Predicting math performance using natural language processing tools

S. Crossley, Ran Liu, D. McNamara
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引用次数: 22

Abstract

A number of studies have demonstrated links between linguistic knowledge and performance in math. Studies examining these links in first language speakers of English have traditionally relied on correlational analyses between linguistic knowledge tests and standardized math tests. For second language (L2) speakers, the majority of studies have compared math performance between proficient and non-proficient speakers of English. In this study, we take a novel approach and examine the linguistic features of student language while they are engaged in collaborative problem solving within an on-line math tutoring system. We transcribe the students' speech and use natural language processing tools to extract linguistic information related to text cohesion, lexical sophistication, and sentiment. Our criterion variables are individuals' pretest and posttest math performance scores. In addition to examining relations between linguistic features of student language production and math scores, we also control for a number of non-linguistic factors including gender, age, grade, school, and content focus (procedural versus conceptual). Linear mixed effect modeling indicates that non-linguistic factors are not predictive of math scores. However, linguistic features related to cohesion affect and lexical proficiency explained approximately 30% of the variance (R2 = .303) in the math scores.
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使用自然语言处理工具预测数学表现
许多研究已经证明了语言知识和数学成绩之间的联系。在以英语为第一语言的人身上检验这些联系的研究,传统上依赖于语言知识测试和标准化数学测试之间的相关性分析。对于说第二语言(L2)的人来说,大多数研究比较了精通和不精通英语的人的数学表现。在这项研究中,我们采用了一种新颖的方法来研究学生在在线数学辅导系统中参与协作解决问题时的语言特征。我们将学生的语音转录下来,并使用自然语言处理工具提取与文本衔接、词汇复杂性和情感相关的语言信息。我们的标准变量是个体测试前和测试后的数学表现分数。除了研究学生语言产生的语言特征与数学成绩之间的关系外,我们还控制了一些非语言因素,包括性别、年龄、年级、学校和内容重点(程序性与概念性)。线性混合效应模型表明,非语言因素对数学成绩没有预测作用。然而,与衔接影响和词汇熟练程度相关的语言特征解释了数学分数中约30%的差异(R2 = 0.303)。
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