纵向参与、绩效和社会联系:使用指数随机图模型的MOOC案例研究

Mengxiao Zhu, Yoav Bergner, Yan Zhang, R. Baker, Y. Wang, L. Paquette
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引用次数: 45

摘要

本文探索了一种纵向方法,利用指数随机图模型(ergm)的框架,将MOOC的参与度、表现和社会连接数据结合起来。这个想法是在给定的一周内,不仅使用一周内的表现(作业分数)和总体参与度(讲座和讨论视图)协变量,而且还使用相邻的前一周和后几周的同一个人水平的协变量来模拟讨论论坛中的社会网络。我们发现,在所有8周的会议中,由论坛互动构建的社会网络相对稀疏,缺乏优先依恋的倾向。通过分析第二周的数据,我们还发现,在当前、之前和未来几周中,得分较高的个体在社交网络中的联系往往更紧密。参与讲座对社会联系有显著但有时令人困惑的影响。然而,社交连通性、表现和参与度之间的关系随着时间的推移而减弱,结果在几周内并不稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Longitudinal engagement, performance, and social connectivity: a MOOC case study using exponential random graph models
This paper explores a longitudinal approach to combining engagement, performance and social connectivity data from a MOOC using the framework of exponential random graph models (ERGMs). The idea is to model the social network in the discussion forum in a given week not only using performance (assignment scores) and overall engagement (lecture and discussion views) covariates within that week, but also on the same person-level covariates from adjacent previous and subsequent weeks. We find that over all eight weekly sessions, the social networks constructed from the forum interactions are relatively sparse and lack the tendency for preferential attachment. By analyzing data from the second week, we also find that individuals with higher performance scores from current, previous, and future weeks tend to be more connected in the social network. Engagement with lectures had significant but sometimes puzzling effects on social connectivity. However, the relationships between social connectivity, performance, and engagement weakened over time, and results were not stable across weeks.
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