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Rumor Detection on Hierarchical Attention Network with User and Sentiment Information

机译:具有用户和情感信息的分层关注网络谣言检测

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Social media has developed rapidly due to its openness and freedom, and people can post information on Internet anytime and anywhere. However, social media has also become the main way for rumors to spread largely and quickly. Hence, it has become a huge challenge to automatically detect rumors among such a huge amount of information. Currently, there are many neural network methods, which mainly considered text features but did not pay enough attention to user and sentiment information that are also useful clues for rumor detection. Therefore, this paper proposes a hierarchical attention network with user and sentiment information (HiAN-US) for rumor detection, which first uses the transformer encoder to learn the semantic information at both word-level and tweet-level, then integrates user and sentiment information via attention mechanism. Experiments on the Twitter15, Twitter16 and PHEME datasets show that our model is more effective than several state-of-the-art baselines.
机译:社交媒体由于其开放和自由而迅速发展,人们可以随时随地在互联网上发布信息。然而,社交媒体也成为谣言在很大程度上和快速地分布的主要方式。因此,在这种大量信息中自动检测谣言已经成为一个巨大的挑战。目前,有许多神经网络方法,主要考虑了文本特征,但没有足够的重视用户和情绪信息,这些信息也是谣言检测的有用线索。因此,本文提出了具有用户和情感信息(Hian-US)的分层关注网络,用于谣言检测,首先使用变压器编码器来学习单词级和推特级别的语义信息,然后整合用户和情绪信息通过注意机制。 Twitter15,Twitter16和Pheme数据集的实验表明,我们的模型比若干最先进的基线更有效。

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