Performance bounds for particle filters using the optimal proposal

Chris Snyder, Thomas Bengtsson, Mathias Morzfeld

Research output: Contribution to journalArticlepeer-review

100 Scopus citations

Abstract

Particle filters may suffer from degeneracy of the particle weights. For the simplest "bootstrap" filter, it is known that avoiding degeneracy in large systems requires that the ensemble size must increase exponentially with the variance of the observation log-likelihood. The present article shows first that a similar result applies to particle filters using sequential importance sampling and the optimal proposal distribution and, second, that the optimal proposal yields minimal degeneracy when compared to any other proposal distribution that depends only on the previous state and the most recent observations. Thus, the optimal proposal provides performance bounds for filters using sequential importance sampling and any such proposal. An example with independent and identically distributed degrees of freedom illustrates both the need for exponentially large ensemble size with the optimal proposal as the system dimension increases and the potentially dramatic advantages of the optimal proposal relative to simpler proposals. Those advantages depend crucially on the magnitude of the system noise.

Original languageEnglish
Pages (from-to)4750-4761
Number of pages12
JournalMonthly Weather Review
Volume143
Issue number11
DOIs
StatePublished - 2015

Keywords

  • Data assimilation
  • Models and modeling

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