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Hybrid estimators for small diffusion processes based on reduced data
Authors:Yusuke Kaino  Masayuki Uchida
Institution:1.Graduate School of Engineering Science,Osaka University,Toyonaka,Japan;2.Center for Mathematical Modeling and Data Science (MMDS),Osaka University,Toyonaka,Japan
Abstract:We deal with the Bayes type estimators and the maximum likelihood type estimators of both drift and volatility parameters for small diffusion processes defined by stochastic differential equations with small perturbations from high frequency data. From the viewpoint of numerical analysis, initial Bayes type estimators for both drift and volatility parameters based on reduced data are required, and adaptive maximum likelihood type estimators with the initial Bayes type estimators, which are called hybrid estimators, are proposed. The asymptotic properties of the initial Bayes type estimators based on reduced data are derived and it is shown that the hybrid estimators have asymptotic normality and convergence of moments. Furthermore, a concrete example and simulation results are given.
Keywords:
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