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A deep-learning framework to detect sarcasm targets

机译:用于检测讽刺目标的深度学习框架

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In this paper we propose a deep learning framework for sarcasm target detection in predefined sarcastic texts. Identification of sarcasm targets can help in many core natural language processing tasks such as aspect based sentiment analysis, opinion mining etc. To begin with, we perform an empirical study of the socio-linguistic features and identify those that are statistically significant in indicating sarcasm targets (p-values in the range (0.05,0.001)). Finally, we present a deep-learning framework augmented with socio-linguistic features to detect sarcasm targets in sarcastic book-snippets and tweets. We achieve a huge improvement in the performance in terms of exact match and dice score as compared to the current state-of-the-art baseline.
机译:在本文中,我们提出了一个用于预定义讽刺文本中的讽刺目标检测的深度学习框架。嘲讽目标的识别可以帮助完成许多核心的自然语言处理任务,例如基于方面的情感分析,观点挖掘等。首先,我们对社会语言特征进行实证研究,并识别出在统计讽刺目标方面具有统计学意义的特征(p值在(0.05,0.001)范围内)。最后,我们提出了一个具有社会语言功能的深度学习框架,可以检测讽刺书摘和推文中的讽刺目标。与当前最先进的基准相比,我们在精确匹配和骰子得分方面的性能有了巨大的提高。

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