Bootstrapping Informative Graph Augmentation via A Meta Learning Approach
Abstract
Recent works explore learning graph representations in a self-supervised manner. In graph contrastive learning, benchmark methods apply various graph augmentation approaches. However, most of the augmentation methods are non-learnable, which causes the issue of generating unbeneficial augmented graphs. Such augmentation may degenerate the representation ability of graph contrastive learning methods. Therefore, we motivate our method to generate augmented graph by a learnable graph augmenter, called MEta Graph Augmentation (MEGA). We then clarify that a "good" graph augmentation must have uniformity at the instance-level and informativeness at the feature-level. To this end, we propose a novel approach to learning a graph augmenter that can generate an augmentation with uniformity and informativeness. The objective of the graph augmenter is to promote our feature extraction network to learn a more discriminative feature representation, which motivates us to propose a meta-learning paradigm. Empirically, the experiments across multiple benchmark datasets demonstrate that MEGA outperforms the state-of-the-art methods in graph self-supervised learning tasks. Further experimental studies prove the effectiveness of different terms of MEGA.
Cite
@article{arxiv.2201.03812,
title = {Bootstrapping Informative Graph Augmentation via A Meta Learning Approach},
author = {Hang Gao and Jiangmeng Li and Wenwen Qiang and Lingyu Si and Fuchun Sun and Changwen Zheng},
journal= {arXiv preprint arXiv:2201.03812},
year = {2022}
}
Comments
Accepted by International Joint Conference on Artificial Intelligence (IJCAI) 2022