Trade-off Between Robustness andWorst-Case Performance in Min-Max Optimization

GECCO(2023)

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摘要
Min-max optimization is an approach to avoid the risk of obtaining a solution whose performance is satisfactory in a simulation scenario but signi.cantly degraded in real-world scenarios, thereby obtaining a robust solution under the worst case in the considered scenarios. However, owing to the trade-o. between robustness and worst-case performance, it is often di.cult to design a set of scenarios in simulation-based optimization, known as the uncertainty set, which can be a practical barrier to applying min-max optimization. In this study, we propose a novel approach to obtaining the Pareto front of the bi-objective optimization for the size of the uncertainty set and worst-case performance under the uncertainty set. The proposed approach aims to obtain a set of solutions that cover the worst-case performance e.ectively but are better than a given performance threshold. The e.ectiveness of each algorithmic component was evaluated through numerical experiments using a synthetic problem. Applications to automatic ship berthing tasks demonstrate the usefulness of the proposed approach and its limitations.
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关键词
min-max optimization,bi-objective optimization,robustness
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