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Preprints, Working Papers, ... Year : 2006

Lower bounds and aggregation in density estimation

Abstract

In this paper we prove the optimality of an aggregation procedure. We prove lower bounds for aggregation of model selection type of $M$ density estimators for the Kullback-Leiber divergence (KL), the Hellinger's distance and the $L_1$-distance. The lower bound, with respect to the KL distance, can be achieved by the on-line type estimate suggested, among others, by Yang (2000). Combining these results, we state that $\log M/n$ is an optimal rate of aggregation in the sense of Tsybakov (2003), where $n$ is the sample size.
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Dates and versions

hal-00021232 , version 1 (17-03-2006)

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Guillaume Lecué. Lower bounds and aggregation in density estimation. 2006. ⟨hal-00021232⟩
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