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title section abstract layout series publisher issn id month tex_title firstpage lastpage page order cycles bibtex_author author date address container-title volume genre issued pdf extras
Some Constructions of Private, Efficient, and Optimal $K$-Norm and Elliptic Gaussian Noise
Original Papers
Differentially private computation often begins with a bound on some $d$-dimensional statistic’s $\ell_p$ sensitivity. For pure differential privacy, the $K$-norm mechanism can improve on this approach using a norm tailored to the statistic’s sensitivity space. Writing down a closed-form description of this optimal norm is often straightforward. However, running the $K$-norm mechanism reduces to uniformly sampling the norm’s unit ball; this ball is a $d$-dimensional convex body, so general sampling algorithms can be slow. Turning to concentrated differential privacy, elliptic Gaussian noise offers similar improvement over spherical Gaussian noise. Once the shape of this ellipse is determined, sampling is easy; however, identifying the best such shape may be hard. This paper solves both problems for the simple statistics of sum, count, and vote. For each statistic, we provide a sampler for the optimal $K$-norm mechanism that runs in time $\tilde O(d^2)$ and derive a closed-form expression for the optimal shape of elliptic Gaussian noise. The resulting algorithms all yield meaningful accuracy improvements while remaining fast and simple enough to be practical. More broadly, we suggest that problem-specific sensitivity space analysis may be an overlooked tool for private additive noise.
inproceedings
Proceedings of Machine Learning Research
PMLR
2640-3498
joseph24a
0
Some Constructions of Private, Efficient, and Optimal $K$-Norm and Elliptic Gaussian Noise
2723
2766
2723-2766
2723
false
Joseph, Matthew and Yu, Alexander
given family
Matthew
Joseph
given family
Alexander
Yu
2024-06-30
Proceedings of Thirty Seventh Conference on Learning Theory
247
inproceedings
date-parts
2024
6
30