大规模在线开放课程中适应性学习对学习者技能发展的影响

Y. Rosen, I. Rushkin, Rob Rubin, Liberty Munson, Andrew M. Ang, G. Weber, Glenn Lopez, D. Tingley
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引用次数: 22

摘要

我们报告了在edX上自定进度的微软MOOC(大规模开放在线课程)中自适应学习功能的实验实现。在个性化的自适应系统中,学习者向明确定义的目标的进展被不断评估,评估发生在学生准备好展示能力时,支持材料是根据每个学习者的需要量身定制的。尽管有自适应个性化学习的前景,但许多用于提供自适应技术的模型和算法缺乏基于证据的教学设计,缺乏透明度,也缺乏对不同模型进行快速实验的框架。ALOSI(自适应学习开源计划)提供了开源的自适应学习技术和一个通用框架来衡量学习收益和学习者行为。本研究探讨了两种不同策略对适应性学习和评估的影响:学习者被随机分为三组。在第一个自适应组中,ALOSI优先考虑了补习策略——为学习者提供掌握程度最低的主题项目;在第二个适应性组中,ALOSI优先考虑了连续性策略,即学习者更有可能按顺序提供类似主题的项目,直到掌握为止。对照组遵循教学设计师设定的课程路径,没有自适应算法。我们发现,在评估中实施适应性,强调补救,与学习收益的大幅增加有关,而对辍学没有太大影响。需要进一步的研究来证实这些发现,并探索其他可能的影响和对课程设计的影响。
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The effects of adaptive learning in a massive open online course on learners' skill development
We report an experimental implementation of adaptive learning functionality in a self-paced Microsoft MOOC (massive open online course) on edX. In a personalized adaptive system, the learner's progress toward clearly defined goals is continually assessed, the assessment occurs when a student is ready to demonstrate competency, and supporting materials are tailored to the needs of each learner. Despite the promise of adaptive personalized learning, there is a lack of evidence-based instructional design, transparency in many of the models and algorithms used to provide adaptive technology or a framework for rapid experimentation with different models. ALOSI (Adaptive Learning Open Source Initiative) provides open source adaptive learning technology and a common framework to measure learning gains and learner behavior. This study explored the effects of two different strategies for adaptive learning and assessment: Learners were randomly assigned to three groups. In the first adaptive group ALOSI prioritized a strategy of remediation - serving learners items on topics with the least evidence of mastery; in the second adaptive group ALOSI prioritized a strategy of continuity - that is learners would be more likely served items on similar topic in a sequence until mastery is demonstrated. The control group followed the pathways of the course as set out by the instructional designer, with no adaptive algorithms. We found that the implemented adaptivity in assessment, with emphasis on remediation is associated with a substantial increase in learning gains, while producing no big effect on the drop-out. Further research is needed to confirm these findings and explore additional possible effects and implications to course design.
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