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Community Distribution Outlier Detection in Heterogeneous Information Networks

机译:异构信息网络中的社区分布异常检测

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Heterogeneous networks are ubiquitous. For example, bibliographic data, social data, medical records, movie data and many more can be modeled as heterogeneous networks. Rich information associated with multi-typed nodes in heterogeneous networks motivates us to propose a new definition of outliers, which is different from those defined for homogeneous networks. In this paper, we propose the novel concept of Community Distribution Outliers (CDOutliers) for heterogeneous information networks, which are defined as objects whose community distribution does not follow any of the popular community distribution patterns. We extract such outliers using a type-aware joint analysis of multiple types of objects. Given community membership matrices for all types of objects, we follow an iterative two-stage approach which performs pattern discovery and outlier detection in a tightly integrated manner. We first propose a novel outlier-aware approach based on joint non-negative matrix factorization to discover popular community distribution patterns for all the object types in a holistic manner, and then detect outliers based on such patterns. Experimental results on both synthetic and real datasets show that the proposed approach is highly effective in discovering interesting community distribution outliers.
机译:异构网络无处不在。例如,书目数据,社会数据,病历,电影数据等可以建模为异构网络。与异构网络中多类型节点相关的丰富信息促使我们提出离群值的新定义,该定义不同于为同构网络定义的异常值。在本文中,我们提出了用于异构信息网络的社区分布异常值(CDOutliers)的新概念,该概念被定义为其社区分布不遵循任何流行的社区分布模式的对象。我们使用对多种类型对象的类型感知联合分析来提取此类离群值。给定所有类型对象的社区成员资格矩阵,我们遵循一种迭代的两阶段方法,该方法以紧密集成的方式执行模式发现和异常值检测。我们首先提出一种基于联合非负矩阵分解的新颖的离群值感知方法,以整体的方式发现所有对象类型的流行社区分布模式,然后基于这种模式检测离群值。在综合和真实数据集上的实验结果表明,该方法在发现有趣的社区分布异常值方面非常有效。

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