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Quasi-Monte Carlo hybrid particle filters

机译:准蒙特卡罗混合颗粒过滤器

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We describe a new hybrid particle filter that has two novel features: (1) it uses quasi-Monte Carlo samples rather than the conventional Monte Carlo sampling, and (2) it implements Bayes' rule exactly using smooth densities from the exponential family. Theory and numerical experiments over the last decade have shown that quasi-Monte Carlo sampling is vastly superior to Monte Carlo samples for certain high dimensional integrals, and we exploit this fact to reduce the computational complexity of our new particle filter. The main problem with conventional particle filters is the curse of dimensionality. We mitigate this issue by avoiding particle depletion, by implementing Bayes'rule exactly using smooth densities from the exponential family.
机译:我们描述了一种具有两个新功能的新型混合粒子滤波器:(1)它使用准蒙特卡洛采样而不是传统的蒙特卡洛采样;(2)它使用指数族的平滑密度精确地实现贝叶斯规则。过去十年的理论和数值实验表明,对于某些高维积分,准蒙特卡洛采样大大优于蒙特卡洛采样,并且我们利用这一事实来降低新粒子滤波器的计算复杂性。常规颗粒过滤器的主要问题是尺寸的诅咒。通过完全使用指数族的平滑密度来实现贝叶斯规则,我们通过避免颗粒耗尽来缓解此问题。

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