4.4 Article

Sequential Monte Carlo as approximate sampling: bounds, adaptive resampling via ∞-ESS, and an application to particle Gibbs

Journal

BERNOULLI
Volume 25, Issue 1, Pages 584-622

Publisher

INT STATISTICAL INST
DOI: 10.3150/17-BEJ999

Keywords

adaptive resampling; effective sample size; geometric ergodicity; particle Gibbs; sequential Monte Carlo; state-space models; uniform ergodicity

Funding

  1. U.S. Government [FA9550-11-C-0028]
  2. DoD, Air Force Office of Scientific Research, National Defense Science and Engineering Graduate (NDSEG) Fellowship [32 CFR 168a]
  3. Newton International Fellowship through the Royal Society
  4. NSERC
  5. Connaught Award
  6. U.S. Air Force Office of Scientific Research grant [FA9550-15-1-0074]

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Sequential Monte Carlo (SMC) algorithms were originally designed for estimating intractable conditional expectations within state-space models, but are now routinely used to generate approximate samples in the context of general-purpose Bayesian inference. In particular, SMC algorithms are often used as subroutines within larger Monte Carlo schemes, and in this context, the demands placed on SMC are different: control of mean-squared error is insufficient-one needs to control the divergence from the target distribution directly. Towards this goal, we introduce the conditional adaptive resampling particle filter, building on the work of Gordon, Salmond, and Smith (1993), Andrieu, Doucet, and Holenstein (2010), and Whiteley, Lee, and Heine (2016). By controlling a novel notion of effective sample size, the infinity-ESS, we establish the efficiency of the resulting SMC sampling algorithm, providing an adaptive resampling extension of the work of Andrieu, Lee, and Vihola (2018). We apply our results to arrive at new divergence bounds for SMC samplers with adaptive resampling as well as an adaptive resampling version of the Particle Gibbs algorithm with the same geometric-ergodicity guarantees as its nonadaptive counterpart.

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