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ProxiMix: Enhancing fairness with proximity samples in subgroups

Jingyu, Hu; Hong, Jun; Du, Mengnan; Liu, Weiru

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Authors

Hu Jingyu

Jun Hong Jun.Hong@uwe.ac.uk
Professor in Artificial Intelligence

Mengnan Du

Weiru Liu



Abstract

Many bias mitigation methods have been developed for addressing fairness issues in machine learning. We have found that using linear mixup alone, a data augmentation technique, for bias mitigation, can still retain biases present in dataset labels. Research presented in this paper aims to address this issue by proposing a novel pre-processing strategy in which both an existing mixup method and our new bias mitigation algorithm can be utilized to improve the generation of labels of augmented samples, hence being proximity aware. Specifically, we propose ProxiMix which keeps both pairwise and proximity relationships for fairer data augmentation. We have conducted thorough experiments with three datasets, three ML models, and different hyperparameters settings. Our experimental results show the effectiveness of ProxiMix from both fairness of predictions and fairness of recourse perspectives.

Presentation Conference Type Conference Paper (unpublished)
Conference Name AEQUITAS 2024 - Second AEQUITAS Workshop on Fairness and Bias in AI at ECAI 2024
Start Date Oct 19, 2024
End Date Oct 24, 2024
Acceptance Date Jul 15, 2024
Deposit Date Sep 20, 2024
Publicly Available Date Sep 24, 2024
Peer Reviewed Peer Reviewed
Public URL https://uwe-repository.worktribe.com/output/12899098

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