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Prominent Aspect Term Extraction in Aspect Based Sentiment Analysis

机译:基于方面的情感分析中的突出方面项提取

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In recent years unstructured text has flooded on the web and today it is a trend to comments, give feedback, share experiences toward products, articles, social issues, multimedia web documents etc. Most of the online social, as well as, commercial platform have started to provide separate space for user reviews in the form of natural text. This electronic data is becoming very crucial and popular in decision making. Nowadays, sentiment analysis is not a onetime put effort rather it is more important to know about different aspects mentioned in the user comments. Aspect-term extraction is one of the critical subtasks in aspect-based sentiment analysis. Most of the aspect extraction approaches are the domain or context-dependent. In this paper, an approach is proposed to identify prominent aspects using contextual and domain-specific information. The study and experimental results on different categories of aspects are investigated on standard review data-sets.
机译:近年来,非结构化文本在网络上泛滥成灾,如今,评论,提供反馈,分享产品,文章,社交问题,多媒体Web文档等经验成为一种趋势。大多数在线社交平台和商业平台都具有开始以自然文本的形式为用户提供单独的评论空间。这些电子数据在决策过程中变得越来越重要,越来越受欢迎。如今,情感分析已不是一时的努力,而是了解用户评论中提到的不同方面更为重要。方面术语提取是基于方面的情感分析中的关键子任务之一。大多数方面提取方法是领域或上下文相关的。在本文中,提出了一种使用上下文和特定于领域的信息来识别突出方面的方法。在标准审查数据集上研究了不同方面的研究和实验结果。

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