神经探索性景观分析

Zeyuan Ma, Jiacheng Chen, Hongshu Guo, Yue-Jiao Gong
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引用次数: 0

摘要

元黑盒优化(MetaBBO)领域的最新研究表明,经过元训练的神经网络可以有效地指导黑盒优化器的设计,大大减少对专家调整的需求,并在复杂的问题分布中提供可靠的性能。尽管取得了成功,但矛盾依然存在:元BBO仍然依赖于人类创建的 "探索性景观分析"(Exploratory LandscapeAnalysis)功能来告知元级代理低开发优化的进展情况。为了弥补这一差距,本文提出了神经探索性景观分析(NeurELA),这是一个新颖的框架,它通过一个基于注意力的两阶段神经网络,以完全端到端方式执行,动态地描述景观特征。NeurELA 使用多任务神经进化策略对各种 MetaBBO 算法进行预训练。广泛的实验表明,NeurELA 在集成到不同甚至未见过的元博狗网好不好任务中时,性能始终保持在较高水平,并且可以有效地进行微调,以进一步提高性能。这一进步标志着在使元BBO算法更具自主性和广泛适用性方面迈出了关键的一步。
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Neural Exploratory Landscape Analysis
Recent research in Meta-Black-Box Optimization (MetaBBO) have shown that meta-trained neural networks can effectively guide the design of black-box optimizers, significantly reducing the need for expert tuning and delivering robust performance across complex problem distributions. Despite their success, a paradox remains: MetaBBO still rely on human-crafted Exploratory Landscape Analysis features to inform the meta-level agent about the low-level optimization progress. To address the gap, this paper proposes Neural Exploratory Landscape Analysis (NeurELA), a novel framework that dynamically profiles landscape features through a two-stage, attention-based neural network, executed in an entirely end-to-end fashion. NeurELA is pre-trained over a variety of MetaBBO algorithms using a multi-task neuroevolution strategy. Extensive experiments show that NeurELA achieves consistently superior performance when integrated into different and even unseen MetaBBO tasks and can be efficiently fine-tuned for further performance boost. This advancement marks a pivotal step in making MetaBBO algorithms more autonomous and broadly applicable.
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