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Distribution-Free Consistent Independence Tests via Center-Outward Ranks and Signs

Hongjian Shi, Mathias Drton, Fang Han

2020Journal of the American Statistical Association69 citationsDOIOpen Access PDF

Abstract

This article investigates the problem of testing independence of two random vectors of general dimensions. For this, we give for the first time a distribution-free consistent test. Our approach combines distance covariance with the center-outward ranks and signs developed by Marc Hallin and collaborators. In technical terms, the proposed test is consistent and distribution-free in the family of multivariate distributions with nonvanishing (Lebesgue) probability densities. Exploiting the (degenerate) U-statistic structure of the distance covariance and the combinatorial nature of Hallin’s center-outward ranks and signs, we are able to derive the limiting null distribution of our test statistic. The resulting asymptotic approximation is accurate already for moderate sample sizes and makes the test implementable without requiring permutation. The limiting distribution is derived via a more general result that gives a new type of combinatorial noncentral limit theorem for double- and multiple-indexed permutation statistics. Supplementary materials for this article are available online.

Topics & Concepts

MathematicsTest statisticIndependence (probability theory)CovariancePermutation (music)Asymptotic distributionCentral limit theoremNull distributionStatisticsApplied mathematicsRandom permutationLimit (mathematics)Distribution (mathematics)Statistical hypothesis testingCombinatoricsMathematical analysisAcousticsPhysicsEstimatorBlock (permutation group theory)Bayesian Methods and Mixture ModelsStatistical Methods and InferenceStatistical Methods and Bayesian Inference