凸向量优化问题的外逼近算法

Irem Nur Keskin, Firdevs Ulus
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引用次数: 5

摘要

在本研究中,我们提出了求解凸向量优化问题的一般外部近似算法框架,其中迭代求解Pascoletti-Serafini (PS)标化。这种尺度化找到从参考点(通常作为当前外部近似的顶点)到给定方向的上图像的最小“距离”。我们提出了有效的方法来选择PS尺度化的参数(参考点和方向向量),并分析了这些参数对算法整体性能的影响。与文献中已有的顶点选择规则不同,本文提出的方法不需要解决额外的单目标优化问题。使用一些测试问题,我们进行了广泛的计算研究,其中设置了三种不同的度量作为停止标准:近似误差、运行时间和解决方案集的基数。我们观察到,与文献中的现有变体相比,所提出的变体具有令人满意的结果,特别是在运行时间方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Outer approximation algorithms for convex vector optimization problems
In this study, we present a general framework of outer approximation algorithms to solve convex vector optimization problems, in which the Pascoletti-Serafini (PS) scalarization is solved iteratively. This scalarization finds the minimum ‘distance’ from a reference point, which is usually taken as a vertex of the current outer approximation, to the upper image through a given direction. We propose efficient methods to select the parameters (the reference point and direction vector) of the PS scalarization and analyse the effects of these on the overall performance of the algorithm. Different from the existing vertex selection rules from the literature, the proposed methods do not require solving additional single-objective optimization problems. Using some test problems, we conduct an extensive computational study where three different measures are set as the stopping criteria: the approximation error, the runtime, and the cardinality of the solution set. We observe that the proposed variants have satisfactory results, especially in terms of runtime compared to the existing variants from the literature.
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