Detecting Loss of Diversity for an Efficient Termination of EAs

D. Roche, D. Gil, J. Giraldo
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引用次数: 6

Abstract

Termination of Evolutionary Algorithms (EA) at its steady state so that useless iterations are not performed is a main point for its efficient application to black-box problems. Many EA algorithms evolve while there is still diversity in their population and, thus, they could be terminated by analyzing the behavior some measures of EA population diversity. This paper presents a numeric approximation to steady states that can be used to detect the moment EA population has lost its diversity for EA termination. Our condition has been applied to 3 EA paradigms based on diversity and a selection of functions covering the properties most relevant for EA convergence. Experiments show that our condition works regardless of the search space dimension and function landscape.
检测分集损失的有效终止ea
在稳定状态下终止进化算法(EA)以避免无用的迭代是其有效应用于黑盒问题的一个要点。许多EA算法是在种群多样性仍然存在的情况下进化的,因此,通过分析EA种群多样性的行为可以终止这些算法。本文提出了一个稳定状态的数值近似,可用于检测EA种群因EA终止而失去多样性的时刻。我们的条件已经应用于基于多样性的3个EA范式,并选择了涵盖与EA收敛最相关的属性的函数。实验表明,无论搜索空间维数和函数格局如何,我们的条件都是有效的。
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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