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Bounding and estimating MCMC convergence rates using common random number simulations

27 September 2023
Sabrina Sixta
Jeffrey S. Rosenthal
Austin Brown
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Abstract

This paper explores how and when to use common random number (CRN) simulation to evaluate Markov chain Monte Carlo (MCMC) convergence rates. We discuss how CRN simulation is closely related to theoretical convergence rate techniques such as one-shot coupling and coupling from the past. We present conditions under which the CRN technique generates an unbiased estimate of the squared L2−L^2-L2−Wasserstein distance between two random variables. We also discuss how this unbiasedness over a single iteration does not extend to unbiasedness over multiple iterations. We provide an upper bound on the Wasserstein distance of a Markov chain to its stationary distribution after NNN steps in terms of averages over CRN simulations. Finally, we apply our result to a Bayesian regression Gibbs sampler.

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