A unified approach to testing mean vectors with large dimensions

A unified testing framework is presented for large-dimensional mean vectors of one or several populations which may be non-normal with unequal covariance matrices. Beginning with one-sample case, the construction of tests, underlying assumptions and asymptotic theory, is systematically extended to m...

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Veröffentlicht in:Advances in statistical analysis : AStA : a journal of the German Statistical Society 2019-12, Vol.103 (4), p.593-618
1. Verfasser: Ahmad, M. Rauf
Format: Artikel
Sprache:eng
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Zusammenfassung:A unified testing framework is presented for large-dimensional mean vectors of one or several populations which may be non-normal with unequal covariance matrices. Beginning with one-sample case, the construction of tests, underlying assumptions and asymptotic theory, is systematically extended to multi-sample case. Tests are defined in terms of U -statistics-based consistent estimators, and their limits are derived under a few mild assumptions. Accuracy of the tests is shown through simulations. Real data applications, including a five-sample unbalanced MANOVA analysis on count data, are also given.
ISSN:1863-8171
1863-818X
1863-818X
DOI:10.1007/s10182-018-00343-z