Joint Role and Community Detection in Networks via L2,1 Norm Regularized Nonnegative Matrix Tri-Factorization

Yulong Pei, G. Fletcher, Mykola Pechenizkiy
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引用次数: 9

Abstract

Role discovery and community detection in networks are two essential tasks in network analytics where the role denotes the global structural patterns of nodes in networks and the community represents the local connections of nodes in networks. Previous studies viewed these two tasks orthogonally and solved them independently while the relation between them has been totally neglected. However, it is intuitive that roles and communities in a network are correlated and complementary to each other. In this paper, we propose a novel model for simultaneous roles and communities detection (REACT) in networks. REACT uses non-negative matrix tri-factorization (NMTF) to detect roles and communities and utilizes L2,1 norm as the regularization to capture the diversity relation between roles and communities. The proposed model has several advantages comparing with other existing methods: (1) it incorporates the diversity relation between roles and communities to detect them simultaneously using a unified model, and (2) it provides extra information about the interaction patterns between roles and between communities using NMTF. To analyze the performance of REACT, we conduct experiments on several real-world SNs from different domains. By comparing with state-of-the-art community detection and role discovery methods, the obtained results demonstrate REACT performs best for both role and community detection tasks. Moreover, our model provides a better interpretation for the interaction patterns between communities and between roles.
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基于L2,1范数正则化非负矩阵三因子分解的网络联合角色与社区检测
网络中的角色发现和社区检测是网络分析中的两项基本任务,其中角色表示网络中节点的全局结构模式,社区表示网络中节点的局部连接。以往的研究把这两个任务看成是相互对立的,各自独立解决,而完全忽视了它们之间的关系。然而,从直觉上看,网络中的角色和社区是相互关联和互补的。在本文中,我们提出了一种新的网络同步角色和社区检测模型(REACT)。REACT使用非负矩阵三因子分解(NMTF)来检测角色和社区,并利用L2,1范数作为正则化来捕获角色和社区之间的多样性关系。与现有方法相比,该模型具有以下优点:(1)结合角色与社区之间的多样性关系,使用统一的模型同时检测角色与社区之间的多样性关系;(2)使用NMTF提供角色与社区之间交互模式的额外信息。为了分析REACT的性能,我们在来自不同领域的几个现实世界的SNs上进行了实验。通过与最先进的社区检测和角色发现方法进行比较,获得的结果表明REACT在角色和社区检测任务中都表现最好。此外,我们的模型为社区之间和角色之间的交互模式提供了更好的解释。
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