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首页> 外文期刊>IEEE transactions on evolutionary computation >An Investigation on Preference Order Ranking Scheme for Multiobjective Evolutionary Optimization
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An Investigation on Preference Order Ranking Scheme for Multiobjective Evolutionary Optimization

机译:多目标进化优化的优先顺序排序方案研究

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It may be generalized that all Evolutionary Algorithms (EA) draw their strength from two sources: exploration and exploitation. Surprisingly, within the context of multiobjective (MO) optimization, the impact of fitness assignment on the exploration-exploitation balance has drawn little attention. The vast majority of multiobjective evolutionary algorithms (MOEAs) presented to date resort to Pareto dominance classification as a fitness assignment methodology. However, the proportion of Pareto optimal elements in a set P grows with the dimensionality of P. Therefore, when the number of objectives of a multiobjective problem (MOP) is large, Pareto dominance-based ranking procedures become ineffective in sorting out the quality of solutions. This paper investigates the potential of using preference order-based approach as an optimality criterion in the ranking stage of MOEAs. A ranking procedure that exploits the definition of preference ordering (PO) is proposed, along with two strategies that make different use of the conditions of efficiency provided, and it is compared with a more traditional Pareto dominance-based ranking scheme within the framework of NSGA-II. A series of extensive experiments is performed on seven widely applied test functions, namely, DTLZ1, DTLZ2, DTLZ3, DTLZ4, DTLZ5, DTLZ6, and DTLZ7, for up to eight objectives. The results are analyzed through a suite of five performance metrics and indicate that the ranking procedure based on PO enables NSGA-II to achieve better scalability properties compared with the standard ranking scheme and suggest that the proposed methodology could be successfully extended to other MOEAs
机译:可以概括地说,所有进化算法(EA)都从两个方面汲取其优势:探索和开发。令人惊讶的是,在多目标(MO)优化的背景下,适应度分配对勘探与开发平衡的影响很少引起关注。迄今为止,绝大多数多目标进化算法(MOEA)都采用帕累托优势度分类作为适应度分配方法。但是,集合P中的Pareto最优元素的比例随着P的维数而增长。因此,当多目标问题(MOP)的目标数量很大时,基于Pareto优势的排名程序将无法有效地分类出P的质量。解决方案。本文研究了在MOEA排名阶段将基于优先顺序的方法用作最优标准的潜力。提出了一种利用偏好排序(PO)定义的排序程序,以及两种策略,它们分别利用了所提供的效率条件,并在NSGA框架内与更传统的基于Pareto优势的排序方案进行了比较-II。对多达七个目标的七个广泛应用的测试功能(即DTLZ1,DTLZ2,DTLZ3,DTLZ4,DTLZ5,DTLZ6和DTLZ7)进行了一系列广泛的实验。通过一系列五个性能指标对结果进行了分析,结果表明基于PO的排名程序使NSGA-II与标准排名方案相比具有更好的可伸缩性,并建议将所提出的方法成功地扩展到其他MOEA

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