Evolutionary algorithms and multi-objectivization for the travelling salesman problem

Martin Jähne, Xiaodong Li, J. Branke
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引用次数: 42

Abstract

This paper studies the multi-objectivization of single-objective optimization problems (SOOP) using evolutionary multi-objective algorithms (EMOAs). In contrast to the single-objective case, diversity can be introduced by the multi-objective view of the algorithm and the dynamic use of objectives. Using the travelling salesman problem as an example we illustrate that two basic approaches, a) the addition of new objectives to the existing problem and b) the decomposition of the primary objective into sub-objectives, can improve performance compared to a single-objective genetic algorithm when objectives are used dynamically. Based on decomposition we propose the concept "Multi-Objectivization via Segmentation" (MOS), at which the original problem is reassembled. Experiments reveal that this new strategy clearly outperforms both the traditional genetic algorithm (GA) and the algorithms based on existing multiobjective approaches even without changing objectives.
旅行商问题的进化算法与多目标化
利用进化多目标算法研究了单目标优化问题的多目标化问题。与单目标情况相比,算法的多目标视图和目标的动态使用可以引入多样性。以旅行推销员问题为例,我们说明了两种基本方法,a)在现有问题中添加新目标和b)将主要目标分解为子目标,当目标被动态使用时,与单目标遗传算法相比,可以提高性能。在分解的基础上,提出了“分段多目标化”(MOS)的概念,对原问题进行重组。实验表明,即使不改变目标,该策略也明显优于传统的遗传算法和基于现有多目标方法的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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