2021年特刊教学统计信托奖

IF 1.2 Q2 EDUCATION & EDUCATIONAL RESEARCH Teaching Statistics Pub Date : 2022-01-19 DOI:10.1111/test.12298
H. MacGillivray
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The intent of the special issue is to provide impetus and inspiration to all readers and authors in furthering this progress, and to celebrate the new subtitle of the journal, in the increasing awareness of what data science is, and how statistics and data science work together in tackling real and complex datasets and problems involving complex data. Data science is much more than a new set of tools it opens doors to whole new ways of thinking about information, explanation, and action, and the special issue demonstrates what an extraordinarily rich field this is and just how much challenge and opportunity there are that could, and should, be considered by the statistical and data science community. Amongst the excellent papers illustrating a wide variety of approaches and offering some very rich examples for teaching in this emerging space, the special issue editors, after much debate, chose the winning paper because of the importance of harvesting the vast amounts of data now available combined with authentic student engagement in enquiry-based learning in a fun and universally appealing context. The pedagogic approach is an excellent demonstration of the long-time advocacy of leading statisticians and statistical educators of students learning of technical tools and statistical thinking via graduated needs arising in the tackling of a real data investigation that piques student curiosity and exploration. The proposal, using APIs, is unique and cutting edge, but is explained in an extremely clear way. It centers on the importance of the data gathering phase in data science (at least when it comes to data scraping), and mastery of this skill not only empowers students, but teaches them that the internet really is just organized data. However such approaches cannot succeed without careful scaffolding, preparation and deep understanding of student needs in learning about data. Students move from immersion in a search activity (for photos) to URL hacking and GUIdriven tools, to thinking of variables and then to API’s. Graphical explorations are then encouraged to at least partially discuss some of the questions that have arisen during a student’s personal journey in the investigation. The approach is simple, well written, directly usable, asks questions students will engage with, and readers will tend to want to try out the activities for themselves. The activities described can be used across the curriculum and with a variety of age groups, and hacking APIs could appeal to a variety of students. As well as influencing curricula, statistics courses could use this approach as an extra project, or computer science classes could be enticed to pay more attention to data. Since its inception in 1979, Teaching Statistics has always aimed to emphasize good practice in teaching statistics and statistical thinking in any context. 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, integrating the principles and practice of data investigations with statistical literacy in congruence with current statistical developments and usage in real world contexts and problems. Statistics has long been both a user and driver of computing technology, and to tackle increasingly vast amounts of data and progressively more complex problems in ever more diverse contexts, the statistical sciences have been rapidly developing, and been involved in, more and better methods and technologies. We congratulate the authors for their excellent paper, and congratulate all authors in the special issue for their valuable contributions to this critically important area of teaching data science and statistics.","PeriodicalId":43739,"journal":{"name":"Teaching Statistics","volume":null,"pages":null},"PeriodicalIF":1.2000,"publicationDate":"2022-01-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Teaching Statistics Trust prize for 2021 special issue\",\"authors\":\"H. 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引用次数: 0

