How to Find Your Friendly Neighborhood: Graph Attention Design with Self-Supervision

ICLR 2021  ·  Dongkwan Kim, Alice Oh ·

Attention mechanism in graph neural networks is designed to assign larger weights to important neighbor nodes for better representation. However, what graph attention learns is not understood well, particularly when graphs are noisy. In this paper, we propose a self-supervised graph attention network (SuperGAT), an improved graph attention model for noisy graphs. Specifically, we exploit two attention forms compatible with a self-supervised task to predict edges, whose presence and absence contain the inherent information about the importance of the relationships between nodes. By encoding edges, SuperGAT learns more expressive attention in distinguishing mislinked neighbors. We find two graph characteristics influence the effectiveness of attention forms and self-supervision: homophily and average degree. Thus, our recipe provides guidance on which attention design to use when those two graph characteristics are known. Our experiment on 17 real-world datasets demonstrates that our recipe generalizes across 15 datasets of them, and our models designed by recipe show improved performance over baselines.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Node Classification CiteSeer with Public Split: fixed 20 nodes per class SuperGAT MX Accuracy 72.6% # 25
Node Classification Cora with Public Split: fixed 20 nodes per class SuperGAT MX Accuracy 84.3% # 9
Node Classification PubMed with Public Split: fixed 20 nodes per class SuperGAT MX Accuracy 81.7% # 6

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