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Matrix F-distribution

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Matrix
Notation
Parameters , scale matrix (pos. def.)
degrees of freedom (real)
degrees of freedom (real)
Support is p × p positive definite matrix
PDF

Mean , for
Variance see below

In statistics, the matrix F distribution (or matrix variate F distribution) is a matrix variate generalization of the F distribution which is defined on real-valued positive-definite matrices. In Bayesian statistics it can be used as the semi conjugate prior for the covariance matrix or precision matrix of multivariate normal distributions, and related distributions [1][2][3][4].

Density

The probability density function of the matrix distribution is:

where and are positive definite matrices, is the determinant, Γp(·) is the multivariate gamma function, and is the p × p identity matrix.

Properties

Construction of the distribution

  • The standard matrix F distribution, with an identity scale matrix , was originally derived by [1]. When considering independent distributions, and , and define , then .
  • If and , then, after integrating out , has a matrix F-distribution, i.e.,

    This construction is useful to construct a semi-conjugate prior for a covariance matrix[3].
  • If and , then, after integrating out , has a matrix F-distribution, i.e.,

    This construction is useful to construct a semi-conjugate prior for a precision matrix[4].

Marginal distributions from a matrix F distributed matrix

Suppose has a matrix F distribution. Partition the matrices and conformably with each other

where and are matrices, then we have .

Moments

Let .

The mean is given by:

The (co)variance of elements of are given by[3]:

  • The matrix F-distribution has also been termed the multivariate beta II distribution[5]. See also [6], for a univariate version.
  • A univariate version of the matrix F distribution is the F-distribution. With (i.e. univariate) and , and , the probability density function of the matrix F distribution becomes the univariate (unscaled) F distribution:
  • In the univariate case, with and , and when setting , then follows a half t distribution with scale parameter and degrees of freedom . The half t distribution is a common prior for standard deviations[7].

See also

References

  1. ^ a b Olkin, I. and Rubin, H. (1964). "Multivariate Beta Distributions and Independence Properties of the Wishart Distribution.". The Annals of Mathematical Statistics, 35, pp. 261–269.
  2. ^ Dawid, A. P. (1981). "Some matrix-variate distribution theory: Notational considerations and a Bayesian application". Biometrika, 68:1, pp. 265–274.
  3. ^ a b c Mulder, J. and Pericchi, L. R. (2010). "The Matrix-F Prior for Estimating and Testing Covariance Matrices". Bayesian Analysis, 13:4, pp. 1193-1214.
  4. ^ a b Williams, D. R. and Mulder, J. (2020). "Bayesian hypothesis testing for Gaussian graphical models: Conditional independence and order constraints". Journal of Mathematical Psychology, 99, 102441
  5. ^ Tan, W.Y. (1969). "Note on the multivariate and the generalized multivariate beta distributions.". Journal of American Statistical Association, 64, pp. 230–241.
  6. ^ Perez, M.-E. and Pericchi, L. R. and Ramirez, I. C. (2017). "The Scaled Beta2 Distribution as a Robust Prior for Scales.". Bayesian Analysis, 12:3, pp. 615–637.
  7. ^ Gelman A. (2006). "Prior distributions for variance parameters in hierarchical models.". Bayesian Analysis, 1:3, pp. 515–534.