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Sifting robotic from organic text: A natural language approach for detecting automation on Twitter

机译:从有机文本中筛选机器人:一种在Twitter上检测自动化的自然语言方法

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摘要

Twitter, a popular social media outlet, has evolved into a vast source of linguistic data, rich with opinion, sentiment, and discussion. Due to the increasing popularity of Twitter, its perceived potential for exerting social influence has led to the rise of a diverse community of automatons, commonly referred to as bots. These inorganic and semi-organic Twitter entities can range from the benevolent (e.g., weather-update bots, help-wanted-alert bots) to the malevolent (e.g., spamming messages, advertisements, or radical opinions). Existing detection algorithms typically leverage metadata (time between tweets, number of followers, etc.) to identify robotic accounts. Here, we present a powerful classification scheme that exclusively uses the natural language text from organic users to provide a criterion for identifying accounts posting automated messages. Since the classifier operates on text alone, it is flexible and may be applied to any textual data beyond the Twittersphere. (C) 2015 Elsevier B.V. All rights reserved.
机译:Twitter是一种流行的社交媒体渠道,现已演变为语言数据的大量来源,其中充斥着观点,情感和讨论。由于Twitter的日益普及,其被认为具有发挥社会影响力的潜力,导致了各种各样的自动机社区(通常称为bot)的兴起。这些无机和半有机的Twitter实体的范围从慈善者(例如,天气更新机器人,需要帮助的警报机器人)到恶意(例如,发送垃圾邮件,广告或激进意见)。现有的检测算法通常利用元数据(鸣叫之间的时间,关注者的数量等)来识别机器人帐户。在这里,我们提出了一个强大的分类方案,该方案专门使用有机用户的自然语言文字来提供识别发布自动消息的帐户的标准。由于分类器仅对文本进行操作,因此它很灵活,可以应用于Twittersphere以外的任何文本数据。 (C)2015 Elsevier B.V.保留所有权利。

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  • 来源
    《Journal of computational science》 |2016年第9期|1-7|共7页
  • 作者单位

    Univ Vermont, Dept Math & Stat, Burlington, VT 05401 USA|Univ Vermont, Vermont Complex Syst Ctr, Burlington, VT 05401 USA|Univ Vermont, Vermont Adv Comp Core, Burlington, VT 05401 USA|Univ Vermont, Computat Story Lab, Burlington, VT 05401 USA|Univ Vermont, Dept Surg, Burlington, VT 05401 USA;

    Univ Vermont, Dept Math & Stat, Burlington, VT 05401 USA|Univ Vermont, Vermont Complex Syst Ctr, Burlington, VT 05401 USA|Univ Vermont, Vermont Adv Comp Core, Burlington, VT 05401 USA|Univ Vermont, Computat Story Lab, Burlington, VT 05401 USA;

    Univ Vermont, Dept Surg, Burlington, VT 05401 USA|Univ Vermont, Global Hlth Econ Unit, Vermont Ctr Clin & Translat Sci, Burlington, VT 05401 USA|Univ Vermont, Vermont Ctr Behav & Hlth, Burlington, VT 05401 USA;

    Univ Vermont, Dept Med, Burlington, VT 05401 USA|Univ Vermont, Vermont Ctr Clin & Translat Sci, Burlington, VT 05401 USA;

    Univ Vermont, Dept Math & Stat, Burlington, VT 05401 USA|Univ Vermont, Vermont Complex Syst Ctr, Burlington, VT 05401 USA|Univ Vermont, Vermont Adv Comp Core, Burlington, VT 05401 USA|Univ Vermont, Computat Story Lab, Burlington, VT 05401 USA;

    Univ Vermont, Dept Math & Stat, Burlington, VT 05401 USA|Univ Vermont, Vermont Complex Syst Ctr, Burlington, VT 05401 USA|Univ Vermont, Vermont Adv Comp Core, Burlington, VT 05401 USA|Univ Vermont, Computat Story Lab, Burlington, VT 05401 USA;

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