Serviços Personalizados
Artigo
Indicadores
Links relacionados
- Citado por Google
- Similares em Google
Compartilhar
The African Journal of Information and Communication
versão On-line ISSN 2077-7213
versão impressa ISSN 2077-7205
Resumo
KEKERE, Temitope; MARIVATE, Vukosi e HATTINGH, Marié. Exploring COVID-19 public perceptions in South Africa through sentiment analysis and topic modelling of Twitter posts. AJIC [online]. 2023, vol.31, pp.1-27. ISSN 2077-7213. http://dx.doi.org/10.23962/ajic.i31.14834.
The narratives shared on social media during a health crisis such as COVID-19 reflect public perceptions of the crisis. This article provides findings from a study of the perceptions of South African citizens regarding the government's response to the COVID-19 pandemic from March to May 2020. The study analysed Twitter data from posts by government officials and the public in South Africa to measure the public's confidence in how the government was handling the pandemic. A third of the tweets dataset was labelled using valence aware dictionary and sentiment reasoner (VADER) lexicons, forming the training set for four classical machine-learning algorithms-logistic regression (LR), support vector machines (SVM), random forest (RF), and extreme gradient boosting (XGBoost)-that were employed for sentiment analysis. The effectiveness of these classifiers varied, with error rates of 17% for XGBoost, 14% for RF, and 7% for both SVM and LR. The best-performing algorithm (SVM) was subsequently used to label the remaining two-thirds of the tweet dataset. In addition, the study used, and evaluated the effectiveness of, two topic-modelling algorithms-latent dirichlet allocation (LDA) and non-negative matrix factorisation (NMF)-for classification of the most frequently occurring narratives in the Twitter data. The better-performing of these two algorithms, NMF, identified a prevalence of positive narratives in South African public sentiment towards the government's response to COVID-19.
Palavras-chave : sentiment analysis; sentiment classification; topic modelling; social media; Twitter; natural language processing (NLP); COVID-19; South Africa; government response; public perceptions.