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A survey of state-of-the-art approaches for emotion recognition in text

机译:文本中情感认可的最先进方法调查

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Emotion recognition in text is an important natural language processing (NLP) task whose solution can benefit several applications in different fields, including data mining, e-learning, information filtering systems, human-computer interaction, and psychology. Explicit emotion recognition in text is the most addressed problem in the literature. The solution to this problem is mainly based on identifying keywords. Implicit emotion recognition is the most challenging problem to solve because such emotion is typically hidden within the text, and thus, its solution requires an understanding of the context. There are four main approaches for implicit emotion recognition in text: rule-based approaches, classical learning-based approaches, deep learning approaches, and hybrid approaches. In this paper, we critically survey the state-of-the-art research for explicit and implicit emotion recognition in text. We present the different approaches found in the literature, detail their main features, discuss their advantages and limitations, and compare them within tables. This study shows that hybrid approaches and learning-based approaches that utilize traditional text representation with distributed word representation outperform the other approaches on benchmark corpora. This paper also identifies the sets of features that lead to the best-performing approaches; highlights the impacts of simple NLP tasks, such as part-of-speech tagging and parsing, on the performances of these approaches; and indicates some open problems.
机译:文本中的情感识别是一种重要的自然语言处理(NLP)任务,其解决方案可以使不同领域的多个应用程序受益,包括数据挖掘,电子学习,信息过滤系统,人机互动和心理学。文本中的明确情感认可是文献中最具解决的问题。此问题的解决方案主要基于识别关键字。隐含的情感识别是最具挑战性的问题,因为这种情绪通常隐藏在文本内,因此,其解决方案需要了解对上下文。文本中有四种主要方法:基于规则的方法,基于规则的方法,基于古典学习的方法,深度学习方法和混合方法。在本文中,我们对文本中的明确和隐含情绪识别进行了认识到最先进的研究。我们介绍了文献中发现的不同方法,详细介绍了它们的主要特征,讨论它们的优缺点,并将它们与表中的比较。本研究表明,利用具有分布式单词表示的传统文本表示的混合方法和基于学习的方法优于基准语料库的其他方法。本文还识别了导致最佳性能的功能集;突出显示简单的NLP任务的影响,例如语音标记和解析的部分;并表示一些打开的问题。

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