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Solving large scale combinatorial optimization using PMA-SLS

机译:使用PMA-SLS解决大规模组合优化

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Memetic algorithms have become to gain increasingly important for solving large scale combinatorial optimization problems. Typically, the extent of the application of local searches in canonical memetic algorithm is based on the principle of "more is better". In the same spirit, the island model parallel memetic algorithm (PMA) is an important extension of the canonical memetic algorithm which applies local searches to every transitional solutions being considered. For PMA which applies complete local search, we termed it as PMA-CLS. In this paper, we consider the island model PMA with selective application of local search (PMA-SLS) and demonstrate its utility in solving complex combinatorial optimization problems, in particular large-scale quadratic assignment problems (QAPs). Based on our empirical results, the PMA-SLS compared to the PMA-CLS, can reduce the computational time spent significantly with little or no lost of solution quality. This we concluded is due mainly to the ability of the PMA-SLS to manage a more desirable diversity profile as the search progresses.
机译:Memetic Alicithms已经成为解决大规模组合优化问题的越来越重要。通常,在规范迭代算法中应用本地搜索的程度基于“越来越好”的原理。本着同样的精神,岛上模式并行Memetic算法(PMA)是适用于本地搜索来考虑每一个过渡解决方案的典型模因算法的一个重要延伸。对于应用完整本地搜索的PMA,我们将其称为PMA-CLS。在本文中,我们考虑岛模型PMA,具有本地搜索(PMA-SLS)的选择性应用,并展示其在解决复杂的组合优化问题方面的效用,特别是大规模的二次分配问题(QAP)。基于我们的经验结果,与PMA-CLS相比,PMA-SLS可以减少显着花费的计算时间,几乎没有丢失的解决方案质量。这我们得出的结论主要是由于PMA-SLS管理更可望的分集简档作为搜索进展的能力。

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