Development and Comparison of Data Mining-based Prediction Models of Building Fire Probability

A lot of manpower and budgets are being used to prevent fires, and only a small portion of the data generated during this process is used for disaster prevention activities. This study develops a prediction model of fire occurrence probability based on data mining in order to more actively use these...

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Bibliographic Details
Published inInteonet jeongbo hakoe nonmunji = Journal of Korean Society for Internet Information pp. 101 - 112
Main Authors 홍성관, 정승렬
Format Journal Article
LanguageEnglish
Published 한국인터넷정보학회 01.12.2018
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Summary:A lot of manpower and budgets are being used to prevent fires, and only a small portion of the data generated during this process is used for disaster prevention activities. This study develops a prediction model of fire occurrence probability based on data mining in order to more actively use these data for disaster prevention activities. For this purpose, variables for predicting fire occurrence probability of various buildings were selected and data of construction administrative system, national fire information system, and Korea Fire Insurance Association were collected and integrated data set was constructed. After appropriate data cleansing and preprocessing, various data mining methodologies such as artificial neural network, decision trees, SVM, and Naive Bayesian were used to develop a prediction model of the fire occurrence probability of buildings. The most accurate model among the derived models is Linear SVM model which shows 68.42% as experimental data and 63.54% as verification data and it is the best model to predict fire occurrence probability of buildings. As this study develops the prediction model which uses only the set values ​​of the specific ranges, future studies may explore more opportunites to use various setting values ​​not shown in this study. KCI Citation Count: 1
Bibliography:http://www.jics.or.kr/digital-library/15452
ISSN:1598-0170
2287-1136
DOI:10.7472/jksii.2018.19.6.101