Convergence rates of two-component MCMC samplers

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Abstract

Component-wise MCMC algorithms, including Gibbs and conditional Metropolis-Hastings samplers, are commonly used for sampling from multivariate probability distributions. A long-standing question regarding Gibbs algorithms is whether a deterministic-scan (systematic-scan) sampler converges faster than its random-scan counterpart. We answer this question when the samplers involve two components by establishing an exact quantitative relationship between the L2 convergence rates of the two samplers. The relationship shows that the deterministic-scan sampler converges faster. We also establish qualitative relations among the convergence rates of two-component Gibbs samplers and some conditional Metropolis-Hastings variants. For instance, it is shown that if some two-component conditional Metropolis-Hastings samplers are geometrically ergodic, then so are the associated Gibbs samplers.

Original languageEnglish (US)
Pages (from-to)859-885
Number of pages27
JournalBernoulli
Volume28
Issue number2
DOIs
StatePublished - May 2022

Bibliographical note

Publisher Copyright:
© 2022, Bernoulli Society for Mathematical Statistics and Probability. All rights reserved.

Keywords

  • Deterministic-scan
  • Geometric ergodicity
  • Gibbs
  • Metropolis-within-Gibbs
  • Random-scan

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