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Active Fairness Auditing

The fast spreading adoption of machine learning (ML) by companies across industries poses significant regulatory challenges. One such challenge is scalability: how can regulatory bodies efficiently audit these ML models, ensuring that they are fair? In this paper, we initiate the study of query-based auditing algorithms that can estimate the demographic parity of ML models in a query-efficient manner. We propose an optimal deterministic algorithm, as well as a practical randomized, oracle-efficient algorithm with comparable guarantees. Furthermore, we make inroads into understanding the optimal query complexity of randomized active fairness estimation algorithms. Our first exploration of active fairness estimation aims to put AI governance on firmer theoretical foundations.

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Related contextRelated contextCo-authorshipAuthorshipAuthorshipTopic signalTopic signalTopic signalWActive Fairness Auditingpreprint / 2022ATom YanResearcherAChicheng ZhangResearcherTMachine Learning49008 worksTcs.CY4196 worksTData Structures and Alg...3564 works
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Active Fairness Auditing

preprint / 2022

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