学生统计素养的培养:用盖尔担忧问题分析媒体文章中的信息

IF 1.2 Q2 EDUCATION & EDUCATIONAL RESEARCH Teaching Statistics Pub Date : 2022-05-12 DOI:10.1111/test.12308
D. Delport
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引用次数: 2

摘要

真实世界的数据是现代教学方法的基础,旨在提高学生的统计知识和推理能力。统计信息是在日常生活中遇到的,例如媒体文章,并涉及真实世界的背景。然而,信息可能存在偏见或(错误)表述,学生应关注此类文章的有效性,以及所提供证据的性质和可信度,同时考虑对传达给他们的调查结果的其他解释。统计教育工作者可以利用媒体文章为学生创造机会,反思这种(错误的)表述并培养统计素养。这篇文章的目的是展示奥密克戎新冠病毒-19变种的信息和数据是如何在媒体和政府实体中被(错误)呈现的。我还展示了如何在统计学课堂上使用这些例子,因为它们与大多数基础统计学课程中涵盖的概念有关。
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The development of statistical literacy among students: Analyzing messages in media articles with Gal's worry questions
Real‐world data are fundamental to modern teaching methodologies that aim to improve statistical knowledge and reasoning in students. Statistical information is encountered in everyday life, such as media articles and involves real‐world contexts. However, information could be biased or (mis)represented and students should be concerned about the validity of such articles, as well as the nature and trustworthiness of the evidence presented, while considering alternative interpretations of the findings conveyed to them. Statistics educators could make use of media articles to create opportunities for students to reflect on such (mis)representations and build statistical literacy. The purpose of this article is to show how information and data on the Omicron COVID‐19 variant have been (mis)represented in the media and by government entities. I also demonstrate how these examples may be utilized in the statistics classroom as they relate to concepts covered in most basic statistics courses.
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来源期刊
Teaching Statistics
Teaching Statistics EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
2.10
自引率
25.00%
发文量
31
期刊最新文献
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