不同的学习预测器及其对Moodle机器学习模型的影响

László Bognár, Tibor Fauszt
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引用次数: 4

摘要

本文开发了16种不同的Moodle机器学习模型,用于预测匈牙利Dunaújváros大学应用统计学课程57名全日制学生的成功,并对其“良度”进行了测试。成功可以受到几个因素的影响,但这里只检查学生的认知活动。模型中使用的预测因子基于:PDF讲义的观看次数,视频讲座的观看次数,解决习题的书籍的观看次数,Minitab视频(使用统计软件解决问题的视频)的观看次数,测试的尝试次数和学生在测试中取得的最佳成绩。这些模型在预测因子的数量和类型上有所不同。采用二元逻辑回归进行模型训练和评价。模型的目标表明学生是否有可能达不到通过课程的最低分数。作为Moodle核心分析API的一部分,认知预测器对预测能力的影响也进行了研究。在评估了不同模型的优点后,结果表明,学生的成功可以纯粹从认知活动中预测出来,但他们的预测能力是非常多样化的。测验的预测因素对成功的影响最大,然而,用其他更不有效的预测因素补充模型可以得到更好的模型。纯粹由Moodle核心认知预测器构建的模型给出的结果可靠性要低得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Different learning predictors and their effects for Moodle Machine Learning models
In this paper 16 different Moodle Machine Learning models for predicting the success of 57 full-time students enrolled in the Applied Statistics course at the University of Dunaújváros in Hungary have been developed and tested in terms of “goodness”. The success can be affected by several factors, but here only students' cognitive activities are examined. The predictors used in the models are based on: number of view of PDF lecture notes, number of views of video lectures, number of views of books of solved exercises, number of views of Minitab videos (videos for problem solving with a statistical software), number of attempts of quizzes and best grades achieved by students on quizzes. The models differed in the number and in the types of predictors. Binary Logistic Regression was used for model training and evaluation. The target of the models indicates whether a student is at risk of not achieving the minimum grade to pass the course. The impact of cognitive predictors that are part of the Moodle core Analytics API on predictive power was also examined. Having evaluated the goodness of the different models, it was shown that students' success can be predicted purely from cognitive activities, but their predictive powers are very diverse. The predictors of quizzes have the largest impact on the success, however, supplementing the model with other even less effective predictors much better model can be made. Models built from purely Moodle core cognitive predictors give much less reliable results.
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