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Detection of local community structures in complex dynamic networks with random walks

机译:具有随机游走的复杂动态网络中本地社区结构的检测

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摘要

Identification of interaction patterns in complex networks via community structures has gathered a lot of attention in recent research studies. Local community structures provide a better measure to understand and visualise the nature of interaction when the global knowledge of networks is unknown. Recent research on local community structures, however, lacks the feature to adjust itself in the dynamic networks and heavily depends on the source vertex position. In this study the authors propose a novel approach to identify local communities based on iterative agglomeration and local optimisation. The proposed solution has two significant improvements: (i) in each iteration, agglomeration strengthens the local community measure by selecting the best possible set of vertices, and (ii) the proposed vertex and community rank criterion are suitable for the dynamic networks where the interactions among vertices may change over time. In order to evaluate the proposed algorithm, extensive experiments and benchmarking on computer generated networks as well as real-world social and biological networks have been conducted. The experiment results reflect that the proposed algorithm can identify local communities, irrespective of the source vertex position, with more than 92% accuracy in the synthetic as well as in the real-world networks.
机译:在最近的研究中,通过社区结构识别复杂网络中的交互模式引起了很多关注。当网络的全球知识未知时,本地社区结构可提供更好的措施来理解和可视化交互的性质。但是,最近对本地社区结构的研究缺乏在动态网络中进行自我调整的功能,并且很大程度上取决于源顶点的位置。在这项研究中,作者提出了一种基于迭代集聚和局部优化来识别局部社区的新颖方法。所提出的解决方案有两个重大改进:(i)在每次迭代中,通过选择最佳的顶点集,团聚可增强局部社区度量;(ii)所提出的顶点和社区等级标准适用于相互作用相互作用的动态网络顶点之间可能会随时间变化。为了评估提出的算法,已经对计算机生成的网络以及现实世界的社会和生物网络进行了广泛的实验和基准测试。实验结果表明,该算法可以识别本地社区,而与源顶点位置无关,在合成网络和实际网络中的准确性均超过92%。

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  • 来源
    《IEE Proceedings》 |2009年第4期|266-278|共13页
  • 作者单位

    CISE, University of Florida, Gainesville, FL, USA;

    CISE, University of Florida, Gainesville, FL, USA;

    CISE, University of Florida, Gainesville, FL, USA;

    CISE, University of Florida, Gainesville, FL, USA;

    CAS-MPG Partner Institute for Computational Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai, People's Republic of China;

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