Authors
Forest Yang, Mouhamadou Cisse, Sanmi Koyejo
Publication date
2020
Journal
Advances in neural information processing systems
Volume
33
Pages
4067-4078
Description
In algorithmically fair prediction problems, a standard goal is to ensure the equality of fairness metrics across multiple overlapping groups simultaneously. We reconsider this standard fair classification problem using a probabilistic population analysis, which, in turn, reveals the Bayes-optimal classifier. Our approach unifies a variety of existing group-fair classification methods and enables extensions to a wide range of non-decomposable multiclass performance metrics and fairness measures. The Bayes-optimal classifier further inspires consistent procedures for algorithmically fair classification with overlapping groups. On a variety of real datasets, the proposed approach outperforms baselines in terms of its fairness-performance tradeoff.
Total citations
202120222023202410302419
Scholar articles
F Yang, M Cisse, S Koyejo - Advances in neural information processing systems, 2020