Towards Fairness with Limited Demographics via Disentangled Learning
Abstract
Fairness in artificial intelligence has garnered increasing attention due to concerns about discriminatory AI-based decision-making, prompting the development of numerous mitigation approaches. However, most existing methods assume that demographic information is readily available, which may not align with real-world scenarios where such information is often incomplete. To this end, this paper tackles the pervasive yet overlooked challenge of developing fair machine learning algorithms with limited demographics. Specifically, we explore leveraging limited demographic information to accurately infer missing demographics while simultaneously evaluating and optimizing model fairness. We argue that this approach better aligns with common real-world socially sensitive scenarios involving limited demographics. Extensive experiments on three benchmark datasets highlight the effectiveness of the proposed method, surpassing state-of-the-art with significant gains in fairness while maintaining comparable utility.
Cite
Text
Wang et al. "Towards Fairness with Limited Demographics via Disentangled Learning." International Joint Conference on Artificial Intelligence, 2025. doi:10.24963/IJCAI.2025/64Markdown
[Wang et al. "Towards Fairness with Limited Demographics via Disentangled Learning." International Joint Conference on Artificial Intelligence, 2025.](https://mlanthology.org/ijcai/2025/wang2025ijcai-fairness/) doi:10.24963/IJCAI.2025/64BibTeX
@inproceedings{wang2025ijcai-fairness,
title = {{Towards Fairness with Limited Demographics via Disentangled Learning}},
author = {Wang, Zichong and Wu, Anqi and Moniz, Nuno and Hu, Shu and Knijnenburg, Bart P. and Zhu, Xingquan and Zhang, Wenbin},
booktitle = {International Joint Conference on Artificial Intelligence},
year = {2025},
pages = {565-573},
doi = {10.24963/IJCAI.2025/64},
url = {https://mlanthology.org/ijcai/2025/wang2025ijcai-fairness/}
}