控制知识追踪:从控制论角度模拟学生的学习动态

Q1 Social Sciences
Cheng Ning Loong, Chih-Chen Chang
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引用次数: 0

摘要

学生学习系统是一个利用现有学习资源指导学生获取知识过程的系统,其目的是产生一定的学习成果,这些成果可以根据评估中的问题得分进行评价。这种学习系统类似于控制系统,它通过控制器调节工厂的生产过程,以产生可从传感器测量结果中推断出的预期响应。受这一类比的启发,本研究提出从控制论的角度对学生的知识获取过程进行监控建模,即控制知识跟踪(CtrKT)。所提出的 CtrKT 包括一个动态方程和一个观察方程,前者描述了学生的知识状态在学习资源影响下的时间变化,后者则将学生的知识状态映射到问题得分。有了这个公式,CtrKT 就能跟踪学生的知识状态,预测他们的评价成绩,并制定教学计划。我们利用心理学文献中的实验数据和从土木工程本科课程中收集的两个自然数据集,分析并验证了 CtrKT 在假设知识获取过程中的洞察力和准确性。结果验证了使用 CtrKT 估算心理学实验参与者和自然数据集学生的总体评估表现的可行性。最后,本研究探讨了 CtrKT 在教学安排和优化中的应用,讨论了其建模问题,并将其与其他知识追踪方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Control knowledge tracing: Modeling students' learning dynamics from a control-theory perspective

A student's learning system is a system that guides the student's knowledge acquisition process using available learning resources to produce certain learning outcomes that can be evaluated based on the scores of questions in an assessment. Such a learning system is analogous to a control system, which regulates the process of a plant through a controller in order to generate a desired response that can be inferred from sensor measurements. Inspired by this analogy, this study proposes to model the monitoring of students' knowledge acquisition process from a control-theory viewpoint, which is referred to as control knowledge tracing (CtrKT). The proposed CtrKT comprises a dynamic equation that characterizes the temporal variation of students' knowledge states in response to the effects of learning resources and an observation equation that maps their knowledge states to question scores. With this formulation, CtrKT enables tracking students' knowledge states, predicting their assessment performance, and teaching planning. The insights and accuracy of CtrKT in postulating the knowledge acquisition process are analyzed and validated using experimental data from psychology literature and two naturalistic datasets collected from a civil engineering undergraduate course. Results verify the feasibility of using CtrKT to estimate the overall assessment performance of the participants in the psychology experiments and the students in the naturalistic datasets. Lastly, this study explores the use of CtrKT for teaching scheduling and optimization, discusses its modeling issues, and compares it with other knowledge-tracing approaches.

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来源期刊
CiteScore
16.80
自引率
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发文量
66
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