그림 1. 인지기능 통합 시스템 구성도 Fig. 1. Diagram of integrated cognitive function system
그림 2. 하둡 생태계의 빅 데이터 아키텍처 Fig. 2. Big data architecture of Hadoop ecosystem
그림 3. 성별, 연령, 학력 기준으로 생성된 1차 군집 결과 Fig. 3. The first cluster results generated by gender, age, and academic background
그림 4. MMSE-KC 검사 점수 기반의 2차 군집 결과 Fig. 4. Secondary cluster results based on MMSE-KC score
그림 5. 인지재활 훈련 통합시스템에서 추천된 콘텐츠 예시 Fig. 5. Examples of content recommended in cognitive rehabilitation integrated system
그림 6. 몰입 4채널 모델 Fig. 6. Flow 4-channel model
표 1. MMSE-KC 평가 문항과 점수 Table 1. Evaluation questions and score of the MMSE-KC
표 2. 세부 영역 별 구현된 콘텐츠 이름 Table 2. Contents by cognitive domain
표 3. 성별, 연령, 학력 기준으로 생성된 1차 군집 결과 Table 3. The first cluster results generated by gender, age, and academic background
표 4. MMSE-KC 검사 점수 기반의 2차 군집 결과와 콘텐츠 추천 Table 4. Secondary cluster results based on MMSE-KC score and contents recommendation
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