Surveying research data-sharing practices in US social sciences: a knowledge infrastructure-inspired conceptual framework

Wei Jeng, Daqing He
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引用次数: 4

Abstract

PurposeThis study develops a conceptual framework and a series of instruments for capturing researchers' data-sharing practices in the social sciences, by synergizing the theory of knowledge infrastructure and the theory of remote scientific collaboration.Design/methodology/approachThis paper triangulates the results of three studies of data sharing across the social sciences, with 144 participants in total, and classifies the confusion, “frictions” and opportunities arising from such sharing into four overarching dimensions: data characteristics, technological infrastructure, research culture and individual drivers.FindingsBased on the sample, the findings suggest that the majority of faculty and students in social science research do not share their data because many of them are unaware of the benefits and methods of doing so. Additional findings regarding social scientists' data-sharing behaviors include: (1) those who do share qualitative data in data repositories are more likely to share their research tools than their raw data; and (2) perceived technical support and extrinsic motivation are both strong predictors of qualitative data sharing (a previously underresearched subtype of social science data sharing).Originality/valueThe study confirms the previously hypothesized nature of “friction” in qualitative data sharing in the social sciences, arising chiefly from the time and labor intensiveness of ensuring data privacy.Peer reviewThe peer review history for this article is available at: https://publons.com/publon/10.1108/OIR-03-2020-0079.
美国社会科学调查研究数据共享实践:知识基础设施启发的概念框架
本研究通过知识基础设施理论和远程科学协作理论的协同作用,开发了一个概念框架和一系列工具,用于捕获社会科学研究人员的数据共享实践。设计/方法/方法本文对社会科学数据共享的三项研究结果进行了三角测量,共有144名参与者,并将这种共享产生的困惑、“摩擦”和机会分为四个总体维度:数据特征、技术基础设施、研究文化和个人驱动因素。基于样本,调查结果表明,大多数从事社会科学研究的教师和学生不分享他们的数据,因为他们中的许多人不知道这样做的好处和方法。关于社会科学家数据共享行为的其他发现包括:(1)那些在数据存储库中共享定性数据的人更有可能共享他们的研究工具而不是原始数据;(2)感知技术支持和外在动机都是定性数据共享(社会科学数据共享的一个未被充分研究的亚型)的强预测因子。原创性/价值该研究证实了先前假设的社会科学中定性数据共享中的“摩擦”性质,主要来自确保数据隐私的时间和劳动强度。同行评议本文的同行评议历史可在:https://publons.com/publon/10.1108/OIR-03-2020-0079。
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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