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FAMOUS: Fake News Detection Model Based on Unified Key Sentence Information

机译:著名:基于统一密钥句信息的假新闻检测模型

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Fake news detection causes a challenging problem due to the great influence of communication media over the public. In this paper, we shall present a new fake news detection model using unified key sentence information which can efficiently perform sentence matching between question and article by using key sentence retrieval based on bilateral multi perspective matching model. Our model makes use of one unified word vector for the key sentences of article by extracting them to the question from article and then merging the word vector for each key sentence. It can efficiently perform the sentence matching by executing matching operations between the contextual information obtained from the word vectors of question and key sentences through bidirectional long short term memory. Our model shows the competitive performance for fake news detection on the Korean article dataset over the previous result.
机译:假新闻检测由于通信媒体对公众的巨大影响而导致了一个具有挑战性的问题。在本文中,我们将提出一种使用统一的关键句信息的新型假新闻检测模型,该模型可以通过基于双边多角度匹配模型的关键句检索来有效地执行问题和文章之间的句子匹配。我们的模型通过为文章的关键句子使用一个统一的词向量,将其从文章中提取到问题中,然后合并每个关键句子的词向量。它可以通过双向长期短期记忆在从疑问词向量和关键句子获得的上下文信息之间执行匹配操作,从而有效地执行句子匹配。我们的模型显示了在韩国商品数据集上进行假新闻检测的竞争结果,该结果优于先前的结果。

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