计算机支持的面对面协作学习中低成就群体的实时检测

Jeongyun Han, Wonjong Rhee, Y. Cho
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摘要

本研究探讨了在面对面计算机支持的协作学习中实时检测低成就群体的可行性。我们收集了课堂上的在线活动数据,记录了学生在面对面课堂上的学习行为,并建立了预测模型,在课堂上每一分钟都能识别出有风险的群体。共有88名职前教师(56名女性,32名男性)被招募并分配到22个合作学习小组。这些小组参加了两次面对面的合作辩论课程,每周一次,持续两周。参与者使用在线协作软件Trello,该软件允许在课堂上收集在线活动数据。从数据中提取了10个小组活动特征,分为三类:参与、互动和论证质量。基于群体活动特征,采用随机森林算法建立预测模型。结果表明,即使在课堂开始几分钟后,该模型也能以较高的准确率检测出成绩较差的群体。随着课程的进展,准确性得到了提高。此外,该模型确定了重要的小组活动特征,这些特征有助于在课堂的每个阶段取得小组成就。结果表明,基于课堂活动数据的预测模型可以帮助教师实时准确地识别风险群体,并提供适当的教学支持。早期预警系统也应该是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time detection of low-achieving groups in face-to-face computer-supported collaborative learning
This study investigates the feasibility of detecting low-achieving groups during face-to-face computer-supported collaborative learning in real-time. We collected in-class online activity data that records students' learning behaviors during face-to-face classes, and built prediction models that identify the at-risk groups at every minute during a class. A total of 88 pre-service teachers (56 female, 32 male) were recruited and assigned to 22 collaborative learning groups. The groups participated in two face-to-face collaborative argumentation classes that took place once a week over two consecutive weeks. The participants used online collaboration software, Trello, that allowed in-class online activity data collection during the classes. Ten group activity features were extracted from the data in three categories: participation, interaction, and quality of argumentation. Random forest algorithm was used to build the prediction models based on the group activity features. The results show that the models can detect the low-achieving groups with high accuracy even just a few minutes after the class begins. As the class progressed, the accuracy was improved. Additionally, the model identified the important group activity features that contributed to the group achievement in each phase of class. The results indicate that prediction models using in-class activity data can help instructors accurately identify at-risk groups in real-time and provide appropriate instructional support. An early warning system should be beneficial as well.
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