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Density-based rough set model for hesitant node clustering in overlapping community detection

机译:基于密度的粗糙集模型在重叠社区检测中的犹豫节点聚类

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摘要

Overlapping community detection in a network is a challenging issue which attracts lots of attention in recent years. A notion of hesitant node (HN) is proposed. An HN contacts with multiple communities while the communications are not strong or even accidental, thus the HN holds an implicit community structure. However, HNs are not rare in the real world network. It is important to identify them because they can be efficient hubs which form the overlapping portions of communities or simple attached nodes to some communities. Current approaches have difficulties in identifying and clustering HNs. A density-based rough set model (DBRSM) is proposed by combining the virtue of density-based algorithms and rough set models. It incorporates the macro perspective of the community structure of the whole network and the micro perspective of the local information held by HNs, which would facilitate the further 'growth' of HNs in community. We offer a theoretical support for this model from the point of strength of the trust path. The experiments on the real-world and synthetic datasets show the practical significance of analyzing and clustering the HNs based on DBRSM. Besides, the clustering based on DBRSM promotes the modularity optimization.
机译:网络中社区检测的重叠是一个具有挑战性的问题,近年来引起了很多关注。提出了犹豫节点(HN)的概念。一个HN与多个社区进行联系,而交流并不强烈甚至是偶然的,因此HN具有隐式的社区结构。但是,HN在现实世界的网络中并不罕见。识别它们很重要,因为它们可以是有效的集线器,它们形成社区的重叠部分或某些社区的简单连接节点。当前的方法在识别和聚类HN方面存在困难。通过结合基于密度的算法和粗糙集模型的优点,提出了基于密度的粗糙集模型(DBRSM)。它融合了整个网络社区结构的宏观视角和家庭网民所拥有的本地信息的微观视角,这将有助于社区网民进一步“成长”。从信任路径的强弱出发,我们为该模型提供理论支持。对真实数据集和合成数据集的实验表明,基于DBRSM的HN的分析和聚类具有实际意义。此外,基于DBRSM的集群促进了模块的优化。

著录项

  • 作者

    Wang, J; Peng, J; Liu, O;

  • 作者单位
  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 en
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