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Privacy Preservation of Social Network Users Against Attribute Inference Attacks via Malicious Data Mining

机译:通过恶意数据挖掘对社交网络用户的隐私保存对抗属性推论攻击

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Online social networks (OSNs) are currently a popular platform for social interactions among people. Usually, OSN users upload various contents including personal information on their profiles. The ability to infer users' hidden information or information that has not been even uploaded (i.e. private/sensitive information) by an unauthorised agent is commonly known as attribute inference problem. In this paper, we propose 3LP+, a privacy-preserving technique, to protect users' sensitive information leakage. We apply 3LP+ on a synthetically generated OSN data set and demonstrate the superiority of 3LP+ over an existing privacy-preserving technique.
机译:在线社交网络(OSN)目前是人们之间的社交互动平台。通常,OSN用户上传各种内容,包括有关其配置文件的个人信息。推断用户隐藏信息或未被未经授权代理上传(即私有/敏感信息)的隐藏信息或信息的能力通常称为属性推理问题。在本文中,我们提出了3LP +,一种隐私保留技术,保护用户的敏感信息泄漏。我们在综合生成的OSN数据集上应用3LP +,并通过现有的隐私保留技术展示3LP +的优越性。

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