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Detecting and preventing inference attacks in online social networks: A data-driven and holistic framework

Xiaoyun He and Haibing Lu

Journal of Information Privacy and Security, 2017, vol. 13, issue 3, 104-119

Abstract: With increasing user involvement, social networks nowadays serve as a repository of all kinds of information. While there have been various studies demonstrating that private information can be inferred from social networks, few have taken a holistic view on designing mechanisms to detect and alleviate the inference attacks. In this study, we present a framework that leverages the social network data and data mining techniques to proactively detect and prevent possible inference attacks against users. A novel method is proposed to minimize the modifications to user profiles in order to prevent inference attacks while preserving the utility.

Date: 2017
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DOI: 10.1080/15536548.2017.1357383

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