Between urgency and data quality: assessing the FAIRness of data in social science research on the COVID-19 pandemic

Veronika Batzdorfer, Wolfgang Zenk-Möltgen, Laura Young, Alexia Katsanidou, Johannes Breuer, Libby Bishop
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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 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.
在紧迫性与数据质量之间:评估 COVID-19 大流行病社会科学研究数据的 FAIR 性
在危机期间平衡速度和质量对确保数据在社会科学研究中的价值和实用性提出了挑战。COVID-19 大流行尤其凸显了对高质量数据和快速传播的需求。鉴于行为措施和遵守遏制该流行病措施的重要性,社会科学研究在这场全球危机的政策制定中发挥了关键作用。本研究探讨了两个关键的研究问题:有关 COVID-19 大流行的社会科学数据的 FAIR(可查找、可访问、可互操作和可重复使用)程度如何?哪些研究特征与数据集的 FAIRness 评分水平有关?我们采用自动编码和人工编码两种方法,对通过科学网数据库关键词搜索检索到的 n = 1131 篇文章进行了 FAIRness 评估。我们的研究纳入标准包括 2019 年至 2023 年间发表的有关 COVID-19 大流行的实证研究,这些研究以社会科学为重点,并明确提到了基础数据集。我们对 n = 45 个数据集进行的分析表明,不同类型的 COVID-19 大流行研究在公平性方面存在很大差异。数据的整体公平性是可以接受的,但在人工和自动评估中,可重用性得分尤其不足。此外,OpenAlex 数据库中明确链接到社会科学概念的文章显示出更高的平均总体 FAIRness 值。基于这些结果,我们提出了在社会科学危机研究中平衡道德义务和速度与数据(共享)质量之间潜在权衡的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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