Mining author relationship in scholarly networks based on tripartite citation analysis.

Following scholars in Scientometrics as examples, we develop five author relationship networks, namely, co-authorship, author co-citation (AC), author bibliographic coupling (ABC), author direct citation (ADC), and author keyword coupling (AKC). The time frame of data sets is divided into two period...

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Main Authors: Feifei Wang, Xiaohan Wang, Siluo Yang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5678701?pdf=render
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spelling doaj-53392c8e8d204d4ea04a2fede0bd8efd2020-11-24T21:34:27ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011211e018765310.1371/journal.pone.0187653Mining author relationship in scholarly networks based on tripartite citation analysis.Feifei WangXiaohan WangSiluo YangFollowing scholars in Scientometrics as examples, we develop five author relationship networks, namely, co-authorship, author co-citation (AC), author bibliographic coupling (ABC), author direct citation (ADC), and author keyword coupling (AKC). The time frame of data sets is divided into two periods: before 2011 (i.e., T1) and after 2011 (i.e., T2). Through quadratic assignment procedure analysis, we found that some authors have ABC or AC relationships (i.e., potential communication relationship, PCR) but do not have actual collaborations or direct citations (i.e., actual communication relationship, ACR) among them. In addition, we noticed that PCR and AKC are highly correlated and that the old PCR and the new ACR are correlated and consistent. Such facts indicate that PCR tends to produce academic exchanges based on similar themes, and ABC bears more advantages in predicting potential relations. Based on tripartite citation analysis, including AC, ABC, and ADC, we also present an author-relation mining process. Such process can be used to detect deep and potential author relationships. We analyze the prediction capacity by comparing between the T1 and T2 periods, which demonstrate that relation mining can be complementary in identifying authors based on similar themes and discovering more potential collaborations and academic communities.http://europepmc.org/articles/PMC5678701?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Feifei Wang
Xiaohan Wang
Siluo Yang
spellingShingle Feifei Wang
Xiaohan Wang
Siluo Yang
Mining author relationship in scholarly networks based on tripartite citation analysis.
PLoS ONE
author_facet Feifei Wang
Xiaohan Wang
Siluo Yang
author_sort Feifei Wang
title Mining author relationship in scholarly networks based on tripartite citation analysis.
title_short Mining author relationship in scholarly networks based on tripartite citation analysis.
title_full Mining author relationship in scholarly networks based on tripartite citation analysis.
title_fullStr Mining author relationship in scholarly networks based on tripartite citation analysis.
title_full_unstemmed Mining author relationship in scholarly networks based on tripartite citation analysis.
title_sort mining author relationship in scholarly networks based on tripartite citation analysis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Following scholars in Scientometrics as examples, we develop five author relationship networks, namely, co-authorship, author co-citation (AC), author bibliographic coupling (ABC), author direct citation (ADC), and author keyword coupling (AKC). The time frame of data sets is divided into two periods: before 2011 (i.e., T1) and after 2011 (i.e., T2). Through quadratic assignment procedure analysis, we found that some authors have ABC or AC relationships (i.e., potential communication relationship, PCR) but do not have actual collaborations or direct citations (i.e., actual communication relationship, ACR) among them. In addition, we noticed that PCR and AKC are highly correlated and that the old PCR and the new ACR are correlated and consistent. Such facts indicate that PCR tends to produce academic exchanges based on similar themes, and ABC bears more advantages in predicting potential relations. Based on tripartite citation analysis, including AC, ABC, and ADC, we also present an author-relation mining process. Such process can be used to detect deep and potential author relationships. We analyze the prediction capacity by comparing between the T1 and T2 periods, which demonstrate that relation mining can be complementary in identifying authors based on similar themes and discovering more potential collaborations and academic communities.
url http://europepmc.org/articles/PMC5678701?pdf=render
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AT xiaohanwang miningauthorrelationshipinscholarlynetworksbasedontripartitecitationanalysis
AT siluoyang miningauthorrelationshipinscholarlynetworksbasedontripartitecitationanalysis
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