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An efficient algorithm for community mining with overlap in social networks

机译:一种有效的社交网络重叠社区挖掘算法

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摘要

Detecting communities in social networks represents a significant task in understanding the structures and functions of networks. Several methods are developed to detect disjoint partitions. However, in real graphs vertices are often shared between communities, hence the notion of overlap. The study of this case has attracted, recently, an increasing attention and many algorithms have been designed to solve it. In this paper, we propose an overlapping communities detecting algorithm called DOCNet (Detecting overlapping communities in Networks). The main strategy of this algorithm is to find an initial core and add suitable nodes to expand it until a stopping criterion is met. Experimental results on real-world social networks and computer-generated artificial graphs demonstrate that DOCNet is efficient and highly reliable for detecting overlapping groups, compared with four newly known proposals.
机译:在社交网络中检测社区是理解网络结构和功能的一项重要任务。开发了几种方法来检测不相交的分区。但是,在实图中,顶点通常在社区之间共享,因此存在重叠的概念。最近,这种情况的研究引起了越来越多的关注,并设计了许多算法来解决该问题。在本文中,我们提出了一种称为DOCNet的重叠社区检测算法(检测网络中的重叠社区)。该算法的主要策略是找到一个初始核心,并添加合适的节点以对其进行扩展,直到满足停止标准为止。在现实世界中的社交网络和计算机生成的人工图形上的实验结果表明,与四个新近提出的建议相比,DOCNet在检测重叠组方面是高效且高度可靠的。

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