首页> 外文期刊>Journal of computational and graphical statistics: A joint publication of American Statistical Association, Institute of Mathematical Statistics, Interface Foundation of North America >Parameter Estimation of Nonlinear Stochastic Differential Equations: Simulated Maximum Likelihood versus Extended Kalman Filter and Ito-Taylor Expansion
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Parameter Estimation of Nonlinear Stochastic Differential Equations: Simulated Maximum Likelihood versus Extended Kalman Filter and Ito-Taylor Expansion

机译:非线性随机微分方程的参数估计:模拟最大似然与扩展卡尔曼滤波器和Ito-Taylor展开

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摘要

This article compares several estimation methods for nonlinear stochastic differential equations with discrete time measurements. The likelihood function is computed by Monte Carlo simulations of the transition probability (simulated maximum likelihood SML) using kernel density estimators and functional integrals and by using the extended Kalman filter (EKF and second-order nonlinear filter SNF). The relation with a local linearization method is discussed. A simulation study for a diffusion process in a double well potential (Ginzburg-Landau equation) shows that, for large sampling intervals, the SML methods lead to better estimation results than the likelihood approach via EKF and SNF. A second study using a nonlinear diffusion coefficient (generalized Cox-Ingersoll-Ross model) demonstrates that the EKF type estimators may serve as efficient alternatives to simple maximum quasi-likelihood approaches and Monte Carlo methods.
机译:本文比较了具有离散时间测量的非线性随机微分方程的几种估计方法。似然函数是使用内核密度估计器和函数积分通过跃迁概率的蒙特卡罗模拟(模拟的最大似然SML)以及扩展卡尔曼滤波器(EKF和二阶非线性滤波器SNF)来计算的。讨论了与局部线性化方法的关系。对双井势中扩散过程(Ginzburg-Landau方程)的仿真研究表明,对于较大的采样间隔,与通过EKF和SNF的似然法相比,SML方法可获得更好的估计结果。使用非线性扩散系数的第二项研究(广义Cox-Ingersoll-Ross模型)表明,EKF类型估计量可以作为简单的最大拟似然方法和蒙特卡洛方法的有效替代方法。

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