Catch fish optimization algorithm: a new human behavior algorithm for solving clustering problems

Heming Jia, Qixian Wen, Yuhao Wang, Seyedali Mirjalili
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Abstract

This paper is inspired by traditional rural fishing methods and proposes a new metaheuristic optimization algorithm based on human behavior: Catch Fish Optimization Algorithm (CFOA). This algorithm simulates the process of rural fishermen fishing in ponds, which is mainly divided into two phases: the exploration phase and the exploitation phase. In the exploration phase, there are two stages to search: first, the individual capture stage based on personal experience and intuition, and second, the group capture stage based on human proficiency in using tools and collaboration. Transition from independent search to group capture during the exploration phase. Exploitation phase: All fishermen will surround the shoal of fish and work together to salvage the remaining fish, a collective capture strategy. CFOA model is based on these two phases. This paper tested the optimization performance of CFOA using IEEE CEC 2014 and IEEE CEC 2020 test functions, and compared it with 11 other optimization algorithms. We employed the IEEE CEC2017 function to evaluate the overall performance of CFOA. The experimental results indicate that CFOA exhibits excellent and stable optimization capabilities overall. Additionally, we applied CFOA to data clustering problems, and the final results demonstrate that CFOA’s overall error rate in processing clustering problems is less than 20%, resulting in a better clustering effect. The comprehensive experimental results show that CFOA exhibits excellent optimization effects when facing different optimization problems. CFOA code is open at https://github.com/Meky-1210/CFOA.git.

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捕鱼优化算法:解决聚类问题的新型人类行为算法
本文受到传统农村捕鱼方法的启发,提出了一种基于人类行为的新型元启发式优化算法:捕鱼优化算法(CFOA)。该算法模拟了农村渔民在池塘捕鱼的过程,主要分为两个阶段:探索阶段和开发阶段。在探索阶段,搜索分为两个阶段:一是基于个人经验和直觉的个体捕获阶段,二是基于人类熟练使用工具和协作的群体捕获阶段。在探索阶段,从独立搜索过渡到群体捕捉。开发阶段:所有渔民将包围鱼群,共同打捞剩余的鱼,这是一种集体捕捉策略。CFOA 模型基于这两个阶段。本文使用 IEEE CEC 2014 和 IEEE CEC 2020 测试函数测试了 CFOA 的优化性能,并将其与其他 11 种优化算法进行了比较。我们采用了 IEEE CEC2017 函数来评估 CFOA 的整体性能。实验结果表明,CFOA 在整体上表现出了卓越而稳定的优化能力。此外,我们还将 CFOA 应用于数据聚类问题,最终结果表明,CFOA 在处理聚类问题时的整体错误率低于 20%,聚类效果较好。综合实验结果表明,面对不同的优化问题,CFOA 都表现出了出色的优化效果。CFOA 代码开放于 https://github.com/Meky-1210/CFOA.git。
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