论文标题
探索节点分类的边缘分离
Exploring Edge Disentanglement for Node Classification
论文作者
论文摘要
实际图中的边缘通常由多种因素形成,并具有多种关系语义。例如,社交网络中的联系可能表明友谊,是同事或住在同一社区。但是,由于数据收集和图形过程,这些潜在因素通常被隐藏在仅在边缘存在的后面。尽管这些年来,尽管在图形学习方面有快速的发展,但大多数模型都采用了整体方法,并将所有边缘视为平等。解开边缘的一个主要困难是缺乏明确的监督。在这项工作中,通过仔细检查边缘模式,我们提出了三种启发式方法,并设计了三个相应的借口任务,以指导自动边缘分离。具体而言,这些自我实施任务是在设计的边缘拆卸模块上执行的,该模块将与下游节点分类任务共同训练,以鼓励自动边缘脱离。预期拆卸模块的渠道有望捕获可区分的关系和邻居相互作用,并且它们的输出汇总为节点表示。拟议的Disgnn很容易与各种神经体系结构合并,我们对$ 6 $现实世界数据集进行了实验。经验结果表明,它可以实现显着的绩效提高。
Edges in real-world graphs are typically formed by a variety of factors and carry diverse relation semantics. For example, connections in a social network could indicate friendship, being colleagues, or living in the same neighborhood. However, these latent factors are usually concealed behind mere edge existence due to the data collection and graph formation processes. Despite rapid developments in graph learning over these years, most models take a holistic approach and treat all edges as equal. One major difficulty in disentangling edges is the lack of explicit supervisions. In this work, with close examination of edge patterns, we propose three heuristics and design three corresponding pretext tasks to guide the automatic edge disentanglement. Concretely, these self-supervision tasks are enforced on a designed edge disentanglement module to be trained jointly with the downstream node classification task to encourage automatic edge disentanglement. Channels of the disentanglement module are expected to capture distinguishable relations and neighborhood interactions, and outputs from them are aggregated as node representations. The proposed DisGNN is easy to be incorporated with various neural architectures, and we conduct experiments on $6$ real-world datasets. Empirical results show that it can achieve significant performance gains.