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Sentiment Analysis of COVID-19 Tweets Using Deep Learning and Lexicon-Based Approaches

Bharati Ainapure, Reshma Pise, P Mahesh Reddy, Bhargav Appasani, Avireni Srinivasulu, Mohammad S. Khan, Nicu Bizon

2023Sustainability75 citationsDOIOpen Access PDF

Abstract

Social media is a platform where people communicate, share content, and build relationships. Due to the current pandemic, many people are turning to social networks such as Facebook, WhatsApp, Twitter, etc., to express their feelings. In this paper, we analyse the sentiments of Indian citizens about the COVID-19 pandemic and vaccination drive using text messages posted on the Twitter platform. The sentiments were classified using deep learning and lexicon-based techniques. A lexicon-based approach was used to classify the polarity of the tweets using the tools VADER and NRCLex. A recurrent neural network was trained using Bi-LSTM and GRU techniques, achieving 92.70% and 91.24% accuracy on the COVID-19 dataset. Accuracy values of 92.48% and 93.03% were obtained for the vaccination tweets classification with Bi-LSTM and GRU, respectively. The developed models can assist healthcare workers and policymakers to make the right decisions in the upcoming pandemic outbreaks.

Topics & Concepts

LexiconSentiment analysisSocial mediaComputer scienceArtificial intelligenceCoronavirus disease 2019 (COVID-19)MicrobloggingDeep learningPandemicNatural language processingFeelingWorld Wide WebPsychologyMedicineInfectious disease (medical specialty)Social psychologyDiseasePathologySentiment Analysis and Opinion MiningMisinformation and Its ImpactsSpam and Phishing Detection
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