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PUMA (Continual Graph Learning)

This is the official repository for the paper PUMA: Efficient Continual Graph Learning with Graph Condensation which is an extension of CaT: Balanced Continual Graph Learning with Graph Condensation (code).

The following figure shows the PUMA framework in details. CaT Framework

Main experiment results.

class-IL results

Experiment environment

Our experiments are run on the enviroment based on Python 3.8 with the following packages:

pytorch==1.13.0
torch-geometric==2.2.0  # for deploying GNNs.
ogb==1.3.6  # for obtaining arxiv and prodcuts datasets.
progressbar2==4.2.0  # for visulasing the process of the condensation.

Usage

To reproduce the results of Table 2 (classIL setting), please run the table2.sh in the srcripts folder:

bash ./scripts/table2.sh

Cite

If you find this repo useful, please cite

@inproceedings{CaT,
  author    = {Yilun Liu and
               Ruihong Qiu and
               Yanran Tang and
               Hongzhi Yin and
               Zi Huang},
  title     = {PUMA: Efficient Continual Graph Learning with Graph Condensation},
  journal   = {CoRR},
  volume    = {abs/2312.14439},
  year      = {2023}
}

Credit

This repository was developed based on the CGLB and CaT.