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Empirical likelihood method for complete independence test on high dimensional data

Abstract

Given a random sample of size nn from a pp dimensional random vector, where both nn and pp are large, we are interested in testing whether the pp components of the random vector are mutually independent. This is the so-called complete independence test. In the multivariate normal case, it is equivalent to testing whether the correlation matrix is an identity matrix. In this paper, we propose a one-sided empirical likelihood method for the complete independence test for multivariate normal data based on squared sample correlation coefficients. The limiting distribution for our one-sided empirical likelihood test statistic is proved to be Z2I(Z>0)Z^2I(Z>0) when both nn and pp tend to infinity, where ZZ is a standard normal random variable. In order to improve the power of the empirical likelihood test statistic, we also introduce a rescaled empirical likelihood test statistic. We carry out an extensive simulation study to compare the performance of the rescaled empirical likelihood method and two other statistics which are related to the sum of squared sample correlation coefficients.

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