一个用于情感分析的沙特方言推特语料库

A. Al-Thubaity, Mohammed S. Alharbi, S. Alqahtani, Abdulrahman Aljandal
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引用次数: 12

摘要

在本文中,我们介绍了沙特方言推特语料库(SDTC),其中包括5400条沙特方言和现代标准阿拉伯语的推文,用于情感分析和情感分析。三位评分员参与了分类过程,他们根据每条推文的极性(积极、消极、中性、客观、垃圾邮件和不确定)和它所携带的情绪(愤怒、恐惧、厌恶、悲伤、快乐、惊讶、没有情绪和不确定)给每条推文打上标签。数据显示可比性kappa和Fleiss的kappa值极性和情感分类。任意两个评价者的平均一致性为65%,任意两个评价者的平均kappa为0.55,三位评价者的Fleiss kappa为0.55。这些kappa值和Fleiss的kappa值显示出适度的一致性。在SDTC中,kappa和Fleiss的kappa统计值以及极性与情绪分类之间的映射关系证实了分类过程的一致性和规律性。据我们所知,SDTC是第一个沙特方言的推特语料库,由三位评分者标记,并根据推文的极性和它们所携带的情绪进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Saudi Dialect Twitter Corpus for Sentiment and Emotion Analysis
In this paper, we introduce the Saudi Dialects Twitter Corpus (SDTC), comprising 5,400 tweets of Saudi dialects and Modern Standard Arabic classified for both sentiment analysis and emotion analysis. Three raters were engaged in the classification process, where they labeled each tweet according to its polarity (positive, negative, neutral, objective, spam, and not sure) and the emotion it carries using Ekman basic emotions (anger, fear, disgust, sadness, happiness, surprise, no emotion, and not sure). The data show comparable kappa and Fleiss’ kappa values for both polarity and emotion classification. The average agreement among any two raters was 65%, the average kappa for any two raters was 0.55, and Fleiss’ kappa for the three raters was 0.55. These values for kappa and Fleiss’ kappa indicate a moderate agreement. The values of kappa and Fleiss’ kappa statistics and the mapping between polarity and emotion classification in the SDTC confirm the consistency and regularity of the classification process. To the best of our knowledge, the SDTC is the first Twitter corpus for Saudi dialect labeled by three raters and classified based on the polarity of the tweets and the emotions they carry.
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