tf.contrib.distributions.normal_conjugates_known_sigma_posterior(prior, sigma, s, n)
Posterior Normal distribution with conjugate prior on the mean.
This model assumes that n
observations (with sum s
) come from a Normal with unknown mean mu
(described by the Normal prior
) and known variance sigma^2
. The "known sigma posterior" is the distribution of the unknown mu
.
Accepts a prior Normal distribution object, having parameters mu0
and sigma0
, as well as known sigma
values of the predictive distribution(s) (also assumed Normal), and statistical estimates s
(the sum(s) of the observations) and n
(the number(s) of observations).
Returns a posterior (also Normal) distribution object, with parameters (mu', sigma'^2)
, where:
mu ~ N(mu', sigma'^2) sigma'^2 = 1/(1/sigma0^2 + n/sigma^2), mu' = (mu0/sigma0^2 + s/sigma^2) * sigma'^2.
Distribution parameters from prior
, as well as sigma
, s
, and n
. will broadcast in the case of multidimensional sets of parameters.
prior
: Normal
object of type dtype
: the prior distribution having parameters (mu0, sigma0)
.sigma
: tensor of type dtype
, taking values sigma > 0
. The known stddev parameter(s).s
: Tensor of type dtype
. The sum(s) of observations.n
: Tensor of type int
. The number(s) of observations.A new Normal posterior distribution object for the unknown observation mean mu
.
TypeError
: if dtype of s
does not match dtype
, or prior
is not a Normal object.Defined in tensorflow/contrib/distributions/python/ops/normal_conjugate_posteriors.py
.
© 2017 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/contrib/distributions/normal_conjugates_known_sigma_posterior