Influence of Reference Points on a Many-Objective Optimization Algorithm

Matheus Carvalho, André Britto
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引用次数: 2

Abstract

Many-Objective Optimization Problems (MaOPs) are problems that have more than three objective functions to be optimized. Most Multi-Objective Evolutionary Algorithms scales poorly when the number of objective function increases. To face this limitation, new strategies have been proposed. One of them is the use of reference points to enhance the search of the algorithms. NSGA-III is a reference point based algorithm that has been successfully applied to solve MaOPs. NSGA-III uses a set of reference points placed on a normalized hyperplane which is equally inclined to all objective axes and has an intercept at 1 on each axis. Despite the good results of NSGA-III, the shape of the hyper-plane is not deeply explored in literature. This work studies the influence of the set of reference pointsonMany-ObjectiveOptimization.Here, itisproposedthree new transformations of the reference points set used by NSGAIII. Besides, the Vector Guided Adaptation procedure is also applied to modify original NSGA-III hyper-plane. Furthermore, an adaptation of NSGA-III algorithm is proposed and it is performed a set of experiments to evaluate the transformation procedures. Original and adapted versions of NSGA-III are faced over several benchmarking problems observing both convergence and diversity through the analysis of statistical tests.
参考点对多目标优化算法的影响
多目标优化问题(MaOPs)是指有三个以上目标函数需要优化的问题。当目标函数数量增加时,大多数多目标进化算法的可扩展性较差。为了面对这一限制,人们提出了新的策略。其中之一是使用参考点来增强算法的搜索能力。NSGA-III是一种基于参考点的算法,已成功应用于求解MaOPs。NSGA-III使用一组放置在归一化超平面上的参考点,该超平面与所有目标轴相等倾斜,并且每个轴上的截距为1。尽管NSGA-III取得了良好的效果,但文献中对超平面形状的探讨并不深入。本文研究了多目标优化中参考点集合的影响。本文对NSGAIII使用的参考点集提出了三种新的变换方法。此外,还采用矢量引导自适应方法对原NSGA-III超平面进行了修改。在此基础上,提出了一种NSGA-III算法的自适应算法,并进行了一系列实验,对变换过程进行了评价。NSGA-III的原始版本和改编版本面临着几个基准问题,通过统计测试分析观察到收敛性和多样性。
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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