CDBIA:基于增量分析的动态群落检测方法

Jingyong Li, Lan Huang, Tian Bai, Zhe Wang, Hongsheng Chen
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引用次数: 23

摘要

现有的社区检测方法大多忽略了社会网络的动态特性,在面对动态环境时往往导致不合理的划分。虽然已有多种动态社区检测算法,但准确率低和性能差仍然是亟待解决的两个难题。为了解决上述问题,本文提出了一种基于增量分析的动态社交网络社区挖掘算法。大量的实验结果证明了我们提出的算法的性能。
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CDBIA: A dynamic community detection method based on incremental analysis
Most existing community detection methods ignored the dynamic nature, a key property of social networks and these methods often lead to unreasonable divisions when faced with dynamic environments. Although there have been several dynamic community detection algorithms, low accuracy and low performing are still two challenging problems to be solved. In order to solve above problems, we proposed a new algorithm based on incremental analysis to mine communities in dynamic social networks. Extensive experimental results demonstrate the performance of our propose algorithm.
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