Analysis of Public Opinion on Covid-19 Vaccine through Social Media Using Naïve Bayes Theory Algorithm

A. S. Laswi, M. Yusuf, Ulvah Ulvah, Bungawati Bungawati
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Abstract

This study aims to analyze various public opinion on the Covid-19 vaccines that appear on social media pages, especially on Facebook and Twitter via # (hastag). The death rate caused by COVID-19 was so high which reached 144,227 people until 2022. The Indonesian government required vaccines for the community starting from children aged 6 years as an effort to prevent the spread of the Covid-19 virus. Unfortunately, the implementation of complete vaccines in Indonesia has only reached 51.3% of the mandatory vaccine population, which is 140 million out of 339 million people. The non-achievement of the target set by the government causes the need to conduct a sentiment analysis on vaccines in Indonesia through social media. Based on the sample data, from 1000 words obtained from 320 opinions there are positive and negative opinions. This data is then analyzed and processed to find out how many positive and negative responses occurred. The data was then processed into several stages to test the level of truth through training data and test data. The results of the data processing were tested using the Naïve Bayes algorithm which resulted in an accuracy value with a precession of 77.08% taken from 90 samples test data, recall with a percentage of 97.87% based on positive data which was predicted to be true with a positive opinion status from 47 samples of test data and 1 positive data status which is still predicted to be negative. Furthermore, the specific percentage value obtained was 65.30% of the 132 test data that are predicted
基于Naïve贝叶斯算法的社交媒体舆论分析
本研究旨在分析社交媒体页面上,特别是Facebook和Twitter上通过# (hashtag)出现的关于Covid-19疫苗的各种舆论。截至2022年,新冠肺炎的死亡率高达14.4227万人。印度尼西亚政府要求从6岁儿童开始为社区接种疫苗,以防止新冠病毒的传播。不幸的是,在印度尼西亚,完整疫苗的实施仅覆盖了强制性疫苗接种人口的51.3%,即3.39亿人口中的1.4亿人。由于政府设定的目标没有实现,因此有必要通过社交媒体对印度尼西亚的疫苗进行情绪分析。根据样本数据,从1000字中获得的320条意见中有正面意见和负面意见。然后对这些数据进行分析和处理,以找出发生了多少积极和消极的反应。然后将数据处理成几个阶段,通过训练数据和测试数据来检验真实程度。使用Naïve贝叶斯算法对数据处理结果进行测试,从90个样本测试数据中获得的精度值进动率为77.08%,基于阳性数据的召回率为97.87%,从47个样本测试数据中预测阳性意见状态为真,1个阳性数据状态仍被预测为阴性。得到的具体百分比值为预测的132个试验数据的65.30%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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