References
- An, B. Y., & Song, T. S. (2020). A Study on Improving the Occupational Safety and Health Management Cost Calculation Standards. In Proceedings of the Korean Institute of Building Construction Conference (pp. 169-170). The Korean Institute of Building Construction.
- An, H. J., Park, S. M., Lee, J. H., & Kang, L. K. (2020). study on the application of deep learning model for estimation of activity duration in railway construction project. Journal of the Korean Railroad Association, 23 (7) and 615-624.
- Bae, S., & Yu, J. (2018). Estimation of the Apartment Housing Price Using the Machine Learning Methods: The Case of Gangnam-gu. Seoul. J. Korea Real Estate Anal. Assoc, 24, 69-85.
- Bae, S. W., & Yu, J. S. (2017). Predicting the Real Estate Price Index Using Deep Learning. Real Estate Research, 27, 71-86.
- Baek, J. W., & Chung, K. (2020). Context deep neural network model for predicting depression risk using multiple regression. IEEE Access, 8, 18171-18181. https://doi.org/10.1109/ACCESS.2020.2968393
- Baek, J., & Ock, J. (2019). A Study on the Application Method of Construction Site Direct Construction System-Centered on domestic construction case. Jouranl of the Architectural Institute of Korea Structure & Construction, 35(11), 171-180.
- Baek, Y., Wee, K., Baek, I., & Kim, J. (2020). A Study on Improvement of Occupational Safety and Health Mangement Cost Accounting Standards. Korean Journal of Construction Engineering and Management, 21(2), 39-46. https://doi.org/10.6106/KJCEM.2020.21.2.039
- Chae, Y. S., Yoon, Y. G., & Oh, T. K. (2018). A Study on the Proper Rate of the Safety Management Cost under the Construction Technology Promotion Act by Direct Calculation. Journal of the Korean Society of Safety, 33(2), 68-75. https://doi.org/10.14346/JKOSOS.2018.33.2.68
- Chel, H., Majumder, A., & Nandi, D. (2011). Scaled conjugate gradient algorithm in neural network based approach for handwritten text recognition. In International Conference on Computational Science, Engineering and Information Technology (pp. 196-210). Springer, Berlin, Heidelberg.
- Cho, S. H., Nam, H. S., Ryu, K. J., & Ryoo, D. K. (2020). A Comparative Analysis of the Forecasting Performance of Coal and Iron Ore in Gwangyang Port Using Stepwise Regression and Artificial Neural Network Model. Journal of Navigation and Port Research, 44(3), 187-194. https://doi.org/10.5394/KINPR.2020.44.3.187
- Choi, S. H., Oh, S. W., & Kim, Y. S. (2014). Development of enforcement rate for occupational safety and health management expense by construction project types and the percentage of completion. Journal of the Architectural Institute of Korea structure & construction, 30(7), 105-114. https://doi.org/10.5659/JAIK_SC.2014.30.7.105
- Glorot, X., Bordes, A., & Bengio, Y. (2011). Deep sparse rectifier neural networks. In Proceedings of the fourteenth international conference on artificial intelligence and statistics (pp. 315-323). JMLR Workshop and Conference Proceedings.
- Huh, Y, K., Kim, D, Y., & Yoon, S, M. (2017). A Study on the Improvement of Industrial Safety and Health Management Cost in Construction Industry. Korea Occupational Safety & Healthy Agency.
- Hyun, C. T., Hong, T. H., Son, M. J., & Jang, D. W. (2009). Development of the construction cost prediction model based on case-based reasoning in the planning phase of mega-project. Journal of the Architecture Institute of Korea, 25(9), 181-190.
- Jin, S. K., & Kim, M. R. (2019). A Study on the Reform the Industrial Safety and Health Management System, GRI REVIEW 21(4), 2019.11, 85-106(22 pages)
- Kendall, A., & Gal, Y. (2017). What uncertainties do we need in bayesian deep learning for computer vision?. arXiv preprint arXiv:1703.04977.
- Kim, J. W. (2012). A Study on Construction Cost Estimation Model of Educational Facilities using Regression Analysis -For the BTL Project in the Gyeonggi-do Region- (Doctoral dissertation, Hanyang University).
- Kim, M. R., & Lee, Y. J. (2018). A Study on the Improvement of Industrial Safety and Health Management Expenses in Plant Construction Industry. National Assembly Convergence Innovation Economic Forum Academic Presentation Data Collection.
