2024
DOI: 10.3390/data9060075
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De-Anonymizing Users across Rating Datasets via Record Linkage and Quasi-Identifier Attacks

Nicolás Torres,
Patricio Olivares

Abstract: The widespread availability of pseudonymized user datasets has enabled personalized recommendation systems. However, recent studies have shown that users can be de-anonymized by exploiting the uniqueness of their data patterns, raising significant privacy concerns. This paper presents a novel approach that tackles the challenging task of linking user identities across multiple rating datasets from diverse domains, such as movies, books, and music, by leveraging the consistency of users’ rating patterns as high… Show more

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