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A Comparative Study of Sentiment Analysis on Mask-Wearing Practices during the COVID-19 Pandemic
Author(s) -
Bishrul Haq,
Ghulam Mujtaba,
Zahid Hussain Khand,
Javed Ahmad,
Ali Zafar
Publication year - 2020
Publication title -
quaid-e-awam university research journal of engineering science and technology
Language(s) - English
Resource type - Journals
eISSN - 2523-0379
pISSN - 1605-8607
DOI - 10.52584/qrj.1802.17
Subject(s) - computer science , feature selection , artificial intelligence , macro , sentiment analysis , feature (linguistics) , feature extraction , naive bayes classifier , normalization (sociology) , word embedding , pattern recognition (psychology) , bag of words model , natural language processing , machine learning , embedding , support vector machine , linguistics , philosophy , sociology , anthropology , programming language
COVID-19 has become one of the most highly orated subject matter in these days. Countries have taken many viable actions to prevent the spread of the virus directed by international recommendations, which led to many disputes concerning wearing a face mask as a preventive measure against the virus. This study aims to assess and compare the overall accuracy, macro precision, macro F-measure and macro recall of the different decision models towards the COVID-19 mask-wearing practices via sentiment analysis. Tweets are labeled and text pre-processing techniques are applied as stemming, normalization, tokenization, and stop-word removal. Subsequently, the tweets are transformed into master feature vectors by applying various feature extraction, feature representation, feature selection and word embedding techniques with five supervised machine learning decision models to predict mask wearing practices reinforced from Twitter tweets. Moreover, the highest macro F-measure and macro precision are found with feature extraction as hybrid-grams, feature representation as TF-IDF, feature selection as Chi-Squared Test, and highest macro recall with feature extraction as BOW, feature representation as TF-IDF, feature selection as ANOVA F-value. Hence, this study concludes that the Naive Bayes (NB) algorithm outperforms other decision models with master feature vectors applied. In addition, it also outperforms word embedding techniques.

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