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A diverse human learning optimization algorithm

机译:多样化的人类学习优化算法

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Human Learning Optimization is a simple but efficient meta-heuristic algorithm in which three learning operators, i.e. the random learning operator, the individual learning operator, and the social learning operator, are developed to efficiently search the optimal solution by imitating the learning mechanisms of human beings. However, HLO assumes that all the individuals possess the same learning ability, which is not true in a real human population as the IQ scores of humans, one of the most important indices of the learning ability of humans, follow Gaussian distribution and increase with the development of society and technology. Inspired by this fact, this paper proposes a Diverse Human Learning Optimization algorithm (DHLO), into which the Gaussian distribution and dynamic adjusting strategy are introduced. By adopting a set of Gaussian distributed parameter values instead of a constant to diversify the learning abilities of DHLO, the robustness of the algorithm is strengthened. In addition, by cooperating with the dynamic updating operation, DHLO can adjust to better parameter values and consequently enhances the global search ability of the algorithm. Finally, DHLO is applied to tackle the CEC05 benchmark functions as well as knapsack problems, and its performance is compared with the standard HLO as well as the other eight meta-heuristics, i.e. the Binary Differential Evolution, Simplified Binary Artificial Fish Swarm Algorithm, Adaptive Binary Harmony Search, Binary Gravitational Search Algorithms, Binary Bat Algorithms, Binary Artificial Bee Colony, Bi-Velocity Discrete Particle Swarm Optimization, and Modified Binary Particle Swarm Optimization. The experimental results show that the presented DHLO outperforms the other algorithms in terms of search accuracy and scalability.
机译:人类学习优化是一种简单而有效的元启发式算法,其中开发了三种学习算子,即随机学习算子,个体学习算子和社会学习算子,通过模仿人类的学习机制来有效地搜索最优解。众生。但是,HLO假设所有个体都具有相同的学习能力,这在实际人口中并不正确,因为人类的IQ得分是人类学习能力的最重要指标之一,它遵循高斯分布并随着高斯分布而增加。社会和技术的发展。受这一事实的启发,本文提出了一种多样化的人类学习优化算法(DHLO),在其中引入了高斯分布和动态调整策略。通过采用一组高斯分布参数值而不是常数来分散DHLO的学习能力,该算法的鲁棒性得到了增强。另外,通过与动态更新操作配合,DHLO可以调整为更好的参数值,从而增强了算法的全局搜索能力。最后,将DHLO用于解决CEC05基准功能以及背包问题,并将其性能与标准HLO以及其他八种启发式算法(即二进制差分进化,简化的二进制人工鱼群算法,自适应)相比较。二进制和声搜索,二进制引力搜索算法,二进制蝙蝠算法,二进制人工蜂群,双速离散粒子群优化和改进的二进制粒子群优化。实验结果表明,本文提出的DHLO在搜索准确性和可扩展性方面优于其他算法。

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