一种基于骨架的有向网络社区检测算法

Hao Long, Tong Wu, Hongyan Yin
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引用次数: 2

摘要

方向性是表征复杂系统中连接对象之间传递信息、能量或影响的关键特征,考虑方向性特征的社区检测是研究现实世界网络的重要工具,本文提出了一种新的基于骨架的有向网络社区检测算法。首先将无向图的边缘强度项扩展到有向图,然后提取骨架链作为原始有向网络的轮廓;利用网络骨架的迭代分裂和基于扩展强度的模块化,可以准确地检索有向网络的不相交群落。在真实和合成网络上的实验结果表明,该算法比现有方法具有更高的精度。除了帮助检测社区之外,网络骨架还为网络研究提供了一种全新的视角,并可用于许多应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Skeleton-based Community Detection Algorithm for Directed Networks
Directionality is a key feature that represents information, energy or influence transmitting between connected objects in complex systems, community detection with consideration of such feature is a prior tool to investigate the real-word networks, in this paper we propose a novel skeleton-based community detection algorithm for directed networks. Firstly we extend the term of the edge intensity for undirected graphs to directed ones, then the skeleton chain is extracted out as a profile of the original directed network; with iterative splitting of network skeleton and the extended intensity-based modularity, disjoint communities for directed networks can be accurately retrieved. Experimental results on real and synthetic networks show higher accuracy of our algorithm than the existing methods. In addition to helping detect communities, network skeleton provides a different view with a whole new meaning into network research and can be used into many applications.
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