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A framework for sentiment analysis on schema-based research content via lexica analysis

机译:基于模式的研究内容通过Lexica分析的框架框架

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Sentiment Analysis is one of the significant issues in the area of natural language processing, computational linguistics and text mining. It has also become a potential research area in bibliographic search and opinion mining, which is our main focus in this paper. Sentiment analysis of citations on schema-based research contents, such as scientific articles and reports, may not only makes an appropriate understanding of the issue, but also enhances the level of reliability of citations in those contents. Taking the above points into account, in this paper, a framework for sentiment analysis based on lexica analysis is proposed to determine the polarity of author's opinion about citations in content. This framework consists of three major steps: subjectivity detection, polarity classification and strength determination of opinion. In each step, some considerations are considered to improve the capability of proposed framework. We have applied SentiWordNet, AFINN and Bingliu lexica sets for this purpose. The schema-based research contents that have been considered for this experiment is PubMed, which consists of open source medical articles of US digital library of medicine. Experimental results reveal the superiority of SentiWordNet lexica set compared to the other existing sets in sentiment analysis of PubMed articles.
机译:情绪分析是自然语言处理,计算语言学和文本挖掘领域的重要问题之一。它也成为书目搜索和意见采矿中的潜在研究区,这是我们本文的主要重点。关于基于模式的研究内容的引文的情感分析,如科学文章和报告,可能不仅可以对该问题进行适当的理解,而且还提高了这些内容中引用的可靠性水平。考虑到上述要点,本文提出了一种基于Lexica分析的情绪分析框架,以确定作者对内容中引文的看法的极性。该框架由三个主要步骤组成:主观性检测,极性分类和强度决定意见。在每一步中,一些考虑因素被认为是提高所提出的框架的能力。我们已经应用了SentiwordNet,Afinn和Bingliu Lexica为此目的。已经考虑过本实验的基于模式的研究内容是PubMed,它由美国的开源医学文章组成美国数字化学图书馆。实验结果揭示了SentiwordNet Lexica集合的优越性与PubMed文章的情绪分析中的其他现有集合。

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