2022
DOI: 10.48550/arxiv.2211.02879
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A Data-Driven Evolutionary Transfer Optimization for Expensive Problems in Dynamic Environments

Abstract: Many real-world problems are usually computationally costly and the objective functions evolve over time. Data-driven, a.k.a. surrogate-assisted, evolutionary optimization has been recognized as an effective approach for tackling expensive black-box optimization problems in a static environment whereas it has rarely been studied under dynamic environments. This paper proposes a simple but effective transfer learning framework to empower data-driven evolutionary optimization to solve dynamic optimization proble… Show more

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