Approximate discrete-time schemes for the estimation of diffusion processes from complete observations (1212.1788v2)
Abstract: In this paper, a modification of the conventional approximations to the quasi-maximum likelihood method is introduced for the parameter estimation of diffusion processes from discrete observations. This is based on a convergent approximation to the first two conditional moments of the diffusion process through discrete-time schemes. It is shown that, for finite samples, the resulting approximate estimators converge to the quasi-maximum likelihood one when the error between the discrete-time approximation and the diffusion process decreases. For an increasing number of observations, the approximate estimators are asymptotically normal distributed and their bias decreases when the mentioned error does it. A simulation study is provided to illustrate the performance of the new estimators. The results show that, with respect to the conventional approximate estimators, the new ones significantly enhance the parameter estimation of the test equations. The proposed estimators are intended for the recurrent practical situation where a nonlinear stochastic system should be identified from a reduced number of complete observations distant in time.
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