Selecting a small number of representative non-dominated solutions by a hypervolume-based solution selection approach

H. Ishibuchi, Yuji Sakane, Noritaka Tsukamoto, Y. Nojima
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引用次数: 15

Abstract

A large number of non-dominated solutions are often obtained by a single run of an evolutionary multiobjective optimization (EMO) algorithm. In the EMO research area, it is usually assumed that a single solution is to be chosen from the obtained non-dominated solutions by the decision maker. It is, however, time-consuming and not easy for the decision maker to examine a large number of obtained non-dominated solutions. Motivated by these discussions, we proposed single-objective and multiobjective formulations of solution selection problems to present only a small number of representative non-dominated solutions to the decision maker in our former study. The basic idea is to minimize the number of solutions to be presented while maximizing their hypervolume. A number of single-objective formulations can be derived from such a two-objective solution selection problem. In this paper, single-objective rule selection is performed as a post-processing procedure of EMO algorithms to select a prespecified number of non-dominated solutions (e.g., 10 or 20 solutions). Through computational experiments on multiobjective 0/1 knapsack problems, we examine the characteristic features of selected non-dominated solutions. We also examine the effect of the choice of a reference point for hypervolume calculation on the distribution of selected non-dominated solutions.
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通过基于超卷的解决方案选择方法选择少量具有代表性的非主导解决方案
进化多目标优化(EMO)算法的单次运行往往能得到大量的非支配解。在EMO研究领域中,通常假设决策者从已获得的非支配解中选择一个解。然而,对于决策者来说,检查大量获得的非支配解是费时且不容易的。在这些讨论的激励下,我们提出了解决方案选择问题的单目标和多目标公式,以便在我们之前的研究中仅向决策者提供少量具有代表性的非支配解决方案。其基本思想是最小化要呈现的解决方案的数量,同时最大化它们的超大容量。从这样一个双目标解选择问题中可以推导出许多单目标公式。本文将单目标规则选择作为EMO算法的后处理过程,以选择预定数量的非支配解(如10或20个解)。通过多目标0/1背包问题的计算实验,研究了所选非支配解的特征特征。我们还研究了选择一个参考点对所选非支配解的分布的影响。
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