4.4 Article

On testing the equality of latent roots of scatter matrices under ellipticity

Journal

JOURNAL OF MULTIVARIATE ANALYSIS
Volume 199, Issue -, Pages -

Publisher

ELSEVIER INC
DOI: 10.1016/j.jmva.2023.105232

Keywords

Elliptical distributions; Hypothesis testing; Latent roots

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In this paper, we address the problem of testing the relationship between the eigenvalues of a scatter matrix in an elliptical distribution. Using the Le Cam asymptotic theory, we show that the non-specification of nuisance parameters has an asymptotic cost for testing the relationship. We also propose a distribution-free signed-rank test for this problem.
In the present paper, we tackle the problem of testing H-0q : lambda(q) > lambda(q+1) = = lambda(p), where lambda(1), . . . , lambda(p) are the scatter matrix eigenvalues of an elliptical distribution on R-p. This is a classical problem in multivariate analysis which is very useful in dimension reduction. We analyse the problem using the Le Cam asymptotic theory of experiments and show that contrary to the testing problems on eigenvalues and eigenvectors of a scatter matrix tackled in Hallin et al. (2010), the non-specification of nuisance parameters has an asymptotic cost for testing H-0q. We moreover derive signed-rank tests for the problem that enjoy the property of being asymptotically distribution-free under ellipticity. The van der Waerden rank test uniformly dominates the classical pseudo-Gaussian procedure for the problem. Numerical illustrations show the nice finite-sample properties of our tests.

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