Identification, Amplification and Measurement: A bridge to Gaussian Differential Privacy

10/17/2022
by   YI LIU, et al.
0

Gaussian differential privacy (GDP) is a single-parameter family of privacy notions that provides coherent guarantees to avoid the exposure of sensitive individual information. Despite the extra interpretability and tighter bounds under composition GDP provides, many widely used mechanisms (e.g., the Laplace mechanism) inherently provide GDP guarantees but often fail to take advantage of this new framework because their privacy guarantees were derived under a different background. In this paper, we study the asymptotic properties of privacy profiles and develop a simple criterion to identify algorithms with GDP properties. We propose an efficient method for GDP algorithms to narrow down possible values of an optimal privacy measurement, μ with an arbitrarily small and quantifiable margin of error. For non GDP algorithms, we provide a post-processing procedure that can amplify existing privacy guarantees to meet the GDP condition. As applications, we compare two single-parameter families of privacy notions, ϵ-DP, and μ-GDP, and show that all ϵ-DP algorithms are intrinsically also GDP. Lastly, we show that the combination of our measurement process and the composition theorem of GDP is a powerful and convenient tool to handle compositions compared to the traditional standard and advanced composition theorems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/19/2022

Composition Theorems for Interactive Differential Privacy

An interactive mechanism is an algorithm that stores a data set and answ...
research
08/28/2023

Composition in Differential Privacy for General Granularity Notions (Long Version)

The composition theorems of differential privacy (DP) allow data curator...
research
04/15/2020

Unifying Privacy Loss Composition for Data Analytics

Differential privacy (DP) provides rigorous privacy guarantees on indivi...
research
05/07/2019

Gaussian Differential Privacy

Differential privacy has seen remarkable success as a rigorous and pract...
research
03/10/2020

Sharp Composition Bounds for Gaussian Differential Privacy via Edgeworth Expansion

Datasets containing sensitive information are often sequentially analyze...
research
05/29/2019

Privacy Amplification by Mixing and Diffusion Mechanisms

A fundamental result in differential privacy states that the privacy gua...
research
09/27/2022

On the Choice of Databases in Differential Privacy Composition

Differential privacy (DP) is a widely applied paradigm for releasing dat...

Please sign up or login with your details

Forgot password? Click here to reset