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A Needle in a Haystack? Harnessing Onomatopoeia and User-specific Stylometrics for Authorship Attribution of Micro-messages

机译:干草堆的针?利用拟声和用户特定的风格测量学,用于微信息的作者归属

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The world is facing a new era in which social media communication plays a fundamental role in people's lives. Along with irrefutable benefits, several collateral drawbacks have risen, one being the wide spread of false information with malicious intents, what is now commonly called "Fake News". The fight against this problem is not easy, especially when taking into account the nature of text messages involved on social media platforms (a sea of small messages and myriad users). In this work, we cope with the challenging problem of authorship attribution of small text messages posted on social media platforms. Differently from what has been done with longer texts, we rely upon data-driven approaches, exploiting recent advances of deep neural networks in the field of pattern recognition. By viewing small texts usually employed in social media as unidimensional signals, we devise modern deep-learning techniques tailored for this kind of data to find the author of these posts with promising results.
机译:世界正面临着新的时代,社交媒体沟通在人们的生活中发挥着重要作用。除了无可辩驳的福利外,几个抵押品缺点已经上升,一个是具有恶意意图的虚假信息的广泛传播,现在通常称为“假新闻”。反对这个问题的斗争并不容易,特别是在考虑到社交媒体平台上涉及的文本消息的性质(小消息和无数用户)的性质时。在这项工作中,我们应对社交媒体平台上发布的小型消息的作者归属挑战性问题。不同地从更长的文本完成的方式,我们依靠数据驱动方法,利用模式识别领域深神经网络的最近进步。通过观看通常在社交媒体中使用的小文本作为单向信号,我们设计了为这种数据量身定制的现代深度学习技术,以找到具有有前途的结果的这些帖子的作者。

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