This is the official PyTorch implementation for the paper:
Zihan Lin*, Changxin Tian*, Yupeng Hou* Wayne Xin Zhao. Improving Graph Collaborative Filtering with Neighborhood-enriched Contrastive Learning. WWW 2022.
We propose a contrastive learning paradigm, named Neighborhood-enriched Contrastive Learning (NCL), to explicitly capture potential node relatedness into contrastive learning for graph collaborative filtering.
recbole==1.0.0
python==3.7.7
pytorch==1.7.1
faiss-gpu==1.7.1
cudatoolkit==10.1
python main.py --dataset ml-1mYou can replace ml-1m to yelp, amazon-books, gowalla-merged or alibaba to reproduce the results reported in our paper.
For alibaba, you can download alibaba.zip from Google Drive. Then,
mkdir dataset
mv alibaba.zip dataset
unzip alibaba.zip
python main.py --dataset alibabaFor others, they will be downloaded automatically via RecBole once you run the main program. Take yelp for example,
python main.py --dataset yelpTo run NCL on customized datasets, please following #1 (comment).
The implementation is based on the open-source recommendation library RecBole.
Please cite the following papers as the references if you use our codes or the processed datasets.
@inproceedings{lin2022ncl,
author={Zihan Lin and
Changxin Tian and
Yupeng Hou and
Wayne Xin Zhao},
title={Improving Graph Collaborative Filtering with Neighborhood-enriched Contrastive Learning},
booktitle={{WWW}},
year={2022},
}
@inproceedings{zhao2021recbole,
title={Recbole: Towards a unified, comprehensive and efficient framework for recommendation algorithms},
author={Wayne Xin Zhao and Shanlei Mu and Yupeng Hou and Zihan Lin and Kaiyuan Li and Yushuo Chen and Yujie Lu and Hui Wang and Changxin Tian and Xingyu Pan and Yingqian Min and Zhichao Feng and Xinyan Fan and Xu Chen and Pengfei Wang and Wendi Ji and Yaliang Li and Xiaoling Wang and Ji-Rong Wen},
booktitle={{CIKM}},
year={2021}
}
