Text Analytics on Twitter Text-based Public Sentiment for Covid-19 Vaccine: A Machine Learning Approach

H. Adamu, Mat Jasri Bin Mat Jiran, Gan Keng Hoon, Nur-Hana Samsudin
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引用次数: 5

Abstract

The global pandemic of the novel Coronavirus in 2019, known by the World Health Organisations (WHO) as Covid-19, has put various governments in a vulnerable situation around the world. For virtually every nation in the world, the effects of the Covid-19 pandemic, previously experienced by the people of China alone, has now become a matter of great concern. This research highlights its impact on the global economy, in addition to the immediate health consequences associated with the Covid-19 pandemic. The study further discussed the use of Text Analytics and Sentiment Analysis in Natural Language Processing (NLP) based on Twitter text to analyse public sentiment and derive insights regarding Covid-19 vaccines in the healthcare domain. Two machine learning algorithms were employed: Support Vector Machine (SVM) and K-Nearest Neighbor (KNN) to classify and evaluate the results. Various pre-processing techniques were adopted to help in detecting the public sentiment based on the three sentiment polarity classes: positive, negative, and neutral. The result of the sentiment class distribution reveals that 31% of the public sentiment regarding Covid-19 vaccines is positive, 22% is negative while the remaining 47% were classified as neutral sentiment. The experimented machine learning algorithms reveals that SVM produced 88% accuracy which surpasses KNN with 78% accuracy.
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基于文本的Covid-19疫苗公众情绪:一种机器学习方法
2019年,世界卫生组织(世卫组织)将新型冠状病毒称为Covid-19,全球大流行,使世界各国政府处于脆弱的境地。对于世界上几乎每一个国家来说,新冠肺炎大流行的影响,以前只有中国人民经历,现在已经成为一个非常令人担忧的问题。这项研究强调了其对全球经济的影响,以及与Covid-19大流行相关的直接健康后果。该研究进一步讨论了基于Twitter文本的自然语言处理(NLP)中的文本分析和情感分析的使用,以分析公众情绪,并得出有关医疗保健领域Covid-19疫苗的见解。采用支持向量机(SVM)和k近邻(KNN)两种机器学习算法对结果进行分类和评估。基于正面、负面和中性三种情绪极性类别,采用了各种预处理技术来帮助检测公众情绪。调查结果显示,对新冠肺炎疫苗的评价为“正面”(31%)、“负面”(22%)、“中性”(47%)。经过实验的机器学习算法表明,SVM的准确率为88%,超过了KNN的78%。
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