高分辨率时间网络分析,理解和提高协作学习

Mohammed Saqr, Jalal Nouri
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引用次数: 12

摘要

在使用聚合网络研究协作学习和社会学习方面已经做出了重大努力。这些努力通过提供关于互动、学生和教师角色以及绩效可预测性的见解,证明了该方法的价值。然而,使用聚合网络降低了时间交互的精细分辨率。这样做,我们可能会忽略学生互动的规律/不规则性,学习规则的过程,以及不同行为者如何以及何时相互影响。因此,压缩一个复杂的时间过程,如学习,可能是过度简化和还原论。通过对在线医学教育课程中54名学生互动(共3134次互动)的时间网络分析,本研究有助于建立、可视化和定量分析时间网络的方法学方法,这可以帮助教育从业者了解协作学习中可能需要关注和采取行动的重要时间方面。此外,所进行的分析强调了考虑数据的时间特征的重要性,例如,在试图实现对成绩的早期预测和对需要支持和关注的学生和群体的早期发现时,应该使用这些数据。
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High resolution temporal network analysis to understand and improve collaborative learning
There has been significant efforts in studying collaborative and social learning using aggregate networks. Such efforts have demonstrated the worth of the approach by providing insights about the interactions, student and teacher roles, and predictability of performance. However, using an aggregated network discounts the fine resolution of temporal interactions. By doing so, we might overlook the regularities/irregularities of students' interactions, the process of learning regulation, and how and when different actors influence each other. Thus, compressing a complex temporal process such as learning may be oversimplifying and reductionist. Through a temporal network analysis of 54 students interactions (in total 3134 interactions) in an online medical education course, this study contributes with a methodological approach to building, visualizing and quantitatively analyzing temporal networks, that could help educational practitioners understand important temporal aspects of collaborative learning that might need attention and action. Furthermore, the analysis conducted emphasize the importance of considering the time characteristics of the data that should be used when attempting to, for instance, implement early predictions of performance and early detection of students and groups that need support and attention.
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