Skip to main content

FairPOT: Balancing AUC Performance and Fairness with Proportional Optimal Transport.

Publication ,  Journal Article
Liu, P; Shen, Y; Engelhard, MM; Goldstein, BA; Pencina, MJ; Economou-Zavlanos, NJ; Zavlanos, MM
Published in: Proc AAAI ACM Conf AI Ethics Soc
October 2025

Fairness metrics utilizing the area under the receiver operator characteristic curve (AUC) have gained increasing attention in high-stakes domains such as healthcare, finance, and criminal justice. In these domains, fairness is often evaluated over risk scores rather than binary outcomes, and a common challenge is that enforcing strict fairness can significantly degrade AUC performance. To address this challenge, we propose Fair Proportional Optimal Transport (FairPOT), a novel, model-agnostic post-processing framework that strategically aligns risk score distributions across different groups using optimal transport, but does so selectively by transforming a controllable proportion, i.e., the top- λ quantile, of scores within the disadvantaged group. By varying λ , our method allows for a tunable trade-off between reducing AUC disparities and maintaining overall AUC performance. Furthermore, we extend FairPOT to the partial AUC setting, enabling fairness interventions to concentrate on the highest-risk regions. Extensive experiments on synthetic, public, and clinical datasets show that FairPOT consistently outperforms existing post-processing techniques in both global and partial AUC scenarios, often achieving improved fairness with slight AUC degradation or even positive gains in utility. The computational efficiency and practical adaptability of FairPOT make it a promising solution for real-world deployment.

Duke Scholars

Published In

Proc AAAI ACM Conf AI Ethics Soc

DOI

Publication Date

October 2025

Volume

8

Issue

2

Start / End Page

1611 / 1622

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Liu, P., Shen, Y., Engelhard, M. M., Goldstein, B. A., Pencina, M. J., Economou-Zavlanos, N. J., & Zavlanos, M. M. (2025). FairPOT: Balancing AUC Performance and Fairness with Proportional Optimal Transport. Proc AAAI ACM Conf AI Ethics Soc, 8(2), 1611–1622. https://doi.org/10.1609/aies.v8i2.36660
Liu, Pengxi, Yi Shen, Matthew M. Engelhard, Benjamin A. Goldstein, Michael J. Pencina, Nicoleta J. Economou-Zavlanos, and Michael M. Zavlanos. “FairPOT: Balancing AUC Performance and Fairness with Proportional Optimal Transport.Proc AAAI ACM Conf AI Ethics Soc 8, no. 2 (October 2025): 1611–22. https://doi.org/10.1609/aies.v8i2.36660.
Liu P, Shen Y, Engelhard MM, Goldstein BA, Pencina MJ, Economou-Zavlanos NJ, et al. FairPOT: Balancing AUC Performance and Fairness with Proportional Optimal Transport. Proc AAAI ACM Conf AI Ethics Soc. 2025 Oct;8(2):1611–22.
Liu, Pengxi, et al. “FairPOT: Balancing AUC Performance and Fairness with Proportional Optimal Transport.Proc AAAI ACM Conf AI Ethics Soc, vol. 8, no. 2, Oct. 2025, pp. 1611–22. Pubmed, doi:10.1609/aies.v8i2.36660.
Liu P, Shen Y, Engelhard MM, Goldstein BA, Pencina MJ, Economou-Zavlanos NJ, Zavlanos MM. FairPOT: Balancing AUC Performance and Fairness with Proportional Optimal Transport. Proc AAAI ACM Conf AI Ethics Soc. 2025 Oct;8(2):1611–1622.

Published In

Proc AAAI ACM Conf AI Ethics Soc

DOI

Publication Date

October 2025

Volume

8

Issue

2

Start / End Page

1611 / 1622

Location

United States