Acknowledgement
본 연구는 과학기술정보통신부 이공학개인기초연구지원사업 기본연구(2021R1F1A106422811)의 연구비 지원에 의해 수행되었습니다.
References
- Brieman, L. (2001), Random Forests, Machine learning, Vol. 45, No. 1, pp. 5-32. (in English) https://doi.org/10.1023/A:1010933404324
- Bae, S.W. (2019), Forecasting Property Prices Using the Machine Learning Methods: Model Comparisons, Ph.D. dissertation, Dankuk University, Seoul, Korea, 177p.
- David, Rohde., Jonathan, Corcoran. and Prem, Chhetri. (2010), Spatial Forecasting of Residential Urban Fires: A Bayesian Approach, Environment and Urban Systems, Vol. 34, pp. 58-69. (in English) https://doi.org/10.1016/j.compenvurbsys.2009.09.001
- Hong, S.Y., Cho, S.H., Kim, M.S. and Moon, I. (2019), Fire Prediction based on Weather and Fire Data using Artificial Neural Network, Fire Science and Engineering, Vol. 19, No. 7, pp. 275-281. (in Korean with English abstract)
- Hwang, W.U., Go, M.H. and Yang, B.S. (2004), Cavitation Condition Monitoring of Butterfly Valve Using Support Vector Machine, Transactions of the Korean society for noise and vibration engineering, Vol. 14, No. 2, pp. 119-127. (in Korean with English abstract) https://doi.org/10.5050/KSNVN.2004.14.2.119
- Hastie, C. and Searle, R. (2016), Socio-Economic and Demographic Predictors of Accidental Dwelling Fire Rates, Fire Safety Journal, Vol. 84, pp. 50-56. (in English) https://doi.org/10.1016/j.firesaf.2016.07.002
- Jang, H.S. (2018), Predictive evaluation of fecal E. coli occurrence using machine learning, Ph.D. dissertation, Kunsan National University, Jeonbuk, Korea, 121p.
- Kim, M.J. (2014), A Study on Fire Prediction Model Development Using Data Mining, Master's thesis, Kangwon University, Kangwon, Korea, 52p.
- Kim, S.J. and Ahn, H.C. (2016), Application of Random Forests to Corporate Credit Rating Prediction, Journal of Industrial Innovation Research, Vol. 32, No. 1, pp. 187-211. (in Korean with English abstract)
- Kim, H.R., Sin, J.W., Park, Y.J., Lee, H.P. and Moon, K.A. (2010), A Study on the Statistical Analysis of Fire Patterns in Gangwon Province, Fire Science and Engineering, Proceedings of the Korea Institute of Fire Science and Engineering Conference, 23 April, Kyungmin University, Korea, pp. 419-423.
- Lee, C.L. (2015), Estimating Single-family House Prices Using Non-parametric spatial Models and an Ensemble Learning Approach, Ph.D. dissertation, Seoul National University, Seoul, Korea, 165p.
- Lee, H.L. (2020), Real-time Prediction of Penetration Rate of Shield TBM based on Machine Learning, Ph.D. dissertation, Inha University, Inchoen, Korea, 132p.
- Lee, C.L. and Park, K.H. (2016), Application of machine learning models for estimating house price, Journal of the Korean Geographical Society, Vol. 51, No. 2, pp. 219-333. (in Korean with English abstract)
- Lee, H.P., Lee, S.C., Hwang, M.J., Park, Y.J., Moon, K.A. and Kim, H.B. (2010), A Study on the Analysis of Fire Patterns using the Decision Tree Analysis Method, Fire Science and Engineering, Proceedings of the Korea Institute of Fire Science and Engineering Conference, 30 October, Seoul, Korea, pp. 349-353.
- Lu, S., Liang, C., Song, W. and Zhang, H. (2013), Frequency-size Distribution and Time-scaling Property of High-casualty Fires in China: Analysis and Comparison, Safety Science, Vol 5, pp. 209-216. (in English)
- National Fire Agency. (2019), National Fire Data System, https://www.nfds.go.kr/, 28 June 2021.
- Park, K.H. (2018), Bagging, Random Forest and Ensemble SVM Comparison studies, Master thesis, Inha University, Inchoen, Korea, 25p.
- Rifan, Ardianto1. and Prem, Chhetri1. (2019), Modeling Spatial-Temporal Dynamics of Urban Residential Fire Risk Using a Markov Chain Technique, Int J Disaster Risk Sci, Vol. 10, pp. 57-73. (in English) https://doi.org/10.1007/s13753-018-0209-2
- Seo, J.D. (2016), Foreign Exchange Rate Forecasting Using the GARCH extended Random Forest Model, Journal of Industrial Economics and Business, Vol. 29, No. 5, pp. 1607-1628. (in Korean with English abstract)
- Seo, M.S. and Yoo, H.H. (2020) Significance Analysis of Facility Fires Though Spatial Econometrics Assessment, Journal of the Korean Society of Surveying, Geodesy, Photogrammetry, and Cartography, Vol. 38, No. 3, pp. 281-293. (in Korean with English abstract) https://doi.org/10.7848/KSGPC.2020.38.3.281
- Vapnik, V. and Chervonenkis, A. (1964), A Note on One Class of Perceptrons, Automation and Remote Control, Vol. 25, No. 1, pp. 103-109. (in English)
- Vapnik, V. and Lerner, A. (1963), Pattern Recognition Using Generalized Portrait Method, Automation and Remote Control, Vol. 24, No. 6, pp. 774-780. (in English)