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Bibliographic Details
Main Author: Forrester, Peter J.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.12409
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Table of Contents:
  • The paper "An efficient sampling scheme for the eigenvalues of dual Wishart matrices", by I.~Santamaría and V.~Elvira, [\emph{IEEE Signal Processing Letters}, vol.~28, pp.~2177--2181, 2021] \cite{SE21}, poses the question of efficient sampling from the eigenvalue probability density function of the $n \times n$ central complex Wishart matrices with variance matrix equal to the identity. Underlying such complex Wishart matrices is a rectangular $R \times n$ $(R \ge n)$ standard complex Gaussian matrix, requiring then $2Rn$ real random variables for their generation. The main result of \cite{SE21} gives a formula involving just two classical distributions specifying the two eigenvalues in the case $n=2$. The purpose of this Letter is to point out that existing results in the literature give two distinct ways to efficiently sample the eigenvalues in the general $n$ case. One is in terms of the eigenvalues of a tridiagonal matrix which factors as the product of a bidiagonal matrix and its transpose, with the $2n+1$ nonzero entries of the latter given by (the square root of) certain chi-squared random variables. The other is as the generalised eigenvalues for a pair of bidiagonal matrices, also containing a total of $2n+1$ chi-squared random variables. Moreover, these characterisation persist in the case of that the variance matrix consists of a single spike, and for the case of real Wishart matrices.