Demographic-Agnostic Fairness without Harm
- URL: http://arxiv.org/abs/2509.24077v1
- Date: Sun, 28 Sep 2025 21:23:32 GMT
- Title: Demographic-Agnostic Fairness without Harm
- Authors: Zhongteng Cai, Mohammad Mahdi Khalili, Xueru Zhang,
- Abstract summary: Machine learning algorithms are increasingly used in social domains to make predictions about humans.<n>There is a growing concern that these algorithms may exhibit biases against certain social groups.<n>We propose a novel textitdemographic-agnostic fairness without harm optimization algorithm.
- Score: 15.171262544838337
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As machine learning (ML) algorithms are increasingly used in social domains to make predictions about humans, there is a growing concern that these algorithms may exhibit biases against certain social groups. Numerous notions of fairness have been proposed in the literature to measure the unfairness of ML. Among them, one class that receives the most attention is \textit{parity-based}, i.e., achieving fairness by equalizing treatment or outcomes for different social groups. However, achieving parity-based fairness often comes at the cost of lowering model accuracy and is undesirable for many high-stakes domains like healthcare. To avoid inferior accuracy, a line of research focuses on \textit{preference-based} fairness, under which any group of individuals would experience the highest accuracy and collectively prefer the ML outcomes assigned to them if they were given the choice between various sets of outcomes. However, these works assume individual demographic information is known and fully accessible during training. In this paper, we relax this requirement and propose a novel \textit{demographic-agnostic fairness without harm (DAFH)} optimization algorithm, which jointly learns a group classifier that partitions the population into multiple groups and a set of decoupled classifiers associated with these groups. Theoretically, we conduct sample complexity analysis and show that our method can outperform the baselines when demographic information is known and used to train decoupled classifiers. Experiments on both synthetic and real data validate the proposed method.
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