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Tree LSTMs with Convolution Units to Predict Stance and Rumor Veracity in Social Media Conversations

机译:具有卷积单元的树LSTM,可预测社交媒体会话中的姿态和谣言准确性

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Learning from social-media conversations has gained significant attention recently because of its applications in areas like rumor detection. In this research, we propose a new way to represent social-media conversations as bi-narized constituency trees that allows comparing features in source-posts and their replies effectively. Moreover, we propose to use convolution units in Tree LSTMs that are better at learning patterns in features obtained from the source and reply posts. Our Tree LSTM models employ multi-task (stance + rumor) learning and propagate the useful stance signal up in the tree for rumor classification at the root node. The proposed models achieve state-of-the-art performance, outperforming the current best model by 12% and 15% on F1-macro for rumor-veracity classification and stance classification tasks respectively.
机译:最近,从社交媒体对话中学习的内容由于在谣言检测等领域的应用而备受关注。在这项研究中,我们提出了一种将社交媒体对话表示为两类选区树的新方法,该方法可有效比较源帖子及其回复中的特征。此外,我们建议在Tree LSTM中使用卷积单元,该卷积单元更擅长学习从源和回复帖子获得的特征中的模式。我们的树LSTM模型采用多任务(立场+谣言)学习,并在树中向上传播有用的立场信号,以便在根节点对谣言进行分类。拟议的模型实现了最先进的性能,在谣言准确性分类和立场分类任务方面,分别比F1宏模型高出当前最佳模型12%和15%。

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