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A multiple testing approach to the regularisation of large sample correlation matrices

机译:大样本相关矩阵正则化的多种测试方法

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摘要

This paper proposes a regularisation method for the estimation of large covariance matrices that uses insights from the multiple testing (MT) literature. The approach tests the statistical significance of individual pair-wise correlations and sets to zero those elements that are not statistically significant, taking account of the multiple testing nature of the problem. The effective p-values of the tests are set as a decreasing function of N (the cross section dimension), the rate of which is governed by the nature of dependence of the underlying observations, and the relative expansion rates of N and T (the time dimension). In this respect, the method specifies the appropriate thresholding parameter to be used under Gaussian and non-Gaussian settings. The MT estimator of the sample correlation matrix is shown to be consistent in the spectral and Frobenius norms, and in terms of support recovery, so long as the true covariance matrix is sparse. The performance of the proposed MT estimator is compared to a number of other estimators in the literature using Monte Carlo experiments. It is shown that the MT estimator performs well and tends to outperform the other estimators, particularly when N is larger than T. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种估计大型协方差矩阵的正则化方法,该矩阵使用多次测试(MT)文献中的见解。该方法测试单个配对相关性的统计学意义,并将其设置为零统计学意义的元素,考虑到问题的多重测试性质。测试的有效p值被设定为n(横截面维度)的降低功能,其速率受到潜在观察的依赖性的性质,以及N和T的相对膨胀率()时间维度)。在这方面,该方法指定在高斯和非高斯设置下使用的适当阈值参数。样品相关矩阵的MT估计器显示在光谱和Frobenius规范中,并且在支持恢复方面是一致的,只要真正的协方差矩阵稀疏。将所提出的MT估计器的性能与文献中的许多其他估计进行比较,使用Monte Carlo实验。结果表明,MT估计器表现良好,往往优于其他估计器,特别是当n大于T.(c)2018 Elsevier B.v.保留所有权利。

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