Randomized multilevel Monte Carlo for embarrassingly parallel inference
Ajay Jasra, Kody J. H. Law, Alexander Tarakanov, and Fangyuan Yu

TL;DR
This paper discusses recent advances in randomized multilevel Monte Carlo methods that enable scalable, unbiased Bayesian inference suitable for high-dimensional, expensive models in data-centric science and engineering.
Contribution
It highlights the development of randomized multilevel Monte Carlo techniques that restore parallelizability and unbiasedness in Bayesian inference for complex models.
Findings
Randomized MLMC achieves dimension-independent complexity.
Novel double randomization approaches enable unbiased, i.i.d. sampling.
Potential to transform Bayesian inference in science and machine learning.
Abstract
This position paper summarizes a recently developed research program focused on inference in the context of data centric science and engineering applications, and forecasts its trajectory forward over the next decade. Often one endeavours in this context to learn complex systems in order to make more informed predictions and high stakes decisions under uncertainty. Some key challenges which must be met in this context are robustness, generalizability, and interpretability. The Bayesian framework addresses these three challenges elegantly, while bringing with it a fourth, undesirable feature: it is typically far more expensive than its deterministic counterparts. In the 21st century, and increasingly over the past decade, a growing number of methods have emerged which allow one to leverage cheap low-fidelity models in order to precondition algorithms for performing inference with more…
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Taxonomy
TopicsMachine Learning in Materials Science · Machine Learning and Algorithms · Statistical Methods and Inference
