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Modeling and Analyzing Research Team in the Perspective of Meta-Network
Received date: 2014-03-10
Revised date: 2014-03-31
Online published: 2014-04-20
The study of scientific environment is shifting from scientific mapping into modeling and explaining science. Scholarly network model has been proved to own rich revealing capabilities for science. The research team is considered as the human social system in this paper. Inheriting and expanding the conceptual framework of scholarly network, many sorts of networks related to research team are integrated into the meta-network model for research team, with the clue of their internal associations. In such a manner, multidimensional data is cooperated to gain a bird view upon research team. On this basis, the direction of the potential application for static analysis is thus proposed and empirical analysis is carried out as examples to reflect the revealing ability of such a meta-network for research team.
Key words: research team; meta-network; network model; scholarly network
Li Gang , Mao Jin . Modeling and Analyzing Research Team in the Perspective of Meta-Network[J]. Library and Information Service, 2014 , 58(08) : 65 -72 . DOI: 10.13266/j.issn.0252-3116.2014.08.011
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