A study on the configuration of migratory flows in island model differential evolution

R. A. Lopes, R. Silva, A. Freitas, F. Campelo, F. Guimarães
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引用次数: 9

Abstract

The Island Model (IM) is a well known multi-population approach for Evolutionary Algorithms (EAs). One of the critical parameters for defining a suitable IM is the migration topology. Basically it determines the Migratory Flows (MF) between the islands of the model which are able to improve the rate and pace of convergence observed in the EAs coupled with IMs. Although, it is possible to find a wide number of approaches for the configuration of MFs, there still is a lack of knowledge about the real performance of these approaches in the IM. In order to fill this gap, this paper presents a thorough experimental analysis of the approaches coupled with the state-of-the-art EA Differential Evolution. The experiments on well known benchmark functions show that there is a trade-off between convergence speed and convergence rate among the different approaches. With respect to the computational times, the results indicate that the increase in implementation complexity does not necessarily represent an increase in the overall execution time.
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岛屿模式差异演化中迁移流的构型研究
岛屿模型(IM)是进化算法中一种著名的多种群方法。定义合适IM的关键参数之一是迁移拓扑。基本上,它决定了模型岛屿之间的迁移流(MF),这些迁移流能够提高ea与IMs耦合时观察到的收敛速度和速度。尽管有可能找到大量用于配置mf的方法,但仍然缺乏关于这些方法在IM中的实际性能的知识。为了填补这一空白,本文提出了结合最先进的EA差分进化方法的彻底实验分析。在已知基准函数上的实验表明,不同方法在收敛速度和收敛速率之间存在权衡。关于计算时间,结果表明,实现复杂性的增加并不一定表示总体执行时间的增加。
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