外语教学中学习者行为调查与干预实施

Han Wan, Zihao Zhong, Lina Tang, Xiaopeng Gao
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引用次数: 1

摘要

这篇正在进行的论文属于创新实践类别。在mooc相关的研究领域中,很多研究者基于日志数据分析学生的学习行为,预测学生的学习表现,改进课程设计。目前,小型私人在线课程(SPOC)在大学教育,特别是计算机教育中受到青睐。这种混合教学模式允许课程通过互联网进行,这使得教师和学生可以随时随地访问课程。此外,课程教材中可以加入图像、视频、音频等多媒体资源,加强SPOC的表现力。另一方面,在线学习管理系统(LMS)收集了学生与它的所有互动。但我们怎样才能从中提取有意义的信息呢?我们如何改善SPOC的学习成果?在本研究中,我们分析了大二计算机结构课程的LMS数据。我们应用了几种数据挖掘技术,并使用几种可视化技术进行了干预。根据Spearman等级与等级的相关系数选择特征。这些特征的相关系数在0.42 ~ 0.84之间。课程数据被进一步处理以预测学生的表现。预测的成绩以热图的形式处理,以说明学生的学习行为。此外,我们进一步设计了教师视角的整体视图,每个热图中包含了所有学生的数据。用ROC-AVC值对预测模型进行评价。为了更好地预测性能,对几个超参数进行了调优。最佳ROC-AVC值可达97.44%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating Learners' Behaviors and Implementing Intervention in a SPOC
This Work-In-Progress paper is in the Innovative Practice category. In the MOOC-related research field, many researchers analyzed students' learning behavior based on the logging data to predict students' performance and improve the course design. Nowadays, Small Private Online Courses (SPOC) are favored in college education, especially in computing education. This hybrid teaching model allows courses to be conducted through Internet, which enables teachers and students to access the course anytime, anywhere. Besides, multimedia resources, including images, videos, and audio could be contained in course materials to strengthen the expressiveness of SPOC. On the other hand, the online learning management system (LMS) collects all the students' interactions with it. But how could we extract meaningful information from them? And how could we improve the learning outcomes of a SPOC? In this study, we analyzed LMS data from a sophomore Computer Structure course. We applied several data mining techniques and conducted an intervention using several visualization techniques. Features were selected according to Spearman's rank correlation coefficient with grades. The correlation coefficient of these selected features ranged from 0.42 to 0.84. Course data were further processed to predict students' performance. The predicted grade was processed in the form of heatmaps to illustrate students' learning behavior. Besides, we further designed an overall view for teachers' perspective, which contains data of all the students in each heatmap. The predicting models were evaluated by ROC-AVC values. Several hyperparameters were tuned in order to pursue better predict performance. The best ROC-AVC value could reach 97.44%.
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