Analisis Sentimen Masyarakat Terhadap Virus Corona Berdasarkan Opini Masyarakat Menggunakan Metode Naïve Bayes Classifier

S. Suhardiman, F. Purwaningtias
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引用次数: 1

Abstract

The current use of social media is not only to communicate between friends, but is often also used as a means to convey an aspiration to the community, especially the Indonesian people regarding government issues, or problems related to health and other problems. One of the uses of this social media is to use it as a means of conveying digital aspirations, such as some slogans that are used as hashtags, namely #dirumahaja #lockdown, #usemasker, #protocol, #imun, #vaccine. From the slogan used as a hashtag, researchers are interested in conducting research on how much negative sentiment and positive sentiment there are, using the Naïve Bayes Classifier method, which is a machine learning method that uses probability calculations. The basic concept used by Nave Bayes is the Bayes Classifier Theorem, which is a theorem in statistics to calculate probability, the Bayes Optimal Classifier calculates the probability of one class from each existing attribute group, and determines which class is the most optimal, as for the advantages of using Nave Bayes Classifier in document classification can be viewed from the process that takes action based on existing data to provide solutions to these sentiments.
基于公众对科罗娜病毒的看法,分析了公众对该病毒的感情
目前社会媒体的使用不仅是朋友之间的交流,而且经常被用作向社区传达愿望的手段,特别是印度尼西亚人民对政府问题,或与健康和其他问题有关的问题。这种社交媒体的用途之一是将其用作传达数字愿望的手段,例如用作标签的一些口号,即#dirumahaja #封锁、#usemasker、#协议、#免疫、#疫苗。从作为标签使用的口号来看,研究人员有兴趣使用Naïve贝叶斯分类器方法(一种使用概率计算的机器学习方法)对消极情绪和积极情绪的数量进行研究。朴素贝叶斯使用的基本概念是贝叶斯分类器定理,这是统计学中计算概率的定理,贝叶斯最优分类器从每个现有属性组中计算出一个类的概率,并确定哪个类是最优的,至于使用朴素贝叶斯分类器在文档分类中的优势,可以从基于现有数据采取行动,为这些情绪提供解决方案的过程中看出。
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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