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Arabic Sentiment Analysis using Deep Learning for COVID-19 Twitter Data

机译:使用深度学习Covid-19推特数据的阿拉伯语情绪分析

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Novel coronavirus, (COVID-19) first noticed in December 2019, and became a world pandemic affecting not only the health sector, but economic, social and psychological wellbeing as well. Individuals are using social media platforms to communicate feelings and sentiments on this pandemic. This article aims at analyzing and visualizing the influence of coronavirus (COVID-19) using machine learning and deep learning methods to quantify the sentiment shared publicly corelated with the actual number of cases reported over time. On the analysis of 10 Million Arabic tweets, results show that deep learning techniques using an ensemble model outperformed machine learning using SVM with an accuracy of 90% and 77% respectively. It also outperformed the individual deep learning models.
机译:新的冠状病毒,(Covid-19)首先于2019年12月注意到了世界大流行,不仅影响了卫生部门,而且是经济,社会和心理健康的影响。个人正在使用社交媒体平台来传达这种大流行的感情和情绪。本文旨在通过机器学习和深度学习方法分析和可视化冠状病毒(Covid-19)的影响,以量化与随着时间的推移报告的实际情况的共享的情绪共享的情绪。在分析1000万阿拉伯语推文中,结果表明,使用集合模型的深度学习技术,使用SVM分别使用SVM的机器学习分别为90%和77%。它也表现出各个深度学习模型。

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