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A study on the data quality management evaluation model

데이터 품질관리 평가 모델에 관한 연구

  • Kim, Hyung-Sub (Hanyang University Student, Division of Management Consulting)
  • 김형섭 (한양대학교 일반대학원 경영컨설팅학과)
  • Received : 2020.04.27
  • Accepted : 2020.07.20
  • Published : 2020.07.28

Abstract

This study is about the data quality management evaluation model. As the information and communication technology is advanced and the importance of storage and management begins to increase, the guam feeling for data is increasing. In particular, interest in the fourth industrial revolution and artificial intelligence has been increasing recently. Data is important in the fourth industrial revolution and the era of artificial intelligence. In the 21st century, data will likely play a role as a new crude oil. It can be said that the management of the quality of this data is very important. However, research is being conducted at a practical level, but research at an academic level is insufficient. Therefore, this study examined factors affecting data quality management for experts and suggested implications. As a result of the analysis, there was a difference in the importance of data quality management.

본 연구는 데이터 품질관리 평가 모델에 관한 연구이다. 정보통신기술이 고도화되고 저장 및 관리에 대한 중요성이 증가를 하기 시작하며서 데이터에 대한 괌심이 증가를 하고 있다. 특히 최근에는 4차산업혁명과 인공지능에 대해 관심이 증가를 하고 있다. 4차산업혁몽과 인공지능 시대에 중요한 것이 바로 데이터이다. 21세기는 데이터가 새로운 원유로서의 역할을 수행할 것으로 보인다. 이러한 데이터의 품질에 대한 관리가 매우 중요하다고 할 수 있다. 그러나 실무적인 차원에서의 연구는 진행이 되고 있으나 학문적 차원의 연구는 부족한 실정이다. 이에 본 연구에서는 전문가를 대상으로 데이터 품질관리에 영향을 미치는 요인에 대해 살펴보고 시사점을 제시하였다. 분석결과 데이터 품질관리의 중요도에는 차이가 있는 것으로 나타났다.

Keywords

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