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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Nonlinear and Non-Gaussian State Space Modeling Using Sampling Techniques
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Nonlinear and Non-Gaussian State Space Modeling Using Sampling Techniques

机译:使用采样技术的非线性和非高斯状态空间建模

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In this paper, the nonlinear non-Gaussian filters and smoothers are proposed using the joint density of the state variables, where the sampling techniques such as rejection sampling (RS), importance resampling (IR) and the Metropolis-Hastings independence sampling (MH) are utilized. Utilizing the random draws generated from the joint density, the density-based recursive algorithms on filtering and smoothing can be obtained. Furthermore, taking into account possibility of structural changes and outliers during the estimation period, the appropriately chosen sampling density is possibly introduced into the suggested nonlinear non-Gaussian filtering and smoothing procedures. Finally, through Monte Carlo simulation studies, the suggested filters and smoothers are examined.
机译:在本文中,使用状态变量的联合密度提出了非线性非高斯滤波器和平滑器,其中使用了诸如拒绝采样(RS),重要性重采样(IR)和Metropolis-Hastings独立采样(MH)之类的采样技术。被利用。利用从关节密度生成的随机抽奖,可以获得基于密度的基于递归算法的滤波和平滑处理。此外,考虑到估计期间结构变化和异常值的可能性,可以将适当选择的采样密度引入建议的非线性非高斯滤波和平滑过程。最后,通过蒙特卡洛模拟研究,对建议的滤波器和平滑器进行了检查。

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