Welcome to D
SIGMOD 2003
PODS 2003
SIGMOD-RECOR
ADBIS
CIDR 2003
CIKM 2003
DASFAA 2003
Data Enginee
DEBS
DMKD 2003
DOLAP 2003
DPDJ 2003
ER
GIS 2003
Hypertext 20
ICDE 2003
ICDM 2003
ICDT 2003
JCDL 2003
KRDB 2003
MIR 2003
MIS 2003
MMDB 2003
RIDE 2003
SBBD 2003
<<< = SBBD Papers>>>
SIGIR 2003
SIGIR-FORUM
SIGKDD 2003
SIGKDD-EXP
SSDBM 2003
TIME 2003
TODS
VLDB 2003
VLDB Journal
WIDM 2003

Privacy Preserving Clustering By Data Transformation


Stanley Oliveira and Osmar R. Zaļane



Return to Data Mining


Abstract

Despite its benefit in a wide range of applications, data mining techniques also have raised a number of ethical issues. Some such issues include those of privacy, data security, intellectual property rights, and many others. In this paper, we address the privacy problem against unauthorized secondary use of information. To do so, we introduce a family of geometric data transformation methods (GDTMs) which ensure that the mining process will not violate privacy up to a certain degree of security. We focus primarily on privacy preserving data clustering, notably on partition-based and hierarchical methods. Our proposed methods distort only confidential numerical attributes to meet privacy requirements, while preserving general features for clustering analysis. Our experiments demonstrate that our methods are effective and provide acceptable values in practice for balancing privacy and accuracy. We report the main results of our performance evaluation and discuss some open research issues.


©2004 Association for Computing Machinery