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A multi-objective genetic algorithm for community detection in weighted networks

机译:加权网络中社区检测的多目标遗传算法

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Problem of community detection has attracted many research efforts in recent years. Most of the algorithms developed for this purpose, take advantage of single-objective optimization methods which may be ineffective for complex networks. In addition, most of the networks in the real world are weighted, and therefore, this fact must be of special interest in order to achieve more precise communities in partitioning strategies. Accordingly, in this paper, a community detection method for weighted networks is proposed using multi-objective optimization based on genetic algorithm. Performance evaluation based on experiments on real datasets, shows that considering weights of the edges, leads to higher modularity factor.
机译:近年来,社区发现的问题吸引了许多研究工作。为此目的开发的大多数算法都利用了对复杂网络可能无效的单目标优化方法。另外,现实世界中的大多数网络都经过加权,因此,为了在分区策略中实现更精确的社区,必须特别关注这一事实。因此,本文提出了一种基于遗传算法的多目标优化加权网络社区检测方法。基于真实数据集上的实验的性能评估表明,考虑边缘的权重会导致更高的模块化因子。

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