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Maximin Relative Improvement: Fair Learning as a Bargaining Problem

Machine Learning 2026-02-05 v1 Computer Science and Game Theory Machine Learning

Abstract

When deploying a single predictor across multiple subpopulations, we propose a fundamentally different approach: interpreting group fairness as a bargaining problem among subpopulations. This game-theoretic perspective reveals that existing robust optimization methods such as minimizing worst-group loss or regret correspond to classical bargaining solutions and embody different fairness principles. We propose relative improvement, the ratio of actual risk reduction to potential reduction from a baseline predictor, which recovers the Kalai-Smorodinsky solution. Unlike absolute-scale methods that may not be comparable when groups have different potential predictability, relative improvement provides axiomatic justification including scale invariance and individual monotonicity. We establish finite-sample convergence guarantees under mild conditions.

Keywords

Cite

@article{arxiv.2602.04155,
  title  = {Maximin Relative Improvement: Fair Learning as a Bargaining Problem},
  author = {Jiwoo Han and Moulinath Banerjee and Yuekai Sun},
  journal= {arXiv preprint arXiv:2602.04155},
  year   = {2026}
}
R2 v1 2026-07-01T09:35:17.294Z