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A backward particle interpretation of Feynman-Kac formulae

机译:Feynman-Kac公式的向后粒子解释

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摘要

We design a particle interpretation of Feynman-Kac measures on path spaces based on a backward Markovian representation combined with a traditional mean field particle interpretation of the flow of their final time marginals. In contrast to traditional genealogical tree based models, these new particle algorithms can be used to compute normalized additive functionals "on-the-fly" as well as their limiting occupation measures with a given precision degree that does not depend on the final time horizon. We provide uniform convergence results w.r.t. the time horizon parameter as well as functional central limit theorems and exponential concentration estimates, yielding what seems to be the first results of this type for this class of models. We also illustrate these results in the context of filtering of hidden Markov models, as well as in computational physics and imaginary time Schroedinger type partial differential equations, with a special interest in the numerical approximation of the invariant measure associated to h-processes.
机译:我们基于向后的马尔可夫表示,结合其最终时间边际流的传统均值场粒子解释,设计了路径空间上Feynman-Kac测度的粒子解释。与传统的基于族谱树的模型相比,这些新的粒子算法可用于“实时”计算归一化的加法泛函及其有限的占用量,且不依赖最终时间范围。我们提供统一的收敛结果时间范围参数以及函数中心极限定理和指数浓度估计值,似乎是此类模型的首个结果。我们还将在隐马尔可夫模型的过滤,计算物理学和虚时Schroedinger型偏微分方程的背景下说明这些结果,并对与h过程相关的不变测度的数值逼近特别感兴趣。

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