Multivariate generalization of the gamma function
In mathematics, the multivariate gamma function Γp is a generalization of the gamma function. It is useful in multivariate statistics, appearing in the probability density function of the Wishart and inverse Wishart distributions, and the matrix variate beta distribution.[1]
It has two equivalent definitions. One is given as the following integral over the
positive-definite real matrices:

where
denotes the determinant of
. The other one, more useful to obtain a numerical result is:

In both definitions,
is a complex number whose real part satisfies
. Note that
reduces to the ordinary gamma function. The second of the above definitions allows to directly obtain the recursive relationships for
:

Thus


and so on.
This can also be extended to non-integer values of
with the expression:
Where G is the Barnes G-function, the indefinite product of the Gamma function.
The function is derived by Anderson[2] from first principles who also cites earlier work by Wishart, Mahalanobis and others.
There also exists a version of the multivariate gamma function which instead of a single complex number takes a
-dimensional vector of complex numbers as its argument. It generalizes the above defined multivariate gamma function insofar as the latter is obtained by a particular choice of multivariate argument of the former.[3]
Derivatives
We may define the multivariate digamma function as

and the general polygamma function as

Calculation steps

- it follows that


- it follows that
![{\displaystyle {\begin{aligned}{\frac {\partial \Gamma _{p}(a)}{\partial a}}&=\pi ^{p(p-1)/4}\prod _{j=1}^{p}\Gamma (a+(1-j)/2)\sum _{i=1}^{p}\psi (a+(1-i)/2)\\[4pt]&=\Gamma _{p}(a)\sum _{i=1}^{p}\psi (a+(1-i)/2).\end{aligned}}}](https://wikimedia.org/api/rest_v1/media/math/render/svg/53be1f08a21a67f4a4d96fa959255f792b5071d1)
References