Title :
Privacy Preserving Similarity Detection for Data Analysis
Author :
Leontiadis, Ilias ; Onen, Melek ; Molva, Refik ; Chorley, M.J. ; Colombo, G.B.
Author_Institution :
Networking & Security Dept., EURECOM, Sophia-Antipolis, France
fDate :
Sept. 30 2013-Oct. 2 2013
Abstract :
Current applications tend to use personal sensitive information to achieve better quality with respect to their services. Since the third parties are not trusted the data must be protected such that individual data privacy is not compromised but at the same time operations on it would be compatible. A wide range of data analysis operations entails a similarity detection algorithm between user data. For instance clustering on big data groups together objects based on the heuristic that similar objects are likely to be put under the same cluster. Similarity decisions are important for numerous applications such as: online social networks, recommendations systems and behavioral advertisement. In this paper we propose a mechanism that protects user privacy and preserves data similarity results although encrypted. We analyze the security of the scheme and we further demonstrate its correctness and feasibility through a real life experiment where personality traits by users are collected for a 4square application.
Keywords :
data privacy; personal information systems; security of data; behavioral advertisement; data analysis; data security; information security; online social networks; personal sensitive information; privacy preserving similarity detection; recommendations system; Data analysis; Data privacy; Encryption; Measurement; Vectors; Information security; data analysis; privacy; similarity detection;
Conference_Titel :
Cloud and Green Computing (CGC), 2013 Third International Conference on
Conference_Location :
Karlsruhe
DOI :
10.1109/CGC.2013.92