Evolutionary Computation in the Era of Large Language Model: Survey and Roadmap

IF 11.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Evolutionary Computation Pub Date : 2024-11-27 DOI:10.1109/TEVC.2024.3506731
Xingyu Wu;Sheng-Hao Wu;Jibin Wu;Liang Feng;Kay Chen Tan
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Abstract

Large language models (LLMs) have not only revolutionized natural language processing but also extended their prowess to various domains, marking a significant stride toward artificial general intelligence. The interplay between LLMs and evolutionary algorithms (EAs), despite differing in objectives and methodologies, share a common pursuit of applicability in complex problems. Meanwhile, EA can provide an optimization framework for LLM’s further enhancement under closed box settings, empowering LLM with flexible global search capacities. On the other hand, the abundant domain knowledge inherent in LLMs could enable EA to conduct more intelligent searches. Furthermore, the text processing and generative capabilities of LLMs would aid in deploying EAs across a wide range of tasks. Based on these complementary advantages, this article provides a thorough review and a forward-looking roadmap, categorizing the reciprocal inspiration into two main avenues: 1) LLM-enhanced EA and 2) EA-enhanced LLM. Some integrated synergy methods are further introduced to exemplify the complementarity between LLMs and EAs in diverse scenarios, including code generation, software engineering, neural architecture search, and various generation tasks. As the first comprehensive review focused on the EA research in the era of LLMs, this article provides a foundational stepping stone for understanding the collaborative potential of LLMs and EAs. The identified challenges and future directions offer guidance for researchers and practitioners to unlock the full potential of this innovative collaboration in propelling advancements in optimization and artificial intelligence. We have created a GitHub repository to index the relevant papers: https://github.com/wuxingyu-ai/LLM4EC.
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大语言模型时代的进化计算:综述与路线图
大型语言模型(llm)不仅彻底改变了自然语言处理,而且将其能力扩展到各个领域,标志着向人工通用智能迈出了重要一步。法学硕士和进化算法(ea)之间的相互作用,尽管在目标和方法上有所不同,但在复杂问题的适用性方面有着共同的追求。同时,EA可以为LLM在封闭框设置下的进一步增强提供一个优化框架,赋予LLM灵活的全局搜索能力。另一方面,法学硕士所固有的丰富的领域知识可以使EA进行更智能的搜索。此外,法学硕士的文本处理和生成能力将有助于在广泛的任务中部署ea。基于这些互补的优势,本文提供了一个全面的回顾和前瞻性的路线图,将相互激励分为两个主要途径:1)LLM-enhanced EA和2)EA-enhanced LLM。进一步介绍了一些集成的协同方法,以举例说明llm和ea在不同场景中的互补性,包括代码生成、软件工程、神经架构搜索和各种生成任务。作为法学硕士时代EA研究的第一篇综合综述,本文为理解法学硕士和EA的合作潜力提供了基础垫脚石。确定的挑战和未来的方向为研究人员和从业者提供了指导,以释放这种创新合作在推动优化和人工智能进步方面的全部潜力。我们已经创建了一个GitHub存储库来索引相关论文:https://github.com/wuxingyu-ai/LLM4EC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Transactions on Evolutionary Computation
IEEE Transactions on Evolutionary Computation 工程技术-计算机:理论方法
CiteScore
21.90
自引率
9.80%
发文量
196
审稿时长
3.6 months
期刊介绍: The IEEE Transactions on Evolutionary Computation is published by the IEEE Computational Intelligence Society on behalf of 13 societies: Circuits and Systems; Computer; Control Systems; Engineering in Medicine and Biology; Industrial Electronics; Industry Applications; Lasers and Electro-Optics; Oceanic Engineering; Power Engineering; Robotics and Automation; Signal Processing; Social Implications of Technology; and Systems, Man, and Cybernetics. The journal publishes original papers in evolutionary computation and related areas such as nature-inspired algorithms, population-based methods, optimization, and hybrid systems. It welcomes both purely theoretical papers and application papers that provide general insights into these areas of computation.
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