Graph Classification On Ptc
Métriques
Accuracy
Résultats
Résultats de performance de divers modèles sur ce benchmark
Tableau comparatif
Nom du modèle | Accuracy |
---|---|
unsupervised-universal-self-attention-network | 91.81% |
unsupervised-universal-self-attention-network | 69.63% |
towards-a-practical-k-dimensional-weisfeiler | 62.70% |
discriminative-graph-autoencoder | 71.24% |
wasserstein-weisfeiler-lehman-graph-kernels | 66.31% |
dgcnn-disordered-graph-convolutional-neural | 65.43% |
subgraph-networks-with-application-to | 65.88% |
template-based-graph-neural-network-with | 72.4% |
ddgk-learning-graph-representations-for-deep | 63.14% |
190910086 | 74.7% |
unsupervised-inductive-whole-graph-embedding | 72.54% |
improving-spectral-graph-convolution-for | 68.05% |
spi-gcn-a-simple-permutation-invariant-graph | 56.41% |
a-simple-baseline-algorithm-for-graph | 62.8% |
graph-trees-with-attention | 59.1% |
graph-isomorphism-unet | 85.7% |
graph-representation-learning-via-hard-and | 63.53% |
graph2vec-learning-distributed | 60.17% ± 6.86% |
cell-attention-networks | 72.8% |
cin-enhancing-topological-message-passing | 73.2% |
capsule-neural-networks-for-graph | 69% |
dagcn-dual-attention-graph-convolutional | 62.88% |
segmented-graph-bert-for-graph-instance | 68.86% |
graph-representation-learning-via-hard-and | 65.02% |
how-powerful-are-graph-neural-networks | 64.40% |
isonn-isomorphic-neural-network-for-graph | 59.9% |
neighborhood-enlargement-in-graph-neural | 73.56% |
gaussian-induced-convolution-for-graphs | 77.64% |
infograph-unsupervised-and-semi-supervised | 61.65 |
when-work-matters-transforming-classical | 73.24% |
dropgnn-random-dropouts-increase-the | 66.3% |
a-simple-yet-effective-baseline-for-non | 61.7% |
provably-powerful-graph-networks | 66.17% |
learning-convolutional-neural-networks-for | 60.00% |
wasserstein-embedding-for-graph-learning | 67.5% |
unsupervised-inductive-whole-graph-embedding | 73.56% |
graph-representation-learning-via-hard-and | 62.94% |