Paper ID: 2406.19066

Dancing in the Shadows: Harnessing Ambiguity for Fairer Classifiers

Ainhize Barrainkua, Paula Gordaliza, Jose A. Lozano, Novi Quadrianto

This paper introduces a novel approach to bolster algorithmic fairness in scenarios where sensitive information is only partially known. In particular, we propose to leverage instances with uncertain identity with regards to the sensitive attribute to train a conventional machine learning classifier. The enhanced fairness observed in the final predictions of this classifier highlights the promising potential of prioritizing ambiguity (i.e., non-normativity) as a means to improve fairness guarantees in real-world classification tasks.

Submitted: Jun 27, 2024