Adaptive MCMC with online relabeling
R\'emi Bardenet, Olivier Capp\'e, Gersende Fort, Bal\'azs K\'egl

TL;DR
This paper introduces AMOR, a provably consistent online relabeling algorithm integrated with adaptive MCMC to effectively address label-switching issues in Bayesian mixture models, with proven convergence properties.
Contribution
The paper presents AMOR, a novel adaptive MCMC algorithm with online relabeling that ensures consistency and ergodicity, addressing label-switching in Bayesian inference.
Findings
Proves strong law of large numbers for AMOR.
Establishes ergodicity of the AMOR algorithm.
Demonstrates effectiveness in compactly supported distributions.
Abstract
When targeting a distribution that is artificially invariant under some permutations, Markov chain Monte Carlo (MCMC) algorithms face the label-switching problem, rendering marginal inference particularly cumbersome. Such a situation arises, for example, in the Bayesian analysis of finite mixture models. Adaptive MCMC algorithms such as adaptive Metropolis (AM), which self-calibrates its proposal distribution using an online estimate of the covariance matrix of the target, are no exception. To address the label-switching issue, relabeling algorithms associate a permutation to each MCMC sample, trying to obtain reasonable marginals. In the case of adaptive Metropolis (Bernoulli 7 (2001) 223-242), an online relabeling strategy is required. This paper is devoted to the AMOR algorithm, a provably consistent variant of AM that can cope with the label-switching problem. The idea is to nest…
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