MESD: Detecting and Mitigating Procedural Bias in Intersectional Groups
arXiv cs.AI / 3/17/2026
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Key Points
- MESD stands for multi-category explanation stability disparity, a new procedurally oriented metric that measures how the quality of model explanations varies across intersectional subgroups of multiple protected attributes.
- The work presents MESD as a complementary metric to outcome-oriented fairness measures to reveal procedural fairness gaps in explanations.
- It also proposes UEF (Utility-Explanation-Fairness), a multi-objective optimization framework that jointly optimizes utility, explanation quality, and fairness.
- Experimental results on multiple datasets show MESD captures explanation differences between intersectional groups and demonstrate UEF's ability to balance the three objectives.
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