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 an unknown mean and covariance matrix (the inverse of the precision matrix).
Definition
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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
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Probability density function
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The full version of the PDF is as follows:
Here is the multivariate gamma function and is the Trace of the given matrix.
Properties
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Scaling
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Marginal distributions
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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
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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 .
Generating normal-inverse-Wishart random variates
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Generation of random variates is straightforward:
Sample from an inverse Wishart distribution with parameters and
Sample from a multivariate normal distribution with mean and variance
Related distributions
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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
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Murphy, Kevin P. (2007). "Conjugate Bayesian analysis of the Gaussian distribution." [1]
Simon J.D. Prince(June 2012). Computer Vision: Models, Learning, and Inference. Cambridge University Press. 3.8: "Normal inverse Wishart distribution".
Gelman, Andrew, et al. Bayesian data analysis. Vol. 2, p.73. Boca Raton, FL, USA: Chapman & Hall/CRC, 2014.
References
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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]
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