Adversarial Reweighting Guided by Wasserstein Distance for Bias Mitigation

The unequal representation of different groups in a sample population can lead to discrimination of minority groups when machine learning models make automated decisions. To address these issues, fairness-aware machine learning jointly optimizes two (or more) metrics aiming at predictive effectivene...

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Veröffentlicht in:arXiv.org 2023-11
Hauptverfasser: Zhao, Xuan, Fabbrizzi, Simone, Paula Reyero Lobo, Ghodsi, Siamak, Broelemann, Klaus, Staab, Steffen, Kasneci, Gjergji
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Fabbrizzi, Simone
Paula Reyero Lobo
Ghodsi, Siamak
Broelemann, Klaus
Staab, Steffen
Kasneci, Gjergji
description The unequal representation of different groups in a sample population can lead to discrimination of minority groups when machine learning models make automated decisions. To address these issues, fairness-aware machine learning jointly optimizes two (or more) metrics aiming at predictive effectiveness and low unfairness. However, the inherent under-representation of minorities in the data makes the disparate treatment of subpopulations less noticeable and difficult to deal with during learning. In this paper, we propose a novel adversarial reweighting method to address such \emph{representation bias}. To balance the data distribution between the majority and the minority groups, our approach deemphasizes samples from the majority group. To minimize empirical risk, our method prefers samples from the majority group that are close to the minority group as evaluated by the Wasserstein distance. Our theoretical analysis shows the effectiveness of our adversarial reweighting approach. Experiments demonstrate that our approach mitigates bias without sacrificing classification accuracy, outperforming related state-of-the-art methods on image and tabular benchmark datasets.
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subjects Bias
Effectiveness
Empirical analysis
Machine learning
Minority & ethnic groups
Representations
title Adversarial Reweighting Guided by Wasserstein Distance for Bias Mitigation
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