Repository: Freie Universität Berlin, Math Department

Markov Chain Importance Sampling—A Highly Efficient Estimator for MCMC

Klebanov, Ilja and Schuster, Ingmar (2021) Markov Chain Importance Sampling—A Highly Efficient Estimator for MCMC. Journal of Computational and Graphical Statistics, 30 (2). pp. 260-268.

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Official URL: https://doi.org/10.1080/10618600.2020.1826953

Abstract

Markov chain algorithms are ubiquitous in machine learning and statistics and many other disciplines. Typically, these algorithms can be formulated as acceptance rejection methods. In this work, we present a novel estimator applicable to these methods, dubbed Markov chain importance sampling, which efficiently makes use of rejected proposals. For the unadjusted Langevin algorithm, it provides a novel way of correcting the discretization error. Our estimator satisfies a central limit theorem and improves on error per CPU cycle, often to a large extent. As a by-product it enables estimating the normalizing constant, an important quantity in Bayesian machine learning and statistics. Supplementary materials for this article are available online.

Item Type:Article
Subjects:Mathematical and Computer Sciences > Mathematics > Applied Mathematics
Divisions:Department of Mathematics and Computer Science > Institute of Mathematics > Deterministic and Stochastic PDEs Group
ID Code:3232
Deposited By: Sandra Krämer
Deposited On:29 Jan 2025 11:26
Last Modified:29 Jan 2025 11:26

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