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Optimal convergence rates for the invariant density estimation of jump-diffusion processes

21 January 2021
Chiara Amorino
Eulalia Nualart
ArXiv (abs)PDFHTML
Abstract

We aim at estimating the invariant density associated to a stochastic differential equation with jumps in low dimension, which is for d=1d=1d=1 and d=2d=2d=2. We consider a class of jump diffusion processes whose invariant density belongs to some H\"older space. Firstly, in dimension one, we show that the kernel density estimator achieves the convergence rate 1T\frac{1}{T}T1​, which is the optimal rate in the absence of jumps. This improves the convergence rate obtained in [Amorino, Gloter (2021)], which depends on the Blumenthal-Getoor index for d=1d=1d=1 and is equal to log⁡TT\frac{\log T}{T}TlogT​ for d=2d=2d=2. Secondly, we show that is not possible to find an estimator with faster rates of estimation. Indeed, we get some lower bounds with the same rates {1T,log⁡TT}\{\frac{1}{T},\frac{\log T}{T}\}{T1​,TlogT​} in the mono and bi-dimensional cases, respectively. Finally, we obtain the asymptotic normality of the estimator in the one-dimensional case.

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