离散时间泊松观测值的序贯蒙特卡罗状态估计

W. P. Malcolm, N. Gordon
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引用次数: 1

摘要

我们考虑估计通过泊松随机变量序列间接观察到的随机强度过程。我们考虑的一类动力系统是自回归状态过程和泊松分布观测序列,每个观测都受状态过程的影响。为这类系统计算显式递归过滤器在技术上是困难的。此外,这类模型的精确过滤器没有固定的内存要求。Manton等人(1999)表明,这些模型的精确滤波器在构建滤波器密度所需的足够统计量的数量上随时间呈线性增长。一些近似的次优过滤器可用于使用Edgeworth展开的这些模型。利用序贯蒙特卡罗(SMC)方法和贝叶斯自举滤波器,我们提出了一种对上述模型的强度过程进行估计的方案。我们提出的方案易于实现,并且具有固定的内存需求。通过仿真研究,证明了SMC方法对具有泊松观测值的离散时间模型的性能。
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Sequential Monte Carlo state estimation for Poisson observations at discrete times
We consider estimating a stochastic intensity process, indirectly observed through a sequence of Poisson random variables. The class of dynamical systems we consider, are autoregressive state processes and a sequence of Poisson distributed observations, each influenced by the state process. Computing explicit recursive filters for this class of system can be technically difficult. Further, exact filters for this class of model do not have fixed memory requirements. It is shown in Manton et al. (1999), that the exact filter for these models has linear growth with respect to time in the number of sufficient statistics needed to construct the filter density. Some approximate suboptimal filters are available for these models using Edgeworth expansions. Using Sequential Monte Carlo (SMC) methods and the so called Bayesian bootstrap filter, we propose a scheme to estimate an intensity process for the models just described. The scheme we present is simple to implement and has fixed memory requirements. A simulation study is included to demonstrate the performance of SMC methods for discrete time models with Poisson observations.
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