A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and Uncertainties

As scientists worldwide search for answers to the overwhelmingly unknown behind the deadly pandemic, the literature concerning COVID-19 has been growing exponentially. Keeping abreast of the body of literature at such a rapidly advancing pace poses significant challenges not only to active researche...

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Bibliographic Details
Main Author: Chaomei Chen
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-12-01
Series:Frontiers in Research Metrics and Analytics
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/frma.2020.607286/full
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spelling doaj-7e814db0d08641208dfd8d4efe06808d2021-06-02T14:18:14ZengFrontiers Media S.A.Frontiers in Research Metrics and Analytics2504-05372020-12-01510.3389/frma.2020.607286607286A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and UncertaintiesChaomei ChenAs scientists worldwide search for answers to the overwhelmingly unknown behind the deadly pandemic, the literature concerning COVID-19 has been growing exponentially. Keeping abreast of the body of literature at such a rapidly advancing pace poses significant challenges not only to active researchers but also to society as a whole. Although numerous data resources have been made openly available, the analytic and synthetic process that is essential in effectively navigating through the vast amount of information with heightened levels of uncertainty remains a significant bottleneck. We introduce a generic method that facilitates the data collection and sense-making process when dealing with a rapidly growing landscape of a research domain such as COVID-19 at multiple levels of granularity. The method integrates the analysis of structural and temporal patterns in scholarly publications with the delineation of thematic concentrations and the types of uncertainties that may offer additional insights into the complexity of the unknown. We demonstrate the application of the method in a study of the COVID-19 literature.https://www.frontiersin.org/articles/10.3389/frma.2020.607286/fullscientometricsvisual analyticsepistemic uncertaintycitation context analysisCiteSpaceMicrosoft Academic Services
collection DOAJ
language English
format Article
sources DOAJ
author Chaomei Chen
spellingShingle Chaomei Chen
A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and Uncertainties
Frontiers in Research Metrics and Analytics
scientometrics
visual analytics
epistemic uncertainty
citation context analysis
CiteSpace
Microsoft Academic Services
author_facet Chaomei Chen
author_sort Chaomei Chen
title A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and Uncertainties
title_short A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and Uncertainties
title_full A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and Uncertainties
title_fullStr A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and Uncertainties
title_full_unstemmed A Glimpse of the First Eight Months of the COVID-19 Literature on Microsoft Academic Graph: Themes, Citation Contexts, and Uncertainties
title_sort glimpse of the first eight months of the covid-19 literature on microsoft academic graph: themes, citation contexts, and uncertainties
publisher Frontiers Media S.A.
series Frontiers in Research Metrics and Analytics
issn 2504-0537
publishDate 2020-12-01
description As scientists worldwide search for answers to the overwhelmingly unknown behind the deadly pandemic, the literature concerning COVID-19 has been growing exponentially. Keeping abreast of the body of literature at such a rapidly advancing pace poses significant challenges not only to active researchers but also to society as a whole. Although numerous data resources have been made openly available, the analytic and synthetic process that is essential in effectively navigating through the vast amount of information with heightened levels of uncertainty remains a significant bottleneck. We introduce a generic method that facilitates the data collection and sense-making process when dealing with a rapidly growing landscape of a research domain such as COVID-19 at multiple levels of granularity. The method integrates the analysis of structural and temporal patterns in scholarly publications with the delineation of thematic concentrations and the types of uncertainties that may offer additional insights into the complexity of the unknown. We demonstrate the application of the method in a study of the COVID-19 literature.
topic scientometrics
visual analytics
epistemic uncertainty
citation context analysis
CiteSpace
Microsoft Academic Services
url https://www.frontiersin.org/articles/10.3389/frma.2020.607286/full
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