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Turing at SemEval-2017 Task 8: Sequential Approach to Rumour Stance Classification with Branch-LSTM

机译:图灵参加SemEval-2017任务8:使用Branch-LSTM进行谣言姿态分类的顺序方法

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This paper describes team Turing's submission to SemEval 2017 RumourEval: Determining rumour veracity and support for rumours (SemEval 2017 Task 8, Sub-task A). Subtask A addresses the challenge of rumour stance classification, which involves identifying the attitude of Twitter users towards the truthfulness of the rumour they are discussing. Stance classification is considered to be an important step towards rumour verification, therefore performing well in this task is expected to be useful in debunking false rumours. In this work we classify a set of Twitter posts discussing rumours into either supporting, denying, questioning or commenting on the underlying rumours. We propose a LSTM-based sequential model that, through modelling the conversational structure of tweets, which achieves an accuracy of 0.784 on the RumourEval test set outperforming all other systems in Sub-task A.
机译:本文介绍了团队Turing向SemEval 2017 RumourEval提交的内容:确定谣言的准确性和对谣言的支持(SemEval 2017任务8,子任务A)。子任务A解决了谣言立场分类的挑战,其中涉及确定Twitter用户对他们正在讨论的谣言的真实性的态度。姿态分类被认为是进行谣言验证的重要步骤,因此,在此任务中表现良好有望对揭穿虚假谣言起到帮助作用。在这项工作中,我们将一组讨论谣言的Twitter帖子分类为对基本谣言的支持,拒绝,质疑或评论。我们提出了一个基于LSTM的顺序模型,该模型通过对推文的对话结构进行建模,在RumourEval测试集上的准确性达到0.784,优于子任务A中的所有其他系统。

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