A Survey of Emotion Analysis in Text Based on Deep Learning

Lihong Cao, Sancheng Peng, Pengfei Yin, Yongmei Zhou, Aimin Yang, Xinguang Li
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引用次数: 8

Abstract

With the rapid development of mobile Internet, and the popularization of e-commerce and social networks, people have changed from the simple users of network information to the main publishers of network information. Thus, a large number of various network data have been generated, and a large part of these data contains negative emotions. Mining these data can make us better understand the views and positions of netizens, and help to grasp the key information of network public opinion. In this paper, we provide an introduction for the background knowledge of emotion analysis, including different definitions and classification methods of emotion. Then, we summarize the related models of deep learning, as well as the main emotion analysis methods in text based on deep learning, and make a detailed introduction and comparison on these methods. Finally, we enumerate the challenges of emotion analysis in text, and the future research trend for emotion analysis.
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基于深度学习的文本情感分析研究综述
随着移动互联网的快速发展,电子商务和社交网络的普及,人们已经从单纯的网络信息使用者转变为网络信息的主要发布者。由此产生了大量的各种网络数据,这些数据中有很大一部分包含了负面情绪。挖掘这些数据可以让我们更好地了解网民的观点和立场,有助于把握网络舆情的关键信息。本文介绍了情绪分析的背景知识,包括情绪的不同定义和分类方法。然后,我们总结了深度学习的相关模型,以及基于深度学习的主要文本情感分析方法,并对这些方法进行了详细的介绍和比较。最后,我们列举了文本情感分析面临的挑战,以及未来情感分析的研究趋势。
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