Deconstructing disengagement: analyzing learner subpopulations in massive open online courses

René F. Kizilcec, C. Piech, Emily Schneider
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引用次数: 1058

Abstract

As MOOCs grow in popularity, the relatively low completion rates of learners has been a central criticism. This focus on completion rates, however, reflects a monolithic view of disengagement that does not allow MOOC designers to target interventions or develop adaptive course features for particular subpopulations of learners. To address this, we present a simple, scalable, and informative classification method that identifies a small number of longitudinal engagement trajectories in MOOCs. Learners are classified based on their patterns of interaction with video lectures and assessments, the primary features of most MOOCs to date. In an analysis of three computer science MOOCs, the classifier consistently identifies four prototypical trajectories of engagement. The most notable of these is the learners who stay engaged through the course without taking assessments. These trajectories are also a useful framework for the comparison of learner engagement between different course structures or instructional approaches. We compare learners in each trajectory and course across demographics, forum participation, video access, and reports of overall experience. These results inform a discussion of future interventions, research, and design directions for MOOCs. Potential improvements to the classification mechanism are also discussed, including the introduction of more fine-grained analytics.
解构脱离:分析大规模开放在线课程中的学习者亚群
随着mooc越来越受欢迎,学习者相对较低的完成率一直是一个主要的批评。然而,这种对完成率的关注反映了一种脱离参与的单一观点,这种观点不允许MOOC设计师针对特定的学习者群体进行干预或开发适应性课程功能。为了解决这个问题,我们提出了一种简单、可扩展且信息丰富的分类方法,该方法可以识别mooc中少量的纵向参与轨迹。学习者根据他们与视频讲座和评估的互动模式进行分类,这是迄今为止大多数mooc的主要特点。在对三门计算机科学mooc的分析中,分类器一致地识别出四种参与的原型轨迹。其中最引人注目的是那些在不进行评估的情况下全程投入学习的学习者。这些轨迹也是比较不同课程结构或教学方法之间学习者参与度的有用框架。我们通过人口统计、论坛参与、视频访问和总体体验报告来比较每个轨迹和课程的学习者。这些结果为讨论mooc未来的干预措施、研究和设计方向提供了信息。还讨论了对分类机制的潜在改进,包括引入更细粒度的分析。
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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