机会计数模型:一个灵活的方法来模拟学生的表现

Yan Wang, Korinn S. Ostrow, Seth A. Adjei, N. Heffernan
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引用次数: 5

摘要

在智能辅导系统中,在预测下一个问题的正确性(NPC)时,可以利用详细的表现数据来实现更强大的学生模型。然而,当考虑到机会数(OC)或学生在一项技能中遇到的问题的复合顺序时,这些细节的可用性和重要性可能会有很大的不同。受这种直觉的启发,本研究引入了机会计数模型(OCM),这是一种独特的学生建模方法,其中为不同的OCs构建单独的模型,而不是创建包含所有OCs的一揽子模型。我们使用随机森林(RF)来表示特征的重要性,通过考虑导师日志文件中的详细性能数据来构建OCM。结果表明,在对学生成绩进行建模时,OC是重要的,并且不同OC的详细表现数据各不相同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Opportunity Count Model: A Flexible Approach to Modeling Student Performance
Detailed performance data can be exploited to achieve stronger student models when predicting next problem correctness (NPC) within intelligent tutoring systems. However, the availability and importance of these details may differ significantly when considering opportunity count (OC), or the compounded sequence of problems a student experiences within a skill. Inspired by this intuition, the present study introduces the Opportunity Count Model (OCM), a unique approach to student modeling in which separate models are built for differing OCs rather than creating a blanket model that encompasses all OCs. We use Random Forest (RF), which can be used to indicate feature importance, to construct the OCM by considering detailed performance data within tutor log files. Results suggest that OC is significant when modeling student performance and that detailed performance data varies across OCs.
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