大规模网络课程学生学习成绩的数学建模与预测

A. Tolmachev, E. Sinitsyn, G. Astratova
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引用次数: 0

摘要

提出了计算大规模网络公开课成绩分布的数学模型。该模型基于马尔可夫过程理论。它允许根据通过测试的结果计算在其中一组中找到学生的概率:不成功的学生,表现令人满意的学生以及表现良好和优秀的学生。结果表明,在教育平台上足够长的教学历史的限制下,该课程的分数分布趋于渐近稳定。结果还表明,这种渐近稳定分布可以在模型的基础上计算出来,即使对于没有很长历史的课程也是如此。这种渐近稳定分布可以作为控制材料和学生评分方法质量的指标。以乌拉尔联邦大学(UrFU)在国家开放教育平台上发布的几门课程为例进行分析。展示了利用该模型根据学生在通过控制测试之前的当前进度数据预测测试结果的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modeling and Forecasting of Student’s Academic Performance on Massive Online Courses
Mathematical model for calculating the scores' distributions in massive open online courses is proposed. The model is based on the theory of Markov processes. It allows to calculate the probability to find a student in one of the groups according to the results of passing the tests: unsuccessful students, performing satisfactorily and doing well and excellent. It is shown that in the limit of a sufficiently long history of teaching the course on the educational platform, the distribution of scores for the course becomes asymptotically steady. It is shown also that such asymptotically steady distributions, can be calculated on the base of the model proposed, even for the courses without a long history. Such asymptotically steady distributions can be indicators of the quality of control materials and approaches to student scoring. As an example, several courses of Ural Federal University (UrFU), posted on the National Platform of Open Education have been analyzed. The possibility of using the model to predict the results of control tests based on the data on the current progress of students before passing them is shown.
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