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Particle Gibbs with refreshed backward simulation

机译:具有刷新后向仿真的粒子吉布斯

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The particle Gibbs algorithm can be used for Bayesian parameter estimation in Markovian state space models. Sometimes the resulting Markov chains mix slowly when the component particle filter suffers from degeneracy. This effect can be somewhat alleviated using backward simulation. In this paper we show how a simple modification to this scheme, which we refer to as refreshed backward simulation, can further improve the mixing. This works by sampling new state values simultaneously with the corresponding ancestor indexes. Although the necessary conditional distributions cannot be sampled directly, we provide suitable Markov kernels which target them. The efficacy of this new scheme is demonstrated with a simulation example.
机译:粒子Gibbs算法可用于马尔可夫状态空间模型中的贝叶斯参数估计。有时,当成分粒子过滤器遭受简并性影响时,所得的马尔可夫链混合缓慢。使用反向仿真可以稍微减轻这种影响。在本文中,我们展示了对该方案的简单修改(称为刷新后向仿真)如何进一步改善混合效果。通过与相应的祖先索引同时采样新状态值来工作。尽管不能直接采样必要的条件分布,但我们提供了以它们为目标的合适的马尔可夫核。仿真示例证明了该新方案的有效性。

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