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A Survey on Differential Privacy for Unstructured Data Content

Ying Zhao, Jinjun Chen

2022ACM Computing Surveys294 citationsDOI

Abstract

Huge amounts of unstructured data including image, video, audio, and text are ubiquitously generated and shared, and it is a challenge to protect sensitive personal information in them, such as human faces, voiceprints, and authorships. Differential privacy is the standard privacy protection technology that provides rigorous privacy guarantees for various data. This survey summarizes and analyzes differential privacy solutions to protect unstructured data content before it is shared with untrusted parties. These differential privacy methods obfuscate unstructured data after they are represented with vectors and then reconstruct them with obfuscated vectors. We summarize specific privacy models and mechanisms together with possible challenges in them. We also discuss their privacy guarantees against AI attacks and utility losses. Finally, we discuss several possible directions for future research.

Topics & Concepts

Differential privacyComputer scienceInternet privacyPrivacy protectionComputer securityPrivacy softwareUnstructured dataDifferential (mechanical device)Information privacyPersonally identifiable informationData miningBig dataEngineeringAerospace engineeringPrivacy-Preserving Technologies in DataCryptography and Data SecurityPrivacy, Security, and Data Protection
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