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연구성과의 질적 평가를 위한 계량정보학적 분석에 관한 연구

A Study on Informetric Analysis for Measuring the Qualitative Research Performance

정보관리학회지 / Journal of the Korean Society for Information Management, (P)1013-0799; (E)2586-2073
2009, v.26 no.3, pp.377-394
https://doi.org/10.3743/KOSIM.2009.26.3.377
강대신 (한국과학기술연구원)
문성빈 (연세대학교)
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초록

본 연구는 기존의 연구성과 분석의 한계를 극복하고 영향력이나 파급효과 등 질적 중심의 연구성과 분석을 위해 텍스트 마이닝, 인용 분석 등을 활용한 새로운 계량정보학적 분석지표를 제안하였다. 즉, 논문품질지수, 인용 영향력지수, 지식확산지수, 국제협력연구지수, 우수논문 생산지수 등 새로운 연구성과 분석지표를 제안하여 질적인 측면을 중심으로 한 연구성과 분석이 가능하도록 하였다. 그리고 제안된 지표를 활용하여 사례분석을 수행하여 그 가능성을 확인하였다.

keywords
연구성과, 분석지표, 인용분석, research performance, informetric indicator, citation analysis, research performance, informetric indicator, citation analysis

Abstract

There are some limitations in the existing bibliometric methods to satisfy the various requests of the interest parties including researchers, managers, policy makers to identify 1) which research group or researcher is the key player, and the overall trends of the particular technological sub-fields, 2) which research groups, institutions or countries mainly use their research outputs, 3) what are the spin-offs from research outputs to some scientific and technological fields, 4) in which levels they are when comparing their quantitative and qualitative research outputs to those of other competitive institutions. It is essential to develop new informetric indicators and methodologies in order to satisfy stakeholder's various demands and to strengthen qualitative analysis in measuring research performance. This study suggested informetric indicators such as article quality index, citation impact index, international cooperation index, excellent article production index and methodologies including citation analysis, text mining.

keywords
연구성과, 분석지표, 인용분석, research performance, informetric indicator, citation analysis, research performance, informetric indicator, citation analysis

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