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Sentiment Analysis Using Learning Approaches Over Emojis for Turkish Tweets

机译:使用土耳其表情符号表情符号学习方法进行情感分析

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With the rise of the usage and interest on social media platforms, emojis have become an increasingly important part of the written language and one of the most important signals for micro-blog sentiment analysis. In this paper, we employed and evaluated classification models using two different representations based on bag-of-words and fastText to address the problem of sentiment analysis over emojis/emoticons for Turkish positive, negative and neutral tweets. At first, the bagof-words approach is used as a simple and efficient baseline method for tweet representation, where the classifiers such as Naive Bayes, Logistic Regression, Support Vector Machines, Decision Trees have been applied to these tweets. Secondly, we utilized fastText to represent tweets as word n-grams for sentiment analysis problem. The results show that there is no significant difference between the two models. While fastText shows 79% and the Linear Regression classifier obtains 77% F1-score for binary classification, fastText performs 62% and Linear Regression has 58% F1-score for multi-class classification. This study is considered as the first study that contributes to the literature by applying different vector representations such as bag-of-words and fastText to predict Turkish tweets over emojis. This study can also be utilized to predict emojis on social media context in the future.
机译:随着社交媒体平台上的使用和兴趣的兴起,表情符号已成为书面语言中越来越重要的部分,并且是微博情感分析中最重要的信号之一。在本文中,我们使用和评估了基于词袋和fastText的两种不同表示形式的分类模型,以解决土耳其语正面,负面和中性推文表情符号/表情上的情感分析问题。首先,bagof-words方法是一种用于推文表示的简单有效的基线方法,其中将诸如Naive Bayes,Logistic回归,支持向量机,决策树之类的分类器应用于这些推文。其次,我们利用fastText将推文表示为单词n-grams,以解决情感分析问题。结果表明,两个模型之间没有显着差异。虽然fastText显示79%,而线性回归分类器获得77%的F1-分数进行二进制分类,而fastText执行62%,而线性回归则具有58%的F1-分数进行多分类。该研究被认为是通过应用不同的矢量表示法(例如词袋和fastText)来预测土耳其语在表情符号上的推文,从而为文学做出了贡献的第一项研究。这项研究还可以用于预测未来社交媒体环境中的表情符号。

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