ANALISIS KASUS COVID-19 DI PROVINSI NUSA TENGGARA BARAT MENGGUNAKAN METODE RANTAI MARKOV

Authors : Dara Puspita Anggraeni; Lisa Harsyiah; Attina Ulansari; Mustika Hadijati
article cite 1 Year 2022
source: Jurnal Aplikasi Statistika & Komputasi Statistik
Abstract

The aim of this research is to determine the shape of the matrix of the transition opportunity and predict the probability of the occurrence of Covid 19. The method used is Markov Chain which utilizes historical data from Covid 19 cases. This method can explain the probability of occurrence in stages or per state. The data used is data on positive cases, recovered and died from Covid 19, starting from January 24 to April 23, 2021. The results of this study are in the form of a transition opportunity matrix for each Covid 19 case and the highest probability value at steady state for positive patient cases is 39.496% in state 3, the probability value in the case of a recovered patient is 33.088% in state 2 and the probability value in the case of a deceased patient is 41.414% is in state 1.


Concepts :
Data Mining and Machine Learning Applications
article cite 1 Year 2022 source Jurnal Aplikasi Statistika & Komputasi Statistik
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