This paper studies the estimation of the volatility parameter in a model where the driving process is a Brownian motion or a more general symmetric stable process that is perturbed by another Lévy process. We distinguish between a parametric case, where the law of the perturbing process is known, and a semiparametric case, where it is not. In the parametric case, we construct estimators which are asymptotically efficient. In the semiparametric case, we can obtain asymptotically efficient estimators by sampling at a sufficiently high frequency, and these estimators are efficient uniformly in the law of the perturbing process. © Institute of Mathematical Statistics, 2007.
CITATION STYLE
Aït-Sahalia, Y., & Jacod, J. (2007). Volatility estimators for discretely sampled Lévy processes. Annals of Statistics, 35(1), 355–392. https://doi.org/10.1214/009053606000001190
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