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Two-step estimation of ergodic Lévy driven SDE

8 May 2015
Hiroki Masuda
Yuma Uehara
ArXiv (abs)PDFHTML
Abstract

We consider high frequency samples from ergodic L\'{e}vy driven stochastic differential equation (SDE) with drift coefficient a(x,α)a(x,\alpha)a(x,α) and scale coefficient c(x,γ)c(x,\gamma)c(x,γ) involving unknown parameters α\alphaα and γ\gammaγ. We suppose that the L\'{e}vy measure ν0\nu_{0}ν0​, has all order moments but is not fully specified. The goal of this paper is to construct estimators of α\alphaα, γ\gammaγ and a functional parameter ∫φ(z)ν0(dz)\int\varphi(z)\nu_0(dz)∫φ(z)ν0​(dz) for some function φ\varphiφ and derive their asymptotic behavior. It turns out that the functional estimator is asymptotically biased when the scale coefficient c(x,γ)c(x,\gamma)c(x,γ) is not a constant, and we show how to remove the bias in an explicit way. In particular, the resulting stochastic expansion can be used to approximate moments of the driving-noise distribution, without assuming a closed form of ν0\nu_0ν0​.

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