Implementasi Algoritma Naive Bayes Untuk Memprediksi Tingkat Penyebaran Covid-19 Di Indonesia

Alvina Felicia Watratan, Arwini Puspita, Dikwan Moeis, Sistem Informasi, Profesional Makassar
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引用次数: 27

Abstract

The COVID-19 pandemic is the first and foremost health crisis in the world.  Coronavirus is a collection of viruses from the subfamily Orthocronavirinae in the Coronaviridae family and the order of Nidovirales.  This group of viruses that can cause disease in birds and mammals, including humans.  In humans, coronaviruses cause generally mild respiratory infections, such as colds, although some forms of disease such as;  SARS, MERS, and COVID-19 are more deadly. Anticipating and reducing the number of corona virus sufferers in Indonesia has been carried out in all regions.  Among them by providing policies to limit activities out of the house, school activities laid off, work from home (work from home), even worship activities were laid off.  This has become a government policy based on considerations that have been analyzed to the maximum, of course. Therefore this research was carried out as an anticipation step towards the Covid-19 pandemic by predicting the spread of Covid-19, especially in Indonesia. The research method applied in this research is problem analysis and literature study, collecting data and implementation.  The application of the naive bayes method is expected to be able to predict the spread rate of COVID-19 in Indonesia. The results of the Naive Bayes method classification show that 16 data from 33 data were tested in Covid-19 cases per province with an accuracy of 48.4848%, where of the 33 data tested in the Covid-19 case per province tested there were 16 data that were successfully classified correctly.
2019冠状病毒病大流行是世界上第一次也是最重要的卫生危机。冠状病毒是冠状病毒科正冠状病毒亚科和尼多病毒目的病毒集合。这组病毒可引起鸟类和哺乳动物,包括人类的疾病。在人类中,冠状病毒通常会引起轻微的呼吸道感染,如感冒,尽管某些形式的疾病,如;SARS、MERS和COVID-19更致命。印度尼西亚所有地区都开展了预测和减少冠状病毒患者人数的工作。其中,通过提供限制外出活动的政策,学校活动被裁员,在家工作(work from home),甚至礼拜活动也被裁员。当然,这已经成为一项基于考虑的政府政策,这些考虑已经得到了最大限度的分析。因此,这项研究是通过预测Covid-19的传播,特别是在印度尼西亚,作为对Covid-19大流行的预测步骤进行的。本研究采用的研究方法是问题分析和文献研究,收集数据和实施。应用朴素贝叶斯方法有望预测新冠病毒在印度尼西亚的传播速度。朴素贝叶斯方法分类结果显示,33个数据中有16个数据被检测到每个省份的新冠肺炎病例,准确率为48.4848%,其中33个数据被检测到每个省份的新冠肺炎病例中有16个数据被成功分类。
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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