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In search of lost mixing time: adaptive Markov chain Monte Carlo schemes for Bayesian variable selection with very large<i>p</i>

Jim E. Griffin, Krzysztof Łatuszyński, Mark F. J. Steel

2020Biometrika26 citationsDOIOpen Access PDF

Abstract

Summary The availability of datasets with large numbers of variables is rapidly increasing. The effective application of Bayesian variable selection methods for regression with these datasets has proved difficult since available Markov chain Monte Carlo methods do not perform well in typical problem sizes of interest. We propose new adaptive Markov chain Monte Carlo algorithms to address this shortcoming. The adaptive design of these algorithms exploits the observation that in large-$p$, small-$n$ settings, the majority of the $p$ variables will be approximately uncorrelated a posteriori. The algorithms adaptively build suitable nonlocal proposals that result in moves with squared jumping distance significantly larger than standard methods. Their performance is studied empirically in high-dimensional problems and speed-ups of up to four orders of magnitude are observed.

Topics & Concepts

Markov chain Monte CarloMarkov chainMonte Carlo methodMathematicsBayesian probabilityAlgorithmA priori and a posterioriMathematical optimizationVariable (mathematics)Selection (genetic algorithm)Computer scienceStatisticsMachine learningPhilosophyEpistemologyMathematical analysisMarkov Chains and Monte Carlo MethodsBayesian Methods and Mixture ModelsStatistical Methods and Inference