Brownian Noise Reduction: Maximizing Privacy Subject to Accuracy Constraints

06/15/2022
by   Justin Whitehouse, et al.
0

There is a disconnect between how researchers and practitioners handle privacy-utility tradeoffs. Researchers primarily operate from a privacy first perspective, setting strict privacy requirements and minimizing risk subject to these constraints. Practitioners often desire an accuracy first perspective, possibly satisfied with the greatest privacy they can get subject to obtaining sufficiently small error. Ligett et al. have introduced a "noise reduction" algorithm to address the latter perspective. The authors show that by adding correlated Laplace noise and progressively reducing it on demand, it is possible to produce a sequence of increasingly accurate estimates of a private parameter while only paying a privacy cost for the least noisy iterate released. In this work, we generalize noise reduction to the setting of Gaussian noise, introducing the Brownian mechanism. The Brownian mechanism works by first adding Gaussian noise of high variance corresponding to the final point of a simulated Brownian motion. Then, at the practitioner's discretion, noise is gradually decreased by tracing back along the Brownian path to an earlier time. Our mechanism is more naturally applicable to the common setting of bounded ℓ_2-sensitivity, empirically outperforms existing work on common statistical tasks, and provides customizable control of privacy loss over the entire interaction with the practitioner. We complement our Brownian mechanism with ReducedAboveThreshold, a generalization of the classical AboveThreshold algorithm that provides adaptive privacy guarantees. Overall, our results demonstrate that one can meet utility constraints while still maintaining strong levels of privacy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/24/2023

Adaptive Privacy Composition for Accuracy-first Mechanisms

In many practical applications of differential privacy, practitioners se...
research
08/29/2023

The Relative Gaussian Mechanism and its Application to Private Gradient Descent

The Gaussian Mechanism (GM), which consists in adding Gaussian noise to ...
research
03/22/2022

Improved Differentially Private Euclidean Distance Approximation

This work shows how to privately and more accurately estimate Euclidean ...
research
05/01/2019

The Podium Mechanism: Improving on the Laplace and Staircase Mechanisms

The Podium mechanism guarantees (ϵ, 0)-differential privacy by sampling ...
research
01/19/2022

Kantorovich Mechanism for Pufferfish Privacy

Pufferfish privacy achieves ϵ-indistinguishability over a set of secret ...
research
03/02/2020

Differential Privacy at Risk: Bridging Randomness and Privacy Budget

The calibration of noise for a privacy-preserving mechanism depends on t...
research
02/07/2022

Learning under Storage and Privacy Constraints

Storage-efficient privacy-guaranteed learning is crucial due to enormous...

Please sign up or login with your details

Forgot password? Click here to reset