Private Lossless Multiple Release
Joel Daniel Andersson, Lukas Retschmeier, Boel Nelson, Rasmus Pagh

TL;DR
This paper introduces a framework for lossless multiple releases in differential privacy, enabling sequential releases with arbitrary privacy parameters while maintaining optimal privacy guarantees, applicable to Gaussian, Laplace, and Poisson mechanisms.
Contribution
It generalizes gradual release to a multiple release setting, providing lossless mechanisms for various noise distributions and efficient methods for sparse histograms.
Findings
Lossless multiple release is achievable for a broad class of mechanisms.
The Gaussian mechanism can be used with a simple, self-contained lossless release method.
Efficient release of sparse histograms with dimension-independent runtime.
Abstract
Koufogiannis et al. (2016) showed a result for Laplace noise-based differentially private mechanisms: given an -DP release, a new release with privacy parameter can be computed such that the combined privacy loss of both releases is at most and the distribution of the latter is the same as a single release with parameter . They also showed gradual release techniques for Gaussian noise, later also explored by Whitehouse et al. (2022). In this paper, we consider a more general setting in which analysts hold private releases with different privacy parameters corresponding to different access/trust levels. These releases are determined one by one, with privacy parameters in arbitrary order. A multiple release is if having access to a subset …
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Auction Theory and Applications
