AI RESEARCH

Procedural Fairness via Group Counterfactual Explanation

arXiv CS.AI

ArXi:2603.11140v1 Announce Type: cross Fairness in machine learning research has largely focused on outcome-oriented fairness criteria such as Equalized Odds, while comparatively less attention has been given to procedural-oriented fairness, which addresses how a model arrives at its predictions. Neglecting procedural fairness means it is possible for a model to generate different explanations for different protected groups, thereby eroding trust. In this work, we