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Robustness and rich clubs in collaborative learning groups: a learning analytics study using network science

机译:合作学习群体的鲁棒性和丰富的俱乐部:使用网络科学的学习分析研究

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Productive and effective collaborative learning is rarely a spontaneous phenomenon but rather the result of meeting a set of conditions, orchestrating and scaffolding productive interactions. Several studies have demonstrated that conflicts can have detrimental effects on student collaboration. Through the application of network science, and social network analysis in particular, this learning analytics study investigates the concept of group robustness; that is, the capacity of collaborative groups to remain functional despite the withdrawal or absence of group members, and its relation to group performance in the frame of collaborative learning. Data on all student and teacher interactions were collected from two phases of a course in medical education that employed an online learning environment. Visual and mathematical analysis were conducted, simulating the removal of actors and its effect on the group’s robustness and network structure. In addition, the extracted network parameters were used as features in machine learning algorithms to predict student performance. The study contributes findings that demonstrate the use of network science to shed light on essential elements of collaborative learning and demonstrates how the concept and measures of group robustness can increase understanding of the conditions of productive collaborative learning. It also contributes to understanding how certain interaction patterns can help to promote the sustainability or robustness of groups, while other interaction patterns can make the group more vulnerable to withdrawal and dysfunction. The finding also indicate that teachers can be a driving factor behind the formation of rich clubs of well-connected few and less connected many in some cases and can contribute to a more collaborative and sustainable process where every student is included.
机译:生产性和有效的协作学习很少是一种自发现象,而是满足一系列条件,协调和脚手架生产性相互作用的结果。几项研究表明,冲突可能对学生合作产生不利影响。通过网络科学的应用,特别是社会网络分析,这一学习分析研究调查了集团鲁棒性的概念;也就是说,尽管撤离或缺乏小组成员,但合作团体仍然职能的能力,以及其与协同学习框架组成的关系。所有学生和教师互动的数据都是从雇用在线学习环境的医学教育课程的两个阶段收集。进行了视觉和数学分析,模拟了参与者的去除及其对集团鲁棒性和网络结构的影响。此外,提取的网络参数用作机器学习算法中的特征,以预测学生性能。该研究有助于表明使用网络科学在协作学习的基本要素中使用网络科学,并展示了集团鲁棒性的概念和衡量标准如何增加对生产性协作学习的条件的理解。它还有助于了解某些互动模式如何有助于促进群体的可持续性或稳健性,而其他相互作用模式可以使该群体更容易抑制戒断和功能障碍。该发现还表明,教师可以成为在某些情况下富裕俱乐部的丰富俱乐部的形成背后的驾驶因素,并且可以有助于包括更多学生的更多协作和可持续的过程。

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