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Term Weighting Scheme Effect in Sentiment Analysis of Online Movie Reviews

机译:术语加权方案在线电影评论的情感分析

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Sentiment analysis is an evolving field of a study that deals directly with the online expressions posted by the user via the Internet with the main objective to automate the process of mining opinions into valuable information. For online reviews, this analysis deals with the identificationof positive and negative reviews to help the consumer and the distributor in the decision-making process. In text analysis tasks, such as text classification and sentiment analysis, the appropriate choice of term weighting schemes will have a huge impact on the effectiveness of the analysis.This paper explores the effect of using term weighting scheme in the sentiment classification of online movie reviews. Specifically, the researchers applied Support Vector Machine (SVM) with linear and non-linear kernels to perform the classification process. The main finding of this studywas that LinearSVC when used with TF-IDF improved the classification performance by as much as 87%. Thus, LinearSVC, together with TF-IDF, can serve as an effective technique in the extraction process of online documents.
机译:情绪分析是一项发展的一项研究领域,通过互联网直接通过互联网发布的在线表达式,主要目的是将挖掘意见的过程自动化为有价值的信息。对于在线评论,此分析涉及正面和负面评价的标识,以帮助消费者和决策过程中的经销商。 In text analysis tasks, such as text classification and sentiment analysis, the appropriate choice of term weighting schemes will have a huge impact on the effectiveness of the analysis.This paper explores the effect of using term weighting scheme in the sentiment classification of online movie reviews 。具体而言,研究人员用线性和非线性核应用支持向量机(SVM)以执行分类过程。该研究的主要发现线性仪器,当与TF-IDF一起使用时,将分类性能提高多达87%。因此,Linearsvc与TF-IDF一起可以用作在线文献的提取过程中的有效技术。

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