SLIDE: A surrogate fairness constraint to ensure fairness consistency

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초록

As they take a crucial role in social decision makings, AI algorithms based on ML models should be not only accurate but also fair. Among many algorithms for fair AI, learning a prediction ML model by minimizing the empirical risk (e.g., cross-entropy) subject to a given fairness constraint has received much attention. To avoid computational difficulty, however, a given fairness constraint is replaced by a surrogate fairness constraint as the 0-1 loss is replaced by a convex surrogate loss for classification problems. In this paper, we investigate the validity of existing surrogate fairness constraints and propose a new surrogate fairness constraint called SLIDE, which is computationally feasible and asymptotically valid in the sense that the learned model satisfies the fairness constraint asymptotically and achieves a fast convergence rate. Numerical experiments confirm that the SLIDE works well for various benchmark datasets. (C) 2022 Elsevier Ltd. All rights reserved.

키워드

Fairness AILearning theoryMachine learningSupervised learningClassificationCLASSIFICATION
제목
SLIDE: A surrogate fairness constraint to ensure fairness consistency
저자
Kim, KunwoongOhn, IlsangKim, SaraKim, Yongdai
DOI
10.1016/j.neunet.2022.07.027
발행일
2022-10
유형
Article
저널명
Neural Networks
154
페이지
441 ~ 454