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Deep Learning-Based Sentiment and Stance Analysis of Tweets About Vaccination

Doğan Küçük, Nursal Arıcı

2023International Journal on Semantic Web and Information Systems15 citationsDOIOpen Access PDF

Abstract

Sentiment analysis and stance detection are interrelated problems of affective computing, and their outputs commonly complement each other. The focus of this article is to determine sentiments and stances of Twitter users about vaccination. A tweet dataset on COVID-19 vaccination is compiled and jointly annotated with sentiment and stance. This deep learning approach employs BERT, which is a model based on pre-trained transformers. The generative deep learning model, ChatGPT, is also used for stance and sentiment analysis on the dataset. ChatGPT achieves the best performance for stance detection, while BERT is the best performer for sentiment analysis. This study is the first one to observe stance and sentiment detection performance of ChatGPT on health-related tweets. This article also includes a full-fledged system proposal based on automatic sentiment and stance analysis. COVID-19 pandemic is an impactful global public health phenomenon, and hence, joint extraction of sentiments and stances from health-related tweets can profoundly contribute to health-related decision-making processes.

Topics & Concepts

Sentiment analysisComputer scienceDeep learningArtificial intelligenceComplement (music)Generative grammarCoronavirus disease 2019 (COVID-19)Natural language processingMedicinePhenotypePathologyChemistryBiochemistryInfectious disease (medical specialty)ComplementationGeneDiseaseSentiment Analysis and Opinion MiningMisinformation and Its ImpactsHate Speech and Cyberbullying Detection
Deep Learning-Based Sentiment and Stance Analysis of Tweets About Vaccination | Litcius