The Numbers Game: How Local Newspapers Used Statistics and Data Visualizations to Cover the Coronavirus Pandemic

IF 1 Q3 COMMUNICATION Howard Journal of Communications Pub Date : 2021-11-11 DOI:10.1080/10646175.2021.1986753
Newly Paul, Gwendelyn Nisbett
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引用次数: 3

Abstract

Abstract Data and visualizations are an important part of local health news. Systematic data sourced from credible sources provide context to stories and educate audiences. Data visualizations help simplify complex statistical information and increase audience interactivity. Journalists associate statistics with objectivity, and use them to quantify risk in crisis situations. This study explores how local news used data to cover the coronavirus pandemic. We examined 170 data-driven articles published in the Dallas Morning News and the Houston Chronicle to examine the predominant data sources, data-driven narratives, and use of interactive elements. Results indicate reliance on government sources, prevalence of hard news stories, localization of statistics, contextual presentation of data, and abundant use of visualizations. However, the coverage lacked human-interest stories, interactivity in infographics, and failed to adequately reflect the diversity of the communities covered by the two newspapers. Data-driven stories did not always provide access to the underlying databases; nor did they always explain the methodology used to gather and analyze the data. While the readable format of the articles and the updates on infection rates can inform audiences, we argue that coverage that ignores broader data trends can cause readers to feel negative, which can push them toward news avoidance.
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数字游戏:当地报纸如何使用统计数据和数据可视化来报道冠状病毒大流行
数据和可视化是地方卫生新闻的重要组成部分。来自可靠来源的系统数据为故事提供了背景,并教育了受众。数据可视化有助于简化复杂的统计信息并增加受众的交互性。记者将统计数据与客观性联系在一起,并利用它们来量化危机情况下的风险。本研究探讨了当地新闻如何利用数据报道冠状病毒大流行。我们研究了发表在《达拉斯晨报》和《休斯顿纪事报》上的170篇数据驱动文章,以研究主要的数据来源、数据驱动的叙述和互动元素的使用。结果表明,对政府来源的依赖、硬新闻故事的流行、统计数据的本地化、数据的上下文呈现以及可视化的大量使用。然而,报道缺乏人性化的故事,信息图表的互动性,未能充分反映两家报纸所报道的社区的多样性。数据驱动的故事并不总是提供对底层数据库的访问;他们也不总是解释用来收集和分析数据的方法。虽然文章的可读格式和感染率的更新可以告知受众,但我们认为,忽视更广泛的数据趋势的报道可能会导致读者产生负面情绪,从而促使他们回避新闻。
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来源期刊
CiteScore
2.70
自引率
10.00%
发文量
23
期刊介绍: Culture, ethnicity, and gender influence multicultural organizations, mass media portrayals, interpersonal interaction, development campaigns, and rhetoric. Dealing with these issues, The Howard Journal of Communications, is a quarterly that examines ethnicity, gender, and culture as domestic and international communication concerns. No other scholarly journal focuses exclusively on cultural issues in communication research. Moreover, few communication journals employ such a wide variety of methodologies. Since issues of multiculturalism, multiethnicity and gender often call forth messages from persons who otherwise would be silenced, traditional methods of inquiry are supplemented by post-positivist inquiry to give voice to those who otherwise might not be heard.
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