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Fair Regression with Wasserstein Barycenters

About

We study the problem of learning a real-valued function that satisfies the Demographic Parity constraint. It demands the distribution of the predicted output to be independent of the sensitive attribute. We consider the case that the sensitive attribute is available for prediction. We establish a connection between fair regression and optimal transport theory, based on which we derive a close form expression for the optimal fair predictor. Specifically, we show that the distribution of this optimum is the Wasserstein barycenter of the distributions induced by the standard regression function on the sensitive groups. This result offers an intuitive interpretation of the optimal fair prediction and suggests a simple post-processing algorithm to achieve fairness. We establish risk and distribution-free fairness guarantees for this procedure. Numerical experiments indicate that our method is very effective in learning fair models, with a relative increase in error rate that is inferior to the relative gain in fairness.

Evgenii Chzhen, Christophe Denis, Mohamed Hebiri, Luca Oneto, Massimiliano Pontil• 2020

Related benchmarks

TaskDatasetResultRank
Fairness-aware RegressionCommunities and Crime
RMSE1.296
12
Fair RegressionLaw School Dataset
RMSE1.0238
9
RegressionLaw School (LSAC) (test)
RMSE1.0239
6
RegressionLaw School
RMSE1.038
5
Fair RegressionSynthetic Data
RMSE85.34
3
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