Sciweavers

AEI
2007

MICF: An effective sanitization algorithm for hiding sensitive patterns on data mining

13 years 4 months ago
MICF: An effective sanitization algorithm for hiding sensitive patterns on data mining
Data mining mechanisms have widely been applied in various businesses and manufacturing companies across many industry sectors. Sharing data or sharing mined rules has become a trend among business partnerships, as it is perceived to be a mutually benefit way of increasing productivity for all parties involved. Nevertheless, this has also increased the risk of unexpected information leaks when releasing data. To conceal restrictive itemsets (patterns) contained in the source database, a sanitization process transforms the source database into a released database that the counterpart cannot extract sensitive rules from. The transformed result also conceals non-restrictive information as an unwanted event, called a side effect or the “misses cost.” The problem of finding an optimal sanitization method, which conceals all restrictive itemsets but minimizes the misses cost, is NP-hard. To address this challenging problem, this study proposes the Maximum Item Conflict First (MICF) algo...
Yu-Chiang Li, Jieh-Shan Yeh, Chin-Chen Chang
Added 08 Dec 2010
Updated 08 Dec 2010
Type Journal
Year 2007
Where AEI
Authors Yu-Chiang Li, Jieh-Shan Yeh, Chin-Chen Chang
Comments (0)