Home  | Publications | SFF24

Causal Fairness Under Unobserved Confounding: A Neural Sensitivity Framework

MCML Authors

Abstract

Fairness of machine learning predictions is widely required in practice for legal, ethical, and societal reasons. Existing work typically focuses on settings without unobserved confounding, even though unobserved confounding can lead to severe violations of causal fairness and, thus, unfair predictions. In this work, we analyze the sensitivity of causal fairness to unobserved confounding. Our contributions are three-fold. First, we derive bounds for causal fairness metrics under different sources of unobserved confounding. This enables practitioners to examine the sensitivity of their machine learning models to unobserved confounding in fairness-critical applications. Second, we propose a novel neural framework for learning fair predictions, which allows us to offer worst-case guarantees of the extent to which causal fairness can be violated due to unobserved confounding. Third, we demonstrate the effectiveness of our framework in a series of experiments, including a real-world case study about predicting prison sentences. To the best of our knowledge, ours is the first work to study causal fairness under unobserved confounding. To this end, our work is of direct practical value as a refutation strategy to ensure the fairness of predictions in high-stakes applications.

inproceedings


ICLR 2024

12th International Conference on Learning Representations. Vienna, Austria, May 07-11, 2024.
Conference logo
A* Conference

Authors

M. SchröderD. FrauenS. Feuerriegel

Links

URL

Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: SFF24

Back to Top