TL;DR
This paper introduces OKAEM, a unified evolutionary framework that adaptively updates parameters using attention-based operators, enabling effective knowledge transfer and online adaptation in evolutionary algorithms.
Contribution
The paper proposes a novel learnable evolutionary model that combines transfer learning and adaptive optimization through attention mechanisms, outperforming existing methods.
Findings
OKAEM outperforms state-of-the-art transfer methods across 12 scenarios.
OKAEM surpasses advanced learnable EAs in prior-free settings.
Ablation studies confirm the importance of learnable components.
Abstract
The iterative search process of evolutionary algorithms (EAs) encapsulates optimization knowledge within historical populations and fitness evaluations. Effective utilization of this knowledge is crucial for facilitating knowledge transfer and online adaptation. However, current research typically addresses these goals in isolation and faces distinct limitations: evolutionary sequential transfer optimization often suffers from incomplete utilization of prior knowledge, while adaptive strategies, utilizing real-time knowledge, are limited to tailoring specific evolutionary operators. To simultaneously achieve these two capabilities, we introduce the Optimization Knowledge Adaptation Evolutionary Model (OKAEM), a unified learnable evolutionary framework capable of adaptively updating parameters based on available optimization knowledge. By parameterizing evolutionary operators via…
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