HyperAI超神経

Graph Classification On Collab

評価指標

Accuracy

評価結果

このベンチマークにおける各モデルのパフォーマンス結果

比較表
モデル名Accuracy
dissecting-graph-neural-networks-on-graph81.34%
accurate-learning-of-graph-representations-180.74%
when-work-matters-transforming-classical83.16%
dgcnn-disordered-graph-convolutional-neural68.34%
an-end-to-end-deep-learning-architecture-for73.76%
neighborhood-enlargement-in-graph-neural80.71%
provably-powerful-graph-networks81.38%
fast-graph-representation-learning-with80.6%
a-fair-comparison-of-graph-neural-networks-173.9%
panda-expanded-width-aware-message-passing77.8%
panda-expanded-width-aware-message-passing71.4%
graph-representation-learning-via-hard-and77.48%
panda-expanded-width-aware-message-passing68.4%
graph-u-nets77.56%
a-non-negative-factorization-approach-to-node65.0%
diffwire-inductive-graph-rewiring-via-the69.87%
unsupervised-universal-self-attention-network95.62%
unsupervised-universal-self-attention-network77.84%
factorizable-graph-convolutional-networks81.2%
hierarchical-representation-learning-in-graph79.1%
dissecting-graph-neural-networks-on-graph81.50%
diffwire-inductive-graph-rewiring-via-the64.47%
graphmae-self-supervised-masked-graph80.32%
graph-classification-with-2d-convolutional71.76%
segmented-graph-bert-for-graph-instance78.42%
an-end-to-end-deep-learning-architecture-for69.45%
how-powerful-are-graph-neural-networks80.2%
panda-expanded-width-aware-message-passing75.11%
diffwire-inductive-graph-rewiring-via-the72.24%
hierarchical-graph-representation-learning75.48%
19091008684.20%
wasserstein-embedding-for-graph-learning79.8%
diffwire-inductive-graph-rewiring-via-the65.89%
maximum-entropy-weighted-independent-set79.66%
understanding-attention-in-graph-neural66.97%
deep-graph-kernels73.09%
capsule-graph-neural-network79.62%
template-based-graph-neural-network-with84.3%