English

Fairness Violations and Mitigation under Covariate Shift

Machine Learning 2021-01-26 v2 Computers and Society Machine Learning

Abstract

We study the problem of learning fair prediction models for unseen test sets distributed differently from the train set. Stability against changes in data distribution is an important mandate for responsible deployment of models. The domain adaptation literature addresses this concern, albeit with the notion of stability limited to that of prediction accuracy. We identify sufficient conditions under which stable models, both in terms of prediction accuracy and fairness, can be learned. Using the causal graph describing the data and the anticipated shifts, we specify an approach based on feature selection that exploits conditional independencies in the data to estimate accuracy and fairness metrics for the test set. We show that for specific fairness definitions, the resulting model satisfies a form of worst-case optimality. In context of a healthcare task, we illustrate the advantages of the approach in making more equitable decisions.

Keywords

Cite

@article{arxiv.1911.00677,
  title  = {Fairness Violations and Mitigation under Covariate Shift},
  author = {Harvineet Singh and Rina Singh and Vishwali Mhasawade and Rumi Chunara},
  journal= {arXiv preprint arXiv:1911.00677},
  year   = {2021}
}

Comments

11 pages main and 7 pages supplementary, To appear at ACM FAccT '21, Previous arXiv version arXiv:1911.00677v1 was presented at Workshop on Fair ML for Health '19

R2 v1 2026-06-23T12:02:53.120Z