基于社交网络中影响力最大化的社区检测统一框架

Fei Jiang, Shuyuan Jin, Yanlei Wu, Jin Xu
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引用次数: 22

摘要

社区结构作为一个重要的特征,帮助我们从中观的角度来理解网络。现有的社区检测方法没有考虑到社区的形成,而现实社会网络中的社区通常是围绕有影响力的节点建立的。在本文中,我们提出了一个基于局部影响的高效框架来检测重叠和分层社区。我们试图阐明两个基本问题:1)作为一种新属性的地方影响力是否会影响社区的形成;2)如何量化节点的局部影响力,并利用它来检测社区。为了证明局部影响力在评估节点重要性方面的有效性,选择具有高局部影响力的节点在真实社交网络上进行影响力最大化实验。实验结果表明,该框架在社区检测和影响最大化方面都是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A uniform framework for community detection via influence maximization in social networks
Community structure as a significant feature helps us understand networks in a mesoscopic view. Existing approaches for community detection haven't considered about the formation of communities, whereas community in real social networks is usually established around influential nodes. In this paper, we present an efficient and effective framework based on local influence to detect both overlapping and hierarchical communities. We try to illuminate two fundamental questions: 1)Whether local influence regarded as a new property can affect the formation of communities; 2)How to quantify node's local influence and utilize it to detect communities. To demonstrate the effectiveness of local influence in terms of evaluating node importance, nodes with high local influence are selected to perform the influence maximization experiments on real social networks. Experimental results show that our framework is effective and efficient for both community detection and influence maximization.
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