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An Introduction to Wishart Matrix Moments

机译:Wishart矩阵矩简介

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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 penetrate for non-experts and regular users and practitioners. The technical aim of these notes is to review and extend some important results in random matrix theory in the specific context of real random Wishart matrices. This special class of Gaussian-type sample covariance matrix plays an important role in multivariate analysis and in statistical theory. We derive non-asymptotic formulae for the full matrix moments of real valued Wishart random matrices. As a corollary, we derive and extend a number of spectral and trace-type results for the case of non-isotropic Wishart random matrices. We also derive the full matrix moment analogues of some classic spectral and trace-type moment results. For example, we derive semi-circle and Marchencko-Pastur-type laws in the non-isotropic and full matrix cases. Laplace matrix transforms and matrix moment estimates are also studied, along with new spectral and trace concentration-type inequalities.
机译:这些讲义为Wishart矩阵矩的分析提供了全面,独立的介绍。这项研究可以作为随机矩阵理论某些方面的介绍,也可以作为Wishart矩阵矩的自足论述。随机矩阵理论在统计物理学,计算数学和工程科学(包括数据同化,信号处理,组合优化,压缩感测,计量经济学和数学金融等)中发挥着重要作用。随机矩阵理论的数学基础在于组合函数学,非交换代数,几何,多元函数和谱分析,当然还有统计学和概率论的交集。结果,随机矩阵理论中的大多数经典主题都是技术性的,并且在数学上难以为非专家,常规用户和从业人员所渗透。这些注释的技术目的是在真实的随机Wishart矩阵的特定上下文中,回顾和扩展随机矩阵理论中的一些重要结果。这种特殊的高斯型样本协方差矩阵在多元分析和统计理论中起着重要作用。我们推导了实值Wishart随机矩阵的完整矩阵矩的非渐近公式。因此,对于非各向同性的Wishart随机矩阵,我们得出并扩展了许多光谱和迹线类型的结果。我们还导出了一些经典的频谱和迹线型矩结果的全矩阵矩类似物。例如,在非各向同性和全矩阵情况下,我们推导了半圆和Marchencko-Pastur型定律。还研究了拉普拉斯矩阵变换和矩阵矩估计,以及新的光谱和痕量浓度类型的不等式。

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