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AuthorAL Bouna, Becharaa
AuthorClifton, Chrisc
AuthorMalluhi, Qutaibah
Available date2024-07-17T07:14:48Z
Publication Date2015
Publication NameJournal of Computer Security
ResourceScopus
Identifierhttp://dx.doi.org/10.3233/JCS-140517
ISSN0926227X
URIhttp://hdl.handle.net/10576/56766
AbstractIn this paper, we study the privacy breach caused by unsafe correlations in transactional data where individuals have multiple tuples in a dataset. We provide two safety constraints to guarantee safe correlation of the data: (1) the safe grouping constraint to ensure that quasi-identifier and sensitive partitions are bounded by l-diversity and (2) the schema decomposition constraint to eliminate non-arbitrary correlations between non-sensitive and sensitive values to protect privacy and at the same time increase the aggregate analysis. In our technique, values are grouped together in unique partitions that enforce l-diversity at the level of individuals. We also propose an association preserving technique to increase the ability to learn/analyze from the anonymized data. To evaluate our approach, we conduct a set of experiments to determine the privacy breach and investigate the anonymization cost of safe grouping and preserving associations.
Languageen
PublisherIOS Press
Subjectdata anonymization
Data privacy
transactional data
TitleAnonymizing transactional datasets
TypeArticle
Pagination89-106
Issue Number1
Volume Number23
dc.accessType Abstract Only


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