Apply Graph Self-Supervised Learning methods to graph-level task(TUDataset, MolculeNet Datset)

Overview

Graphlevel-SSL

Overview

Apply Graph Self-Supervised Learning methods to graph-level task(TUDataset, MolculeNet Dataset).
It is unified framework to compare state-of-the art graph-level self-supervised learning method with two well-known dataset(TUDataset, MoleculeNet Dataset).

I only focused on linear protocol which is two step method

  1. pretrain with self-supervied method
  2. freeze encoder and only train classifier

Reference

I adopt various official codes to unify below methods. I expect that it can ensure very fair comparision.

How to Run

TUDataset

git clone https://github.com/LJS-Student/Graphlevel-SSL.git
cd Unsup_TU
mkdir results
sh example.sh

MoleculeNet Dataset

you can download MoleculeNet Dataset here

cd Unsup_Mol
mkdir results
sh example.sh
Owner
JunSeok
I'm master course student in KAIST.
JunSeok
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