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Evaluations of Machine Learning Privacy Defenses are Misleading

Authors :
Aerni, Michael
Zhang, Jie
Tramèr, Florian
Publication Year :
2024

Abstract

Empirical defenses for machine learning privacy forgo the provable guarantees of differential privacy in the hope of achieving higher utility while resisting realistic adversaries. We identify severe pitfalls in existing empirical privacy evaluations (based on membership inference attacks) that result in misleading conclusions. In particular, we show that prior evaluations fail to characterize the privacy leakage of the most vulnerable samples, use weak attacks, and avoid comparisons with practical differential privacy baselines. In 5 case studies of empirical privacy defenses, we find that prior evaluations underestimate privacy leakage by an order of magnitude. Under our stronger evaluation, none of the empirical defenses we study are competitive with a properly tuned, high-utility DP-SGD baseline (with vacuous provable guarantees).<br />Comment: Accepted at ACM CCS 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.17399
Document Type :
Working Paper
Full Text :
https://doi.org/10.1145/3658644.3690194