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A multivariate nonparametric test of independence
Authors:Nail K Bakirov  Gábor J Székely
Institution:a Institute of Mathematics, USC Russian Academy of Sciences, 112 Chernyshevskii St., 450000 Ufa, Russia
b Department of Mathematics, Ohio University, Athens, OH 45701, USA
c Department of Mathematics and Statistics, Bowling Green State University, Bowling Green, OH 43403, USA
d Rényi Institute of Mathematics, Hungarian Academy of Sciences, Hungary
Abstract:A new nonparametric approach to the problem of testing the joint independence of two or more random vectors in arbitrary dimension is developed based on a measure of association determined by interpoint distances. The population independence coefficient takes values between 0 and 1, and equals zero if and only if the vectors are independent. We show that the corresponding statistic has a finite limit distribution if and only if the two random vectors are independent; thus we have a consistent test for independence. The coefficient is an increasing function of the absolute value of product moment correlation in the bivariate normal case, and coincides with the absolute value of correlation in the Bernoulli case. A simple modification of the statistic is affine invariant. The independence coefficient and the proposed statistic both have a natural extension to testing the independence of several random vectors. Empirical performance of the test is illustrated via a comparative Monte Carlo study.
Keywords:Primary 62G10  secondary 62H20
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