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On the Role of Data Anonymization in Machine Learning Privacy

Navoda Senavirathne, Vicenç Torra

202027 citationsDOI

Abstract

Data anonymization irrecoverably transforms the raw data into a protected version by eliminating direct identifiers and removing sufficient details from indirect identifiers in order to minimize the risk of re-identification when there is a requirement for data publishing. Nevertheless, data protection laws (i.e., GDPR) do not consider anonymized data as personal data thus allowing them to be freely used, analysed, shared and monetized without a compliance risk. Motivated by the above advantages, it is plausible that the data controllers anonymize the data before releasing them for any data analysis tasks such as machine learning (ML); which is applied in a wide variety of domains where personal data are used. Moreover, in recent research, it has shown that ML models are vulnerable to privacy attacks as they retain sensitive information from the training data. Taking all of these facts into consideration, in this work we explore the interplay between data anonymization and ML with the ultimate aim of clarifying whether data anonymization is sufficient to achieve privacy for ML under different adversarial scenarios. We also discuss the challenges and opportunities of integrating these two domains. As per our findings, it is conspicuous that in order to substantially minimize the privacy risks in ML, existing data anonymization techniques have to be applied with high privacy levels that cause a deterioration in model utility.

Topics & Concepts

Data anonymizationComputer scienceData publishingIdentifierRaw dataInformation privacyData modelingIdentification (biology)Data miningAdversarial systemData Protection Act 1998Variety (cybernetics)Computer securityOrder (exchange)Threat modelInternet privacyPublishingArtificial intelligenceDatabaseComputer networkPolitical scienceFinanceProgramming languageLawBiologyEconomicsBotanyPrivacy-Preserving Technologies in DataCryptography and Data SecurityAdversarial Robustness in Machine Learning
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