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The complex inverse Wishart distribution is a matrix
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomeno ...
defined on complex-valued
positive-definite In mathematics, positive definiteness is a property of any object to which a bilinear form or a sesquilinear form may be naturally associated, which is positive-definite In mathematics, positive definiteness is a property of any object to which a b ...
matrices Matrix most commonly refers to: * ''The Matrix'' (franchise), an American media franchise ** ''The Matrix'', a 1999 science-fiction action film ** "The Matrix", a fictional setting, a virtual reality environment, within ''The Matrix'' (franchis ...
and is the complex analog of the real
inverse Wishart distribution In statistics, the inverse Wishart distribution, also called the inverted Wishart distribution, is a probability distribution defined on real-valued positive-definite matrices. In Bayesian statistics it is used as the conjugate prior for the c ...
. The complex Wishart distribution was extensively investigated by Goodman while the derivation of the inverse is shown by Shaman and others. It has greatest application in least squares optimization theory applied to complex valued data samples in digital radio communications systems, often related to Fourier Domain complex filtering. Letting \mathbf_ = \sum_^\nu G_j G_j^H be the sample covariance of independent complex ''p''-vectors G_j whose Hermitian covariance has
complex Wishart distribution In statistics, the complex Wishart distribution is a complex version of the Wishart distribution. It is the distribution of n times the sample Hermitian covariance matrix of n zero-mean independent Gaussian random variables. It has support for ...
\mathbf \sim \mathcal(\mathbf\Sigma,\nu,p) with mean value \mathbf \text \nu degrees of freedom, then the pdf of \mathbf = \mathbf follows the complex inverse Wishart distribution.


Density

If \mathbf_ is a sample from the complex Wishart distribution \mathcal(,\nu,p) such that, in the simplest case, \nu \ge p \text \left, \mathbf \right , > 0 then \mathbf = \mathbf^ is sampled from the inverse complex Wishart distribution \mathcal^(,\nu,p) \text \mathbf\Psi = \mathbf^. The density function of \mathbf is : f_(\mathbf) = \frac \left, \mathbf\^e^ where \mathcal\Gamma_p(\nu) is the complex multivariate Gamma function :\mathcal\Gamma_p(\nu) = \pi^\prod_^p \Gamma(\nu-j+1)


Moments

The variances and covariances of the elements of the inverse complex Wishart distribution are shown in Shaman's paper above while Maiwald and Kraus determine the 1-st through 4-th moments. Shaman finds the first moment to be : \mathbf E mathcal C \mathbf = \frac \mathbf, \; n > p and, in the simplest case \mathbf\Psi = \mathbf I_, given d = \frac , then : \mathbf = \begin d & 0 & 0 & 0 & d & 0 & 0 & 0 & d \\ \end The vectorised covariance is : \mathbf = b \left( \mathbf I_p \otimes I_p \right ) + c \, \mathbf \left ( \mathbf \right ) ^T + (a-b-c) \mathbf J where \mathbf J is a p^2 \times p^2 identity matrix with ones in diagonal positions 1 + (p + 1)j, \; j = 0,1,\dots p-1 and a, b, c are real constants such that for n > p + 1 : a = \frac , marginal diagonal variances : b = \frac , off-diagonal variances. : c = \frac , intra-diagonal covariances For \mathbf \Psi = \mathbf I _ 3, we get the sparse matrix: : \mathbf = \begin a & \cdot & \cdot & \cdot & c & \cdot & \cdot & \cdot & c \\ \cdot & b & \cdot & \cdot & \cdot & \cdot & \cdot & \cdot & \cdot \\ \cdot & \cdot & b & \cdot & \cdot & \cdot & \cdot & \cdot & \cdot \\ \cdot & \cdot & \cdot & b & \cdot & \cdot & \cdot & \cdot & \cdot \\ c & \cdot & \cdot & \cdot & a & \cdot & \cdot & \cdot & c \\ \cdot & \cdot & \cdot & \cdot & \cdot & b & \cdot & \cdot & \cdot \\ \cdot & \cdot & \cdot & \cdot & \cdot & \cdot & b & \cdot & \cdot \\ \cdot & \cdot & \cdot & \cdot & \cdot & \cdot & \cdot & b & \cdot \\ c & \cdot & \cdot & \cdot & c & \cdot & \cdot & \cdot & a \\ \end


Eigenvalue distributions

The joint distribution of the real eigenvalues of the inverse complex (and real) Wishart are found in Edelman's paper who refers back to an earlier paper by James. In the non-singular case, the eigenvalues of the inverse Wishart are simply the inverted values for the Wishart. Edelman also characterises the marginal distributions of the smallest and largest eigenvalues of complex and real Wishart matrices.


References

{{reflist Complex distributions Continuous distributions Multivariate continuous distributions Covariance and correlation Conjugate prior distributions Exponential family distributions