사례기반추론을 이용한 대용량 데이터의 실시간 처리 방법론：고혈압 고위험군 관리를 위한 자기학습 시스템 프레임워크Data Mining Approach for Real-Time Processing of Large Data Using Case-Based Reasoning：High-Risk Group Detection Data Warehouse for Patients with High Blood Pressure
In this paper, we propose the high-risk group detection model for patients with high blood pressure using case-based reasoning. The proposed model can be applied for public health maintenance organizations to effectively manage knowledge related to high blood pressure and efficiently allocate limited health care resources. Especially, the focus is on the development of the model that can handle constraints such as managing large volume of data, enabling the automatic learning to adapt to external environmental changes and operating the system on a real-time basis. Using real data collected from local public health centers, the optimal high-risk group detection model was derived incorporating optimal parameter sets. The results of the performance test for the model using test data show that the prediction accuracy of the proposed model is two times better than the natural risk of high blood pressure.