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 relabeling steps within the MCMC algorithm based on the estimation of a
single covariance matrix that is used both for adapting the covariance of the
proposal distribution in the Metropolis algorithm step and for online
relabeling. We compare the behavior of AMOR to similar relabeling methods. In
the case of compactly supported target distributions, we prove a strong law of
large numbers for AMOR and its ergodicity. These are the first results on the
consistency of an online relabeling algorithm to our knowledge. The proof
underlines latent relations between relabeling and vector quantization.Comment: Published at http://dx.doi.org/10.3150/13-BEJ578 in the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm