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Semi-Supervised Community Detection via Constraint Matrix Construction and Active Node Selection

机译:通过约束矩阵构造和主动节点选择半监督群落检测

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摘要

Identification of community structures is essential for characterizing and analyzing complex networks. Having focusing primarily on network topological structures, most existing methods for community detection ignore two types of non-topological relationships among nodes, i.e., pairwise & x201C;must-link& x201D; constraints among pairs of nodes and labels of nodes, such as functions they may have. Here, we present a novel semi-supervised and active learning method for community detection to integrate these two types of information of a network so as to increase the accuracy of community identification. Our new method will honor the & x201C;must-link& x201D; relationship without introducing new parameters and is efficient with a guaranteed convergence. An essential component of the method is a linear representation that is particularly suited to an active learning to help select the most critical nodes that impact community discovery. We present results from extensive experiments on synthetic and real networks to show the superior performance of the new methods over the existing approaches.
机译:社区结构的识别对于表征和分析复杂网络至关重要。主要关注网络拓扑结构,大多数现有的社区检测方法忽略了节点之间的两种类型的非拓扑关系,即,成对&X201C;必须 - 链接&x201d;节点成对的约束和节点的标签,例如它们可能具有的功能。这里,我们提出了一种用于社区检测的新型半监督和主动学习方法,以集成网络的这两种类型的信息,以提高社区识别的准确性。我们的新方法将尊重&x201c;必须 - 链接和x201d;在不引入新参数的情况下的关系,具有保证融合的高效。该方法的基本组件是一种线性表示,其特别适合于主动学习,以帮助选择影响社区发现的最关键的节点。我们提出了对综合和真实网络的广泛实验的结果,以显示出对现有方法的新方法的卓越性能。

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