摘要

《教学统计学》很高兴地宣布,《教学统计学信托基金会》在2021年特刊《教学数据科学与统计学:基础和导论》中授予Anna Fergusson和Chris Wild最佳论文奖,表彰他们的论文《穿越数据景观:向数据科学学生介绍API》。统计学和数据科学及其教学有着内在的联系。这不仅体现在统计学教学中越来越多地纳入技术,也体现在所考虑的数据和背景中,以及在入门级扩大统计问题、探索、演示和讨论,无论是学校、本科生还是其他学科的研究生/工作场所。特刊的目的是为所有读者和作者提供动力和灵感,推动这一进展,并庆祝该杂志的新副标题,提高人们对什么是数据科学的认识,以及统计和数据科学如何在解决真实和复杂的数据集以及涉及复杂数据的问题方面合作。数据科学不仅仅是一套新的工具,它为思考信息、解释和行动开辟了全新的途径,而这本特刊展示了这是一个多么丰富的领域,以及统计和数据科学界可以也应该考虑的挑战和机遇有多大。在阐述了各种方法并为这一新兴领域的教学提供了一些非常丰富的例子的优秀论文中,经过多次辩论,特刊编辑们,之所以选择获奖论文,是因为收集大量现有数据的重要性,再加上学生在一个有趣且普遍吸引人的环境中真正参与基于探究的学习。这种教学方法很好地证明了领先的统计学家和统计教育工作者长期以来一直倡导学生通过解决真实数据调查中产生的毕业需求来学习技术工具和统计思维,这激发了学生的好奇心和探索力。这个使用API的提议是独特的、前沿的,但解释得非常清楚。它以数据科学中数据收集阶段的重要性为中心(至少在数据抓取方面),掌握这项技能不仅能增强学生的能力,还能教会他们互联网实际上只是有组织的数据。然而,如果没有仔细的支架、准备和对学生学习数据需求的深入理解,这种方法就不可能成功。学生们从沉浸在搜索活动(照片)中,到URL破解和GUI驱动工具,再到思考变量,再到API。然后鼓励图形探索至少部分讨论学生在调查中的个人旅程中出现的一些问题。这种方法简单、写得好、直接可用,提出学生会参与的问题,读者往往想自己尝试这些活动。所描述的活动可以在整个课程中使用,也可以用于各种年龄组,黑客API可以吸引各种学生。除了影响课程设置外,统计学课程还可以将这种方法作为一个额外的项目,或者可以吸引计算机科学课程更多地关注数据。自1979年成立以来,统计学教学一直致力于强调在任何情况下教授统计学和统计学思维的良好实践。正如专业统计学家和主要统计教育工作者长期倡导的那样,统计学教学中的良好做法应充分反映统计学的实践,将数据调查的原则和实践与统计知识相结合,以符合当前统计发展以及在现实世界背景和问题中的使用。长期以来,统计一直是计算技术的用户和驱动力,为了在越来越多样化的环境中处理越来越多的数据和越来越复杂的问题,统计科学一直在快速发展,并参与到越来越多更好的方法和技术中。我们祝贺作者们发表了出色的论文,并祝贺特刊上的所有作者为数据科学和统计学这一至关重要的教学领域做出了宝贵贡献。
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Teaching Statistics Trust prize for 2021 special issue
Teaching Statistics are happy to announce that the Teaching Statistics Trust has awarded a prize for the best paper in the 2021 special issue, Teaching Data Science and Statistics: foundation and introductory, to Anna Fergusson and Chris Wild for their paper On traversing the data landscape: Introducing APIs to data-science students. Statistics and data science and their teaching are intrinsically linked. This is seen not only in the increasing inclusion of technology in teaching statistics, but also in the data and contexts considered, and the broadening of statistical issues, explorations, presentations, and discussions at introductory levels, whether school, undergraduate or postgraduate/workplace in other disciplines. The intent of the special issue is to provide impetus and inspiration to all readers and authors in furthering this progress, and to celebrate the new subtitle of the journal, in the increasing awareness of what data science is, and how statistics and data science work together in tackling real and complex datasets and problems involving complex data. Data science is much more than a new set of tools it opens doors to whole new ways of thinking about information, explanation, and action, and the special issue demonstrates what an extraordinarily rich field this is and just how much challenge and opportunity there are that could, and should, be considered by the statistical and data science community. Amongst the excellent papers illustrating a wide variety of approaches and offering some very rich examples for teaching in this emerging space, the special issue editors, after much debate, chose the winning paper because of the importance of harvesting the vast amounts of data now available combined with authentic student engagement in enquiry-based learning in a fun and universally appealing context. The pedagogic approach is an excellent demonstration of the long-time advocacy of leading statisticians and statistical educators of students learning of technical tools and statistical thinking via graduated needs arising in the tackling of a real data investigation that piques student curiosity and exploration. The proposal, using APIs, is unique and cutting edge, but is explained in an extremely clear way. It centers on the importance of the data gathering phase in data science (at least when it comes to data scraping), and mastery of this skill not only empowers students, but teaches them that the internet really is just organized data. However such approaches cannot succeed without careful scaffolding, preparation and deep understanding of student needs in learning about data. Students move from immersion in a search activity (for photos) to URL hacking and GUIdriven tools, to thinking of variables and then to API’s. Graphical explorations are then encouraged to at least partially discuss some of the questions that have arisen during a student’s personal journey in the investigation. The approach is simple, well written, directly usable, asks questions students will engage with, and readers will tend to want to try out the activities for themselves. The activities described can be used across the curriculum and with a variety of age groups, and hacking APIs could appeal to a variety of students. As well as influencing curricula, statistics courses could use this approach as an extra project, or computer science classes could be enticed to pay more attention to data. Since its inception in 1979, Teaching Statistics has always aimed to emphasize good practice in teaching statistics and statistical thinking in any context. 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, integrating the principles and practice of data investigations with statistical literacy in congruence with current statistical developments and usage in real world contexts and problems. Statistics has long been both a user and driver of computing technology, and to tackle increasingly vast amounts of data and progressively more complex problems in ever more diverse contexts, the statistical sciences have been rapidly developing, and been involved in, more and better methods and technologies. We congratulate the authors for their excellent paper, and congratulate all authors in the special issue for their valuable contributions to this critically important area of teaching data science and statistics.
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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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