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LazyGNN: Large-Scale Graph Neural Networks via Lazy Propagation

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arxiv 2302.01503 v2 pith:YDNAVTSP submitted 2023-02-03 cs.LG

LazyGNN: Large-Scale Graph Neural Networks via Lazy Propagation

classification cs.LG
keywords lazygnndeepergraphgraphslarge-scaledemonstratedependencygnns
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent works have demonstrated the benefits of capturing long-distance dependency in graphs by deeper graph neural networks (GNNs). But deeper GNNs suffer from the long-lasting scalability challenge due to the neighborhood explosion problem in large-scale graphs. In this work, we propose to capture long-distance dependency in graphs by shallower models instead of deeper models, which leads to a much more efficient model, LazyGNN, for graph representation learning. Moreover, we demonstrate that LazyGNN is compatible with existing scalable approaches (such as sampling methods) for further accelerations through the development of mini-batch LazyGNN. Comprehensive experiments demonstrate its superior prediction performance and scalability on large-scale benchmarks. The implementation of LazyGNN is available at https://github.com/RXPHD/Lazy_GNN.

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