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An Evolutionary Algorithm with Clustering-Based Assisted Selection Strategy for Multimodal Multiobjective Optimization

机译:一种基于聚类的多模式多目标优化辅助选择策略的进化算法

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In multimodal multiobjective optimization problems (MMOPs), multiple Pareto optimal sets, even some good local Pareto optimal sets, should be reserved, which can provide more choices for decision-makers. To solve MMOPs, this paper proposes an evolutionary algorithm with clustering-based assisted selection strategy for multimodal multiobjective optimization, in which the addition operator and deletion operator are proposed to comprehensively consider the diversity in both decision and objective spaces. Specifically, in decision space, the union population is partitioned into multiple clusters by using a density-based clustering method, aiming to assist the addition operator to strengthen the population diversity. Then, a number of weight vectors are adopted to divide population into N subregions in objective space ( N is population size). Moreover, in the deletion operator, the solutions in the most crowded subregion are first collected into previous clusters, and then the worst solution in the most crowded cluster is deleted until there are N solutions left. Our algorithm is compared with other multimodal multiobjective evolutionary algorithms on the well-known benchmark MMOPs. Numerical experiments report the effectiveness and advantages of our proposed algorithm.
机译:在多模式多目标优化问题(MMOPS)中,甚至应该保留多个Paroto最佳集合,即使是一些良好的本地Pareto最佳集合,也可以为决策者提供更多选择。为了解决MMOPS,本文提出了一种具有基于聚类的辅助选择策略的进化算法,用于多模式多目标优化的辅助选择策略,其中提出了加法运营商和删除操作员来全面地考虑两种决策和客观空间的多样性。具体地,在决策空间中,通过使用基于密度的聚类方法将工会群体分成多个集群,旨在帮助加法运营商加强人口多样性。然后,采用许多权重向量将群体分成目标空间中的N个子区域(n是群体大小)。此外,在删除操作员中,首先将最拥挤的子区域中的解决方案收集到之前的集群中,然后删除最拥挤的群集中的最糟糕的解决方案,直到剩下N个解决方案。与众所周知的基准MMOPS上的其他多模式多目标进化算法进行了比较了我们的算法。数值实验报告了我们所提出的算法的有效性和优点。

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