Data science education is increasingly involving human subjects and societal issues such as privacy, ethics, and fairness. Data scientists need to be equipped with skills to tackle the complexities of the societal context surrounding their data science work. In this paper, we offer insights into how to structure our data science classes so that they motivate students to deeply engage with material about societal context and lean into the types of conversations that will produce long lasting growth in critical thinking skills. In particular, we describe a novel assessment tool called participation portfolios, which is motivated by a framework that promotes student autonomy, self reflection, and the building of a learning community. We compare student participation before and after implementing this assessment tool, and our results suggest that this tool increased student participation and helped them move towards course learning objectives.
翻译:数据科学教育越来越多地涉及人类主题和隐私、伦理和公平等社会问题; 数据科学家需要掌握应对其数据科学工作所涉复杂社会背景的技能; 在本文中,我们提出如何构建数据科学课程的洞察力,以激励学生深入接触关于社会背景的材料,并倾斜于能够产生批判思维技能持久增长的对话类型; 特别是,我们描述了一个称为参与组合的新颖的评估工具,其动力是促进学生自主、自我思考和建立学习社区的框架; 我们比较学生参与这一评估工具前后的情况,我们的成果表明,这一工具增加了学生的参与,帮助他们走向课程学习目标。