Reinforcement learning-assisted evolutionary algorithm: A survey and research opportunities

强化学习 计算机科学 进化算法 进化计算 人工智能 机器学习 适应(眼睛) 最优化问题 人口 算法 物理 人口学 社会学 光学
作者
Yanjie Song,Yutong Wu,Yangyang Guo,Ran Yan,Ponnuthurai Nagaratnam Suganthan,Yue Zhang,Witold Pedrycz,Swagatam Das,Rammohan Mallipeddi,Oladayo S. Ajani,Qiang Feng
出处
期刊:Swarm and evolutionary computation [Elsevier BV]
卷期号:86: 101517-101517 被引量:96
标识
DOI:10.1016/j.swevo.2024.101517
摘要

Evolutionary algorithms (EA), a class of stochastic search methods based on the principles of natural evolution, have received widespread acclaim for their exceptional performance in various real-world optimization problems. While researchers worldwide have proposed a wide variety of EAs, certain limitations remain, such as slow convergence speed and poor generalization capabilities. Consequently, numerous scholars actively explore improvements to algorithmic structures, operators, search patterns, etc., to enhance their optimization performance. Reinforcement learning (RL) integrated as a component in the EA framework has demonstrated superior performance in recent years. This paper presents a comprehensive survey on integrating reinforcement learning into the evolutionary algorithm, referred to as reinforcement learning-assisted evolutionary algorithm (RL-EA). We begin with the conceptual outlines of reinforcement learning and the evolutionary algorithm. We then provide a taxonomy of RL-EA. Subsequently, we discuss the RL-EA integration method, the RL-assisted strategy adopted by RL-EA, and its applications according to the existing literature. The RL-assisted procedure is divided according to the implemented functions including solution generation, learnable objective function, algorithm/operator/sub-population selection, parameter adaptation, and other strategies. Additionally, different attribute settings of RL in RL-EA are discussed. In the applications of RL-EA section, we also demonstrate the excellent performance of RL-EA on several benchmarks and a range of public datasets to facilitate a quick comparative study. Finally, we analyze potential directions for future research. This survey serves as a rich resource for researchers interested in RL-EA as it overviews the current state-of-the-art and highlights the associated challenges. By leveraging this survey, readers can swiftly gain insights into RL-EA to develop efficient algorithms, thereby fostering further advancements in this emerging field.
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