Home
Scholarly Works
Optimal Multidimensional Differentially Private...
Conference

Optimal Multidimensional Differentially Private Mechanisms in the Large-Composition Regime

Abstract

We construct vector differentially-private (DP) mechanisms that are asymptotically optimal in the limit of the number of compositions growing without bound. First, we derive via the central limit theorem a reduction from DP to a KL-divergence minimization problem. Second, we formulate the general theory of spherically-symmetric DP mechanisms in the large-composition regime. Specifically, we show that additive, continuous, spherically-symmetric DP mechanisms are optimal if one considers a spherically-symmetric cost (e.g., bounded noise variance) and an ℓ2 sensitivity metric. We then formulate a finite-dimensional problem that produces noise distributions that can get arbitrarily close to optimal among monotone mechanisms. Finally, we demonstrate numerically that our proposed mechanism achieves better DP parameters than the vector Gaussian mechanism for the same variance constraint.

Authors

Alghamdi W; Asoodeh S; Calmon FP; Gomez JF; Kosut O; Sankar L

Volume

00

Pagination

pp. 2195-2200

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

June 30, 2023

DOI

10.1109/isit54713.2023.10206658

Name of conference

2023 IEEE International Symposium on Information Theory (ISIT)
View published work (Non-McMaster Users)

Contact the Experts team