MOEA/D变量在基准问题上的比较

Tolga Altinoz
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引用次数: 1

摘要

-考虑到多目标优化问题的定义是在优化问题的目标数量增加时提出的,不仅是目标的数量,而且是解决问题所需的计算资源。因此,需要在合理的时间内解决多目标优化问题。这种新方法之一是利用进化算法/算子的分解方法。该算法称为基于分解的多目标进化算法(MOEA/D)。后来,提出了各种变体来提高MOEA/D算法的性能。然而,这些变体之间的一般比较需要证明这些算法的性能。为此,本研究在基准问题(DTLZ和MaF)上实现了MOEA/D算法的变体,并对其性能进行了比较。选择了两个指标来评估/比较变体的性能。指标是IGD和Spread指标。在实现的最后,结果表明自适应加权思想是最有希望提高MOEA/D算法性能的思想。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of MOEA/D Variants on Benchmark Problems
– Given that the definition of the multi-objective optimization problem is raised when number of objectives is increased in number at the optimization problem, where not only the number of objectives but also the computational resources which are needed to solve the problem, is also more desired. Therefore, novel approaches had required to solve multi-objective optimization problem in a reasonable time. One of this novel approach is utilization of the decomposition method with the evolutionary algorithm/operator. This algorithm was called multi-objective evolutionary algorithm based on decomposition (MOEA/D). Later on, variants have been proposed to improve the performance of the MOEA/D algorithm. However, a general comparison between these variants has needed for demonstrate the performance of these algorithm. For this reason, in this research the variants of MOEA/D algorithms have implemented on benchmark problems (DTLZ and MaF) and the performances has compared with each other. Two metrics had selected to evaluate/compare the performances of the variants. The metrics are IGD and Spread metrics. The results at the end of the implementations suggest that adaptive weighting idea is the most promising idea to increase the performance of the MOEA/D algorithm.
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