Konsep Inti
This research paper introduces a novel Smoothness Control Term (SCT) for Graph Convolutional Networks (GCNs) to regulate the smoothness of node features, thereby enhancing node classification accuracy.
Statistik
The accuracy of GCN-SCT on the Cora dataset with 2 layers is 82.9%, compared to 81.1% for the baseline GCN.
GCNII-SCT achieves an accuracy of 85.5% on the Cora dataset with 32 layers, surpassing the baseline GCNII's accuracy of 85.4%.
EGNN-SCT with 4 layers achieves an accuracy of 84.5% on the Citeseer dataset, outperforming the baseline EGNN's accuracy of 71.9%.