元启发式优化中大型语言模型的结构化回顾

Reza Ghanbarzadeh , Seyedali Mirjalili
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引用次数: 0

摘要

元启发式被广泛用于解决复杂的优化问题,传统的精确方法在计算上不可行或不够灵活。随着人工智能的快速发展,大型语言模型,如ChatGPT、Claude、Gemini和LLaMA,已经成为强大的工具,能够增强、自动化和适应优化过程的各个阶段。这篇系统的文献综述研究了大型语言模型在元启发式优化中的演变作用,重点是算法生成、参数调整、混合、约束处理和多目标优化。按照PRISMA的指导方针,从9个主要科学数据库中选择并分析了25项研究。通过主题分析,开发了一种新的基于角色的分类法,将大型语言模型的贡献分为四个功能角色:Advisor、Refiner、Enhancer和Innovator。研究结果表明,大型语言模型支持元启发式工作流的自动化,支持动态适应,并有助于创建新的启发式策略。尽管有这些优点,该综述也指出了持续存在的限制,包括提示敏感性、计算开销和可伸缩性挑战。这些问题突出表明需要更健全的评估框架和基准实践。这篇综述提供了对当前景观的全面综合,突出了研究差距,并为旨在将大型语言模型集成到工程、物流和计算设计等领域的高级优化系统中的研究人员和实践者提供了可操作的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A structured review of large language models in metaheuristic optimisation
Metaheuristics are widely used to address complex optimisation problems where traditional exact methods are computationally infeasible or insufficiently flexible. With the rapid advancement of artificial intelligence, large language models, such as ChatGPT, Claude, Gemini, and LLaMA, have emerged as powerful tools capable of enhancing, automating, and adapting various stages of the optimisation process. This systematic literature review investigates the evolving role of large language models in metaheuristic optimisation, with a focus on algorithm generation, parameter tuning, hybridisation, constraint handling, and multi-objective optimisation. Following PRISMA guidelines, 25 studies from nine major scientific databases were selected and analysed. Through thematic analysis, a novel role-based taxonomy was developed that categorises large language model contributions into four functional roles: Advisor, Refiner, Enhancer, and Innovator. The findings demonstrate that large language models support the automation of metaheuristic workflows, enable dynamic adaptation, and contribute to the creation of novel heuristic strategies. Despite these advantages, the review also identifies persistent limitations, including prompt sensitivity, computational overhead, and scalability challenges. These issues highlight the need for more robust evaluation frameworks and benchmarking practices. This review offers a comprehensive synthesis of the current landscape, highlights research gaps, and provides actionable insights for researchers and practitioners aiming to integrate large language models into advanced optimisation systems across domains such as engineering, logistics, and computational design.
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