Nonparametric inference for discretely sampled Lévy processes
Abstract
Given a sample from a discretely observed L\'evy process of the finite jump activity, we study the problem of nonparametric estimation of the L\'evy density corresponding to the process Our estimator of is based on a suitable inversion of the L\'evy-Khintchine formula and a plug-in device. The main result of the paper deals with an upper bound on the mean square error of the estimator of at a fixed point We also show that the estimator attains the minimax convergence rate over a suitable class of L\'evy densities.
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