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Training Graph Neural Networks with 1000 Layers

About

Deep graph neural networks (GNNs) have achieved excellent results on various tasks on increasingly large graph datasets with millions of nodes and edges. However, memory complexity has become a major obstacle when training deep GNNs for practical applications due to the immense number of nodes, edges, and intermediate activations. To improve the scalability of GNNs, prior works propose smart graph sampling or partitioning strategies to train GNNs with a smaller set of nodes or sub-graphs. In this work, we study reversible connections, group convolutions, weight tying, and equilibrium models to advance the memory and parameter efficiency of GNNs. We find that reversible connections in combination with deep network architectures enable the training of overparameterized GNNs that significantly outperform existing methods on multiple datasets. Our models RevGNN-Deep (1001 layers with 80 channels each) and RevGNN-Wide (448 layers with 224 channels each) were both trained on a single commodity GPU and achieve an ROC-AUC of $87.74 \pm 0.13$ and $88.24 \pm 0.15$ on the ogbn-proteins dataset. To the best of our knowledge, RevGNN-Deep is the deepest GNN in the literature by one order of magnitude. Please visit our project website https://www.deepgcns.org/arch/gnn1000 for more information.

Guohao Li, Matthias M\"uller, Bernard Ghanem, Vladlen Koltun• 2021

Related benchmarks

TaskDatasetResultRank
Node ClassificationCora
Accuracy65.31
1215
Node ClassificationPubmed
Accuracy64.1
627
Node Classificationogbn-arxiv (test)
Accuracy76.15
497
Node ClassificationREDDIT
Accuracy90.39
216
Node ClassificationComputers
Mean Accuracy55.48
169
Node Classificationogbn-products (test)
Test Accuracy83.07
162
Node ClassificationFreebase
Macro F120.85
94
Node ClassificationProducts
Accuracy71.45
85
Node ClassificationMovies
Accuracy47.75
82
Node Classificationogbn-proteins (test)
ROC-AUC0.8824
62
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