Breaking Anonymity of Social Media by Profiling from Multimodal Information

Eina Hashimoto, Masatsugu Ichino, H. Yoshiura
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Abstract

Information on social media is important for forensics in the real and cyber worlds, because social media platforms are used for various illicit purposes. However, the anonymity of social media accounts hinders their forensic use. Conventional methods of deanonymizing social media accounts are not sufficiently precise, because they only use information from words in social media posts. Another drawback is that those methods require not only information from the anonymous accounts that are the target of deanonymization, but also information from real-name accounts belonging to the same people who own the anonymous accounts. This paper proposes a new deanonymization method that profiles anonymous accounts to infer their users' attributes and matches the inferred attributes with the known attributes of candidates for deanonymization. In this method, the profiling of anonymous accounts uses not only word information but also information from posted sentences and images. Evaluation with data from 78 volunteers demonstrates the proposed method's viability.
从多模态信息分析打破社交媒体的匿名性
社交媒体上的信息对于现实世界和网络世界的取证都很重要,因为社交媒体平台被用于各种非法目的。然而,社交媒体账户的匿名性阻碍了它们在法庭上的应用。传统的去匿名化社交媒体账户的方法不够精确,因为它们只使用社交媒体帖子中的文字信息。另一个缺点是,这些方法不仅需要来自去匿名化目标的匿名账户的信息,还需要来自拥有匿名账户的同一个人的实名账户的信息。本文提出了一种新的去匿名化方法,该方法通过分析匿名帐户来推断其用户的属性,并将推断的属性与已知的去匿名化候选者的属性进行匹配。在这种方法中,对匿名帐户的分析不仅使用单词信息,还使用发布的句子和图像信息。对78名志愿者的数据进行评估,证明了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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