Author(s): Kshitij Pathak | Narendra S. Chaudhari | Aruna Tiwari
Journal: International Journal of Computer Applications
ISSN 0975-8887
Volume: comnetcs;
Issue: 1;
Date: 2012;
Original page
Keywords: Frequent Item sets | Data Mining | Cursors | Association Rules
ABSTRACT
Data mining services require accurate input data for their results to be meaningful, but privacy concerns may influence users to provide spurious information. To preserve client privacy in the data mining process, a variety of techniques based on random perturbation of data records have been proposed recently. One known fact which is very important in data mining is discovering the association rules from database of transactions where each transaction consists of set of items. There are many approaches to hide certain association rules which take the support and confidence as a base for algorithms ([1, 2, 6] and many more). This research work discusses privacy and security issues that are likely to affect data mining projects. This research work focuses on further investigating reconstruction-based techniques for association rule hiding, the problem of sharing sensitive knowledge by sanitization and hope that proposed solution will fetch up the new reconstruction-based research track and work well according to the evaluation metrics including hiding effects, data utility, and time performance
Journal: International Journal of Computer Applications
ISSN 0975-8887
Volume: comnetcs;
Issue: 1;
Date: 2012;
Original page
Keywords: Frequent Item sets | Data Mining | Cursors | Association Rules
ABSTRACT
Data mining services require accurate input data for their results to be meaningful, but privacy concerns may influence users to provide spurious information. To preserve client privacy in the data mining process, a variety of techniques based on random perturbation of data records have been proposed recently. One known fact which is very important in data mining is discovering the association rules from database of transactions where each transaction consists of set of items. There are many approaches to hide certain association rules which take the support and confidence as a base for algorithms ([1, 2, 6] and many more). This research work discusses privacy and security issues that are likely to affect data mining projects. This research work focuses on further investigating reconstruction-based techniques for association rule hiding, the problem of sharing sensitive knowledge by sanitization and hope that proposed solution will fetch up the new reconstruction-based research track and work well according to the evaluation metrics including hiding effects, data utility, and time performance