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Graph transport network (GTN), as proposed in "Scalable Optimal Transport in High Dimensions for Graph Distances, Embedding Alignment, and More" (ICML 2021)

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Graph Transport Network (GTN)

Reference implementation of the graph transport network (GTN), as proposed in our paper

Scalable Optimal Transport in High Dimensions for Graph Distances, Embedding Alignment, and More
by Johannes Gasteiger, Marten Lienen, Stephan Günnemann
Published at ICML 2021.

Note that the author's name has changed from Johannes Klicpera to Johannes Gasteiger.

The paper furthermore proposed the locally corrected Nyström (LCN) approximation, sparse Sinkhorn, and LCN-Sinkhorn, whose implementations you can find in this accompanying repository. GTN uses these approximations and relies on the implementations provided in the LCN repository.

Installation

You can install the repository using pip install -e ..

Training GTN

This repository contains a notebook for training and evaluating GTN (experiment.ipynb) and a script for running this on a cluster with SEML (experiment_seml.py).

The config files specify all hyperparameters and allow reproducing the results in the paper.

Contact

Please contact j.gasteiger@in.tum.de if you have any questions.

Cite

Please cite our paper if you use our method or code in your own work:

@inproceedings{gasteiger_2021_lcn,
  title={Scalable Optimal Transport in High Dimensions for Graph Distances, Embedding Alignment, and More},
  author={Gasteiger, Johannes and Lienen, Marten and G{\"u}nnemann, Stephan},
  booktitle = {Thirty-eighth International Conference on Machine Learning (ICML)},
  year={2021},
}

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Graph transport network (GTN), as proposed in "Scalable Optimal Transport in High Dimensions for Graph Distances, Embedding Alignment, and More" (ICML 2021)

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