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Revisiting Rumour Stance Classification: Dealing with Imbalanced Data

机译:重新审视谣言姿态分类:处理不平衡数据

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Correctly classifying stances of replies can be significantly helpful for the automatic detection and classification of online rumours. One major challenge is that there are considerably more non-relevant replies (comments) than informative ones (supports and denies), making the task highly imbalanced. In this paper we revisit the task of rumour stance classification, aiming to improve the performance over the informative minority classes. We experiment with traditional methods for imbalanced data treatment with feature- and BERT-based classifiers. Our models outperform all systems in RumourEval 2017 shared task and rank second in RumourEval 2019.
机译:正确分类回复的阶段可以大大有助于在线谣言的自动检测和分类。 一个主要挑战是,比信息丰富的答复(评论)相当多的答复(评论),使任务高度不平衡。 在本文中,我们重新审视了谣言姿态分类的任务,旨在提高信息性少数阶级的绩效。 我们尝试使用基于特征和BERT的分类器的不平衡数据处理方法。 我们的模型优于Rumoureval 2017共享任务的所有系统,并在Rumoureval 2019中排名第二。

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