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Emotions Polarity of Tweets Based on Semantic Similarity and User Behavior Features

机译:基于语义相似度和用户行为特征的推文情感极性

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In social networks, people share their emotions and opinion towards specific subjects in the form of comments. These comments are positive, negative, or neutral based on their content. Therefore, people try to pick out the comment’s content; this content reflects the behaviour and style of expressing their emotions. In recent years, researchers interested in sentiment analysis (SA) achieved results using different methods, the lexical features and semantic similarity. But most of them neglect parts of the content of comments, considering it has no importance such as URLs, Numbers and Marks. They use the value of semantic similarity between comments direct to identify emotions polarity or to find synonyms of lexical features. This paper introduces an implementation that uses a combination of user behaviour, semantic and lexical features together for finding polarity emotions of Tweets. This proposed method examines some of the neglected content of tweets as features and adapts the semantic similarity value to emotional polarity as a feature in addition to lexical features. The main objective of this paper is to improve the classification accuracy. The performance of the proposed method evaluated using Naive Bayes and SVM as two popular machine learning classifiers. The best-obtained result is 94% using Naive Bayes and Sentiment140 dataset.
机译:在社交网络中,人们以评论的形式分享对特定主题的情感和看法。这些评论基于其内容是肯定,否定或中立的。因此,人们尝试挑选评论的内容;此内容反映了表达情感的行为和方式。近年来,对情感分析(SA)感兴趣的研究人员使用不同的方法,词汇特征和语义相似性获得了结果。但是考虑到评论内容的重要性,例如URL,数字和标记,大多数人忽略了评论内容的一部分。他们直接使用注释之间的语义相似性值来识别情绪极性或查找词汇特征的同义词。本文介绍了一种实现方法,该方法结合了用户行为,语义和词汇功能,以查找推文的极性情感。该提议的方法将推文的某些被忽略的内容作为特征进行了检查,除了词汇特征之外,还使语义相似性值适应了情绪极性作为一种特征。本文的主要目的是提高分类的准确性。使用朴素贝叶斯(Naive Bayes)和支持向量机(SVM)作为两个流行的机器学习分类器对所提出方法的性能进行了评估。使用朴素贝叶斯和Sentiment140数据集可获得的最佳结果是94%。

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