A Fair Bayesian Inference Through Matched Gibbs Posterior

Abstract

With the growing importance of trustworthy AI, algorithmic fairness has emerged as a critical concern. Among various fairness notions, group fairness - which measures the model bias between sensitive groups - has received significant attention. While many group-fair models have focused on satisfying group fairness constraints, model uncertainty has received relatively little attention, despite its importance for robust and trustworthy decision-making. To address this, we adopt a Bayesian framework to capture model uncertainty in fair model training. We first define group-fair posterior distributions and then introduce a fair variational Bayesian inference. Then we propose a novel distribution termed matched Gibbs posterior, as a proxy distribution for the fair variational Bayesian inference by employing a new group fairness measure, the matched deviation. A notable feature of matched Gibbs posterior is that it approximates the posterior distribution well under the fairness constraint without requiring heavy computation. Theoretically, we show that the matched deviation has a strong relation to existing group fairness measures, highlighting desirable fairness guarantees. Computationally, by treating the matching function in the matched deviation as a learnable parameter, we develop an efficient MCMC algorithm. Experiments on real-world datasets demonstrates that matched Gibbs posterior outperforms other methods in balancing uncertainty–fairness and utility–fairness trade-offs, while also offering additional desirable properties.

Cite

Text

Lee et al. "A Fair Bayesian Inference Through Matched Gibbs Posterior." International Conference on Learning Representations, 2026.

Markdown

[Lee et al. "A Fair Bayesian Inference Through Matched Gibbs Posterior." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/lee2026iclr-fair/)

BibTeX

@inproceedings{lee2026iclr-fair,
  title     = {{A Fair Bayesian Inference Through Matched Gibbs Posterior}},
  author    = {Lee, Jihu and Kim, Kunwoong and Park, Sehyun and Kong, Insung and Yang, Dongyoon and Kim, Yongdai},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/lee2026iclr-fair/}
}