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Discovering top-k patterns with differential privacy-an accurate approach 被引量:2
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作者 Xiaojian ZHANG Xiaofeng MENG 《Frontiers of Computer Science》 SCIE EI CSCD 2014年第5期816-827,共12页
Frequent pattern mining discovers sets of items that frequently appear together in a transactional database; these can serve valuable economic and research purposes. However, if the database contains sensitive data (... Frequent pattern mining discovers sets of items that frequently appear together in a transactional database; these can serve valuable economic and research purposes. However, if the database contains sensitive data (e.g., user behavior records, electronic health records), directly releas- ing the discovered frequent patterns with support counts will carry significant risk to the privacy of individuals. In this pa- per, we study the problem of how to accurately find the top-k frequent patterns with noisy support counts on transactional databases while satisfying differential privacy. We propose an algorithm, called differentially private frequent pattern (DFP- Growth), that integrates a Laplace mechanism and an expo- nential mechanism to avoid privacy leakage. We theoretically prove that the proposed method is (λ, δ)-useful and differ- entially private. To boost the accuracy of the returned noisy support counts, we take consistency constraints into account to conduct constrained inference in the post-processing step. Extensive experiments, using several real datasets, confirm that our algorithm generates highly accurate noisy support counts and top-k frequent patterns. 展开更多
关键词 frequent pattern mining differential privacy constrained inference.
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