Back to Search Start Over

An analysis of data paper templates and guidelines: types of contextual information described by data journals

Authors :
Jihyun Kim
Source :
Science Editing, Vol 7, Iss 1, Pp 16-23 (2020)
Publication Year :
2020
Publisher :
Korean Council of Science Editors, 2020.

Abstract

Purpose: Data papers are a promising genre of scholarly communication, in which research data are described, shared, and published. Rich documentation of data, including adequate contextual information, enhances the potential of data reuse. This study investigated the extent to which the components of data papers specified by journals represented the types of contextual information necessary for data reuse.Methods: A content analysis of 15 data paper templates/guidelines from 24 data journals indexed by the Web of Science was performed. A coding scheme was developed based on previous studies, consisting of four categories: general data set properties, data production information, repository information, and reuse information.Results: Only a few types of contextual information were commonly requested by the journals. Except data format information and file names, general data set properties were specified less often than other categories of contextual information. Researchers were frequently asked to provide data production information, such as information on the data collection, data producer, and related project. Repository information focused on data identifiers, while information about repository reputation and curation practices was rarely requested. Reuse information mostly involved advice on the reuse of data and terms of use.Conclusion: These findings imply that data journals should provide a more standardized set of data paper components to inform reusers of relevant contextual information in a consistent manner. Information about repository reputation and curation could also be provided by data journals to complement the repository information provided by the authors of data papers and to help researchers evaluate the reusability of data.

Details

Language :
English
ISSN :
22887474 and 22888063
Volume :
7
Issue :
1
Database :
OpenAIRE
Journal :
Science Editing
Accession number :
edsair.doi.dedup.....2d4b108a0cf328b9b5de8fff4c4a2954