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M.Tech / M.E / PhD Thesis | Computer Science & Engineering | India | Volume 5 Issue 6, June 2016 | Rating: 6.8 / 10
FIM-Anonymizing Using Tree Structured Data
Rabitha T, Farzin Ahammed T
Abstract: FIM-anonymizing using tree structured data study about the problem of protecting privacy in the publication of set-valued data. Considering a collection of supermarket transactional data that contains detailed information about items bought together by individuals. Even after removing all personal characteristics of the buyer, which can serve as a link to his identity, thus resulting to privacy attacks from adversaries who have partial knowledge about the set. Depending upon the point of view of the adversaries. We define a new version of the k-anonymity guarantee. Our anonymization model relies on generalization instead of suppression. We develop an algorithm which find the frequent item set. The frequent-itemsets problem is that of nding sets of items that appear in (are related to) many of the same dataset. .
Keywords: Anonymity, generalization, information loss, synopsis tree, frequent item set mining
Edition: Volume 5 Issue 6, June 2016,
Pages: 1600 - 1604