Optimal nonparametric estimation for some semimartingale stochastic differential equations

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This paper discusses the extension of a result of Godamble on parametric estimation for discrete time stochastic processes to nonparametric estimation for the continuous time case. Following Hasminskii and Ibragimov (1980), the nonparametric problem is formulated as a parametric one but with infinite dimensional parameter. A general optimality criterion for estimating functions, based on that of Godambe [Ann. Math. Statist. 31:1208–1211 (1960)], is formulated in the case where the parameter is an element of a Banach space; and the optimality of a generalized score function is proved under further conditions. The sense in which this theory is applicable to martingale estimating functions for α in the semimartingale stochastic differential equation model dXt = α(t) dRt + dMt,α is discussed. It is shown that the Nelson-Aalen estimate for the cumulative hazard function can be regarded as optimal in Godambe's sense. Applications to diffusion models and an extended gamma process model are given also.

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论文评审过程:Available online 22 March 2002, Version of Record 6 November 2020.

论文官网地址:https://doi.org/10.1016/0096-3003(90)90005-N