Accelerating Multilevel Markov Chain Monte Carlo Using Machine Learning Models
Sohail Reddy, Hillary Fairbanks

TL;DR
This paper introduces a multilevel MCMC method accelerated by machine learning models, significantly reducing computational costs in large-scale Bayesian inference while maintaining accuracy.
Contribution
It presents a hierarchical multilevel MCMC framework that integrates low-fidelity machine learning models to speed up sampling without sacrificing correctness.
Findings
Achieves a twofold acceleration in sampling
Maintains accuracy comparable to standard multilevel methods
Demonstrated on groundwater flow inference problem
Abstract
This work presents an efficient approach for accelerating multilevel Markov Chain Monte Carlo (MCMC) sampling for large-scale problems using low-fidelity machine learning models. While conventional techniques for large-scale Bayesian inference often substitute computationally expensive high-fidelity models with machine learning models, thereby introducing approximation errors, our approach offers a computationally efficient alternative by augmenting high-fidelity models with low-fidelity ones within a hierarchical framework. The multilevel approach utilizes the low-fidelity machine learning model (MLM) for inexpensive evaluation of proposed samples thereby improving the acceptance of samples by the high-fidelity model. The hierarchy in our multilevel algorithm is derived from geometric multigrid hierarchy. We utilize an MLM to acclerate the coarse level sampling. Training machine…
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods
