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Reasoning with Sarcasm by Reading In-between

机译:通过相互之间的阅读来对讽刺进行推理

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摘要

Sarcasm is a sophisticated speech act which commonly manifests on social communities such as Twitter and Reddit. The prevalence of sarcasm on the social web is highly disruptive to opinion mining systems due to not only its tendency of polarity Hipping but also usage of figurative language. Sarcasm commonly manifests with a contrastive theme either between positive-negative sentiments or between literal-figurative scenarios. In this paper, we revisit the notion of modeling contrast in order to reason with sarcasm. More specifically, we propose an attention-based neural model that looks in-between instead of across, enabling it to explicitly model contrast and incongruity. We conduct extensive experiments on six benchmark datasets from Twitter, Reddit and the Internet Argument Corpus. Our proposed model not only achieves state-of-the-art performance on all datasels but also enjoys improved interpretability.
机译:讽刺是一种复杂的言语行为,通常表现在Twitter和Reddit等社交社区上。讽刺在社交网络上的盛行不仅极大地破坏了舆论挖掘系统,因为它具有两极分化的倾向,而且还使用了比喻性语言。讽刺通常在积极的消极情绪之间或在字面虚构的场景之间以对比主题表现出来。在本文中,我们重新探讨了建模对比的概念,以便通过讽刺进行推理。更具体地说,我们提出了一种基于注意力的神经模型,该模型看起来介于中间而不是跨界,从而使它能够显式地建模对比度和不一致性。我们对Twitter,Reddit和Internet Argument Corpus的六个基准数据集进行了广泛的实验。我们提出的模型不仅在所有数据集上都具有最先进的性能,而且还具有更好的可解释性。

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