On Test Statistics in Profile Analysis with High-dimensional Data |
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Authors: | Mizuki Onozawa Takahiro Nishiyama Takashi Seo |
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Affiliation: | 1. Department of Mathematical Information Science, Graduate School of Science, Tokyo University of Science, Tokyo, Japan;2. Department of Business Administration, School of Business Administration, Senshu University, Kanagawa, Japan;3. Department of Mathematical Information Science, Faculty of Science, Tokyo University of Science, Tokyo, Japan |
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Abstract: | We consider profile analysis with unequal covariance matrices under multivariate normality. In particular, we discuss this problem for high-dimensional data where the dimension is larger than the sample size. We propose three test statistics based on Bennett’s (1951) transformation and the Dempster trace criterion proposed by Dempster (1958 Dempster, A.P. (1958). A high dimensional two samples significance test. Annals of Mathematical Statistics 29:995–1010.[Crossref] , [Google Scholar]). We derive the null distributions as well as the nonnull distributions of the test statistics. Finally, in order to investigate the accuracy of the proposed statistics, we perform Monte Carlo simulations for some selected values of parameters. |
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Keywords: | Behrens–Fisher problem Dempster trace criterion High-dimensional data Hotelling’s T2-type statistic Profile analysis |
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