Cumulative learning-based competitive swarm optimizer for large-scale optimization

被引:0
作者
Wei Li
Liangqilin Ni
Zhou Lei
Lei Wang
机构
[1] Xi’an University of Technology,School of Computer Science and Engineering
[2] Shaanxi Key Laboratory for Network Computing and Security Technology,undefined
来源
The Journal of Supercomputing | 2022年 / 78卷
关键词
Competitive swarm optimizer; Cumulative learning; Time series prediction; Classification;
D O I
暂无
中图分类号
学科分类号
摘要
Competitive swarm optimizer (CSO) has shown advantages for solving large-scale optimization. However, some major problems, such as low solution accuracy and slow exploration speed, are still not effectively solved. To alleviate these problems, this paper proposes an enhanced version of CSO (shorted for CLBCSO), which uses the cumulative learning mechanism to provide promising evolutionary direction and strengthen the exploitation ability of losers. Moreover, a multi-directional learning strategy is introduced to guide the losers to explore in different directions, which can significantly improve the exploration performance of the population. CEC2014 benchmark functions, time series prediction problems and classification problem are employed to evaluate the effectiveness of CLBCSO algorithm. Experimental validation shows that the average excellent rate of CLBCSO in solving 30 CEC2014 benchmark functions with 50 variables and 100 variables is 77.08% and 79.58%, respectively. This confirms that the proposed CLBCSO algorithm is competitive compared with three CSO optimizers and five popular optimization algorithms.
引用
收藏
页码:17619 / 17656
页数:37
相关论文
共 99 条
[1]  
Gharehchopogh FS(2022)Advances in tree seed algorithm: a comprehensive survey Arch Comput Methods Eng 1 1-24
[2]  
Ghafori S(2021)Advances in spotted hyena optimizer: a comprehensive survey Arch Comput Methods Eng 1 1-22
[3]  
Gharehchopogh FS(2021)A hybrid OBL-based firefly algorithm with symbiotic organisms search algorithm for solving continuous optimization problems J Supercomput 78 1-34
[4]  
Goldanloo MJ(2019)A review of the recent use of differential evolution for large-scale global optimization: an analysis of selected algorithms on the CEC 2013 LSGO benchmark suite Swarm Evol Comput 50 1-18
[5]  
Gharehchopogh FS(2021)An efficient binary chaotic symbiotic organisms search algorithm approaches for feature selection problems J Supercomput 77 1-43
[6]  
Maucec MS(2021)A multi-objective optimization algorithm for feature selection problems Eng Comput 3 1-19
[7]  
Brest J(2022)An efficient harris hawk optimization algorithm for solving the travelling salesman problem Cluster Comput 25 1981-2005
[8]  
Mohammadzadeh H(2021)Chaotic-based divide-and-conquer feature selection method and its application in cardiac arrhythmia classification J Supercomput 78 5856-5882
[9]  
Gharehchopogh FS(2012)Cooperatively coevolving particle swarms for large scale optimization IEEE Trans Evol Comput 16 210-224
[10]  
Abdollahzadeh B(2014)A competitive swarm optimizer for large scale optimization IEEE Transactions on Cybernetics 45 191-204