自动检测四年级学生不连贯的书面数学答案

Felipe Urrutia, R. Araya
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引用次数: 2

摘要

争论和交流是数学课程的基本技能。以书面形式提出论点有助于严谨的推理。它允许同行审查论点,并收到关于它们的反馈。尽管它在计算过程中需要额外的认知努力,但它可以增强长期记忆并促进更深层次的理解。然而,在小学课堂上培养这些能力是一个巨大的挑战。它至少需要两个条件:所有学生都写,所有学生都能得到即时反馈。一个解决方案是使用在线平台。然而,这对老师的要求很高。老师必须实时复习30个答案。为了便于修改,有必要自动检测不连贯的响应。因此,老师可以立即设法纠正他们。在这项工作中,我们分析了974名四年级学生在conectaiideas在线平台上对14,457个开放式问题的回答。总共有13%的答案是不连贯的。使用自然语言处理和机器学习算法,我们构建了一个自动分类器。然后,我们对不同开放式问题的一组独立的书面回答测试了分类器。我们发现分类器在不连贯检测方面达到了f1得分= 79.15%,这比使用不同启发式的基线要好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatically Detecting Incoherent Written Math Answers of Fourth-Graders
Arguing and communicating are basic skills in the mathematics curriculum. Making arguments in written form facilitates rigorous reasoning. It allows peers to review arguments, and to receive feedback about them. Even though it requires additional cognitive effort in the calculation process, it enhances long-term retention and facilitates deeper understanding. However, developing these competencies in elementary school classrooms is a great challenge. It requires at least two conditions: all students write and all receive immediate feedback. One solution is to use online platforms. However, this is very demanding for the teacher. The teacher must review 30 answers in real time. To facilitate the revision, it is necessary to automatize the detection of incoherent responses. Thus, the teacher can immediately seek to correct them. In this work, we analyzed 14,457 responses to open-ended questions written by 974 fourth graders on the ConectaIdeas online platform. A total of 13% of the answers were incoherent. Using natural language processing and machine learning algorithms, we built an automatic classifier. Then, we tested the classifier on an independent set of written responses to different open-ended questions. We found that the classifier achieved an F1-score = 79.15% for incoherent detection, which is better than baselines using different heuristics.
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