The Coronavirus pandemic has affected the normal course of life. People around the world have taken to social media to express their opinions and general emotions regarding this phenomenon that has taken over the world by storm. The social networking site, Twitter showed an unprecedented increase in tweets related to the novel Coronavirus in a very short span of time. This paper presents the global sentiment analysis of tweets related to Coronavirus and how the sentiment of people in different countries has changed over time. Furthermore, to determine the impact of Coronavirus on daily aspects of life, tweets related to Work From Home (WFH) and Online Learning were scraped and the change in sentiment over time was observed. In addition, various Machine Learning models such as Long Short Term Memory (LSTM) and Artificial Neural Networks (ANN) were implemented for sentiment classification and their accuracies were determined. Exploratory data analysis was also performed for a dataset providing information about the number of confirmed cases on a per-day basis in a few of the worst-hit countries to provide a comparison between the change in sentiment with the change in cases since the start of this pandemic till June 2020.
翻译:Corona病毒的流行影响了正常的生活过程。世界各地的人们都通过社交媒体表达他们对这一现象的看法和一般情绪。社交网站Twitter显示,在很短的时间内,与Corona病毒小说有关的推特数量出现了前所未有的增长。本文介绍了与Corona病毒有关的推特的全球情绪分析,以及不同国家人民的情绪如何随时间变化。此外,为了确定Corona病毒对日常生活的影响,与家庭工作(WFH)和网上学习(在线学习)有关的Twitter被废弃,并观察到随着时间的推移人们的情绪变化。此外,实施了各种机器学习模式,如长期短期记忆(LSTM)和人工神经网络(ANN),以进行情绪分类,并确定了这些模式的适应性。还进行了数据探索性数据分析,以提供一个数据集,提供有关几个受打击最严重的国家每天确诊病例数量的信息,以比较自该流行病开始到2020年6月为止的情况变化。