对学习过程数据中的常见误解进行建模

Ran Liu, Rony Patel, K. Koedinger
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引用次数: 26

摘要

学生的错误往往不是随机的,而是反映了深思熟虑但不正确的策略。为了使教育技术充分利用学生的表现数据来估计学生的知识,重要的是不仅要对概念建模,还要对学生的特定成功和错误模式可能表明的误解建模。驱动智能辅导系统“外部循环”的学生模型通常不代表或跟踪错误观念。在这里,我们提出了一种在知识组件模型(或q -矩阵)中表示误解的方法,学生模型使用该模型来估计潜在知识。在分数算术数据集的案例研究中,我们表明,将误解纳入知识组件模型显着提高了整体模型对数据的拟合。我们还通过比较包含不同误解相关参数的模型的预测学习曲线获得定性见解。最后,我们表明,在知识组件模型中包含误解可以产生个人学生对误解强度的估计,这与导师之外的学生错误测量显着相关。
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Modeling common misconceptions in learning process data
Student mistakes are often not random but, rather, reflect thoughtful yet incorrect strategies. In order for educational technologies to make full use of students' performance data to estimate the knowledge of a student, it is important to model not only the conceptions but also the misconceptions that a student's particular pattern of successes and errors may indicate. The student models that drive the "outer loop" of Intelligent Tutoring Systems typically do not represent or track misconceptions. Here, we present a method of representing misconceptions in the Knowledge Component models, or Q-Matrices, that are used by student models to estimate latent knowledge. We show, in a case study on a fraction arithmetic dataset, that incorporating a misconception into the Knowledge Component model dramatically improves the overall model's fit to data. We also derive qualitative insights from comparing predicted learning curves across models that incorporate varying misconception-related parameters. Finally, we show that the inclusion of a misconception in the Knowledge Component model can yield individual student estimates of misconception strength that are significantly correlated with out-of-tutor measures of student errors.
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