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Differential Human Learning Optimization Algorithm

机译:差分人类学习优化算法

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摘要

Human Learning Optimization (HLO) is an efficient metaheuristic algorithm in which three learning operators, i.e., the random learning operator, the individual learning operator, and the social learning operator, are developed to search for optima by mimicking the learning behaviors of humans. In fact, people not only learn from global optimization but also learn from the best solution of other individuals in the real life, and the operators of Differential Evolution are updated based on the optima of other individuals. Inspired by these facts, this paper proposes two novel differential human learning optimization algorithms (DEHLOs), into which the Differential Evolution strategy is introduced to enhance the optimization ability of the algorithm. And the two optimization algorithms, based on improving the HLO from individual and population, are named DEHLO1 and DEHLO2, respectively. The multidimensional knapsack problems are adopted as benchmark problems to validate the performance of DEHLOs, and the results are compared with the standard HLO and Modified Binary Differential Evolution (MBDE) as well as other state-of-the-art metaheuristics. The experimental results demonstrate that the developed DEHLOs significantly outperform other algorithms and the DEHLO2 achieves the best overall performance on various problems.
机译:人类学习优化(Human Learning Optimization,HLO)是一种高效的元启发式算法,通过模仿人类的学习行为,开发随机学习算子、个体学习算子和社会学习算子三个学习算子来搜索最优。事实上,人们不仅从全局优化中学习,而且在现实生活中学习其他个体的最优解,差分进化的算子是根据其他个体的最优进行更新的。基于这些事实,该文提出了两种新型差分人类学习优化算法(DEHLOs),并在其中引入差分进化策略来增强算法的寻优能力。基于从个体和群体提高HLO的两种优化算法分别命名为DEHLO1和DEHLO2。采用多维背包问题作为基准问题来验证DEHLOs的性能,并将结果与标准的HLO和改进的二元差分进化(MBDE)以及其他最先进的元启发式方法进行了比较。实验结果表明,所开发的DEHLOs算法性能明显优于其他算法,DEHLO2在各种问题上均具有最佳的综合性能。

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