论文标题
使用课程负载分析对本科途径的见解
Insights into undergraduate pathways using course load analytics
论文作者
论文摘要
从LMS推断出的课程负载分析(CLA)和入学功能可以为学生提供比学分时间更准确的课程工作代表,并有可能帮助他们的课程选择决策。在这项研究中,我们制作并评估了学生课程负载等级的第一个机器学习预测,并将我们的模型推广到一所大型公立大学的整个10,000个课程目录。然后,我们回顾性地分析学生课程选择的学期负载的纵向差异。 CLA到学期表明,与基于学分的分析相比,该大学的第一学期是他们的最高负载学期之一,这表明这是他们最低的。调查预测课程负荷可能在计划保留方面发挥的作用,我们发现维持学期负载低的学生按学分小时衡量,但通过CLA衡量的很高,更有可能离开他们的学习计划。当然,这种差异在STEM中尤其相关,并且与高前提课程有关。我们的发现对学术建议,机构处理新生经验以及面向学生的分析有影响,以帮助学生更好地计划,预测和为他们选择的课程做准备。
Course load analytics (CLA) inferred from LMS and enrollment features can offer a more accurate representation of course workload to students than credit hours and potentially aid in their course selection decisions. In this study, we produce and evaluate the first machine-learned predictions of student course load ratings and generalize our model to the full 10,000 course catalog of a large public university. We then retrospectively analyze longitudinal differences in the semester load of student course selections throughout their degree. CLA by semester shows that a student's first semester at the university is among their highest load semesters, as opposed to a credit hour-based analysis, which would indicate it is among their lowest. Investigating what role predicted course load may play in program retention, we find that students who maintain a semester load that is low as measured by credit hours but high as measured by CLA are more likely to leave their program of study. This discrepancy in course load is particularly pertinent in STEM and associated with high prerequisite courses. Our findings have implications for academic advising, institutional handling of the freshman experience, and student-facing analytics to help students better plan, anticipate, and prepare for their selected courses.