Forging An Optimized Bayesian Network Model With Selected Parameters For Detection of The Coronavirus In Delta State of Nigeria

Author:

Ojugo Arnold,Otakore Oghenevwede Debby

Abstract

Machine learning algorithm have become veritable tools for effective decision support towards the construction of systems that assist experts (individuals) in their field of exploits and endeavor with regards to problematic tasks.. They are best suited for tasks where data is explored and exploited; and cases where the dataset contains noise, partial truth, ambiguities and in cases where there is shortage of datasets. For this study, we employ the Bayesian network to construct a model trained towards a target system that can help predict best parameters used for classification of the novel coronavirus (covid-19). Data was collected from Federal Medical Center Epidemiology laboratory (a centralized databank for all cases of the covid-19 in Delta State). Data was split into training and investigation (test) dataset for the target system. Results show high predictive capability.

Publisher

Yayasan Ahmar Cendekia Indonesia

Subject

General Earth and Planetary Sciences,General Environmental Science

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Modeling Behavioural Evolution as Social Predictor for the Coronavirus Contagion and Immunization in Nigeria;Journal of Applied Science, Engineering, Technology, and Education;2021-12-04

2. Causal Inference Methods and their Challenges: The Case of 311 Data;DG.O2021: The 22nd Annual International Conference on Digital Government Research;2021-06-09

3. A Bayesian Network Model for the Prognosis of the Novel Coronavirus (COVID-19);Computational Science and Its Applications – ICCSA 2021;2021

4. Will COVID-19 confirmed cases in the USA reach 3 million? A forecasting approach by using SutteARIMA Method;Current Research in Behavioral Sciences;2020-11

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