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Learn about novel statistical methods for assessing f-Differential Privacy (f-DP) through this 19-minute conference presentation from USENIX Security '25. Explore how researchers from Ruhr-University Bochum, Aarhus University, University of Victoria, and Georgia Institute of Technology address the challenge of validating f-DP mechanisms in black-box settings without requiring prior knowledge of the investigated algorithm. Discover new black-box methods that provide complete estimates of f-DP trade-off curves with theoretical convergence guarantees, and examine an efficient auditing approach that empirically detects f-DP violations with statistical certainty by combining non-parametric estimation and optimal classification theory. Understand how f-DP serves as a refinement of standard differential privacy, addressing weaknesses including tightness under algorithmic composition, and see experimental demonstrations of the effectiveness of these estimation and auditing procedures across various DP mechanisms.
Syllabus
USENIX Security '25 - General-Purpose f-DP Estimation and Auditing in a Black-Box Setting
Taught by
USENIX