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NHK_STRL at WNUT-2020 Task 2: GATs with Syntactic Dependencies as Edges and CTC-based Loss for Text Classification

机译:NHK_STRL在WNUT-2020任务2:GATS具有句法依赖项作为边缘和基于CTC的文本分类的损失

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The outbreak of COVID-19 has greatly impacted our daily lives. In these circumstances, it is important to grasp the latest information to avoid causing too much fear and panic. To help grasp new information, extracting information from social networking sites is one of the effective ways. In this paper, we describe a method to identify whether a tweet related to COVID-19 is informative or not, which can help to grasp new information. The key features of our method are its use of graph attention networks to encode syntactic dependencies and word positions in the sentence, and a loss function based on connectionist temporal classification that can learn a label for each token without reference data for each token. Experimental results show that the proposed method achieved an F1 score of 0.9175, outperforming baseline methods.
机译:Covid-19的爆发极大地影响了我们的日常生活。在这种情况下,掌握最新信息非常重要,以避免导致太多的恐惧和恐慌。为了帮助掌握新信息,从社交网站提取信息是一种有效方式之一。在本文中,我们描述了一种识别与Covid-19相关的推文是否提供信息的方法,这可以有助于掌握新信息。我们的方法的关键特征是它使用图表注意网络来编码句子中的语法依赖性和单词位置,以及基于连接主义时间分类的丢失函数,可以为每个令牌的没有参考数据学习每个令牌的标签。实验结果表明,该方法达到了0.9175的F1得分,表现优于基线方法。

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