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Asymptotics for non-degenerate multivariate UUU-statistics with estimated nuisance parameters under the null and local alternative hypotheses

20 January 2024
Alain Desgagné
Christian Genest
Frédéric Ouimet
ArXiv (abs)PDFHTML
Abstract

The large-sample behavior of non-degenerate multivariate UUU-statistics of arbitrary degree is investigated under the assumption that their kernel depends on parameters that can be estimated consistently. Mild regularity conditions are given which guarantee that once properly normalized, such statistics are asymptotically multivariate Gaussian both under the null hypothesis and sequences of local alternatives. The work of Randles (1982, Ann. Statist.) is extended in three ways: the data and the kernel values can be multivariate rather than univariate, the limiting behavior under local alternatives is studied for the first time, and the effect of knowing some of the nuisance parameters is quantified. These results can be applied to a broad range of goodness-of-fit testing contexts, as shown in one specific example.

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