An Introduction to Wishart Matrix Moments
Adrian N. Bishop, Pierre Del Moral, Angele Niclas

TL;DR
This paper provides a comprehensive introduction to Wishart matrix moments, deriving non-asymptotic formulas and extending classical spectral results for real Wishart matrices, with applications in multivariate analysis and statistical theory.
Contribution
It offers new non-asymptotic formulas for Wishart matrix moments and extends spectral and trace results to non-isotropic cases, including matrix analogues of classical laws.
Findings
Derived non-asymptotic matrix moment formulas
Extended spectral laws to non-isotropic Wishart matrices
Developed new spectral and trace concentration inequalities
Abstract
These lecture notes provide a comprehensive, self-contained introduction to the analysis of Wishart matrix moments. This study may act as an introduction to some particular aspects of random matrix theory, or as a self-contained exposition of Wishart matrix moments. Random matrix theory plays a central role in statistical physics, computational mathematics and engineering sciences, including data assimilation, signal processing, combinatorial optimization, compressed sensing, econometrics and mathematical finance, among numerous others. The mathematical foundations of the theory of random matrices lies at the intersection of combinatorics, non-commutative algebra, geometry, multivariate functional and spectral analysis, and of course statistics and probability theory. As a result, most of the classical topics in random matrix theory are technical, and mathematically difficult to…
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