Publication | Closed Access
Analysis and visualization of COVID-19 discourse on Twitter using data science: a case study of the USA, the UK and India
11
Citations
44
References
2021
Year
Social Data AnalysisEngineeringSocial Medium MonitoringData VisualizationCommunicationTopic ModelingSentiment AnalysisJournalismText MiningCovid-19Computational Social ScienceSocial MediaData ScienceCovid-19 DiscoursePolitical CommunicationData Science MeasuresPublic HealthContent AnalysisSocial Medium MiningSocial Medium VisualizationGlobal HealthCase StudySocial Medium DataArts
Purpose This paper aims to understand, examine and interpret the main concerns and emotions of the people regarding COVID-19 pandemic in the UK, the USA and India using Data Science measures. Design/methodology/approach This study implements unsupervised and supervised machine learning methods, i.e. topic modeling and sentiment analysis on Twitter data for extracting the topics of discussion and calculating public sentiment. Findings Governments and policymakers remained the focus of public discussion on Twitter during the first three months of the pandemic. Overall, public sentiment toward the pandemic remained neutral except for the USA. Originality/value This paper proposes a Data Science-based approach to better understand the public topics of concern during the COVID-19 pandemic.
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