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Sentiment analysis of arabic social media content: a comparative study

机译:阿拉伯社交媒体内容的情感分析:比较研究

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The Internet became an indispensable part of people's lives because of the significant role it plays in the ways individuals interact, communicate and collaborate with each other. Over recent years, social media sites succeed in attracting a large portion of online users where they become not only content readers but also content generators and publishers. Social media users generate daily a huge volume of comments and reviews related to different aspects of life including: political, scientific and social subjects. In general, sentiment analysis refers to the task of identifying positive and negative opinions, emotions and evaluations related to an article, news, products, services, etc. Arabic sentiment analysis is conducted in this study using a small dataset consisting of 1,000 Arabic reviews and comments collected from Facebook and Twitter social network websites. The collected dataset is used in order to conduct a comparison between two free online sentiment analysis tools: SocialMention and SentiStrength that support Arabic language. The results which based on based on the two of classifiers (Decision tree (J48) and SVM) showed that the SentiStrength is better than SocialMention tool.
机译:互联网已成为人们生活中不可或缺的一部分,因为它在个人交互,交流和协作方式中发挥着重要作用。近年来,社交媒体网站成功吸引了很大一部分在线用户,他们不仅成为内容阅读器,而且还成为内容生成者和发布者。社交媒体用户每天都会产生大量与生活不同方面相关的评论和评论,其中包括:政治,科学和社会主题。通常,情感分析是指识别与文章,新闻,产品,服务等有关的正面和负面观点,情感和评估的任务。本研究使用一个由1000个阿拉伯语评论和从Facebook和Twitter社交网站收集的评论。使用收集的数据集来比较支持阿拉伯语的两个免费的在线情绪分析工具:SocialMention和SentiStrength。基于两个分类器(决策树(J48)和SVM)的结果表明,SentiStrength优于SocialMention工具。

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