Adaptivity in convolution models with partially known noise distribution
We consider a semiparametric convolution model. We observe random variables having a distribution given by the convolution of some unknown density and some partially known noise density . In this work, is assumed exponentially smooth with stable law having unknown self-similarity index . In order to ensure identifiability of the model, we restrict our attention to polynomially smooth, Sobolev-type densities , with smoothness parameter . In this context, we first provide a consistent estimation procedure for . This estimator is then plugged-into three different procedures: estimation of the unknown density , of the functional and goodness-of-fit test of the hypothesis , where the alternative is expressed with respect to -norm (i.e. has the form ). These procedures are adaptive with respect to both and and attain the rates which are known optimal for known values of and . As a by-product, when the noise density is known and exponentially smooth our testing procedure is optimal adaptive for testing Sobolev-type densities. The estimating procedure of is illustrated on synthetic data.
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