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Papers/Graph Transformer Networks

Graph Transformer Networks

Seongjun Yun, Minbyul Jeong, Raehyun Kim, Jaewoo Kang, Hyunwoo J. Kim

2019-11-06NeurIPS 2019 12Representation LearningHeterogeneous Node ClassificationNode ClassificationGeneral ClassificationLink Prediction
PaperPDFCode(official)

Abstract

Graph neural networks (GNNs) have been widely used in representation learning on graphs and achieved state-of-the-art performance in tasks such as node classification and link prediction. However, most existing GNNs are designed to learn node representations on the fixed and homogeneous graphs. The limitations especially become problematic when learning representations on a misspecified graph or a heterogeneous graph that consists of various types of nodes and edges. In this paper, we propose Graph Transformer Networks (GTNs) that are capable of generating new graph structures, which involve identifying useful connections between unconnected nodes on the original graph, while learning effective node representation on the new graphs in an end-to-end fashion. Graph Transformer layer, a core layer of GTNs, learns a soft selection of edge types and composite relations for generating useful multi-hop connections so-called meta-paths. Our experiments show that GTNs learn new graph structures, based on data and tasks without domain knowledge, and yield powerful node representation via convolution on the new graphs. Without domain-specific graph preprocessing, GTNs achieved the best performance in all three benchmark node classification tasks against the state-of-the-art methods that require pre-defined meta-paths from domain knowledge.

Results

TaskDatasetMetricValueModel
Node ClassificationIMDB (Heterogeneous Node Classification) Macro-F160.47GTN
Node ClassificationIMDB (Heterogeneous Node Classification)Micro-F165.14GTN
Node ClassificationDBLP (Heterogeneous Node Classification) Macro-F193.52GTN
Node ClassificationDBLP (Heterogeneous Node Classification)Micro-F193.97GTN
Node ClassificationACM (Heterogeneous Node Classification) Macro-F191.31GTN
Node ClassificationACM (Heterogeneous Node Classification)Micro-F191.2GTN

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