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Achieving Fairness Without Harm via Selective Demographic Experts

Machine Learning 2025-11-11 v1

Abstract

As machine learning systems become increasingly integrated into human-centered domains such as healthcare, ensuring fairness while maintaining high predictive performance is critical. Existing bias mitigation techniques often impose a trade-off between fairness and accuracy, inadvertently degrading performance for certain demographic groups. In high-stakes domains like clinical diagnosis, such trade-offs are ethically and practically unacceptable. In this study, we propose a fairness-without-harm approach by learning distinct representations for different demographic groups and selectively applying demographic experts consisting of group-specific representations and personalized classifiers through a no-harm constrained selection. We evaluate our approach on three real-world medical datasets -- covering eye disease, skin cancer, and X-ray diagnosis -- as well as two face datasets. Extensive empirical results demonstrate the effectiveness of our approach in achieving fairness without harm.

Keywords

Cite

@article{arxiv.2511.06293,
  title  = {Achieving Fairness Without Harm via Selective Demographic Experts},
  author = {Xuwei Tan and Yuanlong Wang and Thai-Hoang Pham and Ping Zhang and Xueru Zhang},
  journal= {arXiv preprint arXiv:2511.06293},
  year   = {2025}
}

Comments

AAAI26; Extended version

R2 v1 2026-07-01T07:28:09.689Z