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NTUA-ISLab at SemEval-2019 Task 3: Determining emotions in contextual conversations with deep learning

机译:NTUA-Islab在Semeval-2019任务3:确定与深度学习的情境对话中的情感

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Sentiment analysis (SA) in texts is a well-studied Natural Language Processing task, which in nowadays gains popularity due to the explosion of social media, and the subsequent accumulation of huge amounts of related data. However, capturing emotional states and the sentiment polarity of written excerpts requires knowledge on the events triggering them. Towards this goal, we present a computational end-to-end context-aware SA methodology, which was competed in the context of the SemEval-2019/EmoContext task (Task 3). The proposed system is founded on the combination of two neural architectures, a deep recurrent neural network, structured by an attentive Bidirectional LSTM, and a deep dense network (DNN). The system achieved 0.745 micro f1-score, and ranked 26/165 (top 20%) teams among the official task submissions.
机译:文本中的情感分析(SA)是一种学习的自然语言处理任务,在现在,由于社交媒体的爆炸,以及随后积累了大量相关数据的巨大积累。然而,捕获情绪状态和书面摘录的情感极性需要了解触发它们的事件。对此目标来说,我们介绍了一个计算端到端的上下文感知SA方法,该方法是在Semeval-2019 / Emocontext任务的上下文中竞争(任务3)。所提出的系统是由两个神经结构,深度复发性神经网络的组合,由周到的双向LSTM构成,以及深密网络(DNN)。该系统达到了0.745微F1分数,并在官方任务提交中排名第26/165(前20%)团队。

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