Title
Pattern-Preserving k-Anonymization of Sequences and its Application to Mobil- ity Data Mining
Abstract
Sequential pattern mining is a major research fleld in knowl- edge discovery and data mining. Thanks to the increasing availability of transaction data, it is now possible to provide new and improved services based on users' and customers' behavior. However, this puts the citizen's privacy at risk. Thus, it is important to develop new privacy-preserving data mining techniques that do not alter the analysis results signiflcantly. In this paper we propose a new approach for anonymizing sequential data by hiding infrequent, and thus potentially sensible, subsequences. Our approach guarantees that the disclosed data are k-anonymous and preserve the quality of extracted patterns. An application to a real-world moving object database is presented, which shows the efiectiveness of our approach also in complex contexts.
Year
Venue
Keywords
2008
PiLBA
sequential pattern mining,data mining,transaction data
Field
DocType
Citations 
Sequential data,Data mining,Data stream mining,Privacy by Design,Computer science,k-anonymity,Knowledge extraction,Transaction data,Sequential Pattern Mining
Conference
23
PageRank 
References 
Authors
0.88
18
4
Name
Order
Citations
PageRank
Ruggero G. Pensa135431.20
Anna Monreale258142.49
Fabio Pinelli397250.96
Dino Pedreschi43083244.47