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Overlapping community detection via link partition of asymmetric weighted graph

机译:通过不对称加权图的链接划分进行社区重叠检测

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Link partition clusters edges of a complex network to discover its overlapping communities. Due to its effectiveness, link partition has attracted much attentions from the network science community. However, since link partition assigns each edge of a network to unique community, it cannot detect the disjoint communities. To overcome this deficiency, this paper proposes a link partition on asymmetric weighted graph (LPAWG) method for detecting overlapping communities. Particularly, LPAWG divides each edge into two parts to distinguish the roles of connected nodes. This strategy biases edges to a specific node and helps assigning each node to its affiliated community. Since LPAWG introduces more edges than those in the original network, it cannot efficiently detect communities from some networks with relative large amount of edges. We therefore aggregate the line graph of LPAWG to shrink its scale. Experimental results of community detection on both synthetic datasets and the real-world networks show the effectiveness of LPAWG comparing with the representative methods.
机译:链接分区将复杂网络的边缘群集在一起,以发现其重叠的社区。由于其有效性,链接分区引起了网络科学界的广泛关注。但是,由于链路分区将网络的每个边缘分配给唯一的社区,因此它无法检测到不相交的社区。为了克服这一缺陷,本文提出了一种基于非对称加权图的链路分区(LPAWG)方法来检测重叠社区。特别是,LPAWG将每个边缘分为两个部分,以区分连接节点的角色。此策略将边缘偏向特定节点,并帮助将每个节点分配给其关联社区。由于LPAWG引入的边缘比原始网络中的边缘更多,因此它无法有效地检测到来自边缘数量相对较大的某些网络中的社区。因此,我们汇总了LPAWG的折线图以缩小其比例。在合成数据集和真实世界网络上进行社区检测的实验结果表明,与代表性方法相比,LPAWG的有效性。

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