Unsupervised machine learning to classify language dimensions to constitute the linguistic complexity of mathematical word problems

IF 0.5 Q4 EDUCATION & EDUCATIONAL RESEARCH
David Bednorz, M. Kleine
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引用次数: 1

Abstract

The study examines language dimensions of mathematical word problems and the classification of mathematical word problems according to these dimensions with unsupervised machine learning (ML) techniques. Previous research suggests that the language dimensions are important for mathematical word problems because it has an influence on the linguistic complexity of word problems. Depending on the linguistic complexity students can have language obstacles to solve mathematical word problems. A lot of research in mathematics education research focus on the analysis on the linguistic complexity based on theoretical build language dimensions. To date, however it has been unclear what empirical relationship between the linguistic features exist for mathematical word problems. To address this issue, we used unsupervised ML techniques to reveal latent linguistic structures of 17 linguistic features for 342 mathematical word problems and classify them. The models showed that three- and five-dimensional linguistic structures have the highest explanatory power. Additionally, the authors consider a four-dimensional solution. Mathematical word problem from the three-dimensional solution can be classify in two groups, three- and five-dimensional solutions in three groups. The findings revealed latent linguistic structures and groups that could have an implication of the linguistic complexity of mathematical word problems and differ from language dimensions, which are considered theoretically. Therefore, the results indicate for new design principles for interventions and materials for language education in mathematics learning and teaching.
无监督机器学习对语言维度进行分类,以构成语言复杂性的数学单词问题
该研究使用无监督机器学习(ML)技术检查数学单词问题的语言维度,并根据这些维度对数学单词问题进行分类。先前的研究表明,语言维度对数学字题很重要,因为它会影响字题的语言复杂性。根据语言的复杂程度,学生在解决数学单词问题时可能会遇到语言障碍。在数学教育研究中,很多研究都集中在基于理论构建语言维度的语言复杂性分析上。然而,迄今为止,数学字题的语言特征之间存在什么样的经验关系尚不清楚。为了解决这个问题,我们使用无监督机器学习技术揭示了342个数学单词问题的17个语言特征的潜在语言结构,并对它们进行了分类。模型表明,三维和五维语言结构具有最高的解释力。此外,作者还考虑了一个四维解决方案。数学应用题从三维解可分为两组,三维解和五维解分为三组。这些发现揭示了潜在的语言结构和群体,这些结构和群体可能暗示了数学单词问题的语言复杂性,并且不同于理论所考虑的语言维度。因此,研究结果为数学学与教的语言教育干预措施和材料的设计提供了新的思路。
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CiteScore
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