English

MIFair: A Mutual-Information Framework for Intersectionality and Multiclass Fairness

Machine Learning 2026-05-01 v1 Artificial Intelligence Computers and Society Information Theory math.IT

Abstract

Fairness in machine learning remains challenging due to its ethical complexity, the absence of a universal definition, and the need for context-specific bias metrics. Existing methods still struggle with intersectionality, multiclass settings, and limited flexibility and generality. To address these gaps, we introduce MIFair, a unified framework for bias assessment and mitigation based on mutual information. MIFair provides a flexible metric template and an in-processing mitigation method inspired by the Prejudice Remover, defining group fairness as statistical independence between prediction-derived variables and sensitive attributes. We further strengthen its information-theoretic foundation by establishing equivalences with widely used fairness notions such as independence and separation. MIFair naturally supports intersectionality, complex subgroup structures, and multiclass classification and employs regularization-based training to reduce bias according to the selected metric. Its key advantage is its versatility: it consolidates diverse fairness requirements into a single coherent framework, enabling consistent benchmarking and simplifying practical use. Experiments on real-world tabular and image datasets show that MIFair effectively reduces bias, including previously unaddressed multi-attribute scenarios, while maintaining strong predictive performance across the evaluated settings.

Keywords

Cite

@article{arxiv.2604.28030,
  title  = {MIFair: A Mutual-Information Framework for Intersectionality and Multiclass Fairness},
  author = {Jeanne Monnier and Thomas George and Frédéric Guyard and Christèle Tarnec and Marios Kountouris},
  journal= {arXiv preprint arXiv:2604.28030},
  year   = {2026}
}
R2 v1 2026-07-01T12:43:52.360Z