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Graph Attention Multi-Layer Perceptron

Wentao Zhang, Ziqi Yin, Zeang Sheng, Yang Li, Wen Ouyang, Xiao‐Sen Li, Yangyu Tao, Zhi Yang, Bin Cui

2022Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining102 citationsDOIOpen Access PDF

Abstract

Graph neural networks (GNNs) have achieved great success in many graph-based applications. However, the enormous size and high sparsity level of graphs hinder their applications under industrial scenarios. Although some scalable GNNs are proposed for large-scale graphs, they adopt a fixed K-hop neighborhood for each node, thus facing the over-smoothing issue when adopting large propagation depths for nodes within sparse regions. To tackle the above issue, we propose a new GNN architecture --- Graph Attention Multi-Layer Perceptron (GAMLP), which can capture the underlying correlations between different scales of graph knowledge. We have deployed GAMLP in Tencent with the Angel platform, and we further evaluate GAMLP on both real-world datasets and large-scale industrial datasets. Extensive experiments on these 14 graph datasets demonstrate that GAMLP achieves state-of-the-art performance while enjoying high scalability and efficiency. Specifically, it outperforms GAT by 1.3% regarding predictive accuracy on our large-scale Tencent Video dataset while achieving up to 50x training speedup. Besides, it ranks top-1 on both the leaderboards of the largest homogeneous and heterogeneous graph (i.e., ogbn-papers100M and ogbn-mag) of Open Graph Benchmark.

Topics & Concepts

Computer scienceScalabilitySpeedupAttention networkGraphPerceptronSmoothingHomogeneousTheoretical computer scienceArtificial intelligenceMachine learningData miningArtificial neural networkParallel computingDatabaseThermodynamicsComputer visionPhysicsAdvanced Graph Neural NetworksGraph Theory and AlgorithmsComplex Network Analysis Techniques