Universally Utility-Maximizing Privacy Mechanisms
Abstract
A mechanism for releasing information about a statistical database with sensitive data must resolve a trade-off between utility and privacy. Privacy can be rigorously quantified using the framework of {\em differential privacy}, which requires that a mechanism's output distribution is nearly the same whether or not a given database row is included or excluded. The goal of this paper is strong and general utility guarantees, subject to differential privacy. We pursue mechanisms that guarantee near-optimal utility to every potential user, independent of its side information (modeled as a prior distribution over query results) and preferences (modeled via a loss function). Our main result is: for each fixed count query and differential privacy level, there is a {\em geometric mechanism} -- a discrete variant of the simple and well-studied Laplace mechanism -- that is {\em simultaneously expected loss-minimizing} for every possible user, subject to the differential privacy constraint. This is an extremely strong utility guarantee: {\em every} potential user , no matter what its side information and preferences, derives as much utility from as from interacting with a differentially private mechanism that is optimally tailored to .
Cite
@article{arxiv.0811.2841,
title = {Universally Utility-Maximizing Privacy Mechanisms},
author = {Arpita Ghosh and Tim Roughgarden and Mukund Sundararajan},
journal= {arXiv preprint arXiv:0811.2841},
year = {2009}
}
Comments
rewritten for clarity, typos corrected