论文标题

CGC:用于社区检测和跟踪的对比度图聚类

CGC: Contrastive Graph Clustering for Community Detection and Tracking

论文作者

Park, Namyong, Rossi, Ryan, Koh, Eunyee, Burhanuddin, Iftikhar Ahamath, Kim, Sungchul, Du, Fan, Ahmed, Nesreen, Faloutsos, Christos

论文摘要

给定实体及其在Web数据中可能发生的网络数据中的交互,我们如何找到实体社区并跟踪其进化?在本文中,我们从图形聚类的角度处理了这项重要任务。最近,通过深层聚类方法,已经实现了各个领域的最新聚类性能。特别是,深图聚类(DGC)方法已通过学习节点表示和群集分配成功地将深层聚类扩展到图形结构化数据。尽管建模选择(例如编码器架构)的建模有所不同,但现有的DGC方法主要基于自动编码器,并使用相同的聚类目标和相对较小的适应性。同样,尽管许多现实世界图都是动态的,但以前的DGC方法仅被视为静态图。在这项工作中,我们开发了CGC,这是一个新颖的图形聚类端到端框架,与现有方法的根本不同。 CGC在对比度图学习框架中学习节点嵌入和群集分配,在多层方案中仔细选择了正面和负样本,以反映层次结构的社区结构和网络同质。此外,我们将CGC扩展到时间不断发展的数据,其中时间图以增量学习方式执行,并具有检测变化点的能力。对现实世界图的广泛评估表明,所提出的CGC始终优于现有方法。

Given entities and their interactions in the web data, which may have occurred at different time, how can we find communities of entities and track their evolution? In this paper, we approach this important task from graph clustering perspective. Recently, state-of-the-art clustering performance in various domains has been achieved by deep clustering methods. Especially, deep graph clustering (DGC) methods have successfully extended deep clustering to graph-structured data by learning node representations and cluster assignments in a joint optimization framework. Despite some differences in modeling choices (e.g., encoder architectures), existing DGC methods are mainly based on autoencoders and use the same clustering objective with relatively minor adaptations. Also, while many real-world graphs are dynamic, previous DGC methods considered only static graphs. In this work, we develop CGC, a novel end-to-end framework for graph clustering, which fundamentally differs from existing methods. CGC learns node embeddings and cluster assignments in a contrastive graph learning framework, where positive and negative samples are carefully selected in a multi-level scheme such that they reflect hierarchical community structures and network homophily. Also, we extend CGC for time-evolving data, where temporal graph clustering is performed in an incremental learning fashion, with the ability to detect change points. Extensive evaluation on real-world graphs demonstrates that the proposed CGC consistently outperforms existing methods.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源