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Implicit aspect extraction in sentiment analysis: Review, taxonomy, oppportunities, and open challenges

机译:情感分析中的隐式方面提取:回顾,分类,机会和公开挑战

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Sentiment analysis is a text classification branch, which is defined as the process of extracting sentiment terms (i.e. feature/aspect, or opinion) and determining their opinion semantic orientation. At aspect level, aspect extraction is the core task for sentiment analysis which can either be implicit or explicit aspects. The growth of sentiment analysis has resulted in the emergence of various techniques for both explicit and implicit aspect extraction. However, majority of the research attempts targeted explicit aspect extraction, which indicates that there is a lack of research on implicit aspect extraction. This research provides a review of implicit aspect/features extraction techniques from different perspectives. The first perspective is making a comparison analysis for the techniques available for implicit term extraction with a brief summary of each technique. The second perspective is classifying and comparing the performance, datasets, language used, and shortcomings of the available techniques. In this study, over 50 articles have been reviewed, however, only 45 articles on implicit aspect extraction that span from 2005 to 2016 were analyzed and discussed. Majority of the researchers on implicit aspects extraction rely heavily on unsupervised methods in their research, which makes about 64% of the 45 articles, followed by supervised methods of about 27%, and lastly semi-supervised of 9%. In addition, 25 articles conducted the research work solely on product reviews, and 5 articles conducted their research work using product reviews jointly with other types of data, which makes product review datasets the most frequently used data type compared to other types. Furthermore, research on implicit aspect features extraction has focused on English and Chinese languages compared to other languages. Finally, this review also provides recommendations for future research directions and open problems.
机译:情感分析是文本分类分支,其定义为提取情感术语(即特征/方面或观点)并确定其观点语义取向的过程。在方面方面,方面提取是情感分析的核心任务,可以是隐式或显式方面。情感分析的增长导致出现了显式和隐式方面提取的各种技术。但是,大多数研究都针对显式方面提取,这表明缺乏对隐式方面提取的研究。这项研究从不同的角度对隐式方面/特征提取技术进行了回顾。第一个角度是对可用于隐式术语提取的技术进行比较分析,并简要介绍每种技术。第二个观点是对性能,数据集,使用的语言和可用技术的缺点进行分类和比较。在这项研究中,超过50篇文章得到了综述,但是,仅对45篇关于2005年至2016年隐式方面提取的文章进行了分析和讨论。大多数研究隐式方面的研究人员在研究中严重依赖非监督方法,占45条文章的64%,其次是监督方法的27%,最后是半监督的9%。此外,有25篇文章专门针对产品评论进行了研究工作,有5篇文章将产品评论与其他类型的数据一起使用进行了研究,这使得与其他类型的数据相比,产品评论数据集是最常用的数据类型。此外,与其他语言相比,隐式方面特征提取的研究重点是英语和汉语。最后,本文还为未来的研究方向和未解决的问题提供了建议。

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