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Lexicon-enhanced sentiment analysis framework using rule-based classification scheme

机译:使用基于规则的分类方案的词典增强的情感分析框架

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摘要

With the rapid increase in social networks and blogs, the social media services are increasingly being used by online communities to share their views and experiences about a particular product, policy and event. Due to economic importance of these reviews, there is growing trend of writing user reviews to promote a product. Nowadays, users prefer online blogs and review sites to purchase products. Therefore, user reviews are considered as an important source of information in Sentiment Analysis (SA) applications for decision making. In this work, we exploit the wealth of user reviews, available through the online forums, to analyze the semantic orientation of words by categorizing them into +ive and -ive classes to identify and classify emoticons, modifiers, general-purpose and domain-specific words expressed in the public’s feedback about the products. However, the un-supervised learning approach employed in previous studies is becoming less efficient due to data sparseness, low accuracy due to non-consideration of emoticons, modifiers, and presence of domain specific words, as they may result in inaccurate classification of users’ reviews. Lexicon-enhanced sentiment analysis based on Rule-based classification scheme is an alternative approach for improving sentiment classification of users’ reviews in online communities. In addition to the sentiment terms used in general purpose sentiment analysis, we integrate emoticons, modifiers and domain specific terms to analyze the reviews posted in online communities. To test the effectiveness of the proposed method, we considered users reviews in three domains. The results obtained from different experiments demonstrate that the proposed method overcomes limitations of previous methods and the performance of the sentiment analysis is improved after considering emoticons, modifiers, negations, and domain specific terms when compared to baseline methods.
机译:随着社交网络和博客的快速增长,在线社区越来越多地使用社交媒体服务来分享他们对特定产品,政策和事件的看法和经验。由于这些评论的经济重要性,越来越有编写用户评论以促销产品的趋势。如今,用户更喜欢在线博客和评论网站来购买产品。因此,用户评论被认为是情感分析(SA)应用程序中用于决策的重要信息来源。在这项工作中,我们利用在线论坛上提供的大量用户评论,通过将单词分类为+ ive和-ive类来识别和分类表情符号,修饰语,通用和特定领域,来分析单词的语义方向公众对产品的反馈中表达的文字。然而,由于数据稀疏,由于不考虑表情符号,修饰语和存在领域特定单词,导致先前研究中采用的无监督学习方法的效率正在降低,因为它们可能会导致用户的分类不准确。评论。基于基于规则的分类方案的词典增强的情感分析是一种用于改进在线社区中用户评论的情感分类的替代方法。除了用于通用目的情感分析的情感术语外,我们还集成了表情符号,修饰语和特定领域的术语,以分析在线社区中发布的评论。为了测试所提出方法的有效性,我们考虑了三个领域的用户评论。从不同实验中获得的结果表明,与基线方法相比,该方法克服了先前方法的局限性,并且在考虑了表情符号,修饰语,否定词和特定领域术语之后,情感分析的性能得到了改善。

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