Penalized contrast estimator for adaptive density deconvolution

Abstract

The authors consider the problem of estimating the density g of independent and identically distributed variables X\i, from a sample Z\1, ..., Z\n where Z\i=X\i+σε\i, i=1, ..., n, ε is a noise independent of X, with σε having known distribution. They present a model selection procedure allowing to construct an adaptive estimator of g and to find non-asymptotic bounds for its L\2(R)-risk. The estimator achieves the minimax rate of convergence, in most cases where lowers bounds are available. A simulation study gives an illustration of the good practical performances of the method.

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