“突变下降”元启发式在团划分问题中的应用

I. Charon, O. Hudry
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引用次数: 5

摘要

本文研究了一种元启发式算法的应用,它来自于噪声方法,我们称之为“突变下降法”,用于对称关系聚集领域中出现的一个问题:加权图的团划分。该局部搜索元启发式算法的设计非常简单,并与另一种非常有效的元启发式算法进行了比较,后者是一种模拟退火算法,通过加入一些来自噪声方法的成分来改进。这些实验表明,对于所研究的问题,带有突变的下降至少与这种改进的模拟退火一样有效,通常要好一点,同时,最重要的是,它更容易设计和应用。
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Application of the "descent with mutations" metaheuristic to a clique partitioning problem
We study here the application of a metaheuristic, issued from the noising methods and that we call "descent with mutations", to a problem arising in the field of the aggregation of symmetric relations: the clique partitioning of a weighted graph. This local search metaheuristic, of which the design is very simple, is compared with another very efficient metaheuristic, which is a simulated annealing improved by the addition of some ingredients coming from the noising methods. These experiments show that the descent with mutations is at least as efficient for the studied problem as this improved simulated annealing, usually a little better, while, above all, it is much easier to design and to apply.
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