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Adaptive genetic algorithms guided by decomposition for PCSPs: application to frequency assignment problems

机译:由PCSP分解指导的自适应遗传算法:在频率分配问题中的应用

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This paper proposes Adaptive Genetic Algorithms Guided by structural knowledges coming from decomposition methods, for solving PCSPs. The family of algorithms called AGAGD_x_y is designed to be doubly generic, meaning that any decomposition method and different heuristics for the genetic operators can be considered. To validate the approach, the decomposition algorithm due to Newman was used and several crossover operators based on structural knowledge such as the cluster, separator and the cut were tested. The experimental results obtained on the most challenging Minimum Interference-FAP problems of CALMA instances are very promising and lead to interesting perspectives to be explored in the future.
机译:本文提出了基于分解方法的结构知识的自适应遗传算法,用于求解PCSP。称为AGAGD_x_y的算法家族设计为具有双重通用性,这意味着可以考虑遗传算子的任何分解方法和不同的启发式方法。为了验证该方法,使用了基于Newman的分解算法,并测试了一些基于结构知识的交叉算子,例如聚类,分隔符和剪切。在CALMA实例中最具挑战性的Minimum Interference-FAP问题上获得的实验结果非常有前途,并为将来探索有趣的观点提供了希望。

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