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Estimator selection with respect to Hellinger-type risks

10 May 2009
Y. Baraud
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Abstract

We observe a random measure NNN and aim at estimating its intensity sss. This statistical framework allows to deal simultaneously with the problems of estimating a density, the marginals of a multivariate distribution, the mean of a random vector with nonnegative components and the intensity of a Poisson process. Our estimation strategy is based on estimator selection. Given a family of estimators of sss based on the observation of NNN, we propose a selection rule, based on NNN as well, in view of selecting among these. Little assumption is made on the collection of estimators. The procedure offers the possibility to perform model selection and also to select among estimators associated to different model selection strategies. Besides, it provides an alternative to the TTT-estimators as studied recently in Birg\é (2006). For illustration, we consider the problems of estimation and (complete) variable selection in various regression settings.

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