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HyperFormer: Enhancing Entity and Relation Interaction for Hyper-Relational Knowledge Graph Completion

Dependencies

  • conda create -n hyperformer python=3.7 -y
  • PyTorch 1.8.1
  • contiguous_params 1.0.0
  • scipy 1.7.3
  • tqdm 4.64.1
  • fastmoe 0.2.0
    • download the fastmoe project
    • cd fastmoe folder
    • conda install "gxx_linux-64<=10" nccl -c conda-forge -y
    • pip install -e .
  • If you have problems using MoE, you can directly download the one I used fastmoe.

Running the code

Dataset

  • Download the datasets from Here.
  • Create the root directory ./dataset and put the datasets in.
  • You will get four types of datasets:
    • Mixed-percentage Mixed-qualifier: WD50K, JF17K, and Wikipeople;
    • Fixed-percentage Mixed-qualifier: WD50K_33, WD50K_66, WD50K_100, same as JF17K and Wikipeople.
    • Fixed-percentage Fixed-qualifier: WikiPeople-3, WikiPeople-4, same as JF17K.
    • Entities with Low Degree: WD50K_100_1_degree, WD50K_100_2_degree, WD50K_100_3_degree, WD50K_100_4_degree, same as JF17K and Wikipeople.

Training model

Taking the WD50K dataset as an example, you can run the following script:

sh run.sh

For other datasets, you only need to modify the following parameters, we used the same other parameters on all datasets:

  • export LOG_PATH = your log path
  • export SAVE_DIR_NAME = your save path
  • export DATASET = the dataset you use
  • export CUDA = the gpu id
  • Notes: If you want to reproduce the results in Table 1, you need to set --train_mode with_valid, because all baselines use the validation set in the training process.

Notes

  • When executed conda install "gxx_linux-64<=10" nccl -c conda-forge -y, if you meet the WARNING conda.core.envs_manager:register_env(50): Unable to register environment. Path not writable or missing. You should modify write permission to anaconda,e.g., sudo chown -R hzw /home/amax/anaconda3/, hzw is your username, /home/amax/anaconda3/ is anaconda path. You need see: All requested packages already installed.

Citation

If you find this code useful, please consider citing the following paper.

@article{
  author={Zhiwei Hu and Víctor Gutiérrez-Basulto and Zhiliang Xiang and and Ru Li and Jeff Z. Pan},
  title={HyperFormer: Enhancing Entity and Relation Interaction for Hyper-Relational Knowledge Graph Completion},
  publisher="32nd ACM International Conference on Information and Knowledge Management",
  year={2023}
}

Acknowledgement

We refer to the code of CoLE. Thanks for their contributions.

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[CIKM2023] HyperFormer: Enhancing Entity and Relation Interaction for Hyper-Relational Knowledge Graph Completion

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