使用构造反应识别学生误解

Kristin Stephens-Martinez, An Ju, C. Schoen, John DeNero, A. Fox
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引用次数: 0

摘要

与多项选择题或选择题相比,构造题会导致各种各样的错误答案。然而,构造的反应信息更丰富。我们提出了一种使用每个学生构建的回答的技术,以确定他们稳定的概念误解的子集。我们的方法是为有很多学生的课程而设计的,因此人工解释每个明显的错误答案是不可行的。相反,我们只标记最常见的错误答案及其所指示的误解,然后使用统计共现模式预测与其他错误答案相关的误解。这种分层的方法利用少量的人工标记工作来建立一个自动化的过程,以识别学生的误解。我们的方法比检查所有答案要省力得多,大大优于不利用共发生统计数据的基线,对不同的课程规模证明是健壮的,并且在学生群体中有效地推广。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Student Misunderstandings using Constructed Responses
In contrast to multiple-choice or selected response questions, constructed response questions can result in a wide variety of incorrect responses. However, constructed responses are richer in information. We propose a technique for using each student's constructed responses in order to identify a subset of their stable conceptual misunderstandings. Our approach is designed for courses with so many students that it is infeasible to interpret every distinct wrong answer manually. Instead, we label only the most frequent wrong answers with the misunderstandings that they indicate, then predict the misunderstandings associated with other wrong answers using statistical co-occurrence patterns. This tiered approach leverages a small amount of human labeling effort to seed an automated procedure that identifies misunderstandings in students. Our approach involves much less effort than inspecting all answers, substantially outperforms a baseline that does not take advantage of co-occurrence statistics, proves robust to different course sizes, and generalizes effectively across student cohorts.
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