Nonparametric estimation for Lévy processes from low-frequency observations

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Abstract

We suppose that a Lévy process is observed at discrete time points. A rather general construction of minimum-distance estimators is shown to give consistent estimators of the Lévy-Khinchine characteristics as the number of observations tends to infinity, keeping the observation distance fixed. For a specific C2-criterion this estimator is rate-optimal. The connection with deconvolution and inverse problems is explained. A key step in the proof is a uniform control on the deviations of the empirical characteristic function on the whole real line.

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APA

Neumann, M. H., & Reiß, M. (2009). Nonparametric estimation for Lévy processes from low-frequency observations. Bernoulli, 15(1), 223–248. https://doi.org/10.3150/08-BEJ148

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