Title
Privacy-Preserving Social Media Data Outsourcing.
Abstract
User-generated social media data are exploding and of high demand in public and private sectors. The disclosure of intact social media data exacerbates the threats to user privacy. In this paper, we first identify a text-based user-linkage attack on current data outsourcing practices, in which the real users in an anonymized dataset can be pinpointed based on the users' unprotected text data. Then we propose a framework for differentially privacy-preserving social media data outsourcing for the first time in literature. Within our framework, social media data service providers can outsource perturbed datasets to provide users differential privacy while offering high data utility to social media data consumers. Our differential privacy mechanism is based on a novel notion of epsilon-text indistinguishability, which we propose to thwart the text-based user-linkage attack. Extensive experiments on real-world and synthetic datasets confirm that our framework can enable high-level differential privacy protection and also high data utility.
Year
Venue
Field
2018
IEEE INFOCOM
Internet privacy,Social media,Differential privacy,Data outsourcing,Private sector,Computer science,Outsourcing,Computer network,Information privacy,Data as a service,User privacy
DocType
ISSN
Citations 
Conference
0743-166X
1
PageRank 
References 
Authors
0.37
0
5
Name
Order
Citations
PageRank
Jinxue Zhang11389.25
Jingchao Sun21238.95
Rui Zhang325823.18
Yanchao Zhang4328.15
Xia Hu52411110.07