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Hauptverfasser: Yang, Jingran, Zhang, Min, Zhang, Lingfeng, Wang, Zhaohui, Zhang, Yonggang
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2512.07249
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author Yang, Jingran
Zhang, Min
Zhang, Lingfeng
Wang, Zhaohui
Zhang, Yonggang
author_facet Yang, Jingran
Zhang, Min
Zhang, Lingfeng
Wang, Zhaohui
Zhang, Yonggang
contents Because machine learning has significantly improved efficiency and convenience in the society, it's increasingly used to assist or replace human decision-making. However, the data-based pattern makes related algorithms learn and even exacerbate potential bias in samples, resulting in discriminatory decisions against certain unprivileged groups, depriving them of the rights to equal treatment, thus damaging the social well-being and hindering the development of related applications. Therefore, we propose a pre-processing method IFFair based on the influence function. Compared with other fairness optimization approaches, IFFair only uses the influence disparity of training samples on different groups as a guidance to dynamically adjust the sample weights during training without modifying the network structure, data features and decision boundaries. To evaluate the validity of IFFair, we conduct experiments on multiple real-world datasets and metrics. The experimental results show that our approach mitigates bias of multiple accepted metrics in the classification setting, including demographic parity, equalized odds, equality of opportunity and error rate parity without conflicts. It also demonstrates that IFFair achieves better trade-off between multiple utility and fairness metrics compared with previous pre-processing methods.
format Preprint
id arxiv_https___arxiv_org_abs_2512_07249
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle IFFair: Influence Function-driven Sample Reweighting for Fair Classification
Yang, Jingran
Zhang, Min
Zhang, Lingfeng
Wang, Zhaohui
Zhang, Yonggang
Machine Learning
Artificial Intelligence
Because machine learning has significantly improved efficiency and convenience in the society, it's increasingly used to assist or replace human decision-making. However, the data-based pattern makes related algorithms learn and even exacerbate potential bias in samples, resulting in discriminatory decisions against certain unprivileged groups, depriving them of the rights to equal treatment, thus damaging the social well-being and hindering the development of related applications. Therefore, we propose a pre-processing method IFFair based on the influence function. Compared with other fairness optimization approaches, IFFair only uses the influence disparity of training samples on different groups as a guidance to dynamically adjust the sample weights during training without modifying the network structure, data features and decision boundaries. To evaluate the validity of IFFair, we conduct experiments on multiple real-world datasets and metrics. The experimental results show that our approach mitigates bias of multiple accepted metrics in the classification setting, including demographic parity, equalized odds, equality of opportunity and error rate parity without conflicts. It also demonstrates that IFFair achieves better trade-off between multiple utility and fairness metrics compared with previous pre-processing methods.
title IFFair: Influence Function-driven Sample Reweighting for Fair Classification
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2512.07249