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Emotions extraction from Arabic tweets

机译:从阿拉伯语推文中提取的情绪

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摘要

Twitter is one of the most used microblogs in social media communication channels. Emotion detection has recently raised as an important research field. Extracting emotions in Twitter microblogs has many benefits and applications. Such applications include e-commerce, e-marketing, and others. Knowing the perception about relevant products, services, events or personalities, as well as monitoring their online reputation are some of the objectives that companies have marked in short term. Most of studies focus on sentiments analysis as positive and negative but few of them go deeper to analyze and classify the emotions behind tweets, especially in Arabic tweets. Arabic language becomes a hard challenge for emotions classification on twitter and it involves more preprocessing before classification than other languages. This paper presents a model for extracting and classifying emotions in Arabic tweets based on four emotions: sad, joy, disgust, and anger. The experimental results demonstrate the validity of the proposed model, which improves the state of the art in the classification of Arabic tweets using support vector machine (SVM) and Naieve Bayes (NB) that give the best results. SVM outperforms the other used classifiers with 80.6% accuracy, and the NB outperforms the other classifiers with 0.95 ROC area.
机译:Twitter是社交媒体通信渠道中最常用的微博之一。情绪检测最近被提出为一个重要的研究领域。提取Twitter微博的情绪有很多好处和应用。这些应用包括电子商务,电子营销等。了解有关相关产品,服务,事件或人物的看法以及监测他们的在线声誉是公司在短期内标记的一些目标。大多数研究专注于情感分析,积极和消极,但其中很少有人深入分析和分类推文背后的情绪,特别是在阿拉伯语推文中。阿拉伯语成为Twitter上的情绪分类的艰难挑战,它涉及比其他语言的分类前更多的预处理。本文介绍了基于四种情绪的阿拉伯语推文中提取和分类情绪的模型:悲伤,快乐,厌恶和愤怒。实验结果表明了所提出的模型的有效性,其在使用支持向量机(SVM)和恶劣的贝叶斯(NB)的阿拉伯语推文的分类中提高了现有技术的有效性。 SVM优于具有80.6%的准确度的其他使用的分类器,并且NB优于其他分类器,具有0.95 ROC区域。

著录项

  • 来源
  • 作者单位

    Department of Computer Science Faculty of Computing and Information Technology King Abdul-Aziz University KAU Jeddah Kingdom of Saudi Arabia;

    Department of Computer Science Faculty of Computing and Information Technology King Abdul-Aziz University KAU Jeddah Kingdom of Saudi Arabia;

    Department of Computer Science Faculty of Computing and Information Technology King Abdul-Aziz University KAU Jeddah Kingdom of Saudi Arabia;

    Department of Computer Science Faculty of Computing and Information Technology King Abdul-Aziz University KAU Jeddah Kingdom of Saudi Arabia;

    Department of Computer Science Faculty of Computing and Information Technology King Abdul-Aziz University KAU Jeddah Kingdom of Saudi Arabia;

  • 收录信息 美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Text mining; NLP; Arabic tweets; emotions; sentiment analysis;

    机译:文字挖掘;NLP;阿拉伯语推文;情绪;情绪分析;

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