2022
DOI: 10.48550/arxiv.2207.03842
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Bayesian multi-objective optimization for stochastic simulators: an extension of the Pareto Active Learning method

Abstract: This article focuses on the multi-objective optimization of stochastic simulators with high output variance, where the input space is finite and the objective functions are expensive to evaluate. We rely on Bayesian optimization algorithms, which use probabilistic models to make predictions about the functions to be optimized. The proposed approach is an extension of the Pareto Active Learning (PAL) algorithm for the estimation of Pareto-optimal solutions that makes it suitable for the stochastic setting. We n… Show more

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