Abstract
Data mining is a useful tool to draw useful information from large database. In scientific research organizations evaluation, there exists a problem of using the same criteria to evaluate different types of research organizations. In this paper we propose a clustering method to make classification of the scientific research organization of CAS, and then according to this classification we evaluate the scientific research organization using the annual evaluation database of CAS to test our method.
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Zhang, L.: The Evaluation of Scientific Research Organizations, Colleges Home and abroad. The Impact of Science on Society 1, 16–26 (1995)
Han, J., Kanber, M.: Data Ming, Concepts and Techniques. Higher Education press & Morgan Kaufmann Publishers (2001)
Gause, J.M.: A theory of Organization in Public Administration. In: Frontiers of Public Administration. University of Chicago Press, Chicago (1936)
Hand, D., Mannila, K., Smyth, P.: Principles of Data Mining. China Machine Press/CITIC Publishing House (2003)
2002 Annual Evaluation Report of CAS. Evaluation Research Center of CAS (2002)
Zhang, R., Fang, K.: An Introduction to Multi-Statistical Analysis. Science, Beijing (2003)
Shi, Z.: Knowledge Discovery. Tsinghua University Press (2002)
Hansson, F.: How to Evaluate and Select New Scientific Knowledge by Introducing the Social Dimension in the Evaluation of Research Quality. Paper Presented at the European Evaluation Society 2002 Conference, Seville, Spain, October 10-12 (2002)
Echeverria, J.: Science, Technology, and Values: Towards an Axiological Analysis of Techno-Scientific Activity. Technology in Society 25, 205–215 (2003)
Zhang, Y.: The Research on Chaos Application into Scientific Research Organization Management. PhD dissertation (2004)
Ran, Z.: Scientific Research Organization Behavior. S&T Literature Press (1992)
Georghiou, L., Roessner, D.: Evaluating Technology Programs: Tools and Methods. Research Policy 29, 657–678 (2000)
Doughhery, E.R., Brun, M.: A Probabilistic Theory of Clustering. Pattern Recognition 37, 917–925 (2004)
De Smet, Y., Guzman, L.M.: Towards Multi-Criteria Clustering: An Extension of the K-means Algorithm. European Journal of Operational Research (2003)
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© 2004 Springer-Verlag Berlin Heidelberg
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Liu, J., Li, J., Xu, W., Shi, Y. (2004). Data Mining Approach in Scientific Research Organizations Evaluation Via Clustering. In: Shi, Y., Xu, W., Chen, Z. (eds) Data Mining and Knowledge Management. CASDMKM 2004. Lecture Notes in Computer Science(), vol 3327. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-540-30537-8_14
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DOI: https://doi.org/10.1007/978-3-540-30537-8_14
Publisher Name: Springer, Berlin, Heidelberg
Print ISBN: 978-3-540-23987-1
Online ISBN: 978-3-540-30537-8
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