Supporting learning analytics in computing education

Daniel M. Olivares, C. Hundhausen
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引用次数: 2

Abstract

As is the case for many undergraduate STEM degree programs, computing degree programs are plagued by high attrition rates. This is especially true in early computing courses, in which failure and drop-out rates in the 35 to 50 percent range are common. By collecting learning process data as students engage in computer programming assignments, computing educators can place themselves in a position not only to better understand students' struggles, but also to better tailor instructional interventions to students' needs. We have developed OSBLE+, a learning management and analytics environment that interfaces with a computer programming environment to support the automatic collection of learners' programming process and social data as they work on programming assignments, while also providing an interactive environment for the analysis and visualization of those data. In ongoing work, we are using OSBLE+ to explore two possibilities: (a) leveraging learning and social data to strategically deliver automated learning interventions, and (b) presenting learners with visual representations of their learning data in order to prompt them to reflect on and discuss their learning processes.
支持计算机教育中的学习分析
与许多本科STEM学位课程一样,计算机学位课程也受到高流失率的困扰。在早期的计算机课程中尤其如此,在这些课程中,失败率和退学率在35%到50%之间是很常见的。通过收集学生参与计算机编程作业的学习过程数据,计算机教育者不仅可以更好地了解学生的困难,还可以更好地根据学生的需求定制教学干预措施。我们开发了OSBLE+,这是一个学习管理和分析环境,它与计算机编程环境接口,以支持学习者编程过程和社会数据的自动收集,因为他们在编程作业中工作,同时也为这些数据的分析和可视化提供了一个交互式环境。在正在进行的工作中,我们正在使用OSBLE+探索两种可能性:(a)利用学习和社交数据战略性地提供自动化学习干预,以及(b)向学习者展示他们学习数据的可视化表示,以促使他们反思和讨论他们的学习过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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