The Privacy-Utility Tradeoff of Robust Local Differential Privacy

We consider data release protocols for data X=(S,U), where S is sensitive; the released data Y contains as much information about X as possible, measured as I(X;Y), without leaking too much about S. We introduce the Robust Local Differential Privacy (RLDP) framework to measure privacy. This framework relies on the underlying distribution of the data, which needs to be estimated from available data. Robust privacy guarantees are ensuring privacy for all distributions in a given set ℱ, for which we study two cases: when ℱ is the set of all distributions, and when ℱ is a confidence set arising from a χ^2 test on a publicly available dataset. In the former case we introduce a new release protocol which we prove to be optimal in the low privacy regime. In the latter case we present four algorithms that construct RLDP protocols from a given dataset. One of these approximates ℱ by a polytope and uses results from robust optimisation to yield high utility release protocols. However, this algorithm relies on vertex enumeration and becomes computationally inaccessible for large input spaces. The other three algorithms are low-complexity and build on randomised response. Experiments verify that all four algorithms offer significantly improved utility over regular LDP.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/10/2022

Robust Optimization for Local Differential Privacy

We consider the setting of publishing data without leaking sensitive inf...
research
02/04/2020

The Privacy Funnel from the viewpoint of Local Differential Privacy

We consider a database X⃗ = (X_1,...,X_n) containing the data of n users...
research
08/30/2020

Data Sanitisation Protocols for the Privacy Funnel with Differential Privacy Guarantees

In the Open Data approach, governments and other public organisations wa...
research
11/12/2021

Differential privacy and robust statistics in high dimensions

We introduce a universal framework for characterizing the statistical ef...
research
05/18/2019

Quantifying Differential Privacy of Gossip Protocols in General Networks

In this work, we generalize the study of quantifying the differential pr...
research
02/19/2019

Who started this rumor? Quantifying the natural differential privacy guarantees of gossip protocols

Gossip protocols, also called rumor spreading or epidemic protocols, are...
research
03/07/2022

Continual and Sliding Window Release for Private Empirical Risk Minimization

It is difficult to continually update private machine learning models wi...

Please sign up or login with your details

Forgot password? Click here to reset