Detecting and analyzing topics of massive COVID-19 related tweets for various countries

AuthorsHamideh Hajiabadi,Faezeh Azizi,Mohammad Hossein Khosravi
JournalCOMPUTERS & ELECTRICAL ENGINEERING
Page number108561-108571
Serial number106
Volume number1
IF1.747
Paper TypeFull Paper
Published At2023
Journal TypeTypographic
Journal CountryIran, Islamic Republic Of
Journal IndexJCR

Abstract

With the flare-up of the COVID-19 infection since 2020, COVID-19 has been one of the hottest topics on Twitter. Topic modeling is one of the most popular analyses, which extracts the topics from the text. This paper proposes a method to extract the most-discussed topics for 32 countries of the world. In this regard, more than five million related tweets have been studied, and a method based on content analysis is proposed to identify the exact location of each tweet. Then, by using the statistical algorithm of Latent Dirichlet Allocation, the main topics of the tweets are identified. By leveraging sentiment analysis, the topics are afterward divided into positive and negative groups, and their trends in a quarterly period are investigated for the countries under study. The outcome of the analysis of time trends shows that for most countries, the trend of negative topics is highly correlated with the number of confirmed cases of COVID-19.

Paper URL

tags: Topic modeling, Twitter social network, LDA, Sentiment analysis, COVID-19