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A game theoretic perspective on Bayesian multi-objective optimization

Authors :
Binois, Mickael
Habbal, Abderrahmane
Picheny, Victor
Publication Year :
2021

Abstract

This chapter addresses the question of how to efficiently solve many-objective optimization problems in a computationally demanding black-box simulation context. We shall motivate the question by applications in machine learning and engineering, and discuss specific harsh challenges in using classical Pareto approaches when the number of objectives is four or more. Then, we review solutions combining approaches from Bayesian optimization, e.g., with Gaussian processes, and concepts from game theory like Nash equilibria, Kalai-Smorodinsky solutions and detail extensions like Nash-Kalai-Smorodinsky solutions. We finally introduce the corresponding algorithms and provide some illustrating results.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2104.14456
Document Type :
Working Paper