Entropy Based Adaptive Particle Filter

S. Liverani, A. Papavasiliou
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引用次数: 2

Abstract

We propose a particle filter for the estimation of a partially observed Markov chain that has a non dynamic component. Such systems arise when we include unknown parameters or when we decompose non ergodic systems to their ergodic classes. Our main assumption is that the value of the non dynamic component determines the limiting distribution of the observation process. In such cases, we do not want to resample the particles that correspond to the non dynamic component of the Markov chain. Instead, we take a weighted average of particle filters corresponding to different values of the non dynamic component. The computation of the weights is based on entropy and the number of particles corresponding to each particle filter is proportional to the weights.
基于熵的自适应粒子滤波
我们提出了一种粒子滤波器,用于估计具有非动态分量的部分观测马尔可夫链。当我们包含未知参数或当我们将非遍历系统分解为它们的遍历类时,就会出现这样的系统。我们的主要假设是,非动态分量的值决定了观测过程的极限分布。在这种情况下,我们不想重新采样对应于马尔可夫链的非动态成分的粒子。相反,我们对非动态分量的不同值对应的粒子滤波器进行加权平均。权重的计算基于熵,每个粒子滤波器对应的粒子数与权重成正比。
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