“Missing/Unspecified”: Demographic Data Visualization During the COVID-19 Pandemic

IF 1.8 2区 文学 Q3 BUSINESS
Rachel Atherton
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引用次数: 12

Abstract

While data 1 has shown that COVID-19 disproportionately affects Black people, the CDC’s early data listed race as “missing/unspecified” at high rates. Incomplete demographic data obscures the virus’s full impact on marginalized communities. Without more information about who the virus is affecting and how, we cannot protect our most vulnerable. This article demonstrates disconnects between reported datasets and data visualizations in public-facing COVID health and science communication and suggests steps that technical and professional communicators can take in creating or using data visualizations accurately and ethically to describe COVID conditions and impacts.
“缺失/未指定”:新冠肺炎大流行期间的人口统计数据可视化
虽然数据1显示新冠肺炎对黑人的影响不成比例,但美国疾病控制与预防中心的早期数据将种族列为“缺失/未指明”的比率很高。不完整的人口统计数据掩盖了病毒对边缘化社区的全面影响。如果没有更多关于病毒影响谁以及如何影响的信息,我们就无法保护我们最脆弱的人群。这篇文章展示了在面向公众的新冠肺炎健康和科学传播中,报告的数据集和数据可视化之间的脱节,并建议技术和专业传播者可以采取步骤,准确、合乎道德地创建或使用数据可视化来描述新冠肺炎的状况和影响。
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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来源期刊
CiteScore
5.10
自引率
18.20%
发文量
16
期刊介绍: JBTC is a refereed journal that provides a forum for discussion of communication practices, problems, and trends in business, professional, scientific, and governmental fields. As such, JBTC offers opportunities for bridging dichotomies that have traditionally existed in professional communication journals between business and technical communication and between industrial and academic audiences. Because JBTC is designed to disseminate knowledge that can lead to improved communication practices in both academe and industry, the journal favors research that will inform professional communicators in both sectors. However, articles addressing one sector or the other will also be considered.
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