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Structure-preserving bracket-based GNNs

This code reproduces results from the paper:

A. Gruber, K. Lee, N. Trask, "Reversible and irreversible bracket-based dynamics for deep graph neural networks", NeurIPS 2023.

Running the code

The file "parameters.md" provides explicit commands that can be run to generate our results.

Dependencies:

  • NumPy
  • PyTorch
  • PyTorch Geometric

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Code accompanying "Reversible and irreversible bracket-based dynamics for deep graph neural networks" NeurIPS 2023 paper.

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