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New Technology of Library and Information Service  2006, Vol. 1 Issue (4): 45-48    DOI: 10.11925/infotech.1003-3513.2006.04.11
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Finding the Potential Opportunities for Collaboration Between Two Organizations by Noninteractive Literaturebased Knowledge Discovery
Zhang Han1   Cui Lei Jiang Yang
1(Faculty of Information Management and Information System (Medicine),
China Medical University,Shenyang 110001,China)
2(Library of Shenyang Pharmaceutical University, Shenyang 110016,China)
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We use the theory of Swanson’s noninterative literature-based knowledge discovery to identify the potential opportunities for collaboration between two organizations. The results are compared with the hot points found by co-word analysis. The paper is to approve whether Swanson’s theory can be used to find the collaboration opportunities of two organizations and the results indicate that this method fits it well.

Key wordsNoninterative      literature-based knowledge discovery      Arrowsmith      Co-word analysis      Scientific research collaboration     
Received: 02 December 2005      Published: 25 April 2006


Corresponding Authors: Zhang Han     E-mail:
About author:: Zhang Han,Cui Lei,Jiang Yang

Cite this article:

Zhang Han,Cui Lei,Jiang Yang . Finding the Potential Opportunities for Collaboration Between Two Organizations by Noninteractive Literaturebased Knowledge Discovery. New Technology of Library and Information Service, 2006, 1(4): 45-48.

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1Swanson DR. Fish oil, Raynaud’s Syndrome, and undiscovered public knowledge. Perspect. Biol. Med. 1986(30): 7-18
2 Oct.10,2005)
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