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A Hybrid Scalarization and Adaptive €-Ranking Strategy for Many-Objective Optimization

机译:多目标优化的混合标量和自适应€排序策略

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This work proposes a hybrid strategy in a two-stage search process for many-objective optimization. The first stage of the search is directed by a scalarization function and the second one by Pareto selection enhanced with Adaptive e-Ranking. The scalarization strategy drives the population towards central regions of objective space, aiming to find solutions with good convergence properties to seed the second stage of the search. Adaptive e-Ranking balances the search effort towards the different regions of objective space to find solutions with good convergence, spread, and distribution properties. We test the proposed hybrid strategy on MNK-Landscapes showing that performance can improve significantly on problems with more than 6 objectives.
机译:这项工作提出了两阶段搜索过程中的多目标优化混合策略。搜索的第一阶段由标量函数控制,第二阶段由通过自适应电子排名增强的帕累托选择。标量化策略将人口带向目标空间的中心区域,旨在寻找具有良好收敛性的解决方案,为第二阶段的搜索提供种子。自适应电子排名在目标空间的不同区域之间平衡搜索工作,以找到具有良好收敛性,扩展性和分布性的解决方案。我们对MNK-Landscapes提出的混合策略进行了测试,结果表明,对于具有6个以上目标的问题,性能可以显着提高。

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