Analysis of Improved Evolutionary Algorithms Using Students’ Datasets

S. Ajibade, Muhammad Ayaz, Dai-Long Ngo-Hoang, Almighty C. Tabuena, F. Rabbi, Getahun Fikadu Tilaye, Mbiatke Anthony Bassey
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引用次数: 5

Abstract

Evolutionary Algorithms (EAs) are powerful heuristic search approaches which relies on Darwinian evolution that capture global solutions to complex optimization problems which has powerful features of reliability and versatility. (EAs) such as Particle swarm optimization (PSO) is a global optimization method that is extremely effective. PSO's flaws include slow convergence, premature convergence, and getting stuck at local optima. In this paper, chaotic map and dynamic-weight Particle Swarm Optimization (CHDPSOA) are combined with PSO to enhance the search strategy through adjusting the inertia weight of PSO and changing the position update formula in the (CHDPSOA), resulting in efficient balancing for local and global PSO feature selection processes. The performance of CHDPSOA was compared to that of three metaheuristic techniques: Differential Evolution (DE) and the original PSO, using eight numerical functions. The validation of this technique is carried out on four different datasets. The results show that the CHDPSOA is a good feature selection technique that balances the exploration and exploitation search processes to produce good results. The proposed CHDPSOA method performed well in correctly categorizing features using the KNN Classifier for all four datasets.
基于学生数据集的改进进化算法分析
进化算法(EAs)是一种强大的启发式搜索方法,它依赖于达尔文进化论,可以捕获复杂优化问题的全局解决方案,具有强大的可靠性和通用性。粒子群优化(PSO)是一种非常有效的全局优化方法。粒子群算法的缺陷包括收敛速度慢、过早收敛和陷入局部最优。本文将混沌映射和动态权值粒子群优化(CHDPSOA)与粒子群算法相结合,通过调整粒子群算法的惯性权值和改变粒子群算法中的位置更新公式,增强粒子群算法的搜索策略,实现局部和全局粒子群算法特征选择过程的有效平衡。使用8个数值函数,将CHDPSOA的性能与三种元启发式技术:差分进化(DE)和原始PSO的性能进行了比较。在四个不同的数据集上对该技术进行了验证。结果表明,CHDPSOA是一种很好的特征选择技术,它可以平衡探索和利用搜索过程,从而产生良好的结果。所提出的CHDPSOA方法在使用KNN分类器对所有四个数据集的特征进行正确分类方面表现良好。
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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