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Sentiment Classification into Three Classes Applying Multinomial Bayes Algorithm, N-Grams, and Thesaurus

机译:应用多项式贝叶斯算法,N语法和同义词库将情感分为三类

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The paper is devoted to development of the method that classifies texts in English and Russian by sentiments into positive, negative, and neutral. The proposed method is based on the Multinomial Naive Bayes classifier with additional n-grams application. The classifier is trained either on three classes, or on two contrasting classes with a threshold to separate neutral texts. Experiments with texts on various topics showed significant improvement of classification quality for reviews from a particular domain. Besides, the analysis of thesaurus relationships application to sentiment classification into three classes was done, however it did not show significant improvement of the classification results.
机译:本文致力于发展将情绪分为积极,消极和中立的英语和俄语文本分类方法。所提出的方法基于具有附加n-gram应用的多项式朴素贝叶斯分类器。分类器可以在三个班级上进行训练,也可以在两个对比班上进行训练,并带有分隔中性文本的阈值。对各种主题的文本进行的实验表明,针对特定领域的评论,其分类质量得到了显着提高。此外,对词库关系在情感分类中的应用进行了分析,将其分为三类,但分类结果没有明显改善。

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