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 M/n is an optimal rate of aggregation in the sense of Tsybakov (2003), where n is the sample size.
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