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Minimax Optimal Fair Regression under Linear Model

Neural Information Processing Systems (NeurIPS), 2022
Abstract

We investigate the minimax optimal error of a fair regression problem under a linear model employing demographic parity as a fairness constraint. As a tractable demographic parity constraint, we introduce (α,δ)(\alpha,\delta)-fairness consistency, meaning that the quantified unfairness is decreased at most nαn^{-\alpha} rate with at least probability 1δ1-\delta, where nn is the sample size. In other words, the consistently fair algorithm eventually outputs a regressor satisfying the demographic parity constraint with high probability as nn tends to infinity. As a result of our analyses, we found that the minimax optimal error under the (α,δ)(\alpha,\delta)-fairness consistency constraint is Θ(dMn)\Theta(\frac{dM}{n}) provided that α12\alpha \le \frac{1}{2}, where dd is the dimensionality, and MM is the number of groups induced from the sensitive attributes.

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