An attention-based deep learning method for text sentiment analysis

Thanh-Huong Le
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引用次数: 2

Abstract

Text sentiment analysis is target-oriented, aiming to identify the opinion or attitude from a piece of natural language text toward topics or entities, whether it is negative, positive or neutral using natural language processing and computational methods. With the growth of the internet, numerous business websites have been deployed to support shopping products, booking services online as well as to allow online reviewing and commenting the services in forms of either business forums or social networks. Use of text sentiment analysis for automatically mining opinion from the feedbacks on such emerging internet platforms is not only useful for customers seeking for advice, but also necessary for business to study customers’ attitudes toward brands, products, services, or events, and has become an increasingly dominant trend in business strategic management. Current state-of-the-art approaches for text sentiment analysis include lexicon based and machine learning based methods. In this research, we proposed a method that utilizes deep learning with attention word embedding. We showed that our method outperformed popular lexicon and embedding based methods.
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一种基于注意力的文本情感分析深度学习方法
文本情感分析是一种目标导向的分析,旨在通过自然语言处理和计算方法,识别一段自然语言文本对主题或实体的观点或态度,无论是消极的、积极的还是中立的。随着互联网的发展,已经部署了许多商业网站来支持在线购物产品,在线预订服务,以及允许在线评论和评论服务,无论是商业论坛还是社交网络的形式。利用文本情感分析从这些新兴的互联网平台的反馈中自动挖掘意见,不仅对客户寻求建议有用,而且对于企业研究客户对品牌、产品、服务或事件的态度也是必要的,并且已经成为企业战略管理中日益占主导地位的趋势。当前最先进的文本情感分析方法包括基于词典和基于机器学习的方法。在本研究中,我们提出了一种利用深度学习和注意词嵌入的方法。结果表明,该方法优于流行的基于词典和嵌入的方法。
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