Introduction
This is the PyTorch implementation of the RotatE model for knowledge graph embedding (KGE). We provide a toolkit that gives state-of-the-art performance of several popular KGE models. The toolkit is quite efficient, which is able to train a large KGE model within a few hours on a single GPU.
A faster multi-GPU implementation of RotatE and other KGE models is available in GraphVite.
Implemented features
Models:
- RotatE
- pRotatE
- TransE
- ComplEx
- DistMult
Evaluation Metrics:
- MRR, MR, HITS@1, HITS@3, HITS@10 (filtered)
- AUC-PR (for Countries data sets)
Loss Function:
- Uniform Negative Sampling
- Self-Adversarial Negative Sampling
Usage
Knowledge Graph Data:
- entities.dict: a dictionary map entities to unique ids
- relations.dict: a dictionary map relations to unique ids
- train.txt: the KGE model is trained to fit this data set
- valid.txt: create a blank file if no validation data is available
- test.txt: the KGE model is evaluated on this data set
Train
For example, this command train a RotatE model on FB15k dataset with GPU 0.
CUDA_VISIBLE_DEVICES=0 python -u codes/run.py --do_train \
--cuda \
--do_valid \
--do_test \
--data_path data/FB15k \
--model RotatE \
-n 256 -b 1024 -d 1000 \
-g 24.0 -a 1.0 -adv \
-lr 0.0001 --max_steps 150000 \
-save models/RotatE_FB15k_0 --test_batch_size 16 -de
Check argparse configuration at codes/run.py for more arguments and more details.
Test
CUDA_VISIBLE_DEVICES=$GPU_DEVICE python -u $CODE_PATH/run.py --do_test --cuda -init $SAVE
Reproducing the best results
To reprocude the results in the ICLR 2019 paper RotatE: Knowledge Graph Embedding by Relational Rotation in Complex Space, you can run the bash commands in best_config.sh to get the best performance of RotatE, TransE, and ComplEx on five widely used datasets (FB15k, FB15k-237, wn18, wn18rr, Countries).
The run.sh script provides an easy way to search hyper-parameters:
bash run.sh train RotatE FB15k 0 0 1024 256 1000 24.0 1.0 0.0001 200000 16 -de
Speed
The KGE models usually take about half an hour to run 10000 steps on a single GeForce GTX 1080 Ti GPU with default configuration. And these models need different max_steps to converge on different data sets:
Dataset | FB15k | FB15k-237 | wn18 | wn18rr | Countries S* |
---|---|---|---|---|---|
MAX_STEPS | 150000 | 100000 | 80000 | 80000 | 40000 |
TIME | 9 h | 6 h | 4 h | 4 h | 2 h |
Results of the RotatE model
Dataset | FB15k | FB15k-237 | wn18 | wn18rr |
---|---|---|---|---|
MRR | .797 ± .001 | .337 ± .001 | .949 ± .000 | .477 ± .001 |
MR | 40 | 177 | 309 | 3340 |
HITS@1 | .746 | .241 | .944 | .428 |
HITS@3 | .830 | .375 | .952 | .492 |
HITS@10 | .884 | .533 | .959 | .571 |
Using the library
The python libarary is organized around 3 objects:
- TrainDataset (dataloader.py): prepare data stream for training
- TestDataSet (dataloader.py): prepare data stream for evluation
- KGEModel (model.py): calculate triple score and provide train/test API
The run.py file contains the main function, which parses arguments, reads data, initilize the model and provides the training loop.
Add your own model to model.py like:
def TransE(self, head, relation, tail, mode):
if mode == 'head-batch':
score = head + (relation - tail)
else:
score = (head + relation) - tail
score = self.gamma.item() - torch.norm(score, p=1, dim=2)
return score
Citation
If you use the codes, please cite the following paper:
@inproceedings{
sun2018rotate,
title={RotatE: Knowledge Graph Embedding by Relational Rotation in Complex Space},
author={Zhiqing Sun and Zhi-Hong Deng and Jian-Yun Nie and Jian Tang},
booktitle={International Conference on Learning Representations},
year={2019},
url={https://openreview.net/forum?id=HkgEQnRqYQ},
}