A Metaverse-based Student’s Spatiotemporal Digital Profile for Representing Learning Situation

Fang Liu, Yifan Zhang, Liang Zhao, Qin Dai, Xiaonan Liu, Xiangbin Shi
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引用次数: 2

Abstract

In recent years, the metaverse becomes a promising method to provide an intelligent teaching platform for the teaching-learning process. Existing teaching evaluation methods rely on the exam results and the educator’s teaching experience, which is hard to reflect the detailed teaching outcomes and each student’s learning situation. Therefore, this paper proposes a four-layer metaverse architecture to build students’ virtual entities of learning situations, containing a data acquisition layer, a technology layer, a model building layer, and an application layer. Furthermore, the virtual entities are constructed on the event logs recorded in the Learning Management System (LMS) and visualized as spatiotemporal digital profiles for students. In the spatial dimension, the profile can reflect a student’s learning situation in different aspects, including the completion of an assignment, the mastery of knowledge, the practical ability, etc. In the temporal dimension, it can reflect a student’s learning situation at different learning stages. Students’ practical abilities are obtained by the Machine Learning method GBDT (Gradient Boosting Decision Tree), and other dimensions of the profile are generated by the Knowledge Graph technology. With these profiles, educators can do teaching intervention, teaching evaluation, and personalized cultivation, providing a new path for intelligent teaching. We take the CG (Course Grading) platform and Data Structure and Algorithm course as examples to validate our model strategy. The experimental results show that the spatiotemporal digital profiles can better describe students’ learning situations, providing data support for teaching evaluation.
基于元维的学生表征学习情境的时空数字轮廓
近年来,元宇宙成为一种很有前景的方法,为教与学过程提供智能教学平台。现有的教学评价方法依赖于考试成绩和教育者的教学经验,难以反映详细的教学成果和每个学生的学习情况。因此,本文提出了一个四层的元宇宙架构来构建学生的学习情境虚拟实体,包括数据采集层、技术层、模型构建层和应用层。此外,虚拟实体是在学习管理系统(LMS)中记录的事件日志上构建的,并可视化为学生的时空数字档案。在空间维度上,侧面可以反映学生在不同方面的学习情况,包括作业的完成情况、知识的掌握情况、实践能力等。在时间维度上,可以反映学生在不同学习阶段的学习情况。学生的实践能力通过机器学习方法GBDT (Gradient Boosting Decision Tree)获得,轮廓的其他维度通过知识图谱技术生成。有了这些档案,教育者可以进行教学干预、教学评价和个性化培养,为智能化教学提供了一条新的路径。我们以CG(课程评分)平台和数据结构与算法课程为例来验证我们的模型策略。实验结果表明,时空数字档案能更好地描述学生的学习情况,为教学评价提供数据支持。
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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