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Between urgency and data quality: assessing the FAIRness of data in social science research on the COVID-19 pandemic
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Abstract Balancing speed and quality during crises pose challenges for ensuring the value and utility of data in social science research. The COVID-19 pandemic in particular underscores the need for high-quality data and rapid dissemination. Given the importance of behavioural measures and compliance with me... view more
Balancing speed and quality during crises pose challenges for ensuring the value and utility of data in social science research. The COVID-19 pandemic in particular underscores the need for high-quality data and rapid dissemination. Given the importance of behavioural measures and compliance with measures to contain the pandemic, social science research has played a key role in policymaking during this global crisis. This study addresses two key research questions: How FAIR (findable, accessible, interoperable and reusable) are social science data on the COVID-19 pandemic? Which study features are related to the level of FAIRness scores of datasets? We assess the FAIRness of n = 1131 articles, retrieved through a keyword search in the Web of Science database, employing both automated and manual coding methods. Our study inclusion criteria encompass empirical studies on the COVID-19 pandemic published between 2019 and 2023 with a social science focus and explicit reference to the underlying dataset(s). Our analysis of n = 45 datasets reveals substantial differences in FAIRness for different types of research on the COVID-19 pandemic. The overall FAIRness of data is acceptable, although particularly Reusability scores fall short, in both the manual and the automatic assessment. Further, articles explicitly linked to the Social Science concept in the OpenAlex database exhibit a higher mean overall FAIRness value. Based on these results, we derive recommendations for balancing ethical obligations and the potential tradeoff between speed and data (sharing) quality in social-scientific crisis research.... view less
Keywords
social science; data capture; data quality; data access; research; science ethics; integrity
Classification
Methods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methods
Philosophy of Science, Theory of Science, Methodology, Ethics of the Social Sciences
Free Keywords
COVID-19; Corona pandemic; F-UJI assessment tool; FAIR principles; crisis research; policy research
Document language
English
Publication Year
2024
Page/Pages
p. 744-763
Journal
Research Ethics, 20 (2024) 4
ISSN
2047-6094
Status
Published Version; peer reviewed