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arxiv: 1606.01117 · v1 · pith:OGZENU2Wnew · submitted 2016-06-03 · 🧮 math.ST · stat.TH

Nonparametric adaptive estimation for grouped data

classification 🧮 math.ST stat.TH
keywords estimatoradaptivedatadefinitionindependentaccessappliescharacteristic
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The aim of this paper is to estimate the density f of a random variable X when one has access to independent observations of the sum of K $\ge$ 2 independent copies of X. We provide a constructive estimator based on a suitable definition of the logarithm of the empirical characteristic function.We propose a new strategy for the data driven choice of the cut-off parameter. The adaptive estimator is proven to be minimax-optimal up to some logarithmic loss. A numerical study illustrates the performances of the method. Moreover, we discuss the fact that the definition of the estimator applies in a wider context than the one considered here.

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