박사

4차 산업혁명에서의 공공빅데이터를 활용한 보건의료 정책 연구 : 노인 인구 치매예측 모델 개발을 중심으로 = A Study on Healthcare Policy using Public Big Data in the Fourth Industrial Revolution: Focusing on the Development of Dementia Predictive Model for the Senior Population

김희철 2018년
논문상세정보
' 4차 산업혁명에서의 공공빅데이터를 활용한 보건의료 정책 연구 : 노인 인구 치매예측 모델 개발을 중심으로 = A Study on Healthcare Policy using Public Big Data in the Fourth Industrial Revolution: Focusing on the Development of Dementia Predictive Model for the Senior Population' 의 주제별 논문영향력
논문영향력 선정 방법
논문영향력 요약
주제
  • 4차 산업혁명
  • 고령화
  • 기계학습
  • 빅데이터
  • 치매
동일주제 총논문수 논문피인용 총횟수 주제별 논문영향력의 평균
6,359 0

0.0%

' 4차 산업혁명에서의 공공빅데이터를 활용한 보건의료 정책 연구 : 노인 인구 치매예측 모델 개발을 중심으로 = A Study on Healthcare Policy using Public Big Data in the Fourth Industrial Revolution: Focusing on the Development of Dementia Predictive Model for the Senior Population' 의 참고문헌

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