In statistics, the matrix variate Dirichlet distribution is a generalization of the matrix variate beta distribution and of the Dirichlet distribution.
Suppose
are
positive definite matrices with
also positive-definite, where
is the
identity matrix. Then we say that the
have a matrix variate Dirichlet distribution,
, if their joint probability density function is

where
and
is the multivariate beta function.
If we write
then the PDF takes the simpler form

on the understanding that
.
Theorems
generalization of chi square-Dirichlet result
Suppose
are independently distributed Wishart
positive definite matrices. Then, defining
(where
is the sum of the matrices and
is any reasonable factorization of
), we have

Marginal distribution
If
, and if
, then:

Conditional distribution
Also, with the same notation as above, the density of
is given by

where we write
.
partitioned distribution
Suppose
and suppose that
is a partition of
(that is,
and
if
). Then, writing
and
(with
), we have:

partitions
Suppose
. Define

where
is
and
is
. Writing the Schur complement
we have

and

See also
References
A. K. Gupta and D. K. Nagar 1999. "Matrix variate distributions". Chapman and Hall.