mean_b, sd_b) # return mean_b
>>> # mean and sd must be passed in during function calls
>>> ans = self.n2.mean(mean_a, sd_a)
>>>
>>> # Usage of 'kl_loss' and 'cross_entropy' are similar
>>>
>>> # Interfaces of 'kl_loss' and 'cross_entropy' are similar:
>>> # Args:
>>> # dist (str): type of the distributions. Should be "Normal" in this case.
>>> # mean_b (Tensor): mean of distribution b.
>>> # sd_b (Tensor): standard deviation distribution b.
>>> # mean_a (Tensor): mean of distribution a. Default: self._mean_value.
>>> # sd_a (Tensor): standard deviation distribution a. Default: self._sd_value.
>>>
>>> # Example of kl_loss (cross_entropy is similar):
>>> ans = self.n1.kl_loss('Normal', mean_b, sd_b)
>>> ans = self.n1.kl_loss('Normal', mean_b, sd_b, mean_a, sd_a)
>>>
>>> # Additional mean and sd must be passed
>>> # Additional mean and sd must be passed in
>>> ans = self.n2.kl_loss('Normal', mean_b, sd_b, mean_a, sd_a)
>>>
>>> # Sample
>>> # sample
>>> # Args:
>>> # shape (tuple): shape of the sample. Default: ()
>>> # mean (Tensor): mean of distribution. Default: self._mean_value.
>>> # sd (Tensor): standard deviation of distribution. Default: self._sd_value.
>>> ans = self.n1.sample()
>>> ans = self.n1.sample((2,3))
>>> ans = self.n1.sample((2,3), mean_b, sd_b)
......
......@@ -34,7 +34,8 @@ class Uniform(Distribution):
Note:
low should be stricly less than high.
Dist_spec_args are high and low.
dist_spec_args are high and low.
dtype should be float type because Uniform distributions are continuous.
Examples:
>>> # To initialize a Uniform distribution of mean 3.0 and standard deviation 4.0
......@@ -58,32 +59,54 @@ class Uniform(Distribution):
>>> # All the following calls in construct are valid
>>> def construct(self, value, low_b, high_b, low_a, high_a):
>>>
>>> # Private interfaces of probability functions corresponding to public interfaces, including
>>> # 'prob', 'log_prob', 'cdf', 'log_cdf', 'survival_function', 'log_survival', have the form:
>>> # Args:
>>> # value (Tensor): value to be evaluated.
>>> # low (Tensor): lower bound of distribution. Default: self.low.
>>> # high (Tensor): higher bound of distribution. Default: self.high.
>>>
>>> # Example of prob.
>>> # Similar calls can be made to other probability functions
>>> # by replacing 'prob' with the name of the function
>>> ans = self.u1.prob(value)
>>> # Evaluate with the respect to distribution b
>>> ans = self.u1.prob(value, low_b, high_b)
>>>
>>> # High and low must be passed in during function calls
>>> ans = self.u2.prob(value, low_a, high_a)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same usage as 'mean'
>>> # Will return 0.5
>>> ans = self.u1.mean()
>>> # Will return (low_b + high_b) / 2
>>> ans = self.u1.mean(low_b, high_b)
>>>
>>> # Functions 'sd', 'var', 'entropy' have the same args.
>>> # Args:
>>> # low (Tensor): lower bound of distribution. Default: self.low.
>>> # high (Tensor): higher bound of distribution. Default: self.high.
>>>
>>> # Example of mean. sd, var have similar usage.
>>> ans = self.u1.mean() # return 0.5
>>> ans = self.u1.mean(low_b, high_b) # return (low_b + high_b) / 2
>>> # High and low must be passed in during function calls
>>> ans = self.u2.mean(low_a, high_a)
>>>
>>> # Usage of 'kl_loss' and 'cross_entropy' are similar
>>> # Interfaces of 'kl_loss' and 'cross_entropy' are similar:
>>> # Args:
>>> # dist (str): type of the distributions. Should be "Uniform" in this case.
>>> # low_b (Tensor): lower bound of distribution b.
>>> # high_b (Tensor): upper bound of distribution b.
>>> # low_a (Tensor): lower bound of distribution a. Default: self.low.
>>> # high_a (Tensor): upper bound of distribution a. Default: self.high.
>>>
>>> # Example of kl_loss (cross_entropy is similar):
>>> ans = self.u1.kl_loss('Uniform', low_b, high_b)
>>> ans = self.u1.kl_loss('Uniform', low_b, high_b, low_a, high_a)
>>>
>>> # Additional high and low must be passed
>>> # Additional high and low must be passed in
>>> ans = self.u2.kl_loss('Uniform', low_b, high_b, low_a, high_a)
>>>
>>> # Sample
>>>
>>> # sample
>>> # Args:
>>> # shape (tuple): shape of the sample. Default: ()
>>> # low (Tensor): lower bound of distribution. Default: self.low.
>>> # high (Tensor): higher bound of distribution. Default: self.high.
>>> ans = self.u1.sample()
>>> ans = self.u1.sample((2,3))
>>> ans = self.u1.sample((2,3), low_b, high_b)
......
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