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Social Networks' Facebook' Statutes Updates Mining for Sentiment Classification

机译:社交网络的Facebook法规更新了用于情感分类的挖掘

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In recent years, text mining and sentiment analysis have received great attention due to the abundance of opinion data that exist in social networks such as Facebook, Twitter, etc. Sentiments are projected on these media using texts for expressing feelings such as friendship, social support, anger, happiness, etc. Existing sentiment analysis studies tend to identify user behaviors and state of minds but remain insufficient due to complexities in conveyed texts. In this research paper, we focus on the usage of text mining for sentiment classification. Illustration is performed on Tunisian users' statuses on "Facebook" posts during the "Arabic Spring" era. Our aim is to extract useful information, about users' sentiments and behaviors during this sensitive and significant period. For that purpose, we propose a method based on Support Vector Machine (SVM) and Naïve Bayes. We also construct a sentiment lexicon, based on the emoticons, interjections and acronyms', from extracted statuses updates. Moreover, we perform some comparative experiments between two machine learning algorithms SVM and Naïve Bayes through a training model for sentiment classification.
机译:近年来,由于Facebook,Twitter等社交网络中存在大量的意见数据,文本挖掘和情感分析受到了广泛关注。在这些媒体上使用文本来表达情感,以表达诸如友谊,社会支持之类的感觉。现有的情绪分析研究倾向于识别用户的行为和心态,但由于所传达文本的复杂性而仍然不足。在这篇研究论文中,我们专注于文本挖掘在情感分类中的应用。插图是在“阿拉伯之春”时代的突尼斯用户在“ Facebook”帖子上的状态进行的。我们的目标是在这个敏感而重要的时期内,提取有关用户的情绪和行为的有用信息。为此,我们提出了一种基于支持向量机(SVM)和朴素贝叶斯的方法。我们还根据表情符号,感叹词和首字母缩略词,从提取的状态更新中构建情感词典。此外,我们通过情感分类训练模型在两种机器学习算法SVM和朴素贝叶斯之间进行了比较实验。

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