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Towards Democratic Group Detection in Complex Networks

机译:走向复杂网络中的民主群体检测

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To detect groups in networks is an interesting problem with applications in social and security analysis. Many large networks lack a global community organization. In these cases, traditional partitioning algorithms fail to detect a hidden modular structure, assuming a global modular organization. We define a prototype for a simple local-first approach to community discovery, namely the democratic vote of each node for the communities in its ego neighborhood. We create a preliminary test of this intuition against the state-of-the-art community discovery methods, and find that our new method outperforms them in the quality of the obtained groups, evaluated using metadata of two real world networks. We give also the intuition of the incremental nature and the limited time complexity of the proposed algorithm.
机译:在社交和安全分析中,检测网络中的组是一个有趣的问题。许多大型网络缺乏全球社区组织。在这些情况下,假设采用全局模块化组织,传统的分区算法将无法检测到隐藏的模块化结构。我们为社区发现的简单本地优先方法定义了一个原型,即,每个节点对其自我社区中社区的民主投票。我们使用最新的社区发现方法对这种直觉进行了初步测试,发现我们的新方法在使用两个真实世界网络的元数据进行评估的情况下,在获得的群体的质量方面优于他们。我们还给出了所提算法的增量性质和有限的时间复杂度的直觉。

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