基于混合识别的双种群多目标进化算法求膝关节点

Junfeng Tang, Handing Wang
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引用次数: 1

摘要

在基于偏好的多目标优化中,决策者可能只对部分有代表性的解决方案感兴趣,很难明确自己的偏好。在这种情况下,膝关节点被认为是自然首选的权衡解决方案。大多数研究利用权衡信息或某些属性来找到膝点。然而,将它们结合起来进一步提高膝关节识别能力的研究却很少得到重视。本文提出了一种采用混合识别方法和双种群结构的多目标进化算法来寻找膝关节点。混合识别方法是基于局域α-优势和到超平面的距离。首先,通过一组预定义的参考向量对两个种群进行划分,并应用局部α-优势来引导搜索到潜在的膝关节区域;然后根据极值点到超平面的距离来检测膝关节解。最后,在环境选择中,采用生态位保持操作来考虑所有亚种群的膝解。第一种群是搜索的主要部分,影响着第二种群的子代和环境选择。实验结果表明,该方法在识别膝关节解方面是有效的、有竞争力的。
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A Bi-Population Based Multi-Objective Evolutionary Algorithm Using Hybrid Identification Method for Finding Knee Points
In the preference-based multi-objective optimization, decision makers may be interested in only a part of the representative solutions and hardly specify their preferences. In this case, knee points are considered as the naturally preferred trade-off solutions. Most research utilizes the trade-off information or certain properties to find knee points. However, little attention has been paid to combine them to further enhance the knee identification. This paper proposes a multi-objective evolutionary algorithm using a hybrid identification method and a bi-population structure to find knee points. The hybrid identification method is based on the localized α-dominance and the distance to the hyperplane. Firstly, two populations are partitioned by a set of predefined reference vectors and apply the localized α-dominance to guide the search towards potential knee regions. Then knee solutions are detected based on the distance to hyperplane constructed by the extreme points. Finally in the environmental selection, a niche-preserving operation is applied to take the knee solutions of all sub-populations into account. The first population is the main part of the search, and affects the offspring generation and environmental selection of the second population. The experiments demonstrate that the proposed method is effective and competitive in identifying knee solutions.
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