View a PDF of the paper titled Who Pays for Fairness? Rethinking Recourse under Social Burden, by Ainhize Barrainkua and 3 other authors
Abstract:Machine learning based predictions are increasingly used in sensitive decision-making applications that directly affect our lives. This has led to extensive research into ensuring the fairness of classifiers. Beyond just fair classification, emerging legislation now mandates that when a classifier delivers a negative decision, it must also offer actionable steps an individual can take to reverse that outcome. This concept is known as algorithmic recourse. Nevertheless, many researchers have expressed concerns about the fairness guarantees within the recourse process itself. In this work, we provide a holistic theoretical characterization of unfairness in algorithmic recourse, formally linking fairness guarantees in recourse and classification, and highlighting limitations of the standard equal cost paradigm. We then introduce a novel fairness framework based on social burden, along with a practical algorithm (MISOB), broadly applicable under real-world conditions. Empirical results on real-world datasets show that MISOB reduces the social burden across all groups without compromising overall classifier accuracy.
Submission history
From: Giovanni De Toni [view email]
[v1]
Thu, 4 Sep 2025 11:53:42 UTC (477 KB)
[v2]
Wed, 8 Oct 2025 11:28:46 UTC (485 KB)