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利用图神经网络中数据增强的集体结构知识。

Harnessing collective structure knowledge in data augmentation for graph neural networks.

机构信息

Faculty of Engineering and Information Technology, University of Technology Sydney, 123 Broadway, Sydney, 2007, NSW, Australia.

School of Computing and Information Systems, Singapore Management University, 80 Stamford Rd, 178902, Singapore.

出版信息

Neural Netw. 2024 Dec;180:106651. doi: 10.1016/j.neunet.2024.106651. Epub 2024 Aug 23.

Abstract

Graph neural networks (GNNs) have achieved state-of-the-art performance in graph representation learning. Message passing neural networks, which learn representations through recursively aggregating information from each node and its neighbors, are among the most commonly-used GNNs. However, a wealth of structural information of individual nodes and full graphs is often ignored in such process, which restricts the expressive power of GNNs. Various graph data augmentation methods that enable the message passing with richer structure knowledge have been introduced as one main way to tackle this issue, but they are often focused on individual structure features and difficult to scale up with more structure features. In this work we propose a novel approach, namely collective structure knowledge-augmented graph neural network (CoS-GNN), in which a new message passing method is introduced to allow GNNs to harness a diverse set of node- and graph-level structure features, together with original node features/attributes, in augmented graphs. In doing so, our approach largely improves the structural knowledge modeling of GNNs in both node and graph levels, resulting in substantially improved graph representations. This is justified by extensive empirical results where CoS-GNN outperforms state-of-the-art models in various graph-level learning tasks, including graph classification, anomaly detection, and out-of-distribution generalization.

摘要

图神经网络 (GNNs) 在图表示学习方面取得了最先进的性能。消息传递神经网络是最常用的 GNN 之一,它通过从每个节点及其邻居递归地聚合信息来学习表示。然而,在这个过程中,个体节点和整个图的大量结构信息往往被忽略,这限制了 GNN 的表达能力。各种使消息传递具有更丰富结构知识的图数据增强方法被引入作为解决这个问题的主要方法之一,但它们通常侧重于单个结构特征,并且难以扩展到更多的结构特征。在这项工作中,我们提出了一种新的方法,即集体结构知识增强图神经网络 (CoS-GNN),其中引入了一种新的消息传递方法,允许 GNN 利用各种节点和图级结构特征,以及原始节点特征/属性,在增强图中。这样,我们的方法在节点和图两个层面上极大地提高了 GNN 的结构知识建模能力,从而大大改善了图表示。这一点通过广泛的经验结果得到了证明,在各种图级学习任务中,包括图分类、异常检测和分布外泛化,CoS-GNN 都优于最先进的模型。

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