Browse > Article

Developing the administrative model using the data mining technique for injury in National Health Insurance  

Park, Il-Su (Health Insurance Policy Research Institute, National Health Insurance Corporation)
Han, Jun-Tae (Informatization Team, Ministry of Patriots and Veterans Affairs)
Sohn, Hae-Sook (Department of Preventive Medicine, Inje University School of Medicine)
Kang, Suk-Bok (Department of Statistic, Yeungnam University)
Publication Information
Journal of the Korean Data and Information Science Society / v.22, no.3, 2011 , pp. 467-476 More about this Journal
Abstract
We developed the hybrid model coupled with predictive model and business rule model for administration of injury by utilizing medical data of the National Health Insurance in Korea. We performed decision tree analysis using data mining methodology and used SAS Enterprise Miner 4.1. We also investigated under several business rule for benefits (expense paid by insurer) and claims of injury in National Health Insurance Corporation. We can see that the proposed hybrid model provides a quite efficient plausible results.
Keywords
Data mining; hybrid model; injury;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
연도 인용수 순위
1 국민건강보험공단 (2003). <건강보험 상해요인 업무총람>, 국민건강보험공단, 서울.
2 한은정, 이정석, 김동건, 강임옥 (2009). 데이터마이닝 기법을 활용한 노인장기요양급여 권고모형 개발. <응용통계연구>, 22, 1229-1237.
3 Barell, V., Aharonson-Daniel, L., Fingerhut, L. A., Mackenzie, E. J., Ziv, A., Boyko, V., Abargel, A., Avitzour, M. and Heruti, R. (2002). An introduction to the Barell body region by nature of injury diagnosis matrix. Injury Prevention, 8, 91-96.   DOI   ScienceOn
4 박일수, 용왕식, 김유미, 강성홍, 한준태 (2008). 데이터마이닝 기법을 활용한 맞춤형 고혈압 사후관리 모형 개발. <응용통계연구>, 21, 639-647.
5 국민건강보험공단 (2010). <2009 건강보험통계연보>, 국민건강보험공단, 서울.
6 박일수, 한준태, 강석복, 지재훈 (2010). 데이터마이닝을 이용한 위암 예측모형개발과 활용. <한국데이터정보과학회지>, 21, 1253-1260.
7 차경엽 (2010). 데이터마이닝을 이용한 국민연금 부정수급 예측모형 개발. <한국통계학회논문집>, 17, 1-8.
8 국민건강보험공단 (2005). <2005년 조직진단 및 업무재설계(BPR)보고서>, 국민건강보험공단, 서울.
9 국민건강보험공단 (2006). <업무처리요령>, 국민건강보험공단, 서울.