通过更频繁的随机分组进行大规模优化的协同进化

M. Omidvar, Xiaodong Li, Zhenyu Yang, X. Yao
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引用次数: 208

摘要

在本文中,我们提出了三种技术来改善大规模连续全局函数优化的主要算法之一的性能。多层协同进化(Multilevel Cooperative Co-evolution, MLCC)基于协同进化框架,采用随机分组技术将相互作用的变量分组在一个子组件中。它还使用另一种称为自适应加权的技术来进行子组件的共同适应。我们证明了随着交互变量数量的增加,使用随机分组将交互变量分组在一个子组件中的概率显著下降。这就要求对变量进行更频繁的随机分组。我们展示了如何在不增加适应度评估次数的情况下增加随机分组的频率。我们还表明,自适应加权是无效的,并且在大多数情况下无法提高找到的解的质量,因此通过对目标函数的额外评估浪费了相当多的CPU时间。最后,我们提出了一种新的自适应CC中子组件尺寸的技术,并演示了如何通过应用这三种技术来获得实质性的改进。
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Cooperative Co-evolution for large scale optimization through more frequent random grouping
In this paper we propose three techniques to improve the performance of one of the major algorithms for large scale continuous global function optimization. Multilevel Cooperative Co-evolution (MLCC) is based on a Cooperative Co-evolutionary framework and employs a technique called random grouping in order to group interacting variables in one subcomponent. It also uses another technique called adaptive weighting for co-adaptation of subcomponents. We prove that the probability of grouping interacting variables in one subcomponent using random grouping drops significantly as the number of interacting variables increases. This calls for more frequent random grouping of variables. We show how to increase the frequency of random grouping without increasing the number of fitness evaluations. We also show that adaptive weighting is ineffective and in most cases fails to improve the quality of found solution, and hence wastes considerable amount of CPU time by extra evaluations of objective function. Finally we propose a new technique for self-adaptation of the subcomponent sizes in CC. We demonstrate how a substantial improvement can be gained by applying these three techniques.
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