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Sarcasm and Sentiment Detection In Arabic Tweets Using BERT-based Models and Data Augmentation

机译:使用基于BERT的模型和数据增强的阿拉伯语推文中的讽刺和情绪检测

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In this paper, we describe our efforts on the shared task of sarcasm and sentiment detection in Arabic (Abu Farha et al., 2021). The shared task consists of two sub-tasks: Sarcasm Detection (Subtask 1) and Sentiment Analysis (Subtask 2). Our experiments were based on fine-tuning seven BERT-based models with data augmentation to solve the imbalanced data problem. For both tasks, the MARBERT BERT-based model with data augmentation outperformed other models with an increase of the F-score by 15% for both tasks which shows the effectiveness of our approach.
机译:在本文中,我们描述了我们对阿拉伯语的共同任务的努力(Abu Farha等,2021)。 共享任务由两个子任务组成:讽刺检测(子任务1)和情绪分析(子任务2)。 我们的实验是基于微调七个基于七个BERT的模型,具有数据增强以解决不平衡的数据问题。 对于这两个任务,基于Marbert Bert的模型具有数据增强的模型表现出其他模型,对于两项任务的比分增加了15%,这两个任务显示了我们的方法的有效性。

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