Fairness and Sparsity Within Rashomon Sets: Enumeration-Free Exploration and Characterization

Authors

  • Lucas Langlade École nationale des ponts et chaussées, Paris, France
  • Julien Ferry CIRRELT & SCALE-AI Chair in Data-Driven Supply Chains, Department of Mathematics and Industrial Engineering, Polytechnique Montréal, Canada
  • Gabriel Laberge Department of Computer Engineering and Software Engineering, Polytechnique Montréal, Canada
  • Thibaut Vidal CIRRELT & SCALE-AI Chair in Data-Driven Supply Chains, Department of Mathematics and Industrial Engineering, Polytechnique Montréal, Canada

DOI:

https://doi.org/10.1609/aies.v8i2.36653

Abstract

We introduce an enumeration-free method based on mathematical programming to precisely characterize various properties such as fairness or sparsity within the set of "good models", known as Rashomon set. This approach is generically applicable to any hypothesis class, provided that a mathematical formulation of the model learning task exists. It offers a structured framework to define the notion of business necessity and evaluate how fairness can be improved or degraded towards a specific protected group, while remaining within the Rashomon set and maintaining any desired sparsity level. We apply our approach to two hypothesis classes: scoring systems and decision diagrams, leveraging recent mathematical programming formulations for training such models. As seen in our experiments, the method comprehensively and certifiably quantifies tradeoffs between predictive performance, sparsity, and fairness. We observe that a wide range of fairness values are attainable, ranging from highly favorable to significantly unfavorable for a protected group, while staying within less than 1% of the best possible training accuracy for the hypothesis class. Additionally, we observe that sparsity constraints limit these tradeoffs and may disproportionately harm specific subgroups. As we evidenced, thoroughly characterizing the tensions between these key aspects is critical for an informed and accountable selection of models.

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Published

2025-10-15

How to Cite

Langlade, L., Ferry, J., Laberge, G., & Vidal, T. (2025). Fairness and Sparsity Within Rashomon Sets: Enumeration-Free Exploration and Characterization. Proceedings of the AAAI ACM Conference on AI, Ethics, and Society, 8(2), 1536–1547. https://doi.org/10.1609/aies.v8i2.36653