Please use this identifier to cite or link to this item: https://publication.npru.ac.th/jspui/handle/123456789/1668
Title: A Comparison of the COVID-19 Risk Prediction Model with Data Mining Techniques
A Comparison of the COVID-19 Risk Prediction Model with Data Mining Techniques
Other Titles: การเปรียบเทียบประสิทธิภาพตัวแบบพยากรณ์ความเสี่ยงการติดเชื้อโควิด-19 ด้วยเทคนิคเหมืองข้อมูล
การเปรียบเทียบประสิทธิภาพตัวแบบพยากรณ์ความเสี่ยงการติดเชื้อโควิด-19 ด้วยเทคนิคเหมืองข้อมูล
Authors: Sitichai, Jirayu
Sitichai, Jirayu
Palvisut, Phanaya
Palvisut, Phanaya
Keywords: Data mining
Decision tree method
Naive Bayes method
COVID-19
K-Nearest Neighbor method
Issue Date: 8-Jul-2022
8-Jul-2022
Publisher: The 14th NPRU National Academic Conference Nakhon Pathom Rajabhat University
The 14th NPRU National Academic Conference Nakhon Pathom Rajabhat University
Abstract: The purpose of this study was to compare the effectiveness of models in predicting the likelihood of contracting COVID-19. Three data mining techniques were used, namely, decision tree method Naive Bayes method and K-Nearest Neighbor method The efficacy of appropriate identification classification models for predicting the likelihood of contracting COVID-19 was compared using 5,434 rows of 21 columns of COVID-19 data from the kaggle website. Data were analyzed on the basis of CRISP-DM method. Use RapidMiner. using Rapidminer. in modeling in the analysis of data, accuracy, precision, recall. The results showed that the decision tree method was the most effective. The accuracy was 97.85%, followed by the K-Nearest Neighbor method, which gave an accuracy of 97.36%, and Naive Bayes method gave an accuracy of 97.36%. 96.75% from the results of this performance comparison. can adopt the decision tree method can be used as a model for predicting the risk of contracting COVID-19.
URI: https://publication.npru.ac.th/jspui/handle/123456789/1668
Appears in Collections:Proceedings of the 14th NPRU National Academic Conference

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