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When majority rules, minority loses: bias amplification of gradient descent

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  • Bachoc, François
  • Bolte, Jérôme
  • Boustany, Ryan
  • Loubes, Jean-Michel

Abstract

Despite growing empirical evidence of bias amplification in machine learning, its theoretical foundations remain poorly understood. We develop a formal framework for majority-minority learning tasks, showing how standard training can favor majority groups and produce stereotypical predictors that neglect minority-specific features. Assuming population and variance imbalance, our analysis reveals three key findings: (i) the close proximity between “full-data” and stereotypical predictors, (ii) the dominance of a region where training the entire model tends to merely learn the majority traits, and (iii) a lower bound on the additional training required. Our results are illustrated through experiments in deep learning for tabular and image classification tasks.

Suggested Citation

  • Bachoc, François & Bolte, Jérôme & Boustany, Ryan & Loubes, Jean-Michel, 2025. "When majority rules, minority loses: bias amplification of gradient descent," TSE Working Papers 25-1641, Toulouse School of Economics (TSE).
  • Handle: RePEc:tse:wpaper:130552
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