Parameter estimation by contrast minimization for noisy observations of a diffusion process |
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Authors: | Benjamin Favetto |
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Affiliation: | 1. Laboratoire MAP5, Université Paris Descartes, Paris, Francebenjamin.favetto@gmail.com |
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Abstract: | We consider the estimation of unknown parameters in the drift and diffusion coefficients of a one-dimensional ergodic diffusion X when the observation Y is a discrete sampling of X with an additive noise, at times i δ, i=1,?…?, N. Assuming that the sampling interval tends to 0 while the total length-time interval tends to infinity, we prove limit theorems for functionals associated with the observations, based on local means of the sample. We apply these results to obtain a contrast function. The associated minimum contrast estimators are shown to be consistent. Some examples are discussed with numerical simulations. |
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Keywords: | contrast function diffusion process hidden Markov models parametric inference discrete time noisy observations |
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