避免时间离散的扩散粒子滤波

P. Fearnhead, O. Papaspiliopoulos, G. Roberts
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引用次数: 2

摘要

在这篇简短的文章中,我们介绍了我们最近的工作,即为一类部分观测的连续时间动态模型构建新的粒子滤波器,其中信号由多元扩散过程给出;细节请参见[1]。我们的方法直接涵盖了各种观测方案,包括带误差观测的扩散,多变量扩散组件子集的观测以及泊松过程的到达时间,其强度是扩散的已知函数(Cox过程)。与现有的方法不同,我们的粒子滤波器不需要使用时间离散来近似过渡和/或观测密度。相反,他们建立在最近的扩散过程精确模拟和无偏估计过渡密度的方法上,如最近的文章[2]所述。特别地,我们需要在[1]中发展的广义泊松估计量。因此,我们的滤波器避免了由时间离散引起的系统偏差,并且与其他连续时间滤波器相比,它们具有显著的计算优势。中心极限定理支持这些优点。
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Particle Filtering for Diffusions Avoiding Time-Discretisations
In this short communication we present our recent work on the construction of novel particle filters for a class of partially-observed continuous-time dynamic models where the signal is given by a multivariate diffusion process; details are deferred to [1]. Our approach directly covers a variety of observation schemes, including diffusion observed with error, observation of a subset of the components of the multivariate diffusion and arrival times of a Poisson process whose intensity is a known function of the diffusion (Cox process). Unlike available methods, our particle filters do not require approximations of the transition and/or the observation density using time-discretisations. Instead, they build on recent methodology for the exact simulation of diffusion process and the unbiased estimation of the transition density as described in the recent article [2]. In particular, we require the Generalised Poisson Estimator, which is developed in [1]. Thus, our filters avoid the systematic biases caused by time-discretisations and they have significant computational advantages over alternative continuous-time filters. These advantages are supported by a central limit theorem.
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