Location-invariant Multi-sample U-tests for Covariance Matrices with Large Dimension

For two or more multivariate distributions with common covariance matrix, test statistics for certain special structures of the common covariance matrix are presented when the dimension of the multivariate vectors may exceed the number of such vectors. The test statistics are constructed as function...

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Veröffentlicht in:Scandinavian journal of statistics 2017-06, Vol.44 (2), p.500-523
1. Verfasser: AHMAD, M. RAUF
Format: Artikel
Sprache:eng
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Zusammenfassung:For two or more multivariate distributions with common covariance matrix, test statistics for certain special structures of the common covariance matrix are presented when the dimension of the multivariate vectors may exceed the number of such vectors. The test statistics are constructed as functions of location-invariant estimators defined as U-statistics, and the corresponding asymptotic theory is used to derive the limiting distributions of the proposed tests. The properties of the test statistics are established under mild and practical assumptions, and the same are numerically demonstrated using simulation results with small or moderate sample sizes and large dimensions.
ISSN:0303-6898
1467-9469
1467-9469
DOI:10.1111/sjos.12262