Why Does Differential Privacy with Large Epsilon Defend Against Practical Membership Inference Attacks?
Andrew Lowy, Zhuohang Li, Jing Liu, Toshiaki Koike-Akino, Kieran, Parsons, Ye Wang

TL;DR
This paper investigates why large epsilon differential privacy can still defend against practical membership inference attacks, introducing a new privacy notion called practical membership privacy (PMP) to explain empirical observations.
Contribution
The paper introduces PMP, a new privacy framework that explains how large epsilon DP can effectively prevent practical MIAs, bridging the gap between theory and real-world observations.
Findings
Large epsilon DP often results in a small PMP parameter.
Analysis of exponential and Gaussian mechanisms shows strong privacy guarantees.
Provides guidance for practitioners on selecting DP parameters.
Abstract
For small privacy parameter , -differential privacy (DP) provides a strong worst-case guarantee that no membership inference attack (MIA) can succeed at determining whether a person's data was used to train a machine learning model. The guarantee of DP is worst-case because: a) it holds even if the attacker already knows the records of all but one person in the data set; and b) it holds uniformly over all data sets. In practical applications, such a worst-case guarantee may be overkill: practical attackers may lack exact knowledge of (nearly all of) the private data, and our data set might be easier to defend, in some sense, than the worst-case data set. Such considerations have motivated the industrial deployment of DP models with large privacy parameter (e.g. ), and it has been observed empirically that DP with large can successfully…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Privacy, Security, and Data Protection · Access Control and Trust
MethodsSparse Evolutionary Training
