基于混合群体智能方法的社交网络社区检测

Alireza Ghasabeh, M. S. Abadeh
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引用次数: 6

摘要

在过去的十年里,社区检测问题在许多研究论文中得到了广泛的研究。针对这个问题已经提出了几种解决方案;然而,这一问题的挑战尚未得到充分解决。在本文中,我们将局部搜索解决方案蚁群聚类的思想与蜂巢优化的全局搜索能力相结合,从而更快、更准确地发现群体。我们使用舞蹈蜂在节点间交换信息,并将节点视为蚁群聚类中的一只蚂蚁。在真实网络和人工生成图上的实验结果表明,与其他方法相比,我们的算法具有更好的性能。
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Community detection in social networks using a hybrid swarm intelligence approach
The problem of community detection has been widely studied in numerous research papers in the last decade. There have been several proposed solutions for this problem; however the challenges of this problem have not been fully addressed yet. In this paper, we hybridize the idea of Ant Colony clustering, which is a local search solution, with global search ability of Honey Bee Hive Optimization to detect communities faster and more accurately. We use the dancer bees for exchanging information among nodes, and a node is considered as an ant in the ant colony clustering. Experimental results on real world networks and also artificial generated graphs show superior performance of our algorithm in comparison to other previous approaches.
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