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Learning to capture contrast in sarcasm with contextual dual-view attention network

机译:学习用语境双视网膜网络捕捉讽刺的对比

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摘要

Sarcasm is a common way of rhetoric in our daily life. It is used to express the opposite of the literal meaning, which makes it a challenging task in sentiment analysis of natural language processing (NLP). The formation mechanism of sarcasm is usually caused by the contrast between the positive sentiment and the negative situation. In this paper, we propose a contextual dual-view attention network (CDVaN) for sarcasm detection according to the formation mechanism of sarcasm. A Contrast Understanding Unit is proposed to effectively extract the contrast between the positive sentiment and the negative situation from the view of formation mechanism of sarcasm. Apart from it, we further use a Context Understanding Unit to extract the contextual semantic information from the contextual semantic view. Our experiments on the IAC-V1 dataset and IAC-V2 dataset demonstrate that the proposed CDVaN model can distinguish sarcasm effectively. The results show that our model achieves state-of-the-art or comparable results.
机译:讽刺是我们日常生活中的一种常见方式。它用于表达与文字含义的相反,这使得自然语言处理的情感分析具有挑战性的任务(NLP)。讽刺的形成机制通常是由于积极情绪与负面情况之间的对比引起。在本文中,我们提出了一种根据讽刺的形成机制来提出一种用于讽刺检测的语境双重关注网络(CDVan)。提出了对比度理解单元,以有效地提取讽刺机制的积极情绪与负面情况之间的对比。除此之外,我们还使用上下文理解单元从上下文语义视图中提取上下文语义信息。我们在IAC-V1数据集和IAC-V2数据集上的实验表明,所提出的CDVan模型可以有效地区分讽刺。结果表明,我们的模型实现了最先进的或可比结果。

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