前言

IF 1.2 Q2 EDUCATION & EDUCATIONAL RESEARCH
H. MacGillivray, J. Ridgway, Robert d. Gould
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引用次数: 1

摘要

自1979年以来,《教学统计》旨在强调在任何情况下,无论是统计学还是其他学科,如经济学和商学、生物学和健康科学、工程和信息技术、心理学、数学和任何使用统计的领域,在教学统计思维方面的良好做法。统计学教学旨在提供信息、启发、刺激、引导、纠正、启发、娱乐和鼓励。教学统计信托基金是为了出版它而成立的,它起源于国际统计研究所(ISI)成员的国际统计教育通讯。与此同时,成立于1948年的ISI教育委员会的其他倡议导致了1982年的第一届国际教学统计会议(ICOTS),该委员会本身于1992年成为国际统计教育协会。统计学出现于18世纪,作为一门专注于收集数据以描述国家人口和经济状况的学科,作为政治行动的基础。在19世纪中期和20世纪初,来自不同背景的人们聚集在一起,致力于解决实际问题(例如,与经济、健康、天气和人类状况有关的问题),统计学会的出现,以及数学模型的创造性发展(通常与推理有关)。然而,太多的课程已经把这些早期的模型搁置起来,仅仅要求学生掌握技术,而不关心使用真实的数据或建模本身。多学科的核心思想,解决重要问题,发明模型,并提出行动,已经被追求非上下文化的数学技能所取代。数据科学是唤醒人们找回统计遗产的警钟。长期以来,专业统计学家和领先的统计教育工作者一直主张,良好的统计教学实践应反映最充分意义上的统计实践,如钱伯斯(Chambers)在1993年所描述的[bb1]和图基(Tukey)在1962年所描述的[bb1],将数据调查原则与所有人的统计素养相结合,如拉姆齐(Rumsey)在2002年所描述的[bb2]:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preface
Since 1979, Teaching Statistics has aimed to emphasize good practice in teaching statistical thinking in any context, whether in statistics or in other disciplines such as economics and business, biology and health sciences, engineering and information technology, psychology, mathematics, and any area which uses statistics. Teaching Statistics seeks to inform, enlighten, stimulate, guide, correct, inspire, entertain, and encourage. The Teaching Statistics Trust was established to publish it, and it arose from the International Statistical Education newsletter for International Statistical Institute (ISI) members. Other initiatives from the ISI's Education Committee, established in 1948, led, at the same time, to the first International Conference on Teaching Statistics (ICOTS) in 1982, and the committee itself became the International Association for Statistical Education in 1992. Statistics emerged in the 1700s as a discipline focused on collecting data to describe the demographic and economic situation of the state, as the basis for political action. In the mid-1800s and early 1900s, there was a coming together of people from very varied backgrounds, intent on solving practical problems (eg, associated with economics, health, weather, and the human condition), the emergence of statistical societies, and a creative blossoming of mathematical models (often associated with inference). However, too many curricula have set these early models in aspic and simply demand technical mastery from students, with no concern for working with authentic data or modeling per se. The core ideas of multidisciplinarity, addressing important problems, inventing models, and proposing actions, have been displaced by the pursuit of decontextualized mathematical skills. Data science is a wake-up call to retrieve the heritage of statistics. As long advocated by professional statisticians and leading statistical educators, good practice in teaching statistics should reflect the practice of statistics in the fullest sense of “greater statistics” as described by Chambers in 1993 [1] and data analysis as described by Tukey in 1962 [4], integrating principles of data investigations with statistical literacy for all, as described by many including Rumsey in 2002 [3]:
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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
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