Simultaneous detection of communities and roles from large networks

Yiye Ruan, S. Parthasarathy
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引用次数: 24

Abstract

Community detection and structural role detection are two distinct but closely-related perspectives in network analytics. In this paper, we propose RC-Joint, a novel algorithm to simultaneously identify community and structural role assignments in a network. Rather than being agnostic to one assignment while inferring the other, RC-Joint employs a principled approach to guide the detection process in a nonparametric fashion and ensures that the two sets of assignments are sufficiently different from each other. Roles and communities generated by RC-Joint are both soft assignments, reflecting the fact that many real-world networks have overlapping community structures and role memberships. By comparing with state-of-the-art methods in community detection and structural role detection, we demonstrate that RC-Joint harvests the best of two worlds and outperforms existing approaches, while still being competitive in efficiency. We also investigate the effect of different initialization schemes, and find that using the results of RC-Joint on a sparse network as the seed often leads to faster convergence and higher quality.
同时检测来自大型网络的社区和角色
社区检测和结构角色检测是网络分析中两个不同但密切相关的观点。在本文中,我们提出了一种同时识别网络中社区和结构角色分配的新算法RC-Joint。RC-Joint不是在推断另一个赋值时对一个赋值不可知,而是采用一种有原则的方法以非参数方式指导检测过程,并确保两组赋值彼此之间有足够的不同。RC-Joint生成的角色和社区都是软分配,反映了许多现实世界的网络具有重叠的社区结构和角色成员关系这一事实。通过与最先进的社区检测和结构角色检测方法进行比较,我们证明了RC-Joint在两个世界中获得了最好的结果,并且优于现有的方法,同时在效率上仍然具有竞争力。我们还研究了不同初始化方案的影响,发现在稀疏网络上使用RC-Joint的结果作为种子通常会导致更快的收敛和更高的质量。
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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