Edge pruning based community detection

Weibao He, Qianfang Xu, Bo Xiao
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Abstract

Given a network, community detection aims at finding all dense sub-graphs. Removing edges across different communities (border edges) is classic and effective. However, most of existing methods have high computing spends or suffer in the quality of resulting communities. In this paper, we propose a community detection algorithm: Edge Pruning (EP), with the fundamental idea of removing most possible border edges. To find out features of border edges, we first propose a method to measure the interplay between two nodes with a social tie, call Nodes Force Model. Second, since a node is influenced by all its connected nodes (neighbors), we discuss three possible situations of neighbors and compute their influence. Third, we study border edges, and find out their local features. With total influence and local features, we conclude a method to judge border edges. Edge Pruning has two advantages: (1) Detect communities with high quality (2) Low time complexity. Experimental results on real networks and synthetic networks demonstrate that Edge Pruning not only effectively detects communities with high quality, but also runs efficiently.
基于边缘剪枝的社区检测
给定一个网络,社区检测的目标是找到所有密集子图。移除不同社区之间的边缘(边界边缘)是经典且有效的方法。然而,大多数现有的方法都有很高的计算开销,或者导致社区质量下降。本文提出了一种社区检测算法:边缘修剪(Edge Pruning, EP),其基本思想是去除最可能的边缘。为了找出边界边缘的特征,我们首先提出了一种方法来衡量具有社会联系的两个节点之间的相互作用,称为节点力模型。其次,由于节点受到其所有连接节点(邻居)的影响,我们讨论了三种可能的邻居情况,并计算了它们的影响。第三,研究边界边缘,找出边界边缘的局部特征。结合整体影响和局部特征,提出了一种边界边缘判断方法。边缘修剪具有两个优点:(1)检测质量高;(2)时间复杂度低。在真实网络和合成网络上的实验结果表明,边缘修剪不仅能有效地检测出高质量的社区,而且运行效率高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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