Asymptotic Distributions for Likelihood Ratio Tests for the Equality of Covariance Matrices

Consider independent random samples from -dimensional multivariate normal distributions. We are interested in the limiting distribution of the log-likelihood ratio test statistics for testing for the equality of covariance matrices. It is well known from classical multivariate statistics that the limit is a chi-square distribution when and are fixed integers. Jiang and Yang~\cite{JY13} and Jiang and Qi~\cite{JQ15} have obtained the central limit theorem for the log-likelihood ratio test statistics when the dimensionality goes to infinity with the sample sizes. In this paper, we derive the central limit theorem when either or goes to infinity. We also propose adjusted test statistics which can be well approximated by chi-squared distributions regardless of values for and . Furthermore, we present numerical simulation results to evaluate the performance of our adjusted test statistics and the log-likelihood ratio statistics based on classical chi-square approximation and the normal approximation.
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