Source code for our ACL 2019 paper: Learning Attention-based Embeddings for Relation Prediction in Knowledge Graphs Blog link for this publication.
Please download miniconda from above link and create an environment using the following command:
conda env create -f pytorch35.yml
Activate the environment before executing the program as follows:
source activate pytorch35
We used five different datasets for evaluating our model. All the datasets and their folder names are given below.
- Freebase: FB15k-237
- Wordnet: WN18RR
- Nell: NELL-995
- Kinship: kinship
- UMLS: umls
Parameters:
--data
: Specify the folder name of the dataset.
--epochs_gat
: Number of epochs for gat training.
--epochs_conv
: Number of epochs for convolution training.
--lr
: Initial learning rate.
--weight_decay_gat
: L2 reglarization for gat.
--weight_decay_conv
: L2 reglarization for conv.
--get_2hop
: Get a pickle object of 2 hop neighbors.
--use_2hop
: Use 2 hop neighbors for training.
--partial_2hop
: Use only 1 2-hop neighbor per node for training.
--output_folder
: Path of output folder for saving models.
--batch_size_gat
: Batch size for gat model.
--valid_invalid_ratio_gat
: Ratio of valid to invalid triples for GAT training.
--drop_gat
: Dropout probability for attention layer.
--alpha
: LeakyRelu alphas for attention layer.
--nhead_GAT
: Number of heads for multihead attention.
--margin
: Margin used in hinge loss.
--batch_size_conv
: Batch size for convolution model.
--alpha_conv
: LeakyRelu alphas for conv layer.
--valid_invalid_ratio_conv
: Ratio of valid to invalid triples for conv training.
--out_channels
: Number of output channels in conv layer.
--drop_conv
: Dropout probability for conv layer.
To reproduce the results published in the paper:
When running for first time, run preparation script with:
$ sh prepare.sh
-
Wordnet
$ python3 main.py --get_2hop True
-
Freebase
$ python3 main.py --data ./data/FB15k-237/ --epochs_gat 3000 --epochs_conv 200 --weight_decay_gat 0.00001 --get_2hop True --partial_2hop True --batch_size_gat 272115 --margin 1 --out_channels 50 --drop_conv 0.3 --weight_decay_conv 0.000001 --output_folder ./checkpoints/fb/out/
Please cite the following paper if you use this code in your work.
@InProceedings{KBGAT2019,
author = "Nathani, Deepak and Chauhan, Jatin and Sharma, Charu and Kaul, Manohar",
title = "Learning Attention-based Embeddings for Relation Prediction in Knowledge Graphs",
booktitle = "Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics",
year = "2019",
publisher = "Association for Computational Linguistics",
location = "Florence, Italy",
}
For any clarification, comments, or suggestions please create an issue or contact deepakn1019@gmail.com