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Rumour Veracity Estimation with Deep Learning for Twitter

机译:Twitter深度学习的谣言准确性评估

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Twitter has become a fertile ground for rumours as information can propagate to too many people in very short time. Rumours can create panic in public and hence timely detection and blocking of rumour information is urgently required. We proposed and compare machine learning classifiers with a deep learning model using Recurrent Neural Networks for classification of tweets into rumour and non-rumour classes. A total thirteen features based on tweet text and user characteristics were given as input to machine learning classifiers. Deep learning model was trained and tested with textual features and five user characteristic features. The findings indicate that our models perform much better than machine learning based models.
机译:Twitter已成为谣言的沃土,因为信息可以在很短的时间内传播给太多的人。谣言会在公众中引起恐慌,因此迫切需要及时发现和阻止谣言信息。我们提出了一种机器学习分类器,并将其与使用递归神经网络的深度学习模型进行比较,以将推文分类为谣言和非谣言类。基于推文文本和用户特征的总共13个功能已作为机器学习分类器的输入。深度学习模型已通过文本功能和五个用户特征功能进行了培训和测试。研究结果表明,我们的模型比基于机器学习的模型具有更好的性能。

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