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Effects of Discretization of Decision and Objective Spaces on the Performance of Evolutionary Multi-objective Optimization Algorithms

机译:决策和目标空间离散化对演化多目标优化算法性能的影响

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Recently, the discretization of decision and objective spaces has been discussed in the literature. In some studies, it is shown that the decision space discretization improves the performance of evolutionary multi-objective optimization (EMO) algorithms on continuous multi-objective test problems. In other studies, it is shown that the objective space discretization improves the performance on combinatorial multi-objective problems. However, the effect of the simultaneous discretization of both spaces has not been examined in the literature. In this paper, we examine the effects of the decision space discretization, objective space discretization and simultaneous discretization on the performance of NSGA-II through computational experiments on the DTLZ and WFG problems. Using various settings about the number of decision variables and the number of objectives, our experiments are performed on four types of problems: standard problems, large-scale problems, many-objective problems, and large-scale many-objective problems. We show that the decision space discretization has a positive effect for large-scale problems and the objective space discretization has a positive effect for many-objective problems. We also show the discretization of both spaces is useful for large-scale many-objective problems.
机译:最近,在文献中已经讨论了决策空间和目标空间的离散化。在某些研究中表明,决策空间离​​散化可提高连续多目标测试问题上的进化多目标优化(EMO)算法的性能。在其他研究中,证明了目标空间离散化提高了组合多目标问题的性能。但是,两个空间同时离散化的效果尚未在文献中进行检验。在本文中,我们通过对DTLZ和WFG问题的计算实验,研究了决策空间离​​散化,目标空间离散化和同时离散化对NSGA-II性能的影响。使用关于决策变量数量和目标数量的各种设置,我们对四种类型的问题进行了实验:标准问题,大规模问题,多目标问题和大规模多目标问题。我们表明,决策空间离​​散化对大规模问题具有积极影响,而目标空间离散化对许多目标问题具有积极影响。我们还表明,将两个空间离散化对于大规模多目标问题很有用。

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