How to Avoid the Curse of Dimensionality: Scalability of Particle Filters with and without Importance Weights
Author(s) -
Simone Carlo Surace,
Anna Kutschireiter,
Jean-Pascal Pfister
Publication year - 2019
Publication title -
siam review
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 4.683
H-Index - 120
eISSN - 1095-7200
pISSN - 0036-1445
DOI - 10.1137/17m1125340
Subject(s) - degeneracy (biology) , curse of dimensionality , particle filter , dimension (graph theory) , resampling , particle (ecology) , mathematics , control theory (sociology) , dimensionality reduction , nonlinear system , scalability , mathematical optimization , filter (signal processing) , algorithm , computer science , control (management) , physics , statistics , artificial intelligence , pure mathematics , quantum mechanics , oceanography , database , geology , bioinformatics , computer vision , biology
Particle filters are a popular and flexible class of numerical algorithms to solve a large class of nonlinear filtering problems. However, standard particle filters with importance weights have been shown to require a sample size that increases exponentially with the dimension $D$ of the state space in order to achieve a certain performance, which precludes their use in very high-dimensional filtering problems. Here, we focus on the dynamic aspect of this “curse of dimensionality” (COD) in continuous-time filtering, which is caused by the degeneracy of importance weights over time. We show that the degeneracy occurs on a time scale that decreases with increasing $D$. In order to soften the effects of weight degeneracy, most particle filters use particle resampling and improved proposal functions for the particle motion. We explain why neither of the two can prevent the COD in general. In order to address this fundamental problem, we investigate an existing filtering algorithm based on optimal feedback con...
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