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Numerically stable online estimation of variance in particle filters

  • KTH Royal Institute of Technology

Research output: Contribution to journalArticlepeer-review

Abstract

This paper discusses variance estimation in sequential Monte Carlo methods, alternatively termed particle filters. The variance estimator that we propose is a natural modification of that suggested by H.P. Chan and T.L. Lai [Ann. Statist. 41 (2013) 2877–2904], which allows the variance to be estimated in a single run of the particle filter by tracing the genealogical history of the particles. However, due particle lineage degeneracy, the estimator of the mentioned work becomes numerically unstable as the number of sequential particle updates increases. Thus, by tracing only a part of the particles’ genealogy rather than the full one, our estimator gains long-term numerical stability at the cost of a bias. The scope of the genealogical tracing is regulated by a lag, and under mild, easily checked model assumptions, we prove that the bias tends to zero geometrically fast as the lag increases. As confirmed by our numerical results, this allows the bias to be tightly controlled also for moderate particle sample sizes.

Original languageEnglish
Pages (from-to)1504-1535
Number of pages32
JournalBernoulli
Volume25
Issue number2
DOIs
Publication statusPublished - 1 May 2019

Keywords

  • Asymptotic variance
  • Feynman–Kac models
  • Hidden Markov models
  • Particle filters
  • Sequential Monte Carlo methods
  • State-space models
  • Variance estimation

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