Role of Content Analysis in Improving the Curation of Experimental Data

As researchers are increasingly seeking tools and specialized support to perform research data management activities, the collaboration with data curators can be fruitful. Yet, establishing a timely collaboration between researchers and data curators, grounded in sound communication, is often dema...

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Main Authors: João Daniel Aguiar Castro, Cristiana Landeira, João Rocha da Silva, Cristina Ribeiro
Format: Article
Language:English
Published: University of Edinburgh 2020-08-01
Series:International Journal of Digital Curation
Online Access:http://www.ijdc.net/article/view/705
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spelling doaj-70e6d90636264db19c6cad1937038be82020-11-25T02:55:06ZengUniversity of EdinburghInternational Journal of Digital Curation1746-82562020-08-0115110.2218/ijdc.v15i1.705Role of Content Analysis in Improving the Curation of Experimental DataJoão Daniel Aguiar Castro0Cristiana Landeira1João Rocha da Silva2Cristina Ribeiro3FEUP - INESC TECFEUPFEUP - INESC TECFEUP - INESC TEC As researchers are increasingly seeking tools and specialized support to perform research data management activities, the collaboration with data curators can be fruitful. Yet, establishing a timely collaboration between researchers and data curators, grounded in sound communication, is often demanding. In this paper we propose manual content analysis as an approach to streamline the data curator workflow. With content analysis curators can obtain domain-specific concepts used to describe experimental configurations in scientific publications, to make it easier for researchers to understand the notion of metadata and for the development of metadata tools. We present three case studies from experimental domains, one related to sustainable chemistry, one to photovoltaic generation and another to nanoparticle synthesis. The curator started by performing content analysis in research publications, proceeded to create a metadata template based on the extracted concepts, and then interacted with researchers. The approach was validated by the researchers with a high rate of accepted concepts, 84 per cent. Researchers also provide feedback on how to improve some proposed descriptors. Content analysis has the potential to be a practical, proactive task, which can be extended to multiple experimental domains and bridge the communication gap between curators and researchers. [This paper is a conference pre-print presented at IDCC 2020 after lightweight peer review.] http://www.ijdc.net/article/view/705
collection DOAJ
language English
format Article
sources DOAJ
author João Daniel Aguiar Castro
Cristiana Landeira
João Rocha da Silva
Cristina Ribeiro
spellingShingle João Daniel Aguiar Castro
Cristiana Landeira
João Rocha da Silva
Cristina Ribeiro
Role of Content Analysis in Improving the Curation of Experimental Data
International Journal of Digital Curation
author_facet João Daniel Aguiar Castro
Cristiana Landeira
João Rocha da Silva
Cristina Ribeiro
author_sort João Daniel Aguiar Castro
title Role of Content Analysis in Improving the Curation of Experimental Data
title_short Role of Content Analysis in Improving the Curation of Experimental Data
title_full Role of Content Analysis in Improving the Curation of Experimental Data
title_fullStr Role of Content Analysis in Improving the Curation of Experimental Data
title_full_unstemmed Role of Content Analysis in Improving the Curation of Experimental Data
title_sort role of content analysis in improving the curation of experimental data
publisher University of Edinburgh
series International Journal of Digital Curation
issn 1746-8256
publishDate 2020-08-01
description As researchers are increasingly seeking tools and specialized support to perform research data management activities, the collaboration with data curators can be fruitful. Yet, establishing a timely collaboration between researchers and data curators, grounded in sound communication, is often demanding. In this paper we propose manual content analysis as an approach to streamline the data curator workflow. With content analysis curators can obtain domain-specific concepts used to describe experimental configurations in scientific publications, to make it easier for researchers to understand the notion of metadata and for the development of metadata tools. We present three case studies from experimental domains, one related to sustainable chemistry, one to photovoltaic generation and another to nanoparticle synthesis. The curator started by performing content analysis in research publications, proceeded to create a metadata template based on the extracted concepts, and then interacted with researchers. The approach was validated by the researchers with a high rate of accepted concepts, 84 per cent. Researchers also provide feedback on how to improve some proposed descriptors. Content analysis has the potential to be a practical, proactive task, which can be extended to multiple experimental domains and bridge the communication gap between curators and researchers. [This paper is a conference pre-print presented at IDCC 2020 after lightweight peer review.]
url http://www.ijdc.net/article/view/705
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