Understanding Challenges to the Interpretation of Disaggregated Evaluations of Algorithmic Fairness

Abstract

Disaggregated evaluation across subgroups is critical for assessing the fairness of machine learning models, but its uncritical use can mislead practitioners. We show that equal performance across subgroups is an unreliable measure of fairness when data are representative of the relevant populations but reflective of real-world disparities. Furthermore, when data are not representative due to selection bias, both disaggregated evaluation and alternative approaches based on conditional independence testing may be invalid without explicit assumptions regarding the bias mechanism. We use causal graphical models to characterize fairness properties and metric stability across subgroups under different data generating processes. Our framework suggests complementing disaggregated evaluations with explicit causal assumptions and analysis to control for confounding and distribution shift, including conditional independence testing and weighted performance estimation. These findings have broad implications for how practitioners design and interpret model assessments given the ubiquity of disaggregated evaluation.

Cite

Text

Pfohl et al. "Understanding Challenges to the Interpretation of Disaggregated Evaluations of Algorithmic Fairness." Advances in Neural Information Processing Systems, 2025.

Markdown

[Pfohl et al. "Understanding Challenges to the Interpretation of Disaggregated Evaluations of Algorithmic Fairness." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/pfohl2025neurips-understanding/)

BibTeX

@inproceedings{pfohl2025neurips-understanding,
  title     = {{Understanding Challenges to the Interpretation of Disaggregated Evaluations of Algorithmic Fairness}},
  author    = {Pfohl, Stephen R and Harris, Natalie and Nagpal, Chirag and Madras, David and Mhasawade, Vishwali and Salaudeen, Olawale Elijah and Dieng, Awa and Sequeira, Shannon and Arciniegas, Santiago Eduardo and Sung, Lillian and Ezeanochie, Nnamdi Peter Okechukwu and Cole-Lewis, Heather and Heller, Katherine A and Koyejo, Sanmi and D'Amour, Alexander Nicholas},
  booktitle = {Advances in Neural Information Processing Systems},
  year      = {2025},
  url       = {https://mlanthology.org/neurips/2025/pfohl2025neurips-understanding/}
}