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Deep Learning based Fine-grained Sentiment Analysis: A Review

机译:基于深度学习的细粒度情绪分析:综述

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With the recent development of internet technology, the amount of data in social media and online has grown exponentially. It is important for us to conduct Sentiment Analysis upon the massive data that we can collect. While coarse Sentiment Analysis only cares about the polarity of sentiments, it is not sufficient to provide us any more detailed information regarding sentiment and emotion. Among research done in recent years, researchers tend to focus more on Fine-grained Sentiment Analysis, which cares about the polarity of sentiments and the intensity and receptor of sentiments. With the advances of deep learning in recent years and its advantage of independence from manual feature engineering, more and more researchers started to apply it to Sentiment Analysis tasks. This work aims to provide a comparative review of deep learning for Fine-grained Sentiment Analysis tasks to place different approaches in context.
机译:随着互联网技术的最新发展,社交媒体和在线的数据量呈指数增长。 对我们对我们可以收集的大规模数据进行情感分析非常重要。 虽然粗糙的情绪分析只关心情绪的极性,但为我们提供有关情感和情感的任何详细信息是不够的。 在近年来完成的研究中,研究人员倾向于更关注细粒度的情绪分析,这关心情绪的极性和情绪的强度和受体。 随着近年来深度学习的进步及其独立性的优势,越来越多的研究人员开始将其应用于情绪分析任务。 这项工作旨在为深度学习的深度学习提供比较审查,以便在背景下放置不同的方法。

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