在线学习环境下评估物理学习的混合方法设计

Zhidong Zhang
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引用次数: 5

摘要

本研究探讨物理学生动作学习的贝叶斯评估模型。利用模拟数据对贝叶斯评价模型进行检验,采用混合方法设计。探索性序列模型是基于一个动作学习学生模型开发的,该模型是一个结构化的数据收集模板。学生模型与贝叶斯网络模型的结合为物理学生动态学习过程的评估提供了一种评估工具。该研究报告称,物理学生的动作学习有三种不同的模式:低表现、中等表现和高表现。在每个模式中,学生可能会有不同的十二个底部组件的表现组合。这些工具如图4所示,用于收集学生的性能数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Mixed Methods Design for Assessing Physics Learning in the Online Learning Environment
This study explored a Bayesian assessment model for physics students in motion learning. The simulated data was applied in examination of the Bayesian assessment model, The study used a mixed-methods design. The exploratory sequential model was developed based on a motion learning student model, which was a structured data collection template. The combination of the student model and the Bayesian network model provided an assessment tool for assessing physics students’ learning in a dynamic process. The study reported that there were three different patterns for a physics student motion learning: lower performance, middle performance, and higher performance. In each pattern, the students may have different performance combinations of the twelve bottom components. These are shown in Figure 4 and used to collect students’ performance data.
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