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Pointwise Adaptive Estimation of the MarginalDensity of a Weakly Dependent Process

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 Added by Karine Bertin
 Publication date 2016
and research's language is English




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This paper is devoted to the estimation of the common marginal density function of weakly dependent processes. The accuracy of estimation is measured using pointwise risks. We propose a datadriven procedure using kernel rules. The bandwidth is selected using the approach of Goldenshluger and Lepski and we prove that the resulting estimator satisfies an oracle type inequality. The procedure is also proved to be adaptive (in a minimax framework) over a scale of Holder balls for several types of dependence: stong mixing processes, $lambda$-dependent processes or i.i.d. sequences can be considered using a single procedure of estimation. Some simulations illustrate the performance of the proposed method.



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