Tracing Knowledge States through Student Assessment in a Blended Learning Environment

Indriana Hidayah, Ebedia Hilda Am
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Abstract

Blended learning has recently acquired popularity in a variety of educational settings. This approach has the advantage of being able to autonomously monitor students' knowledge states using the collected learning data. Moodle is the most widely used learning management system in blended learning environments. Students can access Moodle to obtain supplementary materials, exercises, and assessments to complement their face-to-face meetings. However, its performance can be improved by more effectively tailoring students' skills and pace of learning. Several studies have been conducted on knowledge tracing; however, we have not discovered any studies that particularly investigate knowledge tracing in a blended learning setting with Moodle as a component. This study proposes a scheme for assessment using the features of the Moodle quiz platform. The assessment data is used to conduct knowledge tracing with the Bayesian Knowledge Tracing (BKT) model, which improves interpretability. The aforementioned data were collected from information engineering undergraduate students who completed 88 exercises that assessed 23 knowledge components within the course. We measure RMSE and MAE to evaluate the performance of the BKT model on our dataset. Furthermore, we compare the knowledge tracing performance to other well-known datasets. Our results show that the BKT model performed better with our dataset, with an RMSE of 0.314 and an MAE of 0.197. Moreover, the BKT model can be used to assess student performance and determine the level of mastery for each knowledge component. Thus, the outcomes can be applied to personalized learning in the future.
在混合式学习环境中通过学生评价追踪知识状态
混合式学习最近在各种教育环境中大受欢迎。这种方法的优势在于能够利用收集到的学习数据自主监控学生的知识状态。Moodle 是混合式学习环境中使用最广泛的学习管理系统。学生可以访问 Moodle 获取补充材料、练习和评估,以补充他们的面授课程。然而,通过更有效地调整学生的技能和学习进度,Moodle 的性能还可以得到改善。已有多项关于知识追踪的研究,但我们还没有发现任何研究特别调查了以 Moodle 为组件的混合式学习环境中的知识追踪。本研究利用 Moodle 问答平台的特点提出了一种评估方案。利用贝叶斯知识追踪(BKT)模型对评估数据进行知识追踪,从而提高可解释性。上述数据收集自信息工程本科生,他们完成了 88 个练习,评估了课程中的 23 个知识点。我们测量了 RMSE 和 MAE,以评估 BKT 模型在数据集上的性能。此外,我们还将知识追踪性能与其他知名数据集进行了比较。结果表明,BKT 模型在我们的数据集上表现更好,RMSE 为 0.314,MAE 为 0.197。此外,BKT 模型还可用于评估学生成绩,并确定每个知识点的掌握程度。因此,其结果可用于未来的个性化学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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