FairTest: Discovering Unwarranted Associations in Data-Driven Applications
Florian Tram\`er, Vaggelis Atlidakis, Roxana Geambasu, Daniel Hsu,, Jean-Pierre Hubaux, Mathias Humbert, Ari Juels, Huang Lin

TL;DR
FairTest is a comprehensive tool that systematically detects and analyzes unfair associations in data-driven applications, helping developers identify biases related to sensitive attributes like race or gender.
Contribution
It introduces the UA framework for discovering unwarranted associations and implements it in FairTest, a tool for scalable, rigorous fairness analysis in applications.
Findings
Detected biases against older populations in health data
Identified offensive racial labeling in image tagging
Addressed disparate impacts in multiple applications
Abstract
In a world where traditional notions of privacy are increasingly challenged by the myriad companies that collect and analyze our data, it is important that decision-making entities are held accountable for unfair treatments arising from irresponsible data usage. Unfortunately, a lack of appropriate methodologies and tools means that even identifying unfair or discriminatory effects can be a challenge in practice. We introduce the unwarranted associations (UA) framework, a principled methodology for the discovery of unfair, discriminatory, or offensive user treatment in data-driven applications. The UA framework unifies and rationalizes a number of prior attempts at formalizing algorithmic fairness. It uniquely combines multiple investigative primitives and fairness metrics with broad applicability, granular exploration of unfair treatment in user subgroups, and incorporation of natural…
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Taxonomy
TopicsEthics and Social Impacts of AI · Privacy-Preserving Technologies in Data · Explainable Artificial Intelligence (XAI)
