基于局部优势和局部重组的多目标进化算法:多目标0/1背包问题的性能验证

Hiroyuki Sato, H. Aguirre, Kiyoshi Tanaka
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引用次数: 2

摘要

提出了一种基于局部优势和局部重组的单种群多目标进化算法。该方法首先将个体的适应度向量转换为目标函数空间中的极坐标向量;然后,利用赤纬角将种群迭代划分为若干亚种群。因此,每个子种群覆盖了多目标空间中的一个子区域,其个体位于相同的搜索方向周围。其次,通过旋转对齐子种群的主要搜索方向后,分别计算各子种群的局部优势度。选择、重组和突变应用于每个亚种群中的个体。该方法不仅可以提高基于优势度选择的moea的性能,而且可以降低求解方案间优势度的总计算成本。在多目标0/1背包问题(Multiobjective 0/1 backpack Problems)中,我们验证了所提方法在两个代表性moea即NSGA-II和SPEA2中获得Pareto最优解的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Multiobjective Evolutionary Algorithms by Local Dominance and Local Recombination: Performance Verification in Multiobjective 0/1 Knapsack Problems
This paper proposes a method to enhance single population multiobjective evolutionary algorithms (MOEAs) by searching based on local dominance and local recombination. In this method, first, all fitness vectors of individuals are transformed to polar coordinate vectors in objective function space. Then, the population is iteratively divided into several subpopulations by using declination angles. As a result, each sub-population covers a sub-region in the multiobjective space with its individuals located around the same search direction. Next, local dominance is calculated separately for each sub-population after alignment of its principle search direction by rotation. Selection, recombination, and mutation are applied to individuals within each sub-population. The proposed method can improve the performance of MOEAs that use dominance based selection, and can reduce the entire computational cost to calculate dominance among solutions as well. In this paper we verify the effectiveness of the proposed method obtaining Pareto optimal solutions in two representative MOEAs, i.e. NSGA-II and SPEA2, with Multiobjective 0/1 Knapsack Problems.
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