基于作者语境感知的基于注意力的谣言检测神经结构

Sansiri Tarnpradab, K. Hua
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引用次数: 4

摘要

社交媒体的普及使全球范围内的信息共享成为可能。不幸的是,缺点是错误信息的广泛传播。以前大多数谣言分类器使用的方法对微博中的单词给予同等的权重或关注,而没有考虑微博内容之外的上下文;因此,精度趋于稳定。在这项研究中,我们提出了一个集成神经结构来检测Twitter上的谣言。该体系结构结合了作者的词注意和上下文,以提高分类性能。特别是词级注意机制,使得架构在构建文本表示时更加强调重要的词。为了进一步推导上下文,我们利用了个人作者撰写的微博,因为它们可以反映信息传播的风格和特征,这是帮助分类共享内容是谣言还是合法新闻的重要线索。在两个知名谣言追踪网站收集的真实Twitter数据集上进行的实验显示了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention Based Neural Architecture for Rumor Detection with Author Context Awareness
The prevalence of social media has made information sharing possible across the globe. The downside, unfortunately, is the wide spread of misinformation. Methods applied in most previous rumor classifiers give an equal weight, or attention, to words in the microblog, and do not take the context beyond microblog contents into account; therefore, the accuracy becomes plateaued. In this research, we propose an ensemble neural architecture to detect rumor on Twitter. The architecture incorporates word attention and context from the author to enhance the classification performance. In particular, the word-level attention mechanism enables the architecture to put more emphasis on important words when constructing the text representation. To derive further context, microblog posts composed by individual authors are exploited since they can reflect style and characteristics in spreading information, which are significant cues to help classify whether the shared content is rumor or legitimate news. The experiment on the real-world Twitter dataset collected from two well-known rumor tracking websites demonstrates promising results.
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