Two important questions that must be answered whenever a Markov
chain Monte Carlo (MCMC) algorithm is used are (Q1) What is an appropriate
burn-in? and (Q2) How long should the sampling continue after
burn-in?Developing rigorous answers to these questions presently requires a
detailed study of the convergence properties of the underlying Markov chain.
Consequently, in most practical applications of MCMC, exact answers to (Q1)and
(Q2) are not sought. The goal of this paper is to demystify the analysis that
leads to honest answers to (Q1) and (Q2). The authors hope that this article
will serve as a bridge between those developing Markov chain theory and
practitioners using MCMC to solve practical problems.
¶ The ability to address (Q1) and (Q2) formally comes from
establishing a drift condition and an associated minorization
condition, which together imply that the underlying Markov chain is
geometrically ergodic. In this article, we explain exactly what drift
and minorization are as well as how and why these conditions can be used to
form rigorous answers to (Q1) and (Q2). The basic ideas are as follows. The
results of Rosenthal (1995) and Roberts and Tweedie (1999) allow one to use
drift and minorization conditions to construct a formula giving an
analytic upper bound on the distance to stationarity. A rigorous answer to (Q1)
can be calculated using this formula. The desired characteristics of the target
distribution are typically estimated using ergodic averages. Geometric
ergodicity of the underlying Markov chain implies that there are central limit
theorems available for ergodic averages (Chan and Geyer 1994). The regenerative
simulation technique (Mykland, Tierney and Yu, 1995; Robert, 1995) can be used
to get a consistent estimate of the variance of the asymptotic normal
distribution. Hence, an asymptotic standard error can be calculated, which
provides an answer to (Q2) in the sense that an appropriate time to stop
sampling can be determined. The methods are illustrated using a Gibbs sampler
for a Bayesian version of the one-way random effects model and a data set
concerning styrene exposure.
Publié le : 2001-11-14
Classification:
Central limit theorem,
convergence rate,
coupling inequality,
drift condition,
general state space,
geometric ergodicity,,
Gibbs sampler,
hierarchical random effects model,
Metropolis algorithm,
minorization condition,
regeneration,splitting,
uniform ergodicity
@article{1015346317,
author = {Jones, Galin L. and Hobert, James P.},
title = {Honest Exploration of Intractable Probability Distributions via
Markov Chain Monte Carlo},
journal = {Statist. Sci.},
volume = {16},
number = {2},
year = {2001},
pages = { 312-334},
language = {en},
url = {http://dml.mathdoc.fr/item/1015346317}
}
Jones, Galin L.; Hobert, James P. Honest Exploration of Intractable Probability Distributions via
Markov Chain Monte Carlo. Statist. Sci., Tome 16 (2001) no. 2, pp. 312-334. http://gdmltest.u-ga.fr/item/1015346317/