Journal of Computer Applications ›› 2026, Vol. 46 ›› Issue (5): 1370-1377.DOI: 10.11772/j.issn.1001-9081.2025050610
• Artificial intelligence • Previous Articles
Received:2025-06-04
Revised:2025-10-11
Accepted:2025-10-14
Online:2025-10-29
Published:2026-05-10
Contact:
Chaobo HE
About author:ZHENG Baoyuan, born in 2003, M. S. candidate. His research interests include graph data mining, graph neural networks.
Supported by:通讯作者:
贺超波
作者简介:郑宝源(2003—),男,广东揭阳人,硕士研究生,主要研究方向:图数据挖掘、图神经网络
基金资助:CLC Number:
Baoyuan ZHENG, Chaobo HE. Graph convolutional network enhanced by graph diffusion and dual-view feature learning[J]. Journal of Computer Applications, 2026, 46(5): 1370-1377.
郑宝源, 贺超波. 图扩散与双视图特征学习增强的图卷积网络[J]. 《计算机应用》唯一官方网站, 2026, 46(5): 1370-1377.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2025050610
Tab. 1 Dataset statistics?
| 模型 | Cora | PubMed | CiteSeer | ||||||
|---|---|---|---|---|---|---|---|---|---|
| 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | |
| GCN | 0.801 0 | 0.789 0 | 0.793 0 | 0.773 0 | 0.765 0 | 0.762 0 | 0.721 0 | 0.719 0 | 0.707 0 |
| GAT | 0.803 0 | 0.793 0 | 0.788 0 | 0.762 0 | 0.758 0 | 0.755 0 | 0.692 0 | 0.688 0 | 0.684 0 |
| APPNP | 0.827 0 | 0.825 0 | 0.816 0 | 0.802 0 | 0.793 0 | 0.796 0 | 0.715 0 | 0.709 0 | 0.697 0 |
| GDC | 0.827 0 | 0.821 0 | 0.824 0 | 0.794 0 | 0.792 0 | 0.798 0 | 0.721 0 | 0.728 0 | |
| ADC | 0.825 0 | 0.819 0 | 0.788 0 | 0.770 0 | 0.776 0 | 0.705 0 | 0.716 0 | 0.709 0 | |
| AGMixup | 0.824 0 | 0.826 0 | 0.822 0 | 0.798 0 | 0.795 0 | 0.789 0 | 0.712 0 | 0.717 0 | 0.715 0 |
| NLGT | 0.825 0 | 0.822 0 | 0.801 0 | 0.796 0 | 0.798 0 | 0.714 0 | 0.708 0 | 0.712 0 | |
| HiD-Net | 0.831 0 | 0.821 0 | 0.792 0 | 0.717 0 | |||||
| GCN-GDDV | 0.843 0 | 0.839 0 | 0.833 0 | 0.814 0 | 0.808 0 | 0.742 0 | 0.739 0 | 0.728 0 | |
Tab. 2 Classification performance comparison of different methods
| 模型 | Cora | PubMed | CiteSeer | ||||||
|---|---|---|---|---|---|---|---|---|---|
| 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | |
| GCN | 0.801 0 | 0.789 0 | 0.793 0 | 0.773 0 | 0.765 0 | 0.762 0 | 0.721 0 | 0.719 0 | 0.707 0 |
| GAT | 0.803 0 | 0.793 0 | 0.788 0 | 0.762 0 | 0.758 0 | 0.755 0 | 0.692 0 | 0.688 0 | 0.684 0 |
| APPNP | 0.827 0 | 0.825 0 | 0.816 0 | 0.802 0 | 0.793 0 | 0.796 0 | 0.715 0 | 0.709 0 | 0.697 0 |
| GDC | 0.827 0 | 0.821 0 | 0.824 0 | 0.794 0 | 0.792 0 | 0.798 0 | 0.721 0 | 0.728 0 | |
| ADC | 0.825 0 | 0.819 0 | 0.788 0 | 0.770 0 | 0.776 0 | 0.705 0 | 0.716 0 | 0.709 0 | |
| AGMixup | 0.824 0 | 0.826 0 | 0.822 0 | 0.798 0 | 0.795 0 | 0.789 0 | 0.712 0 | 0.717 0 | 0.715 0 |
| NLGT | 0.825 0 | 0.822 0 | 0.801 0 | 0.796 0 | 0.798 0 | 0.714 0 | 0.708 0 | 0.712 0 | |
| HiD-Net | 0.831 0 | 0.821 0 | 0.792 0 | 0.717 0 | |||||
| GCN-GDDV | 0.843 0 | 0.839 0 | 0.833 0 | 0.814 0 | 0.808 0 | 0.742 0 | 0.739 0 | 0.728 0 | |
| 数据集 | w/oDADM | w/oAM | GCN-GDDV | ||||||
|---|---|---|---|---|---|---|---|---|---|
| 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | |
| Cora | 0.822 0 | 0.816 0 | 0.809 0 | 0.825 0 | 0.820 0 | 0.814 0 | 0.843 0 | 0.839 0 | 0.833 0 |
| PubMed | 0.799 0 | 0.786 0 | 0.778 0 | 0.793 0 | 0.781 0 | 0.773 0 | 0.814 0 | 0.808 0 | 0.796 0 |
| CiteSeer | 0.712 0 | 0.693 0 | 0.681 0 | 0.697 0 | 0.685 0 | 0.672 0 | 0.742 0 | 0.739 0 | 0.728 0 |
Tab. 3 Ablation study results?
