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Attributed Graph Clustering with Unimodal Normalized Cut

机译:单峰归一化割的属性图聚类

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摘要

Graph vertices are often associated with attributes. For example, in addition to their connection relations, people in friendship networks have personal attributes, such as interests, age, and residence. Such graphs (networks) are called attributed graphs. The detection of clusters in attributed graphs is of great practical relevance, e.g., targeting ads. Attributes and edges often provide complementary information. The effective use of both types of information promises meaningful results. In this work, we propose a method called UNCut (for Unimodal Normalized Cut) to detect cohesive clusters in attributed graphs. A cohesive cluster is a subgraph that has densely connected edges and has as many homogeneous (unimodal) attributes as possible. We adopt the normalized cut to assess the density of edges in a graph cluster. To evaluate the unimodality of attributes, we propose a measure called uni-modality compactness which exploits Hartigans' dip test. Our method UNCut integrates the normalized cut and unimodality compactness in one framework such that the detected clusters have low normalized cut and unimodality compactness values. Extensive experiments on various synthetic and real-world data verify the effectiveness and efficiency of our method UNCut compared with state-of-the-art approaches. Code and data related to this chapter are available at: https://www.dropbox. com/sh/xz2ndx65jai6num/AAC9RJ5PqQoYoxreItW83PrLa?dl=0.
机译:图顶点通常与属性相关联。例如,除了人际关系之外,友谊网络中的人还具有个人属性,例如兴趣,年龄和居住地。这样的图(网络)称为属性图。在属性图中检测聚类具有很大的实际意义,例如,定位广告。属性和边缘通常提供补充信息。有效使用两种类型的信息有望带来有意义的结果。在这项工作中,我们提出了一种称为UNCut的方法(用于单峰归一化剪切),用于检测属性图中的凝聚聚类。凝聚聚类是具有紧密相连的边并且具有尽可能多的同质(单峰)属性的子图。我们采用归一化切割来评估图簇中边缘的密度。为了评估属性的单峰性,我们提出了一种利用Hartigans倾角测试的单峰紧凑性度量。我们的方法UNCut将归一化切割和单峰紧密度集成在一个框架中,这样检测到的簇具有较低的归一化切割和单峰紧密度值。与最先进的方法相比,对各种合成数据和现实世界数据进行的大量实验证明了我们方法UNCut的有效性和效率。与本章相关的代码和数据可在以下网址获得:https://www.dropbox。 com / sh / xz2ndx65jai6num / AAC9RJ5PqQoYoxreItW83PrLa?dl = 0。

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