Abstract
As in traditional machine learning models, models trained with federated learning may exhibit disparate performance across demographic groups. Model holders must identify these disparities to mitigate undue harm to the groups. However, measuring a model's performance in a group requires access to information about group membership which, for privacy reasons, often has limited availability. We propose novel locally differentially private mechanisms to measure differences in performance across groups while protecting the privacy of group membership. To analyze the effectiveness of the mechanisms, we bound their error in estimating a disparity when optimized for a given privacy budget. Our results show that the error rapidly decreases for realistic numbers of participating clients, demonstrating that, contrary to what prior work suggested, protecting privacy is not necessarily in conflict with identifying performance disparities of federated models.
Original language | English (US) |
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Pages (from-to) | 67-85 |
Number of pages | 19 |
Journal | Proceedings of Machine Learning Research |
Volume | 214 |
State | Published - 2023 |
Event | 2023 Workshop on Algorithmic Fairness through the Lens of Causality and Privacy, AFCP 2022 - Hybrid, New Orleans, United States Duration: Dec 3 2022 → … |
All Science Journal Classification (ASJC) codes
- Artificial Intelligence
- Software
- Control and Systems Engineering
- Statistics and Probability
Keywords
- algorithmic fairness
- differential privacy
- federated learning