Detecting emerging research fronts based on topological measures in citation networks of scientific publications

In this paper, we performed a comparative study in two research domains in order to develop a method of detecting emerging knowledge domains. The selected domains are research on gallium nitride (GaN) and research on complex networks, which represent recent examples of innovative research. We divide...

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Veröffentlicht in:Technovation 2008-11, Vol.28 (11), p.758-775
Hauptverfasser: Shibata, Naoki, Kajikawa, Yuya, Takeda, Yoshiyuki, Matsushima, Katsumori
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container_issue 11
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container_title Technovation
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creator Shibata, Naoki
Kajikawa, Yuya
Takeda, Yoshiyuki
Matsushima, Katsumori
description In this paper, we performed a comparative study in two research domains in order to develop a method of detecting emerging knowledge domains. The selected domains are research on gallium nitride (GaN) and research on complex networks, which represent recent examples of innovative research. We divided citation networks into clusters using the topological clustering method, tracked the positions of papers in each cluster, and visualized citation networks with characteristic terms for each cluster. Analyzing the clustering results with the average age and parent–children relationship of each cluster may be helpful in detecting emergence. In addition, topological measures, within-cluster degree z and participation coefficient P, succeeded in determining whether there are emerging knowledge clusters. There were at least two types of development of knowledge domains. One is incremental innovation as in GaN and the other is branching innovation as in complex networks. In the domains where incremental innovation occurs, papers changed their position to large z and large P. On the other hand, in the case of branching innovation, they moved to a position with large z and small P, because there is a new emerging cluster, and active research centers shift rapidly. Our results showed that topological measures are beneficial in detecting branching innovation in the citation network of scientific publications.
doi_str_mv 10.1016/j.technovation.2008.03.009
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subjects Bibliometrics
Citation network
Citations
Cluster analysis
Complex systems
Innovation
Innovations
Knowledge
Methodology
Publishing
R&D
R&D management
Research & development
Research front
Scientific research
Semiconductors
Studies
Topological clustering
Topology
title Detecting emerging research fronts based on topological measures in citation networks of scientific publications
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