Near linear-time community detection in networks with hardly detectable community structure

A. Rezaei, Saeed Mahlouji Far, Mahdieh Soleymani
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引用次数: 5

Abstract

Identifying communities has always been a fundamental task in analysis of complex networks. Many methods have been devised over the last decade for detection of communities. Amongst them, the label propagation algorithm brings great scalability together with high accuracy. However, it has one major flaw; when the community structure in the network is not clear enough, it will assign every node the same label, thus detecting the whole graph as one giant community. We have addressed this issue by setting a capacity for communities, starting from a small value and gradually increasing it over time. Preliminary results show that not only our extension improves the detection capability of the classic label propagation algorithm when communities are not clearly detectable, but also improves the overall quality of the identified clusters in complex networks with a clear community structure.
社团结构难以检测的网络中的近线性时间社团检测
识别社区一直是分析复杂网络的一项基本任务。在过去十年中,已经设计了许多方法来检测社区。其中,标签传播算法具有良好的可扩展性和较高的准确性。然而,它有一个主要缺陷;当网络中的社区结构不够清晰时,它会给每个节点分配相同的标签,从而将整个图检测为一个巨大的社区。我们通过为社区设置容量来解决这个问题,从一个小的值开始,随着时间的推移逐渐增加。初步结果表明,我们的扩展不仅提高了传统标签传播算法在社区不清晰时的检测能力,而且在社区结构清晰的复杂网络中,提高了识别聚类的整体质量。
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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