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Least squares volatility change point estimation for partially observed diffusion processes

19 September 2007
A. De Gregorio
S. Iacus
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Abstract

A one dimensional diffusion process X={Xt,0≤t≤T}X=\{X_t, 0\leq t \leq T\}X={Xt​,0≤t≤T}, with drift b(x)b(x)b(x) and diffusion coefficient σ(θ,x)=θσ(x)\sigma(\theta, x)=\sqrt{\theta} \sigma(x)σ(θ,x)=θ​σ(x) known up to θ>0\theta>0θ>0, is supposed to switch volatility regime at some point t∗∈(0,T)t^*\in (0,T)t∗∈(0,T). On the basis of discrete time observations from XXX, the problem is the one of estimating the instant of change in the volatility structure t∗t^*t∗ as well as the two values of θ\thetaθ, say θ1\theta_1θ1​ and θ2\theta_2θ2​, before and after the change point. It is assumed that the sampling occurs at regularly spaced times intervals of length Δn\Delta_nΔn​ with nΔn=Tn\Delta_n=TnΔn​=T. To work out our statistical problem we use a least squares approach. Consistency, rates of convergence and distributional results of the estimators are presented under an high frequency scheme. We also study the case of a diffusion process with unknown drift and unknown volatility but constant.

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