Using learning analytics to improve the educational design of MOOCs

H. Khalil, Martin Ebner, Philipp Leitner
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Abstract

In recent years, the interest in Massive Open Online Courses (MOOCs) and Learning Analytics research have highly increased in the areas of educational technologies. The emergence of new learning technologies requires new perspectives on Educational Design. When the areas of MOOCs, Learning Analytics and Instructional Design developed, the interest and connection between these three concepts became important for research. Learning Analytics provides progress information and other individualized support in MOOC settings where teachers are not able to provide learners with individual attention, which would be possible in a traditional face-to-face setting. Through collective views over the learning process, the overall progress and performance are indicated. Moreover, results can lead to Educational Design improvements. Every time a learner interacts with the system, data is created and collected. Many Educational Designers do not take advantage of this data and thereby, losing the possibility to impact the course design in a powerful way. This research work strongly focuses on the implication of Learning Analytics for Educational Design in MOOCs. Many methods and algorithms are used in the analytical learning process in MOOCs. Currently, a great variety of learning data exists. First, well-known Instructional Design patterns from different models were collected and listed. In a second step, through the collected data is used to point out which of these patterns can be answered by using Learning Analytics methods. The findings of the study show that it is possible to better understand which environments and experiences are best suited for learning by analyzing students' behaviors online. These results have great potential for a rapidly and easier understanding and optimization of the learning process for educators.
运用学习分析改进mooc的教学设计
近年来,在教育技术领域,对大规模开放在线课程(MOOCs)和学习分析研究的兴趣急剧增加。新的学习技术的出现要求对教育设计有新的看法。随着mooc、学习分析和教学设计领域的发展,这三个概念之间的兴趣和联系变得非常重要。学习分析在MOOC环境中提供进度信息和其他个性化支持,教师无法为学习者提供个人关注,这在传统的面对面环境中是可能的。通过集体对学习过程的看法,表明整体的进步和表现。此外,结果可以导致教育设计的改进。每当学习者与系统交互时,数据就会被创建和收集。许多教育设计师没有利用这些数据,因此失去了以一种强有力的方式影响课程设计的可能性。本研究主要关注mooc中学习分析对教育设计的影响。在mooc的分析学习过程中使用了许多方法和算法。目前,存在着各种各样的学习数据。首先,从不同的教学设计模式中收集并列出了著名的教学设计模式。在第二步中,通过收集的数据来指出哪些模式可以通过使用学习分析方法来回答。研究结果表明,通过分析学生的在线行为,可以更好地了解哪种环境和体验最适合学习。这些结果对于教育工作者快速、更容易地理解和优化学习过程具有很大的潜力。
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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59 weeks
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