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Application of Support Vector Machine for Arabic Sentiment Classification Using Twitter-Based Dataset

机译:支持向量机应用于使用推特式数据集的阿拉伯语情感分类的应用

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摘要

Sentiment classification is the process of classifying emotions and opinions in texts. In this study, the problem of Arabic sentiment analysis was addressed. A support vector machine (SVM) model was proposed to classify opinions in Arabic micro-texts as being positive or negative. To evaluate the performance of the SVM model, a dataset was built from tweets discussing several social issues in Saudi Arabia. These issues include changes that were implemented by the country as part of a newly established vision, known as Saudi Arabia Vision 2030. The constructed dataset was manually annotated according to the sentiment conveyed in the text. To achieve the best sentiment classification accuracy, several procedures were implemented within the proposed framework including light stemming, feature extraction (Ngrams, emoji and tweet-topic features), parameter optimisation and feature-set reduction. The experimental results revealed excellent outcomes. An accuracy of 89.83% was achieved using the proposed SVM model.
机译:情绪分类是在文本中对情感和意见进行分类的过程。在这项研究中,解决了阿拉伯语情绪分析的问题。建议支持向量机(SVM)模型将阿拉伯语微文本的意见分类为正或负面。为了评估SVM模型的表现,由Tweets建造了一个数据集,讨论沙特阿拉伯的几个社会问题。这些问题包括该国实施的变更,作为新建立的愿景的一部分,被称为沙特阿拉伯愿景2030.根据文中传达的情绪手动注释建设的数据集。为实现最佳情绪分类准确性,在拟议的框架内实施了几个程序,包括亮点,功能提取(Ngrams,Emoji和Tweet-Topic功能),参数优化和功能集减少。实验结果揭示了出色的结果。使用所提出的SVM模型实现了89.83%的准确性。

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