Normal-inverse-Wishart distribution

In probability theory and statistics, the normal-inverse-Wishart distribution (or Gaussian-inverse-Wishart distribution) is a multivariate four-parameter family of continuous probability distributions. It is the conjugate prior of a multivariate normal distribution with unknown mean and covariance matrix (the inverse of the precision matrix).[1]

normal-inverse-Wishart
Notation
Parameters location (vector of real)
(real)
inverse scale matrix (pos. def.)
(real)
Support covariance matrix (pos. def.)
PDF

Definition edit

Suppose

 

has a multivariate normal distribution with mean   and covariance matrix  , where

 

has an inverse Wishart distribution. Then   has a normal-inverse-Wishart distribution, denoted as

 

Characterization edit

Probability density function edit

 

The full version of the PDF is as follows:[2]

 

Here   is the multivariate gamma function and   is the Trace of the given matrix.

Properties edit

Scaling edit

Marginal distributions edit

By construction, the marginal distribution over   is an inverse Wishart distribution, and the conditional distribution over   given   is a multivariate normal distribution. The marginal distribution over   is a multivariate t-distribution.

Posterior distribution of the parameters edit

Suppose the sampling density is a multivariate normal distribution

 

where   is an   matrix and   (of length  ) is row   of the matrix .

With the mean and covariance matrix of the sampling distribution is unknown, we can place a Normal-Inverse-Wishart prior on the mean and covariance parameters jointly

 

The resulting posterior distribution for the mean and covariance matrix will also be a Normal-Inverse-Wishart

 

where

 
 
 
 .


To sample from the joint posterior of  , one simply draws samples from  , then draw  . To draw from the posterior predictive of a new observation, draw   , given the already drawn values of   and  .[3]

Generating normal-inverse-Wishart random variates edit

Generation of random variates is straightforward:

  1. Sample   from an inverse Wishart distribution with parameters   and  
  2. Sample   from a multivariate normal distribution with mean   and variance  

Related distributions edit

  • The normal-Wishart distribution is essentially the same distribution parameterized by precision rather than variance. If   then   .
  • The normal-inverse-gamma distribution is the one-dimensional equivalent.
  • The multivariate normal distribution and inverse Wishart distribution are the component distributions out of which this distribution is made.

Notes edit

  1. ^ Murphy, Kevin P. (2007). "Conjugate Bayesian analysis of the Gaussian distribution." [1]
  2. ^ Simon J.D. Prince(June 2012). Computer Vision: Models, Learning, and Inference. Cambridge University Press. 3.8: "Normal inverse Wishart distribution".
  3. ^ Gelman, Andrew, et al. Bayesian data analysis. Vol. 2, p.73. Boca Raton, FL, USA: Chapman & Hall/CRC, 2014.

References edit

  • Bishop, Christopher M. (2006). Pattern Recognition and Machine Learning. Springer Science+Business Media.
  • Murphy, Kevin P. (2007). "Conjugate Bayesian analysis of the Gaussian distribution." [2]