Generating Privacy-Preserved Recommendation Using Homomorphic Authenticated Encryption
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Date
2017
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Electrical and Electronics Engineers Inc.
Abstract
Online service providers started to providepersonalized recommendation to the users by collecting userprivate sensitive data. Traditionally the user private data isencrypted using a symmetric encryption algorithm beforestoring it in the cloud to provide another layer of security fordata at rest. It makes users' data secure from third parties, butnot the service provider. We propose a method that generatesrecommendations using homomorphically encrypted data in aprivacy preserved manner to provide protection against serviceprovider. We also verify the correctness of computations doneby a third parties and the service provider over encrypteddata using homomorphic authenticators and some securecryptographic protocols. © 2016 IEEE.
Description
Keywords
Homomorphic, Privacy, Recommendation
Citation
Proceedings - 2016 IEEE International Conference on Cloud Computing in Emerging Markets, CCEM 2016, 2017, Vol., , p. 46-53
