Sentiment Analysis of Covid-19 Vaccine Tweets Utilizing Naïve Bayes

Abdurrahim, Abdurrahim and Syafaah, Lailis and Lestandy, Merinda Sentiment Analysis of Covid-19 Vaccine Tweets Utilizing Naïve Bayes. In: Proceedings of the ICONTINE 2021. AIP Publisher.

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Abstract

COVID-19 is acknowledged as a transmitted from one person to another through contact, coughing, and
sneezing. Twitter has served as one of the media outlets to raise awareness regarding COVID-19 problems. One of the
government's objectives, based on the rising distribution, is pursued to preserve immunizations in stock. Hence, the vaccine
information has become adequately available. However, immunization has sparked a range of reactions, including support
and objection for vaccination. Attempts require a mechanism to distinguish tweets addressing immunization-related
information. One notable method includes sentiment analysis, expressing a statement's negative, neutral, and positive
feelings. A total of 5200 datasets were employed, with 4000 datasets classified as neutral, 300 datasets as negative, and
900 datasets as positive. The Naïve Bayes method and the TF-IDF (Term Frequency Inverse Document Frequency) word
weighting strategy are proposed to model the COVID-19 vaccine dataset, by comparing the three models of: Gaussian,
Multinomial, and TF-IDF (Term Frequency Inverse Document Frequency). According to study employing Naïve Bayes,
the best model employing Bernoulli Naive Bayes is 80% with a data splitting of 30%.

Item Type: Book Section / Proceedings
Keywords: COVID19, machine learning, naive bayes, sentiment
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions: Faculty of Engineering > Department of Electrical Engineering (20201)
Depositing User: faruq Amrul Faruq
Date Deposited: 05 Sep 2024 07:02
Last Modified: 05 Sep 2024 07:02
URI: https://eprints.umm.ac.id/id/eprint/10866

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