Adaptive density estimation for stationary processes
Abstract
We propose an algorithm to estimate the common density s of a stationary process X1,...,Xn. We suppose that the process is either β or τ-mixing. We provide a model selection procedure based on a generalization of Mallows' Cp and we prove oracle inequalities for the selected estimator under a few prior assumptions on the collection of models and on the mixing coefficients. We prove that our estimator is adaptive over a class of Besov spaces, namely, we prove that it achieves the same rates of convergence as in the i.i.d framework.
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