- Kim, Y. C., Yoo, W. S., & Shin, Y. S. (2017). Application of artificial neural networks to prediction of construction safety accidents. Journal of the Korean Society of Hazard Mitigation, 17(1), 7-14. https://doi.org/10.9798/KOSHAM.2017.17.1.7
- Ko, S. J., Lee, K. T., Kim, K. H., & Kim, J. H. (2021). Prediction of Compensation Costs in Apartment Housing Defects Lawsuits using Regression Analysis. Journal of Architectural Institute of Korea, 37(2), 197-204. https://doi.org/10.5659/JAIK.2021.37.2.197
- Lee, G., Han, C. H., & Lee, J. (2019). The Development of Productivity Prediction Model for Interior Finishes of Apartment using Deep Learning Techniques. Korean Journal of Construction Engineering and Management, 20(2), 3-12. https://doi.org/10.6106/KJCEM.2019.20.2.003
- Lee, J. m., Park, S. H., Cho, S. h., & Kim, J. H. (2021), Comparison of Models to Forecast Real Estates Index Introducing Machine Learning. Journal of Architectural Institute of Korea, 37 (1), Proceedings, 191 - 199. https://doi.org/10.5659/JAIK.2021.37.1.191
- Lee, M. G., Jeong, M. J., Kim, S. M., & Kim, H. S. (2010). The current status and proplem analysis of the occupational safety and health expenses in construction. In Proceedings of the Safety Management and Science Conference (pp. 299-307). Korea Safety Management and Science.
- Lera, G., & Pinzolas, M. (2002). Neighborhood based Levenberg-Marquardt algorithm for neural network training. IEEE transactions on neural networks, 13(5), 1200-1203. https://doi.org/10.1109/TNN.2002.1031951
- Ministry of Employment and Labor 2020-63, Industrial Safety and Health Management Cost Estimation and Usage Criteria for Construction Industry
- Mishra, S., Prusty, R., & Hota, P. K. (2015). Analysis of Levenberg-Marquardt and Scaled Conjugate gradient training algorithms for artificial neural network based LS and MMSE estimated channel equalizers. In 2015 International Conference on Man and Machine Interfacing (MAMI) (pp. 1-7). IEEE.
- Moller, M. F. (1993). A scaled conjugate gradient algorithm for fast supervised learning. Neural networks, 6(4), 525-533. https://doi.org/10.1016/S0893-6080(05)80056-5
- Oh, S. W., Kim, C. W., & Seo, J. H. (2018). A Study on the Transparency of Industrial Safety and Health Management Expenses in Construction Industry. Korea Occupational Safety & Healthy Agency.
- Oh, S. W., Kim, Y. S., Choi, S. H., & Choi, J. W. (2013). A study on the estimation of occupational safety and health expense rate by safety environment change in construction industry. Korean Journal of Construction Engineering and Management, 14(4), 97-107. https://doi.org/10.6106/KJCEM.2013.14.4.097
- Paliwal, M., & Kumar, U. A. (2009). Neural networks and statistical techniques: A review of applications. Expert systems with applications, 36(1), 2-17. https://doi.org/10.1016/j.eswa.2007.10.005
- Ryu, J. I. (2017). An analysis of industrial safety and health management costs for small private construction sites considering industrial accident injury. Kyunggi University Graduate School of Construction and Industry
- Shin, S. W. (2017). Construction Safety and Health Management Cost Prediction Model using Support Vector Machine. Journal of the Korean Society of Safety, 32(1), 115-120. https://doi.org/10.14346/JKOSOS.2017.32.1.115
- Shon, J. S. (2018). Industrial Safety and Health Management Expenses Operation Actual. The Korean Society of Disaster Information. 155-156
- Son, K. S., Gal, W. M., & Yang, H. S. (2007). A study on the estimating rate of safety management cost in building work. Journal of the Korean Society of Safety, 22(5), 33-40.
- Son, K. S., Gal, W. M., Park, J. K., Yang, H. S., Choi, J. N., Park, J. B., & Kim, S. K. (2005). Establishing appropriate rate for standard safety & health management cost. The Korea Occupational Safety and Health Agency.
- Yeom, D. J., Lee, M. Y., Oh, S. W., Han, S. W., & Kim, Y. S. (2015). Development of a Safety and Health Expense Prediction Model in the Construction Industry. Korean Journal of Construction Engineering and Management, 16(6), 63-72. https://doi.org/10.6106/KJCEM.2015.16.6.063
- Yoon, S., Bang, H. T., Kim, G. Y., & Jeon, H. (2021). Evaluation of a Thermal Conductivity Prediction Model for Compacted Clay Based on a Machine Learning Method. Journal of The Korean Society of Civil Engineers, 41(2), 123-131.