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arxiv: 0712.3735 · v1 · submitted 2007-12-21 · 📊 stat.ME · math.ST· stat.TH

Nonparametric estimation for a stochastic volatility model

classification 📊 stat.ME math.STstat.TH
keywords diffusiondataestimatorsnonparametricprocessbelongingboundsbrownian
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Consider discrete time observations (X_{\ell\delta})_{1\leq \ell \leq n+1}$ of the process $X$ satisfying $dX_t= \sqrt{V_t} dB_t$, with $V_t$ a one-dimensional positive diffusion process independent of the Brownian motion $B$. For both the drift and the diffusion coefficient of the unobserved diffusion $V$, we propose nonparametric least square estimators, and provide bounds for theirrisk. Estimators are chosen among a collection of functions belonging to a finite dimensional space whose dimension is selected by a data driven procedure. Implementation on simulated data illustrates how the method works.

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