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Unbiased Markov chain Monte Carlo with couplings

TLDR
The theoretical validity of the proposed couplings of Markov chains together with a telescopic sum argument of Glynn and Rhee (2014) is established and their efficiency relative to the underlying MCMC algorithms is studied.
Abstract
Markov chain Monte Carlo (MCMC) methods provide consistent of integrals as the number of iterations goes to infinity. MCMC estimators are generally biased after any fixed number of iterations. We propose to remove this bias by using couplings of Markov chains together with a telescopic sum argument of Glynn and Rhee (2014). The resulting unbiased estimators can be computed independently in parallel. We discuss practical couplings for popular MCMC algorithms. We establish the theoretical validity of the proposed estimators and study their efficiency relative to the underlying MCMC algorithms. Finally, we illustrate the performance and limitations of the method on toy examples, on an Ising model around its critical temperature, on a high-dimensional variable selection problem, and on an approximation of the cut distribution arising in Bayesian inference for models made of multiple modules.

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References
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TL;DR: In this article, the R Foundation for Statistical Computing (RFC) gave permission to make and distribute verbatim copies of this manual provided the copyright notice and this permission notice are preserved on all copies.
Book

Monte Carlo Statistical Methods

TL;DR: This new edition contains five completely new chapters covering new developments and has sold 4300 copies worldwide of the first edition (1999).
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