In statistics, the inverse matrix gamma distribution is a generalization of the inverse gamma distribution to positive-definite matrices.[1] It is a more general version of the inverse Wishart distribution, and is used similarly, e.g. as the conjugate prior of the covariance matrix of a multivariate normal distribution or matrix normal distribution. The compound distribution resulting from compounding a matrix normal with an inverse matrix gamma prior over the covariance matrix is a generalized matrix t-distribution.[citation needed]
This reduces to the inverse Wishart distribution with degrees of freedom when .
See also
References
|
---|
Discrete univariate | with finite support | |
---|
with infinite support | |
---|
|
---|
Continuous univariate | supported on a bounded interval | |
---|
supported on a semi-infinite interval | |
---|
supported on the whole real line | |
---|
with support whose type varies | |
---|
|
---|
Mixed univariate | |
---|
Multivariate (joint) | |
---|
Directional | |
---|
Degenerate and singular | |
---|
Families | |
---|
|