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Three Variants of Differential Privacy: Lossless...
Journal article

Three Variants of Differential Privacy: Lossless Conversion and Applications

Abstract

We consider three different variants of differential privacy (DP), namely approximate DP, Rényi DP (RDP), and hypothesis test DP. In the first part, we develop a machinery for optimally relating approximate DP to RDP based on the joint range of two $f$ -divergences that underlie the approximate DP and RDP. In particular, this enables us to derive the optimal approximate DP parameters of a mechanism that satisfies a given level of RDP. As an application, we apply our result to the moments accountant framework for characterizing privacy guarantees of noisy stochastic gradient descent (SGD). When compared to the state-of-the-art, our bounds may lead to about 100 more stochastic gradient descent iterations for training deep learning models for the same privacy budget. In the second part, we establish a relationship between RDP and hypothesis test DP which allows us to translate the RDP constraint into a tradeoff between type I and type II error probabilities of a certain binary hypothesis test. We then demonstrate that for noisy SGD our result leads to tighter privacy guarantees compared to the recently proposed $f$ -DP framework for some range of parameters.

Authors

Asoodeh S; Liao J; Calmon FP; Kosut O; Sankar L

Journal

IEEE Journal on Selected Areas in Information Theory, Vol. 2, No. 1, pp. 208–222

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

March 1, 2021

DOI

10.1109/jsait.2021.3054692

ISSN

2641-8770

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