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A Feature-Driven Approach for Identifying Pathogenic Social Media Accounts

机译:一种识别致病社交媒体账户的特征驱动方法

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Over the past few years, we have observed different media outlets' attempts to shift public opinion by framing information to support a narrative that facilitate their goals. Malicious users referred to as “pathogenic social media” (PSM) accounts are more likely to amplify this phenomena by spreading misinformation to viral proportions. Understanding the spread of misinformation from account-level perspective is thus a pressing problem. In this work, we aim to present a feature-driven approach to detect PSM accounts in social media. Inspired by the literature, we set out to assess PSMs from three broad perspectives: (1) user-related information (e.g., user activity, profile characteristics), (2) source-related information (i.e., information linked via URLs shared by users) and (3) content-related information (e.g., tweets characteristics). For the user-related information, we investigate malicious signals using causality analysis (i.e., if user is frequently a cause of viral cascades) and profile characteristics (e.g., number of followers, etc.). For the source-related information, we explore various malicious properties linked to URLs (e.g., URL address, content of the associated website, etc.). Finally, for the content-related information, we examine attributes (e.g., number of hashtags, suspicious hashtags, etc.) from tweets posted by users. Experiments on real-world Twitter data from different countries demonstrate the effectiveness of the proposed approach in identifying PSM users.
机译:在过去的几年里,我们观察了不同的媒体网点试图通过框架信息来支持叙事,以支持促进其目标的叙述。通过将错误信息传播到病毒比例来说,称为“致病社交媒体”(PSM)账户的恶意用户更有可能扩增这种现象。从账户级角度来看,了解误导的传播是一个压迫问题。在这项工作中,我们的目标是提出一个特征驱动的方法来检测社交媒体中的PSM帐户。受到文学的启发,我们开始从三个广播评估PSM:(1)用户相关信息(例如,用户活动,配置文件特征),(2)与源相关信息(即,通过用户共享的URL链接的信息(3)内容相关信息(例如,推文特征)。对于与用户相关的信息,我们使用因果关系分析来调查恶意信号(即,如果用户通常是病毒级联的原因)和轮廓特征(例如,追随者数量等)。对于相关信息,我们探讨链接到URL的各种恶意属性(例如,URL地址,关联网站的内容等)。最后,对于与内容相关的信息,我们从用户发布的推文中检查属性(例如,哈希标签,可疑标题等)。来自不同国家的现实世界推特数据的实验证明了拟议方法在识别PSM用户方面的有效性。

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