Journal article
Semi-Trusted mixer based privacy preserving distributed data mining for resource constrained devices
International Journal of Computer Science and Information Security,, Vol.8(1), pp.44-51
2010
Abstract
In this paper a homomorphic privacy preserving association rule mining algorithm is proposed which can be deployed in resource constrained devices (RCD). Privacy preserved exchange of counts of itemsets among distributed mining sites is a vital part in association rule mining process. Existing cryptography based privacy preserving solutions consume lot of computation due to complex mathematical equations involved. Therefore less computation involved privacy solutions are extremely necessary to deploy mining applications in RCD. In this algorithm, a semi-trusted mixer is used to unify the counts of itemsets encrypted by all mining sites without revealing individual values. The proposed algorithm is built on with a well known communication efficient association rule mining algorithm named count distribution (CD). Security proofs along with performance analysis and comparison show the well acceptability and effectiveness of the proposed algorithm. Efficient and straightforward privacy model and satisfactory performance of the protocol promote itself among one of the initiatives in deploying data mining application in RCD.
Details
- Title
- Semi-Trusted mixer based privacy preserving distributed data mining for resource constrained devices
- Authors/Creators
- M.G. Kaosar (Author/Creator)X. Yi (Author/Creator)
- Publication Details
- International Journal of Computer Science and Information Security,, Vol.8(1), pp.44-51
- Publisher
- IJCSIS
- Identifiers
- 991005541745207891
- Copyright
- © 2010 IJCSIS
- Murdoch Affiliation
- Murdoch University
- Language
- English
- Resource Type
- Journal article
- Publisher URL
- https://sites.google.com/site/ijcsis/ijcsis
Metrics
26 File views/ downloads
30 Record Views