LGOct 25, 2021

Gophormer: Ego-Graph Transformer for Node Classification

arXiv:2110.13094v198 citations
Originality Incremental advance
AI Analysis

This addresses scalability and data insufficiency problems in graph mining for researchers and practitioners, though it is an incremental improvement over existing graph transformer methods.

The paper tackles the poor performance and scalability issues of graph transformers in node classification by proposing Gophormer, which applies transformers to ego-graphs, achieving superior results over existing graph transformers and GNNs on six benchmark datasets.

Transformers have achieved remarkable performance in a myriad of fields including natural language processing and computer vision. However, when it comes to the graph mining area, where graph neural network (GNN) has been the dominant paradigm, transformers haven't achieved competitive performance, especially on the node classification task. Existing graph transformer models typically adopt fully-connected attention mechanism on the whole input graph and thus suffer from severe scalability issues and are intractable to train in data insufficient cases. To alleviate these issues, we propose a novel Gophormer model which applies transformers on ego-graphs instead of full-graphs. Specifically, Node2Seq module is proposed to sample ego-graphs as the input of transformers, which alleviates the challenge of scalability and serves as an effective data augmentation technique to boost model performance. Moreover, different from the feature-based attention strategy in vanilla transformers, we propose a proximity-enhanced attention mechanism to capture the fine-grained structural bias. In order to handle the uncertainty introduced by the ego-graph sampling, we further propose a consistency regularization and a multi-sample inference strategy for stabilized training and testing, respectively. Extensive experiments on six benchmark datasets are conducted to demonstrate the superiority of Gophormer over existing graph transformers and popular GNNs, revealing the promising future of graph transformers.

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