| 数据集 | w/oDADM | w/oAM | GCN-GDDV | ||||||
|---|---|---|---|---|---|---|---|---|---|
| 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | 准确率 | Macro-F1 | Micro-F1 | |
| Cora | 0.822 0 | 0.816 0 | 0.809 0 | 0.825 0 | 0.820 0 | 0.814 0 | 0.843 0 | 0.839 0 | 0.833 0 |
| PubMed | 0.799 0 | 0.786 0 | 0.778 0 | 0.793 0 | 0.781 0 | 0.773 0 | 0.814 0 | 0.808 0 | 0.796 0 |
| CiteSeer | 0.712 0 | 0.693 0 | 0.681 0 | 0.697 0 | 0.685 0 | 0.672 0 | 0.742 0 | 0.739 0 | 0.728 0 |
| 数据集 | GCN | GAT | APPNP | GDC | ADC | AGMixup | NLGT | HiD-Net | GCN-GDDV |
|---|---|---|---|---|---|---|---|---|---|
| CiteSeer | 78.1 | 90.3 | 83.9 | 111.0 | 119.0 | 108.0 | 135 | 84.7 | 133 |
| PubMed | 63.8 | 78.2 | 75.5 | 90.9 | 97.3 | 94.3 | 109 | 70.5 | 104 |
Tab. 4 Comparison of model training time?
| 数据集 | GCN | GAT | APPNP | GDC | ADC | AGMixup | NLGT | HiD-Net | GCN-GDDV |
|---|---|---|---|---|---|---|---|---|---|
| CiteSeer | 78.1 | 90.3 | 83.9 | 111.0 | 119.0 | 108.0 | 135 | 84.7 | 133 |
| PubMed | 63.8 | 78.2 | 75.5 | 90.9 | 97.3 | 94.3 | 109 | 70.5 | 104 |
| 节点编号 | 节点类别 | GCN | GAT | APPNP | GDC | ADC | AGMixup | NLGT | HiD-Net | GCN-GDDV |
|---|---|---|---|---|---|---|---|---|---|---|
| 1511 | PM | RL(×) | RL(×) | RL(×) | PM(√) | PM(√) | PM(√) | RL(×) | RL(×) | PM(√) |
| 2003 | PM | RL(×) | RL(×) | PM(√) | RL(×) | PM(√) | PM(×) | PM(√) | PM(√) | PM(√) |
| 2348 | PM | PM(√) | PM(√) | RL(×) | PM(√) | RL(×) | RL(×) | PM(√) | PM(√) | PM(√) |
Tab. 5 Comparison of case studies and forecast results
| 节点编号 | 节点类别 | GCN | GAT | APPNP | GDC | ADC | AGMixup | NLGT | HiD-Net | GCN-GDDV |
|---|---|---|---|---|---|---|---|---|---|---|
| 1511 | PM | RL(×) | RL(×) | RL(×) | PM(√) | PM(√) | PM(√) | RL(×) | RL(×) | PM(√) |
| 2003 | PM | RL(×) | RL(×) | PM(√) | RL(×) | PM(√) | PM(×) | PM(√) | PM(√) | PM(√) |
| 2348 | PM | PM(√) | PM(√) | RL(×) | PM(√) | RL(×) | RL(×) | PM(√) | PM(√) | PM(√) |
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