Fairness Under Group-Conditional Prior Probability Shift: Invariance, Drift, and Target-Aware Post-Processing
Amir Asiaee, Kaveh Aryan
TLDR: The paper addresses fairness in machine learning under group-conditional prior probability shift and introduces a method to maintain fairness when label prevalences change across demographic groups between training and deployment.