Knowledge hiding from tree and graph databases

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摘要

Sensitive knowledge hiding is the problem of removing sensitive knowledge from databases before publishing. The problem is extensively studied in the context of relational databases to hide frequent itemsets and association rules. Recently, sequential pattern hiding from sequential (both sequence and spatio-temporal) databases has been investigated [1]. With the ever increasing versatile application demands, new forms of knowledge and databases should be addressed as well. In this work, we address the knowledge hiding problem in the context of tree and graph databases. For these databases efficient frequent pattern mining algorithms have already been developed in the literature. Since, some of the discovered patterns may be attributed as sensitive, we develop appropriate sanitization techniques to protect the privacy of the sensitive patterns.

论文关键词:Data publication,Data mining,Sensitive knowledge hiding,Tree hiding,Graph hiding

论文评审过程:Received 17 November 2010, Revised 8 October 2011, Accepted 10 October 2011, Available online 26 October 2011.

论文官网地址:https://doi.org/10.1016/j.datak.2011.10.002