FairGSE: Fairness-Aware Graph Neural Network Without High False Positive Rates

Authors

  • Zhenqiang Ye College of Cyber Security, Jinan University Engineering Research Center of Trustworthy AI (Ministry of Education)
  • Jinjie Lu College of Cyber Security, Jinan University Engineering Research Center of Trustworthy AI (Ministry of Education)
  • Tianlong Gu College of Cyber Security, Jinan University Engineering Research Center of Trustworthy AI (Ministry of Education)
  • Fengrui Hao College of Cyber Security, Jinan University Engineering Research Center of Trustworthy AI (Ministry of Education)
  • Xuemin Wang School of Computer Science and Information Security, Guilin University of Electronic Technology

DOI:

https://doi.org/10.1609/aaai.v40i19.38652

Abstract

Graph neural networks (GNNs) have emerged as the mainstream paradigm for graph representation learning due to their effective message aggregation. However, this advantage also amplifies biases inherent in graph topology, raising fairness concerns. Existing fairness-aware GNNs provide satisfactory performance on fairness metrics such as Statistical Parity and Equal Opportunity while maintaining acceptable accuracy trade-offs. Unfortunately, we observe that this pursuit of fairness metrics neglects the GNN's ability to predict negative labels, which renders their predications with extremely high False Positive Rates (FPRs), resulting in negative effects in high-risk scenarios. To this end, we advocate that classification performance should be carefully calibrated while improving fairness, rather than simply constraining accuracy loss. Furthermore, we propose Fair GNN via Structural Entropy (FairGSE), a novel framework that maximizes two-dimensional structural entropy (2D-SE) to improve fairness without neglecting false positives. Experiments on several real-world datasets show FairGSE reduces FPR by 39% vs. state-of-the-art fairness-aware GNNs, with comparable fairness improvement.

Published

2026-03-14

How to Cite

Ye, Z., Lu, J., Gu, T., Hao, F., & Wang, X. (2026). FairGSE: Fairness-Aware Graph Neural Network Without High False Positive Rates. Proceedings of the AAAI Conference on Artificial Intelligence, 40(19), 16163–16171. https://doi.org/10.1609/aaai.v40i19.38652

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management III