Fair Bayes-Optimal Classifiers Under Predictive Parity
Abstract
Increasing concerns about disparate effects of AI have motivated a great deal of work on fair machine learning. Existing works mainly focus on independence- and separation-based measures (e.g., demographic parity, equality of opportunity, equalized odds), while sufficiency-based measures such as predictive parity are much less studied. This paper considers predictive parity, which requires equalizing the probability of success given a positive prediction among different protected groups. We prove that, if the overall performances of different groups vary only moderately, all fair Bayes-optimal classifiers under predictive parity are group-wise thresholding rules. Perhaps surprisingly, this may not hold if group performance levels vary widely; in this case we find that predictive parity among protected groups may lead to within-group unfairness. We then propose an algorithm we call FairBayes-DPP, aiming to ensure predictive parity when our condition is satisfied. FairBayes-DPP is an adaptive thresholding algorithm that aims to achieve predictive parity, while also seeking to maximize test accuracy. We provide supporting experiments conducted on synthetic and empirical data.
Cite
@article{arxiv.2205.07182,
title = {Fair Bayes-Optimal Classifiers Under Predictive Parity},
author = {Xianli Zeng and Edgar Dobriban and Guang Cheng},
journal= {arXiv preprint arXiv:2205.07182},
year = {2022}
}
Comments
arXiv admin note: text overlap with arXiv:2202.09724