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Efficiency of delayed-acceptance random walk Metropolis algorithms

Sherlock, Chris; Thiery, Alexandre H.; Golightly, Andrew

Efficiency of delayed-acceptance random walk Metropolis algorithms Thumbnail


Authors

Chris Sherlock

Alexandre H. Thiery



Abstract

Delayed-acceptance Metropolis–Hastings and delayed-acceptance pseudo-marginal Metropolis–Hastings algorithms can be applied when it is computationally expensive to calculate the true posterior or an unbiased stochastic approximation thereof, but a computationally cheap deterministic approximation is available. An initial accept–reject stage uses the cheap approximation for computing the Metropolis–Hastings ratio; proposals which are accepted at this stage are subjected to a further accept–reject step, which corrects for the error in the approximation. Since the expensive posterior, or the approximation thereof, is only evaluated for proposals which are accepted at the first stage, the cost of the algorithm is reduced and larger scalings may be used. We focus on the random walk Metropolis (RWM) and consider the delayed-acceptance RWM and the delayed-acceptance pseudo-marginal RWM. We provide a framework for incorporating relatively general deterministic approximations into the theoretical analysis of high-dimensional targets. Justified by diffusion-approximation arguments, we derive expressions for the limiting efficiency and acceptance rates in high-dimensional settings. Finally, these theoretical insights are leveraged to formulate practical guidelines for the efficient tuning of the algorithms. The robustness of these guidelines and predicted properties are verified against simulation studies, all of which are strictly outside of the domain of validity of our limit results.

Citation

Sherlock, C., Thiery, A. H., & Golightly, A. (2021). Efficiency of delayed-acceptance random walk Metropolis algorithms. Annals of Statistics, 49(5), 2972-2990. https://doi.org/10.1214/21-aos2068

Journal Article Type Article
Acceptance Date Feb 28, 2021
Online Publication Date Nov 12, 2021
Publication Date 2021-10
Deposit Date Feb 9, 2022
Publicly Available Date Feb 10, 2022
Journal Annals of Statistics
Print ISSN 0090-5364
Publisher Institute of Mathematical Statistics
Peer Reviewed Peer Reviewed
Volume 49
Issue 5
Pages 2972-2990
DOI https://doi.org/10.1214/21-aos2068

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