Graph Classification On Re M5K
评估指标
Accuracy
评测结果
各个模型在此基准测试上的表现结果
| Paper Title | Repository | ||
|---|---|---|---|
| GIN-0 | 57.5% | How Powerful are Graph Neural Networks? | |
| GAT-GC (f-Scaled) | 57.22% | Improving Attention Mechanism in Graph Neural Networks via Cardinality Preservation | |
| WEGL | 55.1% | Wasserstein Embedding for Graph Learning | |
| CapsGNN | 52.88% | Capsule Graph Neural Network | - |
| 2D CNN | 52.11% | Graph Classification with 2D Convolutional Neural Networks | - |
| GFN-light | 49.75% | Are Powerful Graph Neural Nets Necessary? A Dissection on Graph Classification | |
| GFN | 49.43% | Are Powerful Graph Neural Nets Necessary? A Dissection on Graph Classification | |
| DGK | 41.27% | Deep Graph Kernels | - |
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