Tests of Concentration for Low-Dimensional and High-Dimensional Directional Data
We consider asymptotic inference for the concentration of directional data. More precisely, wepropose tests for concentration (i) in the low-dimensional case where the sample size n goes to infinity andthe dimension p remains fixed, and (ii) in the high-dimensional case where both n and p become arbitrarilylarge. To the best of our knowledge, the tests we provide are the first procedures for concentration thatare valid in the (n; p)-asymptotic framework. Throughout, we consider parametric FvML tests, that areguaranteed to meet asymptotically the nominal level constraint under FvML distributions only, as well as“pseudo-FvML” versions of such tests, that are validity-robust within the class of rotationally symmetricdistributions.We conduct a Monte-Carlo study to check our asymptotic results and to investigate the finitesamplebehavior of the proposed tests.
Year of publication: |
2014-02
|
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Authors: | Paindaveine, Davy ; Cutting, Christine ; Verdebout, Thomas |
Institutions: | European Centre for Advanced Research in Economics and Statistics (ECARES), Solvay Brussels School of Economics and Management |
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