MIFair: A Mutual-Information Framework for Intersectionality and Multiclass Fairness
arXiv cs.LG / 5/1/2026
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Key Points
- MIFair is a proposed mutual-information-based framework designed to assess and mitigate fairness issues in machine learning, addressing limitations around intersectionality and multiclass settings.
- The framework defines group fairness as statistical independence between prediction-derived variables and sensitive attributes, and offers a flexible metric template for context-specific bias evaluation.
- MIFair is grounded in information theory, including established equivalences to common fairness notions such as independence and separation.
- It supports complex subgroup structures (including multi-attribute and intersectional groups) and multiclass classification using an in-processing mitigation approach with regularization-based training.
- Experiments on real-world tabular and image datasets indicate that MIFair can reduce previously hard-to-address bias while preserving strong predictive performance.
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