论文标题
SGG:Spinbot,语法和基于手套的假新闻检测
SGG: Spinbot, Grammarly and GloVe based Fake News Detection
论文作者
论文摘要
最近,由于几个原因,例如低成本和易于访问性,使用在线新闻门户网站的新闻消费呈指数增长。但是,这种在线平台无意间也成为在网络上传播虚假信息的原因。他们经常被滥用作为传播错误信息和骗局的媒介。这种弊端要求建立一个强大的自动假新闻检测系统,该系统可以使我们远离这种错误信息和骗局。我们提出了一个健壮而简单的假新闻检测系统,利用工具来释义,语法检查和单词插件。在本文中,我们尝试将这些工具的潜力共同发掘出新闻文章的真实性。值得注意的是,为此,我们利用Spinbot(用于释义),语法(用于语法检查)和手套(用于单词的)工具为此目的。使用这些工具,我们能够提取新颖的功能,这些功能可以在Fake News AMT数据集中产生最先进的结果,并在与某些基本功能结合使用时在名人数据集中的可比结果。更重要的是,在我们的跨域分析和多域分析中所揭示的那样,发现所提出的方法在经验上比现有方法更强大。
Recently, news consumption using online news portals has increased exponentially due to several reasons, such as low cost and easy accessibility. However, such online platforms inadvertently also become the cause of spreading false information across the web. They are being misused quite frequently as a medium to disseminate misinformation and hoaxes. Such malpractices call for a robust automatic fake news detection system that can keep us at bay from such misinformation and hoaxes. We propose a robust yet simple fake news detection system, leveraging the tools for paraphrasing, grammar-checking, and word-embedding. In this paper, we try to the potential of these tools in jointly unearthing the authenticity of a news article. Notably, we leverage Spinbot (for paraphrasing), Grammarly (for grammar-checking), and GloVe (for word-embedding) tools for this purpose. Using these tools, we were able to extract novel features that could yield state-of-the-art results on the Fake News AMT dataset and comparable results on Celebrity datasets when combined with some of the essential features. More importantly, the proposed method is found to be more robust empirically than the existing ones, as revealed in our cross-domain analysis and multi-domain analysis.