This is a Keras implementation of the Graph Attention Network (GAT) model by Veličković et. al (2017, https://arxiv.org/abs/1710.10903).
I have no affiliation with the authors of the paper and I am
implementing this code for non-commercial reasons.
The authors published their reference Tensorflow implementation
here, so check it out for something that
is guaranteed to work as intended. Their implementation is slightly
different than mine, so that may be something to keep in mind.
You should cite the paper if you use any of this code for your research:
@article{
velickovic2018graph,
title="{Graph Attention Networks}",
author={Veli{\v{c}}kovi{\'{c}}, Petar and Cucurull, Guillem and Casanova, Arantxa and Romero, Adriana and Li{\`{o}}, Pietro and Bengio, Yoshua},
journal={International Conference on Learning Representations},
year={2018},
url={https://openreview.net/forum?id=rJXMpikCZ},
note={Accepted as poster},
}
If you would like to give me credit, feel free to link to my Github profile, blog, or Twitter.
I also copied the code in utils.py
almost verbatim from this repo by
Thomas Kipf, who I thank sincerely for
sharing his work on GCNs and GAEs, and for giving me a few pointers on
how to split the data into train/test/val sets.
Thanks to matthias-samwald, mawright (commit f4974ac), and vermaMachineLearning (commit 7959bd8) for helping me out with early bugs and running experiments.
I do not own any rights to the datasets distributed with this code, but they are publicly available at the following links:
- CORA: https://relational.fit.cvut.cz/dataset/CORA
- PubMed: https://catalog.data.gov/dataset/pubmed
- CiteSeer: http://csxstatic.ist.psu.edu/about/data
To install as a module:
$ git clone https://github.com/danielegrattarola/keras-gat.git
$ cd keras-gat
$ pip install .
$ python
>>> from keras_gat import GraphAttention
Or you can just copy and paste graph_attention_layer.py
into your
project.
If you wish to replicate the experimental results of the paper, simply run:
$ python examples/gat.py
from the base folder.