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{PF}2 ES: Parallel Feasible Pareto Frontier Entropy Search for Multi-Objective Bayesian Optimization

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Publication date25/04/2023
Host publicationInternational Conference on Artificial Intelligence and Statistics
EditorsFrancisco Ruiz, Jennifer Dy, Jan-Willem van de Meent
PublisherPMLR
Pages2565-2588
Number of pages24
Volume206
<mark>Original language</mark>English

Publication series

NameProceedings of Machine Learning Research
Volume206
ISSN (electronic)2640-3498

Abstract

We present Parallel Feasible Pareto Frontier Entropy Search ({PF}2
ES) — a novel information-theoretic acquisition function for multi-objective Bayesian optimization supporting unknown constraints and batch queries. Due to the complexity of characterizing the mutual information between candidate evaluations and (feasible) Pareto frontiers, existing approaches must either employ crude approximations that significantly hamper their performance or rely on expensive inference schemes that substantially increase the optimization’s computational overhead. By instead using a variational lower bound, {PF}2
ES provides a low-cost and accurate estimate of the mutual information. We benchmark {PF}2
ES against other information-theoretic acquisition functions, demonstrating its competitive performance for optimization across synthetic and real-world design problems.