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Evaluation of research performances for 28 national universities

국내 28개 국공립대학교의 연구성과에 대한 평가

  • Jeong, Dong Bin (Department of Information Statistics, Gangnueing-Wonju National University)
  • 정동빈 (강릉원주대학교 정보통계학과)
  • Received : 2014.07.21
  • Accepted : 2014.09.05
  • Published : 2014.11.30

Abstract

Based on the 4 principal research-performance criteria in 28 national universities in Korea, both cluster analysis and multidimensional scaling are performed in this paper. We can classify and/or specialize the initially unknown groups into a group of relatively homogeneous universities and then create new groupings without any preconceived notion of what clusters may arise. Furthermore, the level of similarity of individual universities can be visualized on the multidimensional space so that each university is then assigned coordinates in each of the 2 dimensions. Both types and characteristics of each university can be relatively evaluated and be practically exploited for the policy of the university authority through these results.

국내 28개 국공립대학교를 대상으로 대학정보공시제에 근거하여 제시된 교육지표 중 연구성과에 관련된 4개의 양적평가 우량성속성 (1인당 연구비 수혜금액, 1인당 연구재단등재지 (KCI) 실적, 1인당 SCI/SCOUP급 실적, 1인당 저역서 실적)에 대해, 유사한 속성을 지닌 대학들을 유사성있는 군집끼리 분류 및 세분화하고 다차원 공간상에 시각적으로 배치시켰다. 이를 통해서 국내 28개 국공립대학은 4개 군집으로 유형화가 가능하며, 각 군집간 또는 군집내에 속한 대학들 간의 유형 및 특성을 평가할 수 있다.

Keywords

References

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  1. 중국 주요 50개 도시의 전자상거래 발전성과에 대한 평가 vol.14, pp.1, 2014, https://doi.org/10.15722/jds.14.1.201601.67