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The decomposite T2T^{2}-test when the dimension is large

Abstract

In this paper, we discuss tests for mean vector of high-dimensional data when the dimension pp is a function of sample size nn. One of the tests, called the decomposite T2T^{2}-test, in the high-dimensional testing problem is constructed based on the estimation work of Ledoit and Wolf (2018), which is an optimal orthogonally equivariant estimator of the inverse of population covariance matrix under Stein loss function. The asymptotic distribution function of the test statistic is investigated under a sequence of local alternatives. The asymptotic relative efficiency is used to see whether a test is optimal and to perform the power comparisons of tests. An application of the decomposite T2T^{2}-test is in testing significance for the effect of monthly unlimited transport policy on public transportation, in which the data are taken from Taipei Metro System.

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