Matrix t-distribution

In statistics, the matrix t-distribution (or matrix variate t-distribution) is the generalization of the multivariate t-distribution from vectors to matrices.

The matrix t-distribution shares the same relationship with the multivariate t-distribution that the matrix normal distribution shares with the multivariate normal distribution: If the matrix has only one row, or only one column, the distributions become equivalent to the corresponding (vector-)multivariate distribution. The matrix t-distribution is the compound distribution that results from an infinite mixture of a matrix normal distribution with an inverse Wishart distribution placed over either of its covariance matrices, and the multivariate t-distribution can be generated in a similar way.

In a Bayesian analysis of a multivariate linear regression model based on the matrix normal distribution, the matrix t-distribution is the posterior predictive distribution.

Definition

For a matrix t-distribution, the probability density function at the point of an space is

where the constant of integration K is given by

Here is the multivariate gamma function.

Properties

If , then we have the following properties:

Expected values

The mean, or expected value is, if :

and we have the following second-order expectations, if :

where denotes trace.

More generally, for appropriately dimensioned matrices A,B,C:

Transformation

Transpose transform:

Linear transform: let A (r-by-n), be of full rank r ≤ n and B (p-by-s), be of full rank s ≤ p, then:

The characteristic function and various other properties can be derived from the re-parameterised formulation (see below).

Re-parameterized matrix t-distribution

An alternative parameterisation of the matrix t-distribution uses two parameters and in place of .

This formulation reduces to the standard matrix t-distribution with

This formulation of the matrix t-distribution can be derived as the compound distribution that results from an infinite mixture of a matrix normal distribution with an inverse multivariate gamma distribution placed over either of its covariance matrices.

Properties

If then

The property above comes from Sylvester's determinant theorem:

If and and are nonsingular matrices then

The characteristic function is

where

and where is the type-two Bessel function of Herz[clarification needed] of a matrix argument.

See also

Notes


Uses material from the Wikipedia article Matrix t-distribution, released under the CC BY-SA 4.0 license.