Dengue Fever Risk Prediction System Using Data Mining Techniques
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Creator Sunisa Kidjaideaw
Title Dengue Fever Risk Prediction System Using Data Mining Techniques
Contributor Sopee Kaewchada, Wichit Sungton, Chaimongkon Chuaynukoon
Publisher The Association of Council of IT Deans (CITT)
Publication Year 2567
Journal Title Journal of Information Science and Technology
Journal Vol. 14
Journal No. 1
Page no. 1-8
Keyword Model, Prediction, Dengue Fever, Decision Tree, Data Mining
URL Website https://tci-thaijo.org/index.php/JIST
Website title Journal of Information Science and Technology
ISSN 2651-1053
Abstract This research aims to 1) study and measure the effectiveness of a classification model using decision tree-based methods, 2) to develop a dengue fever risk prediction system, and 3) To study the effectiveness of the dengue fever risk prediction system using a sample group created from patient data with dengue fever cases in Nakhon Si Thammarat province over a period of 5 years (B.E. 2558 - B.E. 2563), utilizing data mining techniques for classification using decision trees. The results of the research showed that 1) The model used for predicting dengue fever risk, based on the decision tree classification technique, achieved an accuracy of 83.5%, 2) The dengue fever risk prediction system consists of sub-systems for user authentication, dengue fever incidence data management, dengue fever reporting, management of dengue fever datasets after data mining, and dengue fever risk analysis, and 3) The satisfaction level with the dengue fever risk prediction system was found to be high. ( = 4.06).
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