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Fairness Auditing with Multi-Agent Collaboration

Authors :
de Vos, Martijn
Dhasade, Akash
Bourrée, Jade Garcia
Kermarrec, Anne-Marie
Merrer, Erwan Le
Rottembourg, Benoit
Tredan, Gilles
Publication Year :
2024

Abstract

Existing work in fairness auditing assumes that each audit is performed independently. In this paper, we consider multiple agents working together, each auditing the same platform for different tasks. Agents have two levers: their collaboration strategy, with or without coordination beforehand, and their strategy for sampling appropriate data points. We theoretically compare the interplay of these levers. Our main findings are that (i) collaboration is generally beneficial for accurate audits, (ii) basic sampling methods often prove to be effective, and (iii) counter-intuitively, extensive coordination on queries often deteriorates audits accuracy as the number of agents increases. Experiments on three large datasets confirm our theoretical results. Our findings motivate collaboration during fairness audits of platforms that use ML models for decision-making.<br />Comment: 14 pages, 7 figures, ECAI

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.08522
Document Type :
Working Paper