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Distribution-Free Tests of Independence in High Dimensions

15 October 2014
Fang Han
Shizhe Chen
Han Liu
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Abstract

We consider the testing of mutual independence among all entries in a ddd-dimensional random vector based on nnn independent observations. We study two families of distribution-free test statistics, which include Kendall's tau and Spearman's rho as important examples. We show that under the null hypothesis the test statistics of these two families converge weakly to Gumbel distributions, and propose tests that control the type I error in the high-dimensional setting where d>nd>nd>n. We further show that the two tests are rate-optimal in terms of power against sparse alternatives, and outperform competitors in simulations, especially when ddd is large.

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