HyperAI超神经

Graph Property Prediction On Ogbg Ppa

评估指标

Ext. data
Number of params
Test Accuracy
Validation Accuracy

评测结果

各个模型在此基准测试上的表现结果

模型名称
Ext. data
Number of params
Test Accuracy
Validation Accuracy
Paper TitleRepository
ExpCNo13693970.7976 ± 0.00720.7518 ± 0.0080Breaking the Expressive Bottlenecks of Graph Neural Networks
GCNNo4794370.6839 ± 0.00840.6497 ± 0.0034Semi-Supervised Classification with Graph Convolutional Networks
GatedGCN+No55475570.8258 ± 0.00550.7815 ± 0.0043Unlocking the Potential of Classic GNNs for Graph-level Tasks: Simple Architectures Meet Excellence
GCN+No55496050.8077 ± 0.00410.7586 ± 0.0032Unlocking the Potential of Classic GNNs for Graph-level Tasks: Simple Architectures Meet Excellence
GC-T+MCL(6.0)No40067040.7432 ± 0.00330.6989 ± 0.0037--
DeeperGCNNo23364210.7712 ± 0.00710.7313 ± 0.0078DeeperGCN: All You Need to Train Deeper GCNs
GIN+virtual nodeNo32880420.7037 ± 0.01070.6678 ± 0.0105How Powerful are Graph Neural Networks?
DeeperGCN+FLAGNo23364210.7752 ± 0.00690.7484 ± 0.0052Robust Optimization as Data Augmentation for Large-scale Graphs-
GIN+FLAGNo18369420.6905 ± 0.00920.6465 ± 0.0070Robust Optimization as Data Augmentation for Large-scale Graphs-
PAS+F2GNNNo163461660.8201 ± 0.00190.7720 ± 0.0023--
GIN+No81736050.8107 ± 0.00530.7786 ± 0.0095Unlocking the Potential of Classic GNNs for Graph-level Tasks: Simple Architectures Meet Excellence
PASNo37171600.7828 ± 0.00240.7523 ± 0.0028--
GCN+virtual node+FLAGNo19305370.6944 ± 0.00520.6638 ± 0.0055Robust Optimization as Data Augmentation for Large-scale Graphs-
GIN+virtual node+FLAGNo32880420.7245 ± 0.01140.6789 ± 0.0079Robust Optimization as Data Augmentation for Large-scale Graphs-
GINNo18369420.6892 ± 0.01000.6562 ± 0.0107How Powerful are Graph Neural Networks?
ExpC*+bag of tricksNo37586420.8140 ± 0.00280.7811 ± 0.0012--
GCN+virtual nodeNo19305370.6857 ± 0.00610.6511 ± 0.0048Semi-Supervised Classification with Graph Convolutional Networks
GPSNo34345330.80150.7556 ± 0.0027Recipe for a General, Powerful, Scalable Graph Transformer
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