2021
DOI: 10.11591/ijece.v11i4.pp3451-3458
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Association rule hiding using integer linear programming

Abstract: <span>Privacy preserving data mining has become the focus of attention of government statistical agencies and database security research community who are concerned with preventing privacy disclosure during data mining. Repositories of large datasets include sensitive rules that need to be concealed from unauthorized access. Hence, association rule hiding emerged as one of the powerful techniques for hiding sensitive knowledge that exists in data before it is published. In this paper, we present a constr… Show more

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