高维样本相关矩阵的特征值和特征向量的性质

IF 1.4 2区 数学 Q2 STATISTICS & PROBABILITY Annals of Applied Probability Pub Date : 2022-12-01 DOI:10.1214/22-aap1802
Yanqing Yin, Yanyuan Ma
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引用次数: 0

摘要

本文研究了高维样本相关矩阵的特征值和特征向量的性质。我们首先改进了江(2004)的结果;Xiao和Zhou(2010)以及Karoui(2009)的定理1,都涉及样本相关矩阵的极限谱分布和极值特征值,通过允许更一般的四阶矩条件。然后,我们建立了大样本相关矩阵特征向量线性统计的中心极限定理。我们发现样本协方差矩阵和样本相关矩阵的函数CLT之间的差异从根本上受到非随机投影向量的方向的影响。在相关矩阵的平方根为单位的特殊情况下,差值将由投影向量的项的四次方之和确定。这些结果还表明,如果底层分布是高斯分布,则样本相关矩阵的本征矩阵不是渐近的Haar。换句话说,基于样本方差的归一化影响Wishart矩阵的本征矩阵的渐近性质。此外,我们还建立了关于大样本协方差矩阵特征向量线性统计的CLT定理。该定理改进了Bai、Miao和Pan(2007)的主要结果,该结果需要假设基础变量的四阶矩与高斯分布的四阶力矩匹配,以及Pan和Zhou(2008)的定理1.3,这放宽了类高斯四阶矩要求,但假设投影向量的最大项收敛到0(即投影向量的“∞范数”收敛到0)。我们通过在通信中的应用来说明理论结果的有用性。
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Properties of eigenvalues and eigenvectors of large-dimensional sample correlation matrices
This paper is to study the properties of eigenvalues and eigenvectors of high dimensional sample correlation matrices. We firstly improve the result of Jiang (2004); Xiao and Zhou (2010) and the Theorem 1 of Karoui (2009), both concerning the limiting spectral distribution and the extreme eigenvalues of sample correlation matrices, by allowing a more general fourth moment condition. Then, we establish a central limit theorem (CLT) for the linear statistics of the eigenvectors of large sample correlation matrices. We discover that the difference between the functional CLT of the sample covariance matrix and that of the sample correlation matrix is fundamentally influenced by the direction of a nonrandom projection vector. In the special case where the square root of the correlation matrix is identity, the difference will be determined by the sum of the fourth powers of the entries of the projection vector. These results also indicate that the eigenmatrix of sample correlation matrix is not asymptotic Haar if the underlying distribution is Gaussian. In other words, the normalization based on the sample variances affects the asymptotic properties of the eigenmatrix of the Wishart matrix. Furthermore, we establish a theorem concerning CLT for the linear statistics of the eigenvectors of large sample covariance matrices. This theorem improves the main result in Bai, Miao, and Pan (2007), which requires the assumption that the fourth moment of the underlying variable matches the one of Gaussian distribution, as well as Theorem 1.3 in Pan and Zhou (2008), which relaxes the Gaussian like fourth moment requirement but assumes the maximum entries of the projection vectors converge to 0 (i.e. the `∞ norms of the projection vectors converge to 0). We illustrate the usefulness of the theoretical results through an application in communications.
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来源期刊
Annals of Applied Probability
Annals of Applied Probability 数学-统计学与概率论
CiteScore
2.70
自引率
5.60%
发文量
108
审稿时长
6-12 weeks
期刊介绍: The Annals of Applied Probability aims to publish research of the highest quality reflecting the varied facets of contemporary Applied Probability. Primary emphasis is placed on importance and originality.
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