论文标题

将用户的偏好纳入归因图集群

Incorporating User's Preference into Attributed Graph Clustering

论文作者

Ye, Wei, Mautz, Dominik, Boehm, Christian, Singh, Ambuj, Plant, Claudia

论文摘要

图形群集已在普通图和属性图上进行了广泛的研究。但是,所有这些方法都需要分区整个图以查找群集结构。有时,基于域知识,人们可能会有有关图中特定目标区域的信息,而只想找到一个集中在该局部区域的群集。这样的任务称为本地聚类。与全局聚类相反,局部聚类旨在仅找到一个集中在给定的种子顶点(以及属性图的指定属性)上的群集。当前,很少有方法可以处理这种任务。为此,我们为局部群集提出了两种质量措施:图单形态性(GU)和属性单形态性(AU)。前者测量图结构的同质性,而后者测量由指定属性组成的子空间的均匀性。我们称它们的线性组合为紧凑。此外,我们提出LEGLU以优化紧凑度得分。 LEGLU检测到的局部群集集中于感兴趣的区域,在图表中提供了有效的信息流,并在指定属性的子空间中显示了单峰数据分布。

Graph clustering has been studied extensively on both plain graphs and attributed graphs. However, all these methods need to partition the whole graph to find cluster structures. Sometimes, based on domain knowledge, people may have information about a specific target region in the graph and only want to find a single cluster concentrated on this local region. Such a task is called local clustering. In contrast to global clustering, local clustering aims to find only one cluster that is concentrating on the given seed vertex (and also on the designated attributes for attributed graphs). Currently, very few methods can deal with this kind of task. To this end, we propose two quality measures for a local cluster: Graph Unimodality (GU) and Attribute Unimodality (AU). The former measures the homogeneity of the graph structure while the latter measures the homogeneity of the subspace that is composed of the designated attributes. We call their linear combination as Compactness. Further, we propose LOCLU to optimize the Compactness score. The local cluster detected by LOCLU concentrates on the region of interest, provides efficient information flow in the graph and exhibits a unimodal data distribution in the subspace of the designated attributes.

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