Recent Meta-learning for Black-Box Optimization (MetaBBO) methods harness neural networks to meta-learn configurations of traditional black-box optimizers. Despite their success, they are inevitably restricted by the limitations of predefined hand-crafted optimizers. In this paper, we present \textsc{Symbol}, a novel framework that promotes the automated discovery of black-box optimizers through symbolic equation learning. Specifically, we propose a Symbolic Equation Generator (SEG) that allows closed-form optimization rules to be dynamically generated for specific tasks and optimization steps. Within \textsc{Symbol}, we then develop three distinct strategies based on reinforcement learning, so as to meta-learn the SEG efficiently. Extensive experiments reveal that the optimizers generated by \textsc{Symbol} not only surpass the state-of-the-art BBO and MetaBBO baselines, but also exhibit exceptional zero-shot generalization abilities across entirely unseen tasks with different problem dimensions, population sizes, and optimization horizons. Furthermore, we conduct in-depth analyses of our \textsc{Symbol} framework and the optimization rules that it generates, underscoring its desirable flexibility and interpretability.
Symbol: Generating Flexible Black-Box Optimizers through Symbolic Equation Learning
The Symbol framework uses symbolic equation learning to generate optimization rules with reinforcement learning, achieving superior performance and zero-shot generalization compared to existing BBO and MetaBBO methods.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2402.02355v2ARXIV-DEFAULT
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