Adjusted location‐invariant U‐tests for the covariance matrix with elliptically high‐dimensional data

Pub Date : 2024-07-14 DOI:10.1111/sjos.12738
Kai Xu, Yeqing Zhou, Liping Zhu
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Abstract

This paper analyzes several covariance matrix U‐tests, which are constructed by modifying the classical John‐Nagao and Ledoit‐Wolf tests, under the elliptically distributed data structure. We study the limiting distributions of these location‐invariant test statistics as the data dimension may go to infinity in an arbitrary way as the sample size does. We find that they tend to have unsatisfactory size performances for general elliptical population. This is mainly because such population often possesses high‐order correlations among their coordinates. Taking such kind of dependency into consideration, we propose necessary corrections for these tests to cope with elliptically high‐dimensional data. For computational efficiency, alternative forms of the new test statistics are also provided. We derive the universal asymptotic null distributions of the proposed test statistics under elliptical distributions and beyond. The powers of the proposed tests are further investigated. The accuracy of the tests is demonstrated by simulations and an empirical study.
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椭圆高维数据协方差矩阵的调整位置不变 U 检验
本文分析了椭圆分布数据结构下的几种协方差矩阵 U 检验,这些检验是通过修改经典的 John-Nagao 检验和 Ledoit-Wolf 检验而构建的。我们研究了这些位置不变检验统计量的极限分布,因为随着样本量的增加,数据维度可能会以任意方式达到无穷大。我们发现,对于一般的椭圆群体,这些统计量的大小表现往往不能令人满意。这主要是因为这类群体的坐标之间往往具有高阶相关性。考虑到这种依赖性,我们对这些检验提出了必要的修正,以应对椭圆高维数据。为了提高计算效率,我们还提供了新检验统计量的替代形式。我们推导出了所提出的检验统计量在椭圆分布及其他分布下的普遍渐近零分布。我们还进一步研究了拟议检验的幂。我们通过模拟和实证研究证明了检验的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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