Social Network Analysis in Evaluation of criteria for the use of bibliometric
Subject Areas : Journal of Knowledge Studiesnajmeh salemi 1 , Gholamreza Fadaei 2 , Farideh Asareh 3
1 - Professor of Information Sciences and Knowledge, Beheshti University
2 - Professor of Information Science and Knowledge of Theran University
3 - Professor of Information Science and Knowledge, Chamran University
Keywords: Scientometrics, social network analysis, centrality,
Abstract :
Purpose: This survey tries to evaluate the centrality of the scientific network of university of Tehran articles which are indexed in Web of science between 1999-2008. Methodology: This research uses the social network analysis to reveal scientific map of university of Tehran and find the works with high centrality. 4732 articles were collected from Web of science and 900 articles (with 10 citation thresholds) were analyzed with Citespace. Findings: The results reveals that Ganjali (chemist) is the central node in Tehran scientific network but other important nodes are not Iranian. Conclusion: The data shows there are 29455 references in articles and half of them are Iranian. In this work the most cited references with centrality and sigma were recognized. The result shows although citation is important but the most cited reference is not the central one.
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