On the relation between Differential Privacy and Quantitative Information Flow
M\'ario S. Alvim (INRIA Saclay - Ile de France), Miguel E. Andr\'es, (INRIA Saclay - Ile de France), Konstantinos Chatzikokolakis (INRIA Saclay -, Ile de France), Catuscia Palamidessi (INRIA Saclay - Ile de France)

TL;DR
This paper explores the relationship between differential privacy and information leakage using Rényi min entropy, analyzing how graph symmetries influence privacy guarantees and utility, and proposing methods to optimize privacy-utility trade-offs.
Contribution
It provides a theoretical framework linking differential privacy with information flow, focusing on graph symmetries and utility functions to derive bounds and optimal mechanisms.
Findings
Close relation between differential privacy and leakage due to graph symmetries
Utility functions called 'binary' relate to Rényi min mutual information
Methods to construct optimal-utility mechanisms while preserving privacy
Abstract
Differential privacy is a notion that has emerged in the community of statistical databases, as a response to the problem of protecting the privacy of the database's participants when performing statistical queries. The idea is that a randomized query satisfies differential privacy if the likelihood of obtaining a certain answer for a database is not too different from the likelihood of obtaining the same answer on adjacent databases, i.e. databases which differ from for only one individual. Information flow is an area of Security concerned with the problem of controlling the leakage of confidential information in programs and protocols. Nowadays, one of the most established approaches to quantify and to reason about leakage is based on the R\'enyi min entropy version of information theory. In this paper, we analyze critically the notion of differential privacy in light of the…
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