HyperAI

Graph Property Prediction On Ogbg Ppa

Metrics

Ext. data
Number of params
Test Accuracy
Validation Accuracy

Results

Performance results of various models on this benchmark

Comparison Table
Model NameExt. dataNumber of paramsTest AccuracyValidation Accuracy
breaking-the-expressive-bottlenecks-of-graph-1No13693970.7976 ± 0.00720.7518 ± 0.0080
semi-supervised-classification-with-graphNo4794370.6839 ± 0.00840.6497 ± 0.0034
unlocking-the-potential-of-classic-gnns-forNo55475570.8258 ± 0.00550.7815 ± 0.0043
unlocking-the-potential-of-classic-gnns-forNo55496050.8077 ± 0.00410.7586 ± 0.0032
Model 5No40067040.7432 ± 0.00330.6989 ± 0.0037
deepergcn-all-you-need-to-train-deeper-gcnsNo23364210.7712 ± 0.00710.7313 ± 0.0078
how-powerful-are-graph-neural-networksNo32880420.7037 ± 0.01070.6678 ± 0.0105
flag-adversarial-data-augmentation-for-graph-1No23364210.7752 ± 0.00690.7484 ± 0.0052
flag-adversarial-data-augmentation-for-graph-1No18369420.6905 ± 0.00920.6465 ± 0.0070
Model 10No163461660.8201 ± 0.00190.7720 ± 0.0023
unlocking-the-potential-of-classic-gnns-forNo81736050.8107 ± 0.00530.7786 ± 0.0095
Model 12No37171600.7828 ± 0.00240.7523 ± 0.0028
flag-adversarial-data-augmentation-for-graph-1No19305370.6944 ± 0.00520.6638 ± 0.0055
flag-adversarial-data-augmentation-for-graph-1No32880420.7245 ± 0.01140.6789 ± 0.0079
how-powerful-are-graph-neural-networksNo18369420.6892 ± 0.01000.6562 ± 0.0107
Model 16No37586420.8140 ± 0.00280.7811 ± 0.0012
semi-supervised-classification-with-graphNo19305370.6857 ± 0.00610.6511 ± 0.0048
recipe-for-a-general-powerful-scalable-graphNo34345330.80150.7556 ± 0.0027