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Lexicon Based and Multi-Criteria Decision Making (MCDM) Approach for Detecting Emotions from Arabic Microblog Text

机译:基于词汇的多准则决策(MCDM)方法,用于从阿拉伯文微博文本中检测情绪

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摘要

Emotions serve as a communicative function both within the brain and within the social group. Most of previous opinion mining studies applied on Arabic microblog text to identify positive, negative or neutral polarity. This paper studies the problem of detecting multiple emotion classes in Arabic microblog text (e.g. Twitter). Incoming Arabic microblog text is classified into one of fine grained emotional classes {happiness, sadness, fear, anger, disgust or none} if exists or mixed emotion if text contains multiple emotions e.g. {Happiness/Fear} or {Anger/Disgust}. We applied a combined approach of lexicon approach and Multi-Criteria Decision Making approach. We use a conditioned plot to classify and analyze the text by generating a two dimensional graphic analysis space, one dimension represents observations (tweets) and the other represents our variables (5 emotional scores). The experimental results show that our proposed approach by using the conditioned plot able to classify text into different fine grained emotions, and also able to classify Arabic text with mixed emotions.
机译:情绪在大脑和社会群体中都起着交流的作用。以前的大多数观点挖掘研究都将阿拉伯语微博文本应用于识别正极,负极或中性极性。本文研究了在阿拉伯微博文本(例如Twitter)中检测多种情感类别的问题。传入的阿拉伯文微博文字(如果存在)分类为细粒度的情感类别之一({幸福,悲伤,恐惧,愤怒,厌恶或没有}},如果文字包含多种情感(例如, {幸福/恐惧}或{愤怒/厌恶}。我们应用了词典方法和多准则决策方法的组合方法。我们使用条件图表通过生成二维图形分析空间来对文本进行分类和分析,一个维表示观察(推文),另一个维表示我们的变量(5个情感评分)。实验结果表明,我们提出的方法通过使用条件图能够将文本分类为不同的细粒度情感,并且还能够将带有混合情感的阿拉伯文本分类。

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