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Journal of Data and Information Science  2019, Vol. 4 Issue (4): 1-12    DOI: 10.2478/jdis-2019-0017
Perspective     
Infrastructure of Scientometrics:The Big and Network Picture
Jinshan Wu()
School of Systems Science, Beijing Normal University, Beijing 100875, China
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Abstract  

A network is a set of nodes connected via edges, with possibly directions and weights on the edges. Sometimes, in a multi-layer network, the nodes can also be heterogeneous. In this perspective, based on previous studies, we argue that networks can be regarded as the infrastructure of scientometrics in the sense that networks can be used to represent scientometric data. Then the task of answering various scientometric questions related to this data becomes an algorithmic problem in the corresponding network.



Key wordsNetwork science      Scientometrics     
Received: 16 November 2019      Published: 11 December 2019
Corresponding Authors: Jinshan Wu     E-mail: jinshanw@bnu.edu.cn
Cite this article:

Jinshan Wu. Infrastructure of Scientometrics:The Big and Network Picture. Journal of Data and Information Science, 2019, 4(4): 1-12.

URL:

http://manu47.magtech.com.cn/Jwk3_jdis/10.2478/jdis-2019-0017     OR     http://manu47.magtech.com.cn/Jwk3_jdis/Y2019/V4/I4/1

Figure 1. A three-layer network of scientometric relational data: Authors, papers and concepts on the one hand; and inventors, patents, and technology concepts on the other.
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