바로가기메뉴

본문 바로가기 주메뉴 바로가기

logo

Introducing Keyword Bibliographic Coupling Analysis (KBCA) for Identifying the Intellectual Structure

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.1, pp.309-330
https://doi.org/10.3743/KOSIM.2022.39.1.309
Jae Yun Lee (Myongji University)
EunKyung Chung (Ewha Womans University)
  • Downloaded
  • Viewed

Abstract

Intellectual structure analysis, which quantitatively identifies the structure, characteristics, and sub-domains of fields, has rapidly increased in recent years. Analysis techniques traditionally used to conduct intellectual structure analysis research include bibliographic coupling analysis, co-citation analysis, co-occurrence analysis, and author bibliographic coupling analysis. This study proposes a novel intellectual structure analysis method, Keyword Bibliographic Coupling Analysis (KBCA). The Keyword Bibliographic Coupling Analysis (KBCA) is a variation of the author bibliographic coupling analysis, which targets keywords instead of authors. It calculates the number of references shared by two keywords to the degree of coupling between the two keywords. A set of 1,366 articles in the field of ‘Open Data’ searched in the Web of Science were collected using the proposed KBCA technique. A total of 63 keywords that appeared more than 7 times, extracted from 1,366 article sets, were selected as core keywords in the open data field. The intellectual structure presented by the KBCA technique with 63 key keywords identified the main areas of open government and open science and 10 sub-areas. On the other hand, the intellectual structure network of co-occurrence word analysis was found to be insufficient in the overall structure and detailed domain structure. This result can be considered because the KBCA sufficiently measures the relationship between keywords using the degree of bibliographic coupling.

keywords
intellectual structure, Keyword Bibliographic Coupling Analysis, keyword, bibliographic coupling, open data, 지적구조, 키워드서지결합분석, 키워드, 서지결합, 오픈데이터
Submission Date
2022-02-24
Revised Date
2022-03-06
Accepted Date
2022-03-10

Journal of the Korean Society for Information Management