Towards Fair Graph Neural Networks via Graph Counterfactual
Document Type
Conference Proceeding
Publication Date
10-21-2023
Abstract
Graph neural networks have shown great ability in representation (GNNs) learning on graphs, facilitating various tasks. Despite their great performance in modeling graphs, recent works show that GNNs tend to inherit and amplify the bias from training data, causing concerns of the adoption of GNNs in high-stake scenarios. Hence, many efforts have been taken for fairness-aware GNNs. However, most existing fair GNNs learn fair node representations by adopting statistical fairness notions, which may fail to alleviate bias in the presence of statistical anomalies. Motivated by causal theory, there are several attempts utilizing graph counterfactual fairness to mitigate root causes of unfairness. However, these methods suffer from non-realistic counterfactuals obtained by perturbation or generation. In this paper, we take a causal view on fair graph learning problem. Guided by the casual analysis, we propose a novel framework CAF, which can select counterfactuals from training data to avoid non-realistic counterfactuals and adopt selected counterfactuals to learn fair node representations for node classification task. Extensive experiments on synthetic and real-world datasets show the effectiveness of CAF. Our code is available at https://github.com/TimeLovercc/CAF-GNN.
Identifier
85178102342 (Scopus)
ISBN
[9798400701245]
Publication Title
International Conference on Information and Knowledge Management Proceedings
External Full Text Location
https://doi.org/10.1145/3583780.3615092
First Page
669
Last Page
678
Grant
E205949D
Fund Ref
U.S. Department of Homeland Security
Recommended Citation
Guo, Zhimeng; Li, Jialiang; Xiao, Teng; Ma, Yao; and Wang, Suhang, "Towards Fair Graph Neural Networks via Graph Counterfactual" (2023). Faculty Publications. 1377.
https://digitalcommons.njit.edu/fac_pubs/1377