Local community detection using seeds expansion

Bingying Xu, Zheng Liang, Yan Jia, Bin Zhou, Yi Han
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引用次数: 3

Abstract

The hidden knowledge in the information network has attracted a large number of researchers from different subjects such as sociology, physics and computer science. Community discovery has great significance for the analysis of information network structure, the understanding of its function, the discovery of its hidden patterns, and the predication of its behavior. In the practical life, people tend to analyze the information network with a heuristic method, that is, analyze the partial structure which meets the specific needs abstracted from the huge amounts of relational data. For this case, a method of community discovery based on seeds expansion is put forward in this paper. The node that should be paid special attention to in the information network is called the seed node, and then nodes with high similarity with the seed node are added through the iterative way. Accepting the idea of clustering algorithm, this method can not only find its community according to the customization node, but also find the outlier nodes of the community. Experiments on the public test set and data set of Sina micro-blog have demonstrated the effectiveness of the method.
利用种子扩张进行当地社区检测
信息网络中的隐性知识吸引了来自社会学、物理学和计算机科学等不同学科的大量研究者。社区发现对于分析信息网络结构、认识信息网络功能、发现信息网络隐藏模式、预测信息网络行为具有重要意义。在实际生活中,人们往往采用启发式的方法对信息网络进行分析,即从海量的关系数据中抽象出符合特定需求的部分结构进行分析。针对这种情况,本文提出了一种基于种子扩展的群落发现方法。将信息网络中需要特别注意的节点称为种子节点,然后通过迭代的方式添加与种子节点相似度高的节点。该方法采用聚类算法的思想,既能根据定制节点找到自己的社区,又能找到社区的离群节点。在公开测试集和新浪微博数据集上的实验证明了该方法的有效性。
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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