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Learning Hierarchical Discourse-level Structure for Fake News Detection

机译:学习用于假新闻检测的分层话语级结构

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摘要

On the one hand, nowadays, fake news articles are easily propagated through various online media platforms and have become a grand threat to the trustworthiness of information. On the other hand, our understanding of the language of fake news is still minimal. Incorporating hierarchical discourse-level structure of fake and real news articles is one crucial step toward a better understanding of how these articles are structured. Nevertheless, this has rarely been investigated in the fake news detection domain and faces tremendous challenges. First, existing methods for capturing discourse-level structure rely on annotated corpora which are not available for fake news datasets. Second, how to extract out useful information from such discovered structures is another challenge. To address these challenges, we propose Hierarchical Discourse-level Structure for Fake news detection. HDSF learns and constructs a discourse-level structure for fake/real news articles in an automated and data-driven manner. Moreover, we identify insightful structure-related properties, which can explain the discovered structures and boost our understating of fake news. Conducted experiments show the effectiveness of the proposed approach. Further structural analysis suggests that real and fake news present substantial differences in the hierarchical discourse-level structures.
机译:一方面,如今,假新闻文章很容易通过各种在线媒体平台传播,并已成为对信息可信赖性的巨大威胁。另一方面,我们对虚假新闻语言的了解仍然很少。合并假新闻和真实新闻文章的分层话语级结构是迈向更好地理解这些文章的结构的关键一步。尽管如此,在伪造的新闻检测领域很少对此进行调查,并且面临着巨大的挑战。首先,用于捕获话语级结构的现有方法依赖于带注释的语料库,而这些语料库不适用于伪造的新闻数据集。第二,如何从这种发现的结构中提取有用的信息是另一个挑战。为了应对这些挑战,我们提出了用于伪造新闻检测的分层话语级结构。 HDSF以自动化和数据驱动的方式学习和构建假新闻/真实新闻文章的话语级结构。此外,我们确定了具有洞察力的结构相关属性,可以解释发现的结构并增强我们对虚假新闻的轻描淡写。进行的实验表明了该方法的有效性。进一步的结构分析表明,真实新闻和虚假新闻在分层话语级别的结构中存在实质性差异。

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