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arxiv: 2605.28233 · v1 · pith:RMS6QLWAnew · submitted 2026-05-27 · 📊 stat.ML · cs.CY· cs.LG

Geometry of Relaxed Fair Regression: A Unified Framework for Aware and Unaware Settings

classification 📊 stat.ML cs.CYcs.LG
keywords optimalpenaltyunderawareemphfairnessframeworkmethods
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Fairness-accuracy trade-offs are a central concern in the deployment of fairness-aware machine learning methods. When sensitive attributes are unavailable at inference time-the so called unawareness setting, principled methods for obtaining accurate predictions under relaxed fairness constraints are largely missing. In this work, we address this gap by formulating regression under a demographic parity penalty as an optimal transport problem. Our framework unifies both the \emph{aware} and \emph{unaware} settings and characterizes optimal prediction functions via optimal transport maps, under both squared Wasserstein-2 and Total Variation penalties. These results reveal that the choice of penalty reflects fundamentally different fairness philosophies: the Wasserstein penalty induces a smooth, population-wide compromise, while Total Variation enforces exact parity for a subset of individuals. Building on these theoretical characterizations, we propose an algorithm that is simple to implement, computationally efficient, and consistently matches or outperforms state-of-the-art baselines on real-world benchmarks.

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