使用教育数据挖掘技术评估学生在画布LMS上的合作

Urvashi Desai, Vijayalakshmi Ramasamy, J. Kiper
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引用次数: 1

摘要

在线讨论论坛提供有关学生学习和参与课程活动的宝贵信息。通过分析参与者之间的社会互动,可以检验这些讨论帖子内容中隐藏的知识。本研究通过应用社会网络分析(SNA)指标和复杂的计算技术来调查学生的学习和协作解决问题方面。这些数据是从Canvas(一个学习管理系统(LMS))上的在线课程讨论论坛上收集的,该论坛是在美国一所中型大学的CS1课程中进行的。研究表明,需要有效的工具来建模和评估由积极的学生合作构建的目标导向的讨论论坛。本研究旨在开发一个系统的数据收集和分析工具,纳入lms,使讨论分级,以提高教学成果,洞察和解释教育现象。该研究还强调了分析学生社会行为的重要SNA指标,因为学生发布的帖子数量与他们的最终成绩之间存在正相关关系。开发的原型(CODA—Canvas在线讨论分析器)有助于根据学生在参与课程讨论时分享的有用知识来评估学生的表现。实验结果证明,对结构化讨论数据的分析提供了关于学生合作模式随时间变化的潜在见解,以及学生对教学利益的归属感。作为未来的工作,进一步的分析将通过提取更多的学生数据,如他们的人口统计数据,专业,以及在其他课程中的表现,从协作网络中研究认知和行为方面。
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Evaluation of student collaboration on canvas LMS using educational data mining techniques
Online discussion forums provide valuable information about students' learning and engagement in course activities. The hidden knowledge in the contents of these discussion posts can be examined by analyzing the social interactions between the participants. This research investigates students' learning and collaborative problem-solving aspects by applying social network analysis (SNA) metrics and sophisticated computational techniques. The data is collected from online course discussion forums on Canvas, a Learning Management System (LMS), in a CS1 course at a medium-sized US University. The research demonstrates that efficient tools are needed to model and evaluate goal-oriented discussion forums constructed from active student collaborations. This research aims to develop a systematic data collection and analysis instrument incorporated into LMSs that enables grading the discussions to improve instructional outcomes, gain insights into and explain educational phenomena. The study also emphasizes important SNA metrics that analyze students' social behavior since a positive correlation was seen between the number of posts made by students and their academic performance in terms of the final grade. The prototype developed (CODA - Canvas Online Discussion Analyzer) helps evaluate students' performance based on the useful knowledge they share while participating in course discussions. The experimental results provided evidence that analysis of structured discussion data offers potential insights about changes in student collaboration patterns over time and students' sense of belongingness for pedagogical benefits. As future work, further analysis will be done by extracting additional students' data, such as their demographic data, majors, and performance in other courses to study cognitive and behavioral aspects from the collaboration networks.
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