运用团队学习法教授数据科学

IF 1.5 Q2 EDUCATION, SCIENTIFIC DISCIPLINES
Eric A. Vance
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引用次数: 10

摘要

数据科学是一门需要协作的学科,它的学生应该学会团队合作和协作。然而,将这些技能的教学融入数据科学课程可能是一项挑战。基于团队的学习(TBL)是一种教学策略,可以帮助教育工作者更好地教授数据科学,通过翻转课堂,采用小组协作学习,让学生积极参与数据科学。这种教学方法的一个结果是帮助学生实现与劳动力相关的数据科学学习目标,即有效的沟通、团队合作和协作。我们描述了TBL的基本要素:问责制结构和反馈机制,以支持学生在长期团队中合作,进行精心设计的数据科学应用练习。我们使用TBL教授现代数据科学入门课程的案例研究结果表明,该课程有效地教授了可再现的数据科学工作流,开始R编程,以及沟通和协作。学生们还报告说,他们在学习统计思维和高级R概念方面还有很大的改进空间。为了帮助数据科学教育界采用这种有吸引力的教学策略,我们概述了决定使用TBL的步骤,准备和规划它,以及在使用TBL教授数据科学时克服潜在的陷阱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Team-Based Learning to Teach Data Science
ABSTRACT Data science is collaborative and its students should learn teamwork and collaboration. Yet it can be a challenge to fit the teaching of such skills into the data science curriculum. Team-Based Learning (TBL) is a pedagogical strategy that can help educators teach data science better by flipping the classroom to employ small-group collaborative learning to actively engage students in doing data science. A consequence of this teaching method is helping students achieve the workforce-relevant data science learning goals of effective communication, teamwork, and collaboration. We describe the essential elements of TBL: accountability structures and feedback mechanisms to support students collaborating within permanent teams on well-designed application exercises to do data science. The results of our case study of using TBL to teach a modern, introductory data science course indicate that the course effectively taught reproducible data science workflows, beginning R programming, and communication and collaboration. Students also reported much room for improvement in their learning of statistical thinking and advanced R concepts. To help the data science education community adopt this appealing pedagogical strategy, we outline steps for deciding on using TBL, preparing and planning for it, and overcoming potential pitfalls when using TBL to teach data science.
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来源期刊
Journal of Statistics and Data Science Education
Journal of Statistics and Data Science Education EDUCATION, SCIENTIFIC DISCIPLINES-
CiteScore
3.90
自引率
35.30%
发文量
52
审稿时长
12 weeks
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