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Big Data Utilization and Policy Suggestions in Public Records Management

공공기록관리분야의 빅데이터 활용 방법과 시사점 제안

  • Received : 2021.07.19
  • Accepted : 2021.11.22
  • Published : 2021.11.30

Abstract

Today, record management has become more important in management as records generated from administrative work and data production have increased significantly, and the development of information and communication technology, the working environment, and the size and various functions of the government have expanded. It is explained as an example in connection with the concept of public records with the characteristics of big data and big data characteristics. Social, Technological, Economical, Environmental and Political (STEEP) analysis was conducted to examine such areas according to the big data generation environment. The appropriateness and necessity of applying big data technology in the field of public record management were identified, and the top priority applicable framework for public record management work was schematized, and business implications were presented. First, a new organization, additional research, and attempts are needed to apply big data analysis technology to public record management procedures and standards and to record management experts. Second, it is necessary to train record management specialists with "big data analysis qualifications" related to integrated thinking so that unstructured and hidden patterns can be found in a large amount of data. Third, after self-learning by combining big data technology and artificial intelligence in the field of public records, the context should be analyzed, and the social phenomena and environment of public institutions should be analyzed and predicted.

본 연구에서는 오늘날 기록관리는 정보통신 기술의 발전과 업무환경이 급변하고 정부의 규모와 여러 기능들이 확대되면서 행정업무에서 발생하는 기록과 그에 따른 데이터 생산량이 대폭 증가함에 따라 관리에 대한 중요도가 커졌다. 빅데이터의 특성을 가진 공공기록물의 개념과 빅데이터 특징을 연계하여 사례로 설명한다. 빅데이터 발생 환경에 따른 사회적, 기술적, 환경적, 경제적, 정치적 영역으로 살펴보기 위해 'STEEP'분석을 실시하였다. 공공기록관리분야에서 빅데이터 기술 적용 적절함과 필요성을 알아보고 활용이 가능한 업무 분석을 통해 공공기록관리 업무의 최우선 적용 가능한 프레임워크를 도식하고 업무 시사점을 제시하였다. 첫째, 공공기록관리 절차와 표준에 '분석' 단계를 넣고 기록관과 기록물관리전문요원들에 의해 빅데이터 분석기술을 적용할 수 있는 신규 조직과 추가연구와 시도가 필요하다. 둘째, 많은 양의 데이터 속에 비구조화 되어있고 숨겨져 있는 패턴을 발견할 수 있도록 통합적 사고와 관련이 있는 '빅데이터 분석 자격'을 갖춘 기록물관리전문요원을 양성하여야 한다. 셋째, 공공기록분야에 빅데이터기술과 인공지능을 결합하여 자가 학습 시킨 후, 맥락을 분석하고 이를 통해 공공기관의 사회 현상과 환경을 분석하고 예측 되도록 하여야 한다.

Keywords

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