Open Access
December 2020 Nested Adaptation of MCMC Algorithms
Dao Nguyen, Perry de Valpine, Yves Atchade, Daniel Turek, Nicholas Michaud, Christopher Paciorek
Bayesian Anal. 15(4): 1323-1343 (December 2020). DOI: 10.1214/19-BA1190

Abstract

Markov chain Monte Carlo (MCMC) methods are ubiquitous tools for simulation-based inference in many fields but designing and identifying good MCMC samplers is still an open question. This paper introduces a novel MCMC algorithm, namely, Nested Adaptation MCMC. For sampling variables or blocks of variables, we use two levels of adaptation where the inner adaptation optimizes the MCMC performance within each sampler, while the outer adaptation explores the space of valid kernels to find the optimal samplers. We provide a theoretical foundation for our approach. To show the generality and usefulness of the approach, we describe a framework using only standard MCMC samplers as candidate samplers and some adaptation schemes for both inner and outer iterations. In several benchmark problems, we show that our proposed approach substantially outperforms other approaches, including an automatic blocking algorithm, in terms of MCMC efficiency and computational time.

Citation

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Dao Nguyen. Perry de Valpine. Yves Atchade. Daniel Turek. Nicholas Michaud. Christopher Paciorek. "Nested Adaptation of MCMC Algorithms." Bayesian Anal. 15 (4) 1323 - 1343, December 2020. https://doi.org/10.1214/19-BA1190

Information

Published: December 2020
First available in Project Euclid: 9 December 2019

Digital Object Identifier: 10.1214/19-BA1190

Keywords: adaptive MCMC , integrated autocorrelation time , MCMC efficiency , Mixing

Vol.15 • No. 4 • December 2020
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