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Parallelizing particle filters with butterfly interactions

机译:具有蝴蝶相互作用的平行化颗粒过滤器

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The bootstrap particle filter (BPF) is the cornerstone of many algorithms used for solving generally intractable inference problems with hidden Markov models. The long-term stability of the BPF arises from particle interactions that typically make parallel implementations of the BPF nontrivial. We propose a method whereby particle interaction is done in several stages. With the proposed method, full interaction can be accomplished even ifwe allow only pairwise communications between processing elements at each stage. We show that our method preserves the consistency and the long-term stability of the BPF, although our analysis suggests that the constraints on the stagewise interactions introduce errors leading to a lower convergence rate than standard Monte Carlo. The proposed method also suggests a new, more flexible, adaptive resampling scheme, which, according to our numerical experiments, is the method of choice, displaying a notable gain in efficiency in certain parallel computing scenarios.
机译:引导粒子滤波器(BPF)是许多算法的基石,用于解决隐藏的马尔可夫模型的大致棘手的推理问题。 BPF的长期稳定性来自通常制备BPF非活动的并行实现的颗粒相互作用。我们提出了一种方法,即在几个阶段进行颗粒相互作用。利用所提出的方法,即使我们在每个阶段的处理元件之间仅允许成对通信,也可以实现完全交互。我们表明我们的方法保留了BPF的一致性和长期稳定性,尽管我们的分析表明,方向相互作用上的约束引入了比标准蒙特卡罗的收敛速度较低的误差。该方法还提出了一种新的更灵活,自适应的重采样方案,根据我们的数值实验,这是一种选择方法,在某些并行计算场景中显示出显着的增益。

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