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Statistical inference for Vasicek-type model driven by Hermite processes

16 December 2017
I. Nourdin
T. T. Diu Tran
ArXiv (abs)PDFHTML
Abstract

Let ZZZ denote a Hermite process of order q≥1q \geq 1q≥1 and self-similarity parameter H∈(12,1)H \in (\frac{1}{2}, 1)H∈(21​,1). This process is HHH-self-similar, has stationary increments and exhibits long-range dependence. When q=1q=1q=1, it corresponds to the fractional Brownian motion, whereas it is not Gaussian as soon as q≥2q\geq 2q≥2. In this paper, we deal with a Vasicek-type model driven by ZZZ, of the form dXt=a(b−Xt)dt+dZtdX_t = a(b - X_t)dt +dZ_tdXt​=a(b−Xt​)dt+dZt​. Here, a>0a > 0a>0 and b∈Rb \in \mathbb{R}b∈R are considered as unknown drift parameters. We provide estimators for aaa and bbb based on continuous-time observations. For all possible values of HHH and qqq, we prove strong consistency and we analyze the asymptotic fluctuations.

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