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Profile Matching Across Online Social Networks

机译:在线社交网络匹配的个人资料

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In this work, we study the privacy risk due to profile matching across online social networks (OSNs), in which anonymous profiles of OSN users arc matched to their real identities using auxiliary information about them. We consider different attributes that are publicly shared by users. Such attributes include both strong identifiers such as user name and weak identifiers such as interest or sentiment variation between different posts of a user in different platforms. We study the effect of using different combinations of these attributes to profile matching in order to show the privacy threat in an extensive way. The proposed framework mainly relies on machine learning techniques and optimization algorithms. We evaluate the proposed framework on three datasets (Twitter - Foursquare, Google+- Twitter, and Flickr) and show how profiles of the users in different OSNs can be matched with high probability by using the publicly shared attributes and/or the underlying graphical structure of the OSNs. We also show that the proposed framework notably provides higher precision values compared to state-of-the-art that relies on machine learning techniques. We believe that this work will be a valuable step to build a tool for the OSN users to understand their privacy risks due to their public sharings.
机译:在这项工作中,我们研究了由于在线社交网络(OSNS)的个人资料匹配,其中OSN用户的匿名配置文件asc匹配与它们的真实身份匹配。我们考虑用户公开共享的不同属性。这种属性包括强的标识符,例如用户名和弱标识符,例如用户在不同平台中用户的不同帖子之间的兴趣或情感变化。我们研究使用这些属性的不同组合对简介匹配的影响,以便以广泛的方式展示隐私威胁。拟议的框架主要依赖于机器学习技术和优化算法。我们评估三个数据集的建议框架(Twitter - Foursquare,Google + - Twitter和Flickr),并展示了通过使用公开共享的属性和/或底层图形结构来匹配不同OSN中的用户在的用户的概况osn。我们还表明,与依赖于机器学习技术的最新技术相比,所提出的框架显着提供更高的精度值。我们认为,这项工作将是为OSN用户构建工具的宝贵步骤,以了解由于其公共分享而了解他们的隐私风险。

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