Boosting Indicator-Based Selection Operators for Evolutionary Multiobjective Optimization Algorithms

Dung H. Phan, J. Suzuki
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引用次数: 11

Abstract

Various evolutionary multiobjective optimization algorithms (EMOAs) have adopted indicator-based selection operators that augment or replace dominance ranking with quality indicators. A quality indicator measures the goodness of each solution candidate. Many quality indicators have been proposed with the intention to capture different preferences in optimization. Therefore, indicator-based selection operators tend to have biased selection pressures that evolve solution candidates toward particular regions in the objective space. An open question is whether a set of existing indicator based selection operators can create a single operator that outperforms those existing ones. To address this question, this paper studies a method to aggregate (or boost) existing indicator-based selection operators. Experimental results show that a boosted selection operator outperforms exiting ones in optimality, diversity and convergence velocity. It also exhibits robustness against different characteristics in different optimization problems and yields stable performance to solve them.
进化多目标优化算法中基于增强指标的选择算子
各种进化多目标优化算法(EMOAs)采用基于指标的选择算子,用质量指标增强或取代优势排序。质量指标衡量每个候选解决方案的优劣。已经提出了许多质量指标,目的是在优化中捕捉不同的偏好。因此,基于指标的选择算子倾向于有偏向的选择压力,将解候选演化到目标空间中的特定区域。一个悬而未决的问题是,一组现有的基于指标的选择操作符是否可以创建一个优于现有操作符的单个操作符。为了解决这个问题,本文研究了一种方法来聚合(或增强)现有的基于指标的选择算子。实验结果表明,改进后的选择算子在最优性、多样性和收敛速度方面都优于现有的选择算子。该算法对不同的优化问题具有不同的鲁棒性,求解时性能稳定。
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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