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Class-Imbalanced Graph Learning without Class Rebalancing

Machine Learning 2024-05-21 v2 Artificial Intelligence

Abstract

Class imbalance is prevalent in real-world node classification tasks and poses great challenges for graph learning models. Most existing studies are rooted in a class-rebalancing (CR) perspective and address class imbalance with class-wise reweighting or resampling. In this work, we approach the root cause of class-imbalance bias from an topological paradigm. Specifically, we theoretically reveal two fundamental phenomena in the graph topology that greatly exacerbate the predictive bias stemming from class imbalance. On this basis, we devise a lightweight topological augmentation framework BAT to mitigate the class-imbalance bias without class rebalancing. Being orthogonal to CR, BAT can function as an efficient plug-and-play module that can be seamlessly combined with and significantly boost existing CR techniques. Systematic experiments on real-world imbalanced graph learning tasks show that BAT can deliver up to 46.27% performance gain and up to 72.74% bias reduction over existing techniques. Code, examples, and documentations are available at https://github.com/ZhiningLiu1998/BAT.

Keywords

Cite

@article{arxiv.2308.14181,
  title  = {Class-Imbalanced Graph Learning without Class Rebalancing},
  author = {Zhining Liu and Ruizhong Qiu and Zhichen Zeng and Hyunsik Yoo and David Zhou and Zhe Xu and Yada Zhu and Kommy Weldemariam and Jingrui He and Hanghang Tong},
  journal= {arXiv preprint arXiv:2308.14181},
  year   = {2024}
}

Comments

In ICML 2024; 26 pages, 9 figures, 12 tables

R2 v1 2026-06-28T12:05:31.093Z