Data journeys in popular science: Producing climate change and COVID-19 data visualizations at Scientific American

Kathleen Gregory, Laura Koesten, Regina Schuster, Torsten Möller, Sarah Davies
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Abstract

Vast amounts of (open) data are increasingly used to make arguments about crisis topics such as climate change and global pandemics. Data visualizations are central to bringing these viewpoints to broader publics. However, visualizations often conceal the many contexts involved in their production, ranging from decisions made in research labs about collecting and sharing data to choices made in editorial rooms about which data stories to tell. In this paper, we examine how data visualizations about climate change and COVID-19 are produced in popular science magazines, using Scientific American, an established English-language popular science magazine, as a case study. To do this, we apply the analytical concept of "data journeys" (Leonelli, 2020) in a mixed methods study that centers on interviews with Scientific American staff and is supplemented by a visualization analysis of selected charts. In particular, we discuss the affordances of working with open data, the role of collaborative data practices, and how the magazine works to counter misinformation and increase transparency. This work provides a theoretical contribution by testing and expanding the concept of data journeys as an analytical framework, as well as practical contributions by providing insight into the data (visualization) practices of science communicators.
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科普数据之旅:在《科学美国人》制作气候变化和COVID-19数据可视化
大量(公开)数据越来越多地被用于讨论气候变化和全球流行病等危机话题。数据可视化是将这些观点传播给更广泛公众的核心。然而,可视化往往隐藏了其生产过程中涉及的许多上下文,从研究实验室中关于收集和共享数据的决定,到编辑室中关于讲述哪些数据故事的选择。本文以知名英文科普杂志《科学美国人》为例,研究了如何在科普杂志中制作有关气候变化和COVID-19的数据可视化。为此,我们在混合方法研究中应用了“数据旅程”的分析概念(Leonelli, 2020),该研究以对《科学美国人》员工的访谈为中心,并辅以对选定图表的可视化分析。特别是,我们讨论了使用开放数据的可行性,协作数据实践的作用,以及该杂志如何消除错误信息和提高透明度。这项工作通过测试和扩展数据旅程作为分析框架的概念提供了理论贡献,以及通过深入了解科学传播者的数据(可视化)实践提供了实际贡献。
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