Litcius/Paper detail

A Critical Review on the Use (and Misuse) of Differential Privacy in Machine Learning

Alberto Blanco-Justicia, David Sánchez, Josep Domingo‐Ferrer, Krishnamurty Muralidhar

2022ACM Computing Surveys77 citationsDOI

Abstract

We review the use of differential privacy (DP) for privacy protection in machine learning (ML). We show that, driven by the aim of preserving the accuracy of the learned models, DP-based ML implementations are so loose that they do not offer the ex ante privacy guarantees of DP. Instead, what they deliver is basically noise addition similar to the traditional (and often criticized) statistical disclosure control approach. Due to the lack of formal privacy guarantees, the actual level of privacy offered must be experimentally assessed ex post , which is done very seldom. In this respect, we present empirical results showing that standard anti-overfitting techniques in ML can achieve a better utility/privacy/efficiency tradeoff than DP.

Topics & Concepts

Computer scienceDifferential privacyOverfittingImplementationMachine learningNoise (video)Artificial intelligenceComputer securityData miningSoftware engineeringArtificial neural networkImage (mathematics)Privacy-Preserving Technologies in DataCryptography and Data SecurityAdversarial Robustness in Machine Learning