FairGrad: Fairness Aware Gradient Descent - Université de Lille
Article Dans Une Revue Transactions on Machine Learning Research Journal Année : 2023

FairGrad: Fairness Aware Gradient Descent

Résumé

We tackle the problem of group fairness in classification, where the objective is to learn models that do not unjustly discriminate against subgroups of the population. Most existing approaches are limited to simple binary tasks or involve difficult to implement training mechanisms. This reduces their practical applicability. In this paper, we propose FairGrad, a method to enforce fairness based on a reweighting scheme that iteratively learns group specific weights based on whether they are advantaged or not. FairGrad is easy to implement and can accommodate various standard fairness definitions. Furthermore, we show that it is comparable to standard baselines over various datasets including ones used in natural language processing and computer vision.

Dates et versions

hal-03902196 , version 1 (15-12-2022)

Identifiants

Citer

Gaurav Maheshwari, Michaël Perrot. FairGrad: Fairness Aware Gradient Descent. Transactions on Machine Learning Research Journal, 2023. ⟨hal-03902196⟩
89 Consultations
0 Téléchargements

Altmetric

Partager

More