Structural adaptive deconvolution under -losses

In this paper, we address the problem of estimating a multidimensional density by using indirect observations from the statistical model . Here, is a measurement error independent of the random vector of interest, and having a known density with respect to the Lebesgue measure. Our aim is to obtain optimal accuracy of estimation under -losses when the error has a characteristic function with a polynomial decay. To achieve this goal, we first construct a kernel estimator of which is fully data driven. Then, we derive for it an oracle inequality under very mild assumptions on the characteristic function of the error . As a consequence, we get minimax adaptive upper bounds over a large scale of anisotropic Nikolskii classes and we prove that our estimator is asymptotically rate optimal when . Furthermore, our estimation procedure adapts automatically to the possible independence structure of and this allows us to improve significantly the accuracy of estimation.
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