Toward Fairness via Maximum Mean Discrepancy Regularization on Logits Space
Computer Vision and Pattern Recognition
2024-02-21 v1
Abstract
Fairness has become increasingly pivotal in machine learning for high-risk applications such as machine learning in healthcare and facial recognition. However, we see the deficiency in the previous logits space constraint methods. Therefore, we propose a novel framework, Logits-MMD, that achieves the fairness condition by imposing constraints on output logits with Maximum Mean Discrepancy. Moreover, quantitative analysis and experimental results show that our framework has a better property that outperforms previous methods and achieves state-of-the-art on two facial recognition datasets and one animal dataset. Finally, we show experimental results and demonstrate that our debias approach achieves the fairness condition effectively.
Cite
@article{arxiv.2402.13061,
title = {Toward Fairness via Maximum Mean Discrepancy Regularization on Logits Space},
author = {Hao-Wei Chung and Ching-Hao Chiu and Yu-Jen Chen and Yiyu Shi and Tsung-Yi Ho},
journal= {arXiv preprint arXiv:2402.13061},
year = {2024}
}