Code of the paper: Entity Alignment for Knowledge Graphs with Multi-order Convolutional Networks.
- python>=3.5
- networkx == 1.11 (important!)
- pytorch >= 1.2.0
- numpy >= 1.18.1
You can download our processed dataset from: https://drive.google.com/file/d/12XL08tB8zplCNhzLE-9qbsFFum7RoV6r/view?usp=sharing.
python -u network_alignment.py --dataset_name zh_en --source_dataset data/networkx/zh_enDI/zh/graphsage/ --target_dataset data/networkx/zh_enDI/en/graphsage --groundtruth data/networkx/zh_enDI/dictionaries/groundtruth EMGCN --sparse --log
Please politely cite our work as follows:
@article{nguyen2020entity, title={Entity alignment for knowledge graphs with multi-order convolutional networks}, author={Nguyen, Tam Thanh and Huynh, Thanh Trung and Yin, Hongzhi and Van Tong, Vinh and Sakong, Darnbi and Zheng, Bolong and Nguyen, Quoc Viet Hung}, journal={IEEE Transactions on Knowledge and Data Engineering}, year={2020}, publisher={IEEE} }