Code for “ACE-HGNN: Adaptive Curvature ExplorationHyperbolic Graph Neural Network”

Related tags

Deep LearningACE-HGNN
Overview

ACE-HGNN: Adaptive Curvature Exploration Hyperbolic Graph Neural Network

This repository is the implementation of ACE-HGNN in PyTorch.

Environment

python==3.6.8
pytorch==1.6.0
nashpy==0.0.21
networkx==2.2
scikit-learn==0.20.3
numpy==1.16.2
pandas==0.24.2
scipy==1.2.1

and their dependencies.

Usage

1. Setup

  • Clone this repo
  • Create a virtual environment using conda or virtualenv.
    conda env create -f environment.yml
    virtualenv -p [PATH to python3.6 binary] ace-hgnn
    
  • Enter the virtual environment and run pip install -r requirements.txt.

2. Usage

  • Run set_env.sh in the command line. (Linux)
  • Please refer to config.py for our Model's full parameters and their default values.
  • Run python train.py [--param param_value] to train our model, with setting custom parameters.
    • An example, for link prediction (LP) task on Cora dataset: python train.py --task lp --dataset webkb --model HGCN --lr 0.005 --dim 16 --num-layers 2 --act relu --bias 1 --dropout 0.5 --weight-decay 0.001 --manifold PoincareBall --log-freq 5 --cuda 0 --c 1.0

Thanks

Some of the code was forked from the following repositories:

We deeply thanks for their contributions to the open-source community.

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