调查美国新闻中的数字景观

Q3 Mathematics
John Voiklis, Jena Barchas-Lichtenstein, Elizabeth Attaway, U. Thomas, Shivani Ishwar, Patti Parson, Laura Santhanam, Isabella Isaacs-Thomas
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引用次数: 2

摘要

新闻可以说是为新闻受众的定量推理(QR)提供信息。在考虑新闻在多大程度上发挥了这一功能之前,我们首先需要确定QR典型新闻故事对读者的要求。本文评估了各种媒体来源中存在的定量内容的数量,以及受众理解所呈现信息所需的QR类型。2020年2月,我们建立了一个由230篇美国新闻报道组成的语料库,涵盖四个主题领域(健康、科学、经济和政治)。在对概念和短语层面所需的QR报告进行分类后,我们发现样本中的新闻故事在很大程度上可以沿着一个维度进行分类:它们包含的定量信息量。数量条款主要有两种类型:报告数量的条款和报告比较的条款。虽然经济和健康报告比科学或政治报告需要更多的QR,但我们无法根据故事级别的定量知识要求和条款级别的定量内容来可靠地区分主题领域。相反,我们根据新闻故事中定量信息的数量和类型找到了三个可靠的故事集群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surveying the Landscape of Numbers in U.S. News
The news arguably serves to inform the quantitative reasoning (QR) of news audiences. Before one can contemplate how well the news serves this function, we first need to determine how much QR typical news stories require from readers. This paper assesses the amount of quantitative content present in a wide array of media sources, and the types of QR required for audiences to make sense of the information presented. We build a corpus of 230 US news reports across four topic areas (health, science, economy, and politics) in February 2020. After classifying reports for QR required at both the conceptual and phrase levels, we find that the news stories in our sample can largely be classified along a single dimension: The amount of quantitative information they contain. There were two main types of quantitative clauses: those reporting on magnitude and those reporting on comparisons. While economy and health reporting required significantly more QR than science or politics reporting, we could not reliably differentiate the topic area based on story-level requirements for quantitative knowledge and clause-level quantitative content. Instead, we find three reliable clusters of stories based on the amounts and types of quantitative information in the news stories.
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来源期刊
Numeracy
Numeracy Mathematics-Mathematics (miscellaneous)
CiteScore
1.30
自引率
0.00%
发文量
13
审稿时长
12 weeks
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