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Cost Efficient Fairness Audit Under Partial Feedback

Main:10 Pages
5 Figures
Bibliography:4 Pages
6 Tables
Appendix:27 Pages
Abstract

We study the problem of auditing the fairness of a given classifier under partial feedback, where true labels are available only for positively classified individuals, (e.g., loan repayment outcomes are observed only for approved applicants). We introduce a novel cost model for acquiring additional labeled data, designed to more accurately reflect real-world costs such as credit assessment, loan processing, and potential defaults. Our goal is to find optimal fairness audit algorithms that are more cost-effective than random exploration and natural baselines.

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