49
5

On the Relation Between Identifiability, Differential Privacy and Mutual-Information Privacy

Abstract

This paper investigates the relation between three different notions of privacy: identifiability, differential privacy and mutual-information privacy. Under a unified privacy-distortion framework, where the distortion is defined to be the Hamming distance of the input and output databases, we establish some fundamental connections between these three privacy notions. Given a distortion level DD, define ϵi(D)\epsilon_{\mathrm{i}}^*(D) to be the smallest (best) identifiability level, and ϵd(D)\epsilon_{\mathrm{d}}^*(D) to be the smallest differential privacy level. We characterize ϵi(D)\epsilon_{\mathrm{i}}^*(D) and ϵd(D)\epsilon_{\mathrm{d}}^*(D), and prove that ϵi(D)ϵXϵd(D)ϵi(D)\epsilon_{\mathrm{i}}^*(D)-\epsilon_X\le\epsilon_{\mathrm{d}}^*(D)\le\epsilon_{\mathrm{i}}^*(D) for DD in some range, where ϵX\epsilon_X is a constant depending on the distribution of the original database XX, and diminishes to zero when the distribution of XX is uniform. Furthermore, we show that identifiability and mutual-information privacy are consistent in the sense that given distortion level DD, the mechanism that optimizes the mutual-information privacy also minimizes the identifiability level.

View on arXiv
Comments on this paper

We use cookies and other tracking technologies to improve your browsing experience on our website, to show you personalized content and targeted ads, to analyze our website traffic, and to understand where our visitors are coming from. See our policy.