A Close Look at Privacy Preserving Data Mining Methods
Publication Type
Conference Proceeding Article
Publication Date
6-2006
Abstract
Recent advances in information, communications, data mining, and security technologies have gave rise to a new era of research, known as privacy preserving data mining (PPDM). Several data mining algorithms, incorporating privacy preserving mechanisms, have been developed that allow one to extract relevant knowledge from large amount of data, while hide sensitive data or information from disclosure or inference. PPDM is a new attempt; thus, several research questions have often being asked. For instance: (1) how to measure the performance of these algorithms? (2) how effective of these algorithms in terms of privacy preserving? (3) will they impact the accuracy of data mining results? And (4) which one can better protect sensitive information? To help answer these questions, we conduct an extensive review on literature. We present a classification scheme, adopted from early studies, to guide the review process. Finally, we share directions for future research.
Discipline
Information Security
Research Areas
Cybersecurity
Publication
PACIS 2006 Proceedings: July 6-9, Kuala Lumpur
First Page
1
Last Page
7
Publisher
Association of Information Science
City or Country
Atlanta, GA
Citation
WU, Xindong; WANG, Yunfeng; CHU, Chao-Hsien; LIU, Fengli; CHEN, Ping; and YUE, Dianmin.
A Close Look at Privacy Preserving Data Mining Methods. (2006). PACIS 2006 Proceedings: July 6-9, Kuala Lumpur. 1-7.
Available at: https://ink.library.smu.edu.sg/sis_research/602
Additional URL
https://aisel.aisnet.org/pacis2006/32/