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Do Sentence Interactions Matter? Leveraging Sentence Level Representations for Fake News Classification

机译:句子互动很重要吗?利用句子级别表示进行假新闻分类

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The rising growth of fake news and misleading information through online media outlets demands an automatic method for detecting such news articles. Of the few limited works which differentiate between trusted vs other types of news article (satire, propaganda, hoax), none of them model sentence interactions within a document. We observe an interesting pattern in the way sentences interact with each other across different kind of news articles. To capture this kind of information for long news articles, we propose a graph neural network-based model which does away with the need of feature engineering for fine grained fake news classification. Through experiments, we show that our proposed method beats strong neural baselines and achieves state-of-the-art accuracy on existing datasets. Moreover, we establish the generalizability of our model by evaluating its performance in out-of-domain scenarios.
机译:通过在线媒体发布的虚假新闻和误导性信息的不断增长,需要一种自动检测此类新闻文章的方法。在区分受信任的新闻文章和其他类型的新闻文章(讽刺,宣传,骗局)的有限作品中,没有一部能够模拟文档中句子之间的互动。我们观察到一种有趣的模式,即句子在不同类型的新闻文章中彼此交互的方式。为了捕获长篇新闻的这类信息,我们提出了一种基于图神经网络的模型,该模型消除了对特征工程进行细粒度伪造新闻分类的需求。通过实验,我们证明了我们提出的方法超越了强大的神经基线,并在现有数据集上达到了最先进的准确性。此外,我们通过评估模型在域外场景中的性能来建立模型的可推广性。

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