论文标题
学生的联系与学习成绩之间的相关性:大流行的随访
Correlations between student connectivity and academic performance: a pandemic follow-up
论文作者
论文摘要
社交网络分析(SNA)已成为一种用于定量研究学生合作的技术。我们分析了由科罗拉多博尔德大学的两门课程和科罗拉多州矿业学院的一门课程分析,该网络是由学生自我报告在家庭作业作业方面的合作报告。这三个课程都发生在19日期期间的大流行期间,这允许在科罗拉多州矿业学院(以完全远程格式)的课程与以前在科罗拉多州矿业学院的学生合作研究(以混合形式)进行学生合作研究的结果。我们计算结节中心度度量,并计算学生中心性与表现之间的相关性。结果之间的结果差异很大。科罗拉多州矿业学院的课程在许多中心度度量和表现之间具有牢固的相关性,这与大大竞争前研究中看到的模式相匹配。科罗拉多大学博尔德大学的课程表现出较弱的相关性,一门课程几乎显示出学生与同学的联系与他们的表现之间完全没有相关性。综上所述,三个课程的结果表明,本课程所在的上下文和环境在促进学生协作与课程表现之间的相关性中起着比课程的格式(远程,混合,内部)更重要的作用。此外,我们对缺失节点可能对根据测量网络计算的相关性产生的影响进行了简短研究。这项调查表明,缺失的节点倾向于将相关性转移到零,这提供了证据表明我们网络中测得的统计学意义相关性并非伪造。
Social network analysis (SNA) has been gaining traction as a technique for quantitatively studying student collaboration. We analyze networks, constructed from student self-reports of collaboration on homework assignments, in two courses from the University of Colorado Boulder and one course from the Colorado School of Mines. All three courses occurred during the COVID-19 pandemic, which allows for a comparison between the course at the Colorado School of Mines (in a fully remote format) with results from a previous pre-pandemic study of student collaboration at the Colorado School of Mines (in a hybrid format). We compute nodal centrality measures and calculate the correlation between student centrality and performance. Results varied widely between each of the courses studied. The course at the Colorado School of Mines had strong correlations between many centrality measures and performance which matched the patterns seen in the pre-pandemic study. The courses at the University of Colorado Boulder showed weaker correlations, and one course showed nearly no correlations at all between students' connectivity to their classmates and their performance. Taken together, the results from the trio of courses indicate that the context and environment in which the course is situated play a more important role in fostering a correlation between student collaboration and course performance than the format (remote, hybrid, in-person) of the course. Additionally, we conducted a short study on the effect that missing nodes may have on the correlations calculated from the measured networks. This investigation showed that missing nodes tend to shift correlations towards zero, providing evidence that the statistically significant correlations measured in our networks are not spurious.