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Asymptotically independent U-statistics in high-dimensional testing

Yinqiu He, Gongjun Xu, Chong Wu, Wei Pan

2021The Annals of Statistics49 citationsDOIOpen Access PDF

Abstract

Many high-dimensional hypothesis tests aim to globally examine marginal or low-dimensional features of a high-dimensional joint distribution, such as testing of mean vectors, covariance matrices and regression coefficients. This paper constructs a family of U-statistics as unbiased estimators of the $\ell_{p}$-norms of those features. We show that under the null hypothesis, the U-statistics of different finite orders are asymptotically independent and normally distributed. Moreover, they are also asymptotically independent with the maximum-type test statistic, whose limiting distribution is an extreme value distribution. Based on the asymptotic independence property, we propose an adaptive testing procedure which combines $p$-values computed from the U-statistics of different orders. We further establish power analysis results and show that the proposed adaptive procedure maintains high power against various alternatives.

Topics & Concepts

MathematicsTest statisticStatisticsStatistical hypothesis testingEstimatorAsymptotic distributionIndependence (probability theory)CovarianceNull distributionStatisticOrder statisticp-valueU-statisticApplied mathematicsEfficiencyRandom Matrices and ApplicationsStatistical Methods and InferenceStatistical Methods and Bayesian Inference
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