Detecting highly overlapping community structure based on Maximal Clique Networks

Peng Wu, Li Pan
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引用次数: 6

Abstract

Most of overlapping community detection algorithms cannot be applied to networks with highly overlapping community such as online social networks where individuals belong to many communities. One important reason is that many algorithms detect communities based on the explicit borders where nodes have more connections inside the communities, however, when the vertices' membership number gets large, the explicit borders between communities will fade away. To overcome this disadvantage, a new algorithm named MCNLPA is proposed by expanding the traditional Label Propagation Algorithm (LPA) based on the Maximal Clique Network for highly overlapping community detection. By finding all maximal cliques in networks and defining reasonable edges between them, the maximal clique network is established. Then the updated rule of classic LPA is modified to apply to the maximal network. Experiments show that MCNLPA has a relatively good performance in highly overlapping community detection and overlapping nodes identification.
基于最大克利克网络检测高度重叠的群落结构
大多数重叠社区检测算法不能应用于社区高度重叠的网络,如在线社交网络,其中个体属于多个社区。一个重要的原因是,许多算法基于显式边界检测社区,其中节点在社区内具有更多连接,然而,当顶点的成员数变大时,社区之间的显式边界将逐渐消失。为了克服这一缺点,本文提出了一种基于最大团团网络的标签传播算法(Label Propagation algorithm, LPA),在此基础上对传统的标签传播算法(Label Propagation algorithm, LPA)进行扩展,用于高度重叠社区的检测。通过找出网络中所有的最大团,并确定它们之间的合理边,建立最大团网络。然后对经典LPA的更新规则进行修正,使其适用于最大网络。实验表明,MCNLPA在高度重叠社区检测和重叠节点识别方面具有较好的性能。
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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