TESTING INDEPENDENCE WITH HIGH-DIMENSIONAL CORRELATED SAMPLES

成果类型:
Article
署名作者:
Chen, Xi; Liu, Weidong
署名单位:
New York University; Shanghai Jiao Tong University; Shanghai Jiao Tong University
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/17-AOS1571
发表日期:
2018
页码:
866-894
关键词:
false discovery rate COVARIANCE-MATRIX PHASE-TRANSITION Optimal Rates distributions CONVERGENCE coherence FRAMEWORK strength genes
摘要:
Testing independence among a number of (ultra) high-dimensional random samples is a fundamental and challenging problem. By arranging n identically distributed p-dimensional random vectors into a p x n data matrix, we investigate the problem of testing independence among columns under the matrix-variate normal modeling of data. We propose a computationally simple and tuning-free test statistic, characterize its limiting null distribution, analyze the statistical power and prove its minimax optimality. As an important by-product of the test statistic, a ratio-consistent estimator for the quadratic functional of a covariance matrix from correlated samples is developed. We further study the effect of correlation among samples to an important high-dimensional inference problem-large-scale multiple testing of Pearson's correlation coefficients. Indeed, blindly using classical inference results based on the assumed independence of samples will lead to many false discoveries, which suggests the need for conducting independence testing before applying existing methods. To address the challenge arising from correlation among samples, we propose a sandwich estimator of Pearson's correlation coefficient by de-correlating the samples. Based on this approach, the resulting multiple testing procedure asymptotically controls the overall false discovery rate at the nominal level while maintaining good statistical power. Both simulated and real data experiments are carried out to demonstrate the advantages of the proposed methods.
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