教学再现性的固执实践:动机、指导性教学与实践

IF 1.5 Q2 EDUCATION, SCIENTIFIC DISCIPLINES Journal of Statistics and Data Science Education Pub Date : 2021-09-17 DOI:10.1080/26939169.2022.2074922
Joel Ostblom, T. Timbers
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引用次数: 6

摘要

摘要在不列颠哥伦比亚大学的数据科学课程中,我们将数据科学定义为研究、开发和实践可重复和可审计的过程,以从数据中获得见解。虽然再现性是我们定义的核心,但大多数数据科学学习者进入该领域时都考虑到了数据科学的其他方面,例如预测建模,这通常是新手最感兴趣的话题之一。这一事实,加上目前数据科学中使用的行业标准再现性工具的高度技术性,在数据科学课堂上教授再现性带来了前所未有的挑战。简单地说,学生们学习这个主题的内在动机并不大,而且这对他们来说也不容易。数据科学教育家能做什么?在几次以可复制数据科学工具和工作流程为重点的教学课程迭代中,我们发现,提供额外的动力、指导性教学和大量实践是有效教授这门具有挑战性但重要的学科的关键。在这里,我们展示了我们如何激励、指导和为数据科学学生提供充足的实践机会,让他们有效地参与到这一主题的学习中。
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Opinionated Practices for Teaching Reproducibility: Motivation, Guided Instruction and Practice
Abstract In the data science courses at the University of British Columbia, we define data science as the study, development and practice of reproducible and auditable processes to obtain insight from data. While reproducibility is core to our definition, most data science learners enter the field with other aspects of data science in mind, for example predictive modeling, which is often one of the most interesting topics to novices. This fact, along with the highly technical nature of the industry standard reproducibility tools currently employed in data science, present out-of-the gate challenges in teaching reproducibility in the data science classroom. Put simply, students are not as intrinsically motivated to learn this topic, and it is not an easy one for them to learn. What can a data science educator do? Over several iterations of teaching courses focused on reproducible data science tools and workflows, we have found that providing extra motivation, guided instruction and lots of practice are key to effectively teaching this challenging, yet important subject. Here we present examples of how we motivate, guide, and provide ample practice opportunities to data science students to effectively engage them in learning about this topic.
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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
期刊最新文献
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