Certainty Factor Method Analysis for Identification of Covid-19 Virus Accuracy

B Herawan Hayadi, Enny Widawati, Marsellinus Bachtiar, Fazli Nugraha Tambunan

Abstract


Corona virus or often called COVID-19 is a virus caused by SARS CoV 2, where the incident was uploaded in the world of health or we often call WHO. Even the World Health Organization (WHO) has declared that the corona virus outbreak is a Public Health Emergency of International Concern (PHEIC) or an international public health emergency. Not only has an impact on health, but this virus outbreak has also had a major impact in various sectors such as disrupting the country's economy, disrupting the education process and so on. This impact is caused by the very fast spread of the virus. Therefore, the author will analyze the level of accuracy in the covid-19 virus by using the certainty method model which aims to make it easier for local governments to monitor the spread of the COVID-19 virus and can determine future policies so that the spread is not more easily exposed to the community. this method will produce data analysis and diagnoses regarding identifying the covid-19 virus with results in the form of accuracy, namely someone is indicated as COVID-19 POSITIVE.

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Keywords


Certainly Factor; Public Health; Covid-19 Classification; Artificial Intelligence

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International Journal of Informatics and Information Systems (IJIIS)

2579-7069 (Online)
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