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A new feature selection method for sentiment analysis of Turkish reviews

机译:土耳其评论情感分析的新特征选择方法

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Sentiment analysis identifies people's opinions, sentiments about a product, a service, an organization, or an event. Because of huge review documents, researchers explore different feature selection methods that aim to eliminate non valuable features. However, not much work has been done on feature selection methods for sentiment analysis of Turkish reviews. In this study, we propose a new feature selection method called Query Expansion Ranking that is based on query expansion term weighting methods, which are used in Information Retrieval domain to determine the most valuable terms for query expansion. We compare Query Expansion Ranking with Chi Square method, which is a well-known and successful feature selector, and Document Frequency Difference which is a feature selection method proposed for sentiment analysis of English reviews. Experiments are conducted on four Turkish product review datasets that are book, DVDs, electronics, and kitchen appliances reviews by using a supervised machine learning classification method, namely Naïve Bayes Multinomial classifier. We show that our new proposed method improves sentiment analysis performance in terms of classification accuracy and time. In the experimental evaluation, we also show that our new feature selector improves classification accuracy better than Chi Square, and Document Frequency Difference methods.
机译:情感分析可以识别人们对产品,服务,组织或事件的看法,观点。由于大量的审查文件,研究人员探索了旨在消除无用特征的不同特征选择方法。但是,对于土耳其评论的情感分析,在特征选择方法上做的工作还很少。在这项研究中,我们提出了一种新的功能选择方法,称为查询扩展排名,该方法基于查询扩展术语加权方法,该方法在信息检索域中用于确定最有价值的查询扩展术语。我们将查询扩展排名与著名的成功特征选择器卡方方法和建议用于英语评论情感分析的特征选择方法“文档频差”进行比较。通过使用监督的机器学习分类方法,即NaïveBayes多项式分类器,对四个土耳其产品评论数据集进行了实验,这些数据集是书籍,DVD,电子产品和厨房用具评论。我们表明,我们提出的新方法在分类准确性和时间方面提高了情感分析性能。在实验评估中,我们还表明,与卡方和文档频差方法相比,我们的新功能选择器提高了分类精度。

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