混合式学习课程中如何基于互动活动因素预测学生的学习成果

Minh-Duc Le, Hoa-Huy Nguyen, Duc-Loc Nguyen, V. A. Nguyen
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引用次数: 1

摘要

本文总结了混合学习课程在线学习阶段影响因素识别的研究成果。基于这些因素,我们提出了一个预测学生成绩的模型。在我们的研究中,我们使用231名参与者的课程,进行了几个模型来预测学生的学习成果。使用学习分析和机器学习技术对从LMS系统的日志文件中获得的数据进行分析,结果表明,四个因素是浏览量、帖子数量、论坛浏览量和按时提交作业数量对学生学习成果的影响。对于基于形成性评价测试的结果预测期末考试成绩,在四种模型(线性回归、KNR、SVM、Bayesian Ridge)中,Bayesian Ridge是最准确的。我们的研究可以为讲师和课程设计者有效地组织混合式学习课程提供有用的材料。
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How to Forecast the Students' Learning Outcomes Based on Factors of Interactive Activities in a Blended Learning Course
This paper summarizes the research results of identifying the influencing factors in the online learning phase of a blended learning course. From such factors, we propose a model for predicting student outcomes. In our study, we have conducted several models in order to predict the student's learning outcomes, using a course of 231 participants. Obtained data from the logs file of an LMS system is analyzed using learning analytics and machine learning techniques, and the results propose that the four factors are the number of views, the number of posts, the number of forum views, and the number of on-time submitted assignments impact on the student's learning outcomes. For the forecast of the final exam grade based on the results of the formative assessment tests, Bayesian Ridge is the most accurate among the four conducted models (Linear Regression, KNR, SVM, Bayesian Ridge). Our study can be a useful material for lecturers and course designers in effectively organizing blended learning courses.
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