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样本块相关矩阵的谱统计量

Spectral statistics of sample block correlation matrices

Annals of Statistics · 2024
被引 4
ABS 4*

中文导读

本文提出样本块相关矩阵来研究随机子向量间的依赖关系,在高维设定下建立了其谱统计量的极限理论,并应用于分组独立性检验,对金融和基因数据分析有参考价值。

Abstract

A fundamental concept in multivariate statistics, the sample correlation matrix, is often used to infer the correlation/dependence structure among random variables, when the population mean and covariance are unknown. A natural block extension of it, the sample block correlation matrix, is proposed to take on the same role, when random variables are generalized to random subvectors. In this paper, we establish a spectral theory of the sample block correlation matrices and apply it to group independent tests and related problems, under the high-dimensional setting. More specifically, we consider a random vector of dimension p, consisting of k subvectors of dimension pt’s, where pt’s can vary from 1 to order p. Our primary goal is to investigate the dependence of the k subvectors. We construct a random matrix model called sample block correlation matrix based on N samples for this purpose. The spectral statistics of the sample block correlation matrix include the classical Wilks’ statistic and Schott’s statistic as special cases. It turns out that the spectral statistics do not depend on the unknown population mean and covariance, under the null hypothesis that the subvectors are independent. Further, the limiting behavior of the spectral statistics can be described with the aid of the free probability theory. Specifically, under three different settings of possibly N-dependent k and pt’s, we show that the empirical spectral distribution of the sample block correlation matrix converges to the free Poisson binomial distribution, free Poisson distribution (Marchenko–Pastur law) and free Gaussian distribution (semicircle law), respectively. We then further derive the CLTs for the linear spectral statistics of the block correlation matrix under a general setting. Our results are established under the general distribution assumption on the random vector. It turns out that the CLTs are universal and do not depend on the 4th cumulants of the vector components, due to a self-normalizing effect of the correlation-type matrices. We further derive the CLT under the alternative hypothesis and discuss the power of our statistics. Based on our theory, real data analysis on stock return data and gene data is also conducted.

多元统计随机矩阵理论高维统计独立性检验