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Directional testing for high-dimensional multivariate normal distributions

20 July 2021
Caizhu Huang
Claudia Di Caterina
Nicola Sartori
ArXiv (abs)PDFHTML
Abstract

Thanks to its favorable properties, the multivariate normal distribution is still largely employed for modeling phenomena in various scientific fields. However, when the number of components ppp is of the same asymptotic order as the sample size nnn, standard inferential techniques are generally inadequate to conduct hypothesis testing on the mean vector and/or the covariance matrix. Within several prominent frameworks, we propose then to draw reliable conclusions via a directional test. We show that under the null hypothesis the directional ppp-value is exactly uniformly distributed even when ppp is of the same order of nnn, provided that conditions for the existence of the maximum likelihood estimate for the normal model are satisfied. Extensive simulation results confirm the theoretical findings across different values of p/np/np/n, and show that the proposed approach outperforms not only the usual finite-ppp approaches but also alternative methods tailored for high-dimensional settings.

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