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Sentimental Analysis of COVID-19 Tweets Using Deep Learning Models

机译:深层学习模型的Covid-19推文的感伤分析

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摘要

The novel coronavirus disease (COVID-19) is an ongoing pandemic with large global attention. However, spreading false news on social media sites like Twitter is creating unnecessary anxiety towards this disease. The motto behind this study is to analyses tweets by Indian netizens during the COVID-19 lockdown. The data included tweets collected on the dates between 23 March 2020 and 15 July 2020 and the text has been labelled as fear, sad, anger, and joy. Data analysis was conducted by Bidirectional Encoder Representations from Transformers (BERT) model, which is a new deep-learning model for text analysis and performance and was compared with three other models such as logistic regression (LR), support vector machines (SVM), and long-short term memory (LSTM). Accuracy for every sentiment was separately calculated. The BERT model produced 89% accuracy and the other three models produced 75%, 74.75%, and 65%, respectively. Each sentiment classification has accuracy ranging from 75.88–87.33% with a median accuracy of 79.34%, which is a relatively considerable value in text mining algorithms. Our findings present the high prevalence of keywords and associated terms among Indian tweets during COVID-19. Further, this work clarifies public opinion on pandemics and lead public health authorities for a better society.
机译:新型冠状病毒疾病(Covid-19)是一个持续的大流行,具有大的全球关注。但是,在Twitter等社交媒体网站上传播虚假新闻正在为对这种疾病产生不必要的焦虑。本研究背后的座右铭是在Covid-19锁定期间分析印度网民的推文。这些数据包括在2020年3月23日之间收集的推文,2020年7月15日,文本被标记为恐惧,悲伤,愤怒和喜悦。通过来自变压器(BERT)模型的双向编码器表示进行了数据分析,这是一种新的文本分析和性能的深度学习模型,并与逻辑回归(LR)等其他型号进行比较,支持向量机(SVM),和长期内存(LSTM)。单独计算每种情绪的准确性。 BERT模型分别产生了89%的精度,另外三种型号分别产生75%,74.75%和65%。每个情绪分类的准确度从75.88-87.33%的准确度,中值精度为79.34%,这是文本挖掘算法中的相当大的价值。我们的发现在Covid-19期间呈现了印度推文之间的关键字和相关术语的高度普遍性。此外,这项工作澄清了对Pandemics和领导公共卫生当局的公众意见,以实现更好的社会。

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