推特用户对PeduliLindungi的情感分析Naïve贝叶斯算法

Lia Ellyanti, Y. Ruldeviyani, Lelianto Eko Pradana, Andro Harjanto
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引用次数: 1

摘要

2019冠状病毒病于2020年3月被世界卫生组织宣布为大流行,对人们的生活产生了重大影响。印度尼西亚政府通过要求各社团在每项活动中使用PeduliLindungi,作出了若干努力来抑制病毒的传播。在使用PeduliLindungi的社会中有许多优点和缺点,许多关于该应用程序性能的评论通过playstore,应用程序商店或社交媒体找到。推特是一种社交媒体,允许社会表达他们对任何话题的感受、想法、观点或批评。本研究对推特上的PeduliLindungi进行了审查,时间为2021年6月至12月,这是新冠肺炎病例最多的地区,也是政府对行动限制更严格的地区。将收集到的数据手工标记为正面和负面类,并使用Naïve贝叶斯算法进行情绪分析,得到对PeduliLindungi的正面情绪为64.69%,负面情绪为35.5%。采用Naïve贝叶斯算法进行10倍交叉验证,得到的准确率为95.86%,精密度为96.99%,召回率为94.12%。积极的情绪表明来自社会的亲表达,如与疫苗证书、PCR或抗原结果的数据整合,使活动更容易进入公共交通或公共空间。负面情绪是来自社会的反对情绪,与应用程序的性能和数据安全有关。本研究的结果有望为开发人员和政府部门制定更好的PeduliLindungi应用程序性能改进策略提供参考、见解和信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis of Twitter Users to the PeduliLindungi Using Naïve Bayes Algorithm
Covid-19 was declared as a pandemic by World Health Organization (WHO) in March 2020, has a major impact on the lives. Indonesian’s government has made several efforts to suppress the spread of the virus by requiring the societies to use PeduliLindungi in every activity. There are many pros and cons from the societies in using PeduliLindungi, many reviews about the performance of this application found through playstore, app store or social media. Twitter is one of social media that allows the societies to express their feeling, idea, opinion, or critics about any topics. This study takes the review of PeduliLindungi from Twitter with period from June up to December 2021, which has the highest cases of covid-19 and tighter movement restriction from the government. The data collected were manually labeling into positive and negative class and processed using sentiment analysis with Naïve Bayes algorithm, give the result 64.69% positive sentiment and 35.5% negative sentiment regarding PeduliLindungi. The model tested using Naïve Bayes algorithm with 10-fold cross validation has the highest performance, the accuracy obtained is 95.86%, with precision 96.99% and recall 94.12%. The positive sentiment indicates the pro expression from society, like the data integration with vaccine certificate, PCR or antigen result, that makes the activities to entry public transport or public space easily. The negative sentiment indicates the cons expression from the societies, related with the performance of the application and the data security. The result of this study expected being reference, give insight, and information for developers and governments to build a better strategy in improving the performance of PeduliLindungi application.
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