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Together we stand, Together we fall, Together we win: Dynamic team formation in massive open online courses

机译:我们一起站着,我们一起摔倒,我们一起赢了:在大规模开放的在线课程中的动态团队形成

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Massive Open Online Courses (MOOCs) offer a new scalable paradigm for e-learning by providing students with global exposure and opportunities for connecting and interacting with millions of people all around the world. Very often, students work as teams to effectively accomplish course related tasks. However, due to lack of face to face interaction, it becomes difficult for MOOC students to collaborate. Additionally, the instructor also faces challenges in manually organizing students into teams because students flock to these MOOCs in huge numbers. Thus, the proposed research is aimed at developing a robust methodology for dynamic team formation in MOOCs, the theoretical framework for which is grounded at the confluence of organizational team theory, social network analysis and machine learning. A prerequisite for such an undertaking is that we understand the fact that, each and every informal tie established among students offers the opportunities to influence and be influenced. Therefore, we aim to extract value from the inherent connectedness of students in the MOOC. These connections carry with them radical implications for the way students understand each other in the networked learning community. Our approach will enable course instructors to automatically group students in teams that have fairly balanced social connections with their peers, well defined in terms of appropriately selected qualitative and quantitative network metrics.
机译:大规模开放的在线课程(MOOCS)通过为学生提供全球曝光和与全球数百万人的联系和互动的机会提供学习的电子学习,为电子学习提供新的可扩展范式。非常经常,学生担任团队,有效地完成课程相关任务。然而,由于缺乏面对面的互动,Mooc学生很难合作。此外,教师还面临手动组织学生进入团队的挑战,因为学生以大量的数量汇集到这些MOOC。因此,拟议的研究旨在为Moocs的动态团队组建制定强大的方法,这是在组织团队理论,社会网络分析和机器学习的交汇处接地的理论框架。这种承诺的先决条件是我们理解,学生建立的每一个非正式领带都提供了影响和受影响的机会。因此,我们的目标是从MOOC中学生的固有关联性中提取价值。这些连接随着学生在网络学习界彼此了解的方式而携带激进的影响。 Our approach will enable course instructors to automatically group students in teams that have fairly balanced social connections with their peers, well defined in terms of appropriately selected qualitative and quantitative network metrics.

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