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Mining Learning Behavioral Patterns of Students by Sequence Analysis in Cloud Classroom

机译:在云课堂中通过序列分析挖掘学生的学习行为模式

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摘要

In a MOOC environment, each student's interaction with the course content is a crucial clue for learning analytics, which offers an opportunity to record learner activity of unprecedented scale. In online learning, the educators and the administrators need to get informed with students' learning states since the performance of unsupervised learning style is difficult to control. Learning analytics considered as a key process is to provide students and educators with evidence-based, analytical and contextual outcomes in a way of making sense of their learning engagements. In this conceptual framework, this manuscript per the authors intends to adopt sequential analysis method to exploit students' learning behavior patterns in Cloud classroom (an online course platform based on MOOC). Moreover, this research also compares the behavioral patterns of four grade levels in a university, with the purpose of finding the most key behavioral patterns of each grade group.
机译:在MOOC环境中,每个学生与课程内容的交互都是学习分析的关键线索,这为记录规模空前的学习者活动提供了机会。在在线学习中,由于难以控制无监督学习风格的表现,因此教育者和管理者需要及时了解学生的学习状态。被认为是关键过程的学习分析方法是通过合理地了解他们的学习投入,为学生和教育者提供基于证据的,分析性的和上下文相关的结果。在此概念框架中,本作者打算采用顺序分析方法来利用Cloud教室(基于MOOC的在线课程平台)中学生的学习行为模式。此外,本研究还比较了大学中四个年级水平的行为模式,目的是找到每个年级组最关键的行为模式。

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