一种用于进化策略中动态多样性增强的导向突变算子

J. L. Guerrero, A. Berlanga, J. M. López
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引用次数: 2

摘要

进化算法的多样性是一个关键问题,关系到在搜索过程中获得的性能,并与收敛问题密切相关。缺乏所需的多样性通常与一些有问题的情况有关,例如在局部最优存在时过早停止(通常在种群中的个体数量不足以处理搜索空间时面临)。目前的建议引入了一种引导突变算子来处理这些多样性问题,引入了搜索空间的跟踪机制,以便向该突变算子提供所需的信息。所提出的变异算子的目标是在算法停止之前保证在搜索空间上有一定程度的覆盖,试图防止由于缺乏种群多样性而导致的过早收敛。包括一个动态机制,以便在执行时间内确定技术的应用程度,并适应应用技术时的循环次数。结果在10个标准单目标函数的数据集上进行了测试,这些函数在维度、多个局部最优的存在、搜索空间范围和三种不同的维度值(30D、300D和1000D)方面具有不同的特征。为了涵盖引入算子的影响和测量结果的统计相关性,进行了30次不同的运行
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Guided Mutation Operator for Dynamic Diversity Enhancement in Evolutionary Strategies
Diversity in evolutionary algorithms is a critical issue related to the performance obtained during the search process and strongly linked to convergence issues. The lack of the required diversity has been traditionally linked to problematic situations such as early stopping in the presence of local optima (usually faced when the number of individuals in the population is insufficient to deal with the search space). Current proposal introduces a guided mutation operator to cope with these diversity issues, introducing tracking mechanisms of the search space in order to feed the required information to this mutation operator. The objective of the proposed mutation operator is to guarantee a certain degree of coverage over the search space before the algorithm is stopped, attempting to prevent early convergence, which may be introduced by the lack of population diversity. A dynamic mechanism is included in order to determine, in execution time, the degree of application of the technique, adapting the number of cycles when the technique is applied. The results have been tested over a dataset of ten standard single objective functions with different characteristics regarding dimensionality, presence of multiple local optima, search space range and three different dimensionality values, 30D, 300D and 1000D. Thirty different runs have been performed in order to cover the effect of the introduced operator and the statistical relevance of the measured results
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