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Adaptive ∈-ranking on MNK-Landscapes

机译:MNK-Landscapes的自适应ε排序

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This work proposes an adaptive isin-ranking method to enhance Pareto based selection, aiming to develop effective many objective evolutionary optimization algorithm. isin-ranking fine grains ranking of solutions after they have been ranked by Pareto dominance, using a randomized sampling procedure combined with isin-dominance to favor a good distribution of the samples. In essence, sampled solutions keep their initial rank and solutions located within the virtually expanded dominance regions of the sampled solutions are demoted to an inferior rank. The parameter isin that determines the expanded regions of dominance of the sampled solutions is adapted to each generation so that the number of highest ranked solutions is kept close to a desired number expressed as a fraction of the population size. We enhanced NSGA-II with the proposed method and verify its performance on MNK-Landscapes. Experimented results show that the adaptive method works effectively and that convergence and diversity of the solutions found can improve remarkably on MNK-Landscapes with 3 les M les 10 objectives.
机译:这项工作提出了一种自适应的排序算法,以增强基于Pareto的选择,旨在开发有效的多目标进化优化算法。将溶液按帕累托优势进行排名后,使用随机抽样程序结合isin-dominance来使溶液具有良好的分布,从而对解决方案进行细粒度排名。本质上,采样解决方案保持其初始等级,并且位于采样解决方案的虚拟扩展优势区域内的解决方案被降级为劣等等级。确定采样解决方案的扩展优势区域的参数inin适用于每一代,从而使排名最高的解决方案的数量保持接近所需数量,该数量表示为总体数量的一部分。我们使用提出的方法增强了NSGA-II,并验证了其在MNK-Landscapes上的性能。实验结果表明,该自适应方法行之有效,解决方案的收敛性和多样性可以在3个10个目标的MNK景观上得到显着改善。

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