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A dynamic modularity based community detection algorithm for large-scale networks: DSLM

机译:基于动态模块的大型网络社区检测算法:DSLM

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摘要

In this work, a new fast dynamic community detection algorithm for large scale networks is presented. Most of the previous community detection algorithms are designed for static networks. However, large scale social networks are dynamic and evolve frequently over time. To quickly detect communities in dynamic large scale networks, we proposed dynamic modularity optimizer framework (DMO) that is constructed by modifying well-known static modularity based community detection algorithm. The proposed framework is tested using several different datasets. According to our results, community detection algorithms in the proposed framework perform better than static algorithms when large scale dynamic networks are considered.
机译:在这项工作中,提出了一种新的用于大规模网络的快速动态社区检测算法。先前的大多数社区检测算法都是为静态网络设计的。但是,大型社交网络是动态的,并且会随着时间的推移而不断发展。为了快速检测动态大型网络中的社区,我们提出了动态模块化优化器框架(DMO),该框架是通过修改众所周知的基于静态模块化的社区检测算法而构建的。使用几个不同的数据集对提出的框架进行了测试。根据我们的结果,当考虑大规模动态网络时,所提出的框架中的社区检测算法的性能要优于静态算法。

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