Paper ID: 2503.22569 • Published Mar 28, 2025
Comparing Methods for Bias Mitigation in Graph Neural Networks
Barbara Hoffmann, Ruben Mayer
University of Bayreuth
TL;DR
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This paper examines the critical role of Graph Neural Networks (GNNs) in data
preparation for generative artificial intelligence (GenAI) systems, with a
particular focus on addressing and mitigating biases. We present a comparative
analysis of three distinct methods for bias mitigation: data sparsification,
feature modification, and synthetic data augmentation. Through experimental
analysis using the german credit dataset, we evaluate these approaches using
multiple fairness metrics, including statistical parity, equality of
opportunity, and false positive rates. Our research demonstrates that while all
methods improve fairness metrics compared to the original dataset, stratified
sampling and synthetic data augmentation using GraphSAGE prove particularly
effective in balancing demographic representation while maintaining model
performance. The results provide practical insights for developing more
equitable AI systems while maintaining model performance.
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