The Unfairness of ε-Fairness

12 Pages Posted: 6 Jun 2024

See all articles by Thorsten Schmidt

Thorsten Schmidt

University of Freiburg

Tolulope Rhoda Fadina

affiliation not provided to SSRN

Date Written: June 01, 2024

Abstract

Fairness in decision-making processes is often quantified using probabilistic metrics. However, these metrics may not fully capture the real-world consequences of unfairness. In this article, we adopt a utility-based approach to more accurately measure the real-world impacts of decision-making process. In particular, we show that if the concept of εfairness is employed, it can possibly lead to outcomes that are maximally unfair in the real-world context. Additionally, we address the common issue of unavailable data on false negatives by proposing a reduced setting that still captures essential fairness considerations. We illustrate our findings with two real-world examples: college admissions and credit risk assessment. Our analysis reveals that while traditional probability-based evaluations might suggest fairness, a utility-based approach uncovers the necessary actions to truly achieve equality. For instance, in the college admission case, we find that enhancing completion rates is crucial for ensuring fairness. Summarising, this paper highlights the importance of considering the real-world context when evaluating fairness.

Keywords: fairness, machine learning, regulation of AI, expected utility

Suggested Citation

Schmidt, Thorsten and Fadina, Tolulope Rhoda, The Unfairness of ε-Fairness (June 01, 2024). Available at SSRN: https://ssrn.com/abstract=4853287 or http://dx.doi.org/10.2139/ssrn.4853287

Thorsten Schmidt (Contact Author)

University of Freiburg ( email )

Fahnenbergplatz
Freiburg, D-79085
Germany

Tolulope Rhoda Fadina

affiliation not provided to SSRN

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