Litcius/Paper detail

Disparate Vulnerability to Membership Inference Attacks

Kulynych Bogdan, Yaghini Mohammad, Giovanni Cherubin, Michael Veale, Carmela Troncoso

2022DOAJ (DOAJ: Directory of Open Access Journals)24 citationsDOIOpen Access PDF

Abstract

A membership inference attack (MIA) against a machine-learning model enables an attacker to determine whether a given data record was part of the model’s training data or not. In this paper, we provide an in-depth study of the phenomenon of disparate vulnerability against MIAs: unequal success rate of MIAs against different population subgroups. We first establish necessary and sufficient conditions for MIAs to be prevented, both on average and for population subgroups, using a notion of distributional generalization. Second, we derive connections of disparate vulnerability to algorithmic fairness and to differential privacy. We show that fairness can only prevent disparate vulnerability against limited classes of adversaries. Differential privacy bounds disparate vulnerability but can significantly reduce the accuracy of the model. We show that estimating disparate vulnerability by naïvely applying existing attacks can lead to overestimation. We then establish which attacks are suitable for estimating disparate vulnerability, and provide a statistical framework for doing so reliably. We conduct experiments on synthetic and real-world data finding significant evidence of disparate vulnerability in realistic settings.

Topics & Concepts

Vulnerability (computing)GeneralizationInferenceComputer scienceComputer securityPopulationDisparate impactVulnerability assessmentDifferential (mechanical device)Data miningEconometricsArtificial intelligenceMathematicsPsychologyEngineeringSocial psychologyLawDemographyPolitical scienceSociologyPsychological resilienceMathematical analysisAerospace engineeringSupreme courtPrivacy-Preserving Technologies in DataEthics and Social Impacts of AIAdversarial Robustness in Machine Learning