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A Fast Overlapping Community Detection Algorithm Based on Weak Cliques for Large-Scale Networks

机译:大规模网络中基于弱群体的快速重叠社区检测算法

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Community detection is an important tool to analyze hidden information such as functional module and topology structure in complex networks. Compared with traditional community detection, it is more challenging to find overlapping communities in complex networks, especially when the networks are of large scales. Among various overlapping community detection techniques, the well-known clique percolation method (CPM) has shown promising performance in terms of quality of found communities, but suffers from serious curse of dimensionality due to its high computational complexity, which makes it very unlikely to be applied to large-scale networks. To address this issue, in this paper, we propose a weak-CPM for overlapping community detection in large-scale networks. A new measure for characterizing the similarity between weak cliques is also suggested to check whether the weak cliques can be merged into a community. Experimental results on synthetic and realworld networks demonstrate the competitive performance of the proposed method over six popular overlapping community detection algorithms in terms of both computational efficiency and quality of found communities. In addition, the proposed method is also suitable for detecting large-scale networks with an unclear community structure under different levels of overlapping density and overlapping diversity, which is an important property of many real-world complex networks.
机译:社区检测是分析复杂网络中隐藏信息的重要工具,例如功能模块和拓扑结构。与传统的社区检测相比,在复杂的网络中找到重叠的社区更具挑战性,尤其是当网络规模较大时。在各种重叠的社区检测技术中,众所周知的集团渗滤方法(CPM)在发现的社区的质量方面已显示出令人鼓舞的性能,但由于其计算复杂性高而遭受严重的维度诅咒,因此极不可能适用于大型网络。为了解决这个问题,在本文中,我们提出了一种弱CPM,用于大规模网络中的重叠社区检测。还提出了一种表征弱集团之间相似性的新措施,以检查弱集团是否可以合并到一个社区中。在合成网络和现实世界网络上的实验结果从计算效率和发现的社区质量两方面证明了该方法在六种流行的重叠社区检测算法上的竞争性能。此外,所提出的方法还适用于在不同水平的重叠密度和重叠分集下检测社区结构不清楚的大规模网络,这是许多现实世界中复杂网络的重要属性。

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