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Survey on fairness notions and related tensions

  • Guilherme Alves
  • , Fabien Bernier
  • , Miguel Couceiro
  • , Karima Makhlouf
  • , Catuscia Palamidessi
  • , Sami Zhioua
  • Nancy Université
  • INRIA Institut National de Recherche en Informatique et en Automatique

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

Résumé

Automated decision systems are increasingly used to take consequential decisions in problems such as job hiring and loan granting with the hope of replacing subjective human decisions with objective machine learning (ML) algorithms. However, ML-based decision systems are prone to bias, which results in yet unfair decisions. Several notions of fairness have been defined in the literature to capture the different subtleties of this ethical and social concept (e.g., statistical parity, equal opportunity, etc.). Fairness requirements to be satisfied while learning models created several types of tensions among the different notions of fairness and other desirable properties such as privacy and classification accuracy. This paper surveys the commonly used fairness notions and discusses the tensions among them with privacy and accuracy. Different methods to address the fairness-accuracy trade-off (classified into four approaches, namely, pre-processing, in-processing, post-processing, and hybrid) are reviewed. The survey is consolidated with experimental analysis carried out on fairness benchmark datasets to illustrate the relationship between fairness measures and accuracy in real-world scenarios.

langue originaleAnglais
Numéro d'article100033
journalEURO Journal on Decision Processes
Volume11
Les DOIs
étatPublié - 1 janv. 2023

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