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Graph partitioning by multi-objective real-valued metaheuristics: A comparative study

机译:基于多目标实值元启发式的图划分:一个比较研究

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摘要

The graph partitioning is usually tackled as a single-objective optimization problem. Moreover, various problem-specific versions of different algorithms are proposed for solving this integer-valued problem, thus confusing practitioners in selecting an effective algorithm for their instances. On the other hand, although various metaheuristics are currently in great consideration towards different problem-domains, these are yet to be investigated widely to this problem. In this article, a novel attempt is made to investigate whether some common and established metaheuristics can directly be applied to different search spaces, instead of going through various problem-specific algorithms. For this, some mechanisms are proposed for handling the graph partitioning problem by general multi-objective real-valued genetic algorithm, differential evolution, and particle swarm optimization. Some algorithmic modifications are also proposed for improving the performances of the metaheuristics. Finally, the performances of the metaheuristics are compared in terms of their computer memory requirements, as well as their computational runtime and solution qualities based on some test cases with up to five objectives.
机译:图分区通常作为单目标优化问题解决。此外,提出了用于解决该整数值问题的不同算法的各种特定于问题的版本,从而使从业人员难以为其实例选择有效的算法。另一方面,尽管当前正在针对不同的问题域广泛考虑各种元启发式方法,但是对于这些问题尚待广泛研究。在本文中,我们进行了一种新颖的尝试,以研究是否可以将某些常见的和已建立的元启发式方法直接应用于不同的搜索空间,而不是通过各种针对特定问题的算法。为此,提出了一些通过通用的多目标实值遗传算法,差分演化和粒子群算法来处理图划分问题的机制。还提出了一些算法修改,以改善元启发式算法的性能。最后,根据某些计算机测试需求(最多五个目标),比较了元启发式方法的性能,包括它们的计算机内存需求,计算运行时间和解决方案质量。

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