Fully Adaptive Composition in Differential Privacy
Justin Whitehouse, Aaditya Ramdas, Ryan Rogers, Zhiwei Steven, Wu

TL;DR
This paper develops new privacy filters and odometers for fully adaptive differential privacy composition, matching advanced composition rates and constants, enabling flexible privacy management during data analysis.
Contribution
It introduces practical, tight privacy filters and odometers for adaptive composition, overcoming previous limitations and enabling near-optimal privacy guarantees in adaptive settings.
Findings
Constructed filters matching advanced composition rates.
Developed odometers with tight bounds at arbitrary points.
Achieved privacy guarantees with minimal loss in adaptivity.
Abstract
Composition is a key feature of differential privacy. Well-known advanced composition theorems allow one to query a private database quadratically more times than basic privacy composition would permit. However, these results require that the privacy parameters of all algorithms be fixed before interacting with the data. To address this, Rogers et al. introduced fully adaptive composition, wherein both algorithms and their privacy parameters can be selected adaptively. They defined two probabilistic objects to measure privacy in adaptive composition: privacy filters, which provide differential privacy guarantees for composed interactions, and privacy odometers, time-uniform bounds on privacy loss. There are substantial gaps between advanced composition and existing filters and odometers. First, existing filters place stronger assumptions on the algorithms being composed. Second, these…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Internet Traffic Analysis and Secure E-voting · Cryptography and Data Security
