바로가기메뉴

본문 바로가기 주메뉴 바로가기

logo

A Study on Development of Digital Curation Maturity Models and Indicators: Focusing on KISTI

Journal of the Korean Society for Information Management / Journal of the Korean Society for Information Management, (P)1013-0799; (E)2586-2073
2022, v.39 no.4, pp.269-306
https://doi.org/10.3743/KOSIM.2022.39.4.269
Seonghun Kim
Do Suelki (Sungkyunkwan University)
Sangeun Han (KAIST)
Jayhoon Kim (Korea Institute of Science and Technology Information)
Seokjong Lim (Korea Institute of Science and Technology Information)
Jinho Park (Hansung University)
  • Downloaded
  • Viewed

Abstract

This study aimed to develop indicators that can measure the digital transformation performance of science and technology information construction and sharing systems by utilizing the Digital Curation Maturity Models. For digital transformation, it is necessary to consider not only simple service improvement but also organizational and business changes. In this study, we aimed to develop a model for measuring the digital transformation of KISTI, Korea’s representative science and technology information service organization. KISTI has already carried out BPR work for digital transformation and borrowed the concept of a maturity model. However, in BPR, there is no method to measure the result. Therefore, in this paper, we developed an index to measure digital transformation based on the maturity model. Indicator development was carried out in two ways: model development and evaluation. Cases for model construction were made through a comprehensive review of existing KISTI and various domestic and foreign cases. The models before verification were technology (37), data (45), strategy (18), organization (36), and (social)influence (14) based on the major categories. After verification using confirmatory factor analysis, the model is classified as technology (20 / 17 indicators dropped), data (36 / 9 indicators dropped), strategy (18 / maintenance), organization(30 / 6 indicators dropped), and (social) influence (13 indicators / 1 indicator dropped).

keywords
digital curation, maturity model, open science, digital transformation, confirmatory factor analysis
Submission Date
2022-11-20
Revised Date
2022-11-30
Accepted Date
2022-12-13

Journal of the Korean Society for Information Management