用布鲁姆分类法自动分析学生作文中的修辞范畴

Sehrish Iqbal, Mladen Raković, Guanliang Chen, Tongguang Li, Rafael Ferreira Mello, Yizhou Fan, G. Fiorentino, Naif Radi Aljohani, D. Gašević
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引用次数: 1

摘要

论文写作已成为分配给不同教育水平的各种课程的学生最常见的学习任务之一,因为对未来专业人员有效地向观众传达信息并开发书面产品(即论文)的需求不断增长。评估一篇书面文章需要阅卷人手动检查修辞类别的存在,这是一项耗时的任务。机器学习(ML)方法有可能缓解这一挑战。因此,文献中多次尝试使用修辞结构理论(RST)来自动识别修辞类别。然而,RST并没有提供关于学生认知水平的信息,这促使了布鲁姆分类法的使用。因此,在本研究中,我们建议:i)通过比较传统ML分类器与预训练语言模型BERT,研究基于Bloom分类法的修辞类别分类自动化程度;ii)探索修辞类别与写作表现之间的关联。我们的研究结果表明,BERT模型的准确率比传统的基于ml的分类器高出18%,表明它可以用于未来的分析工具。此外,我们还发现,在低、中、高成就群体中,修辞类别的关联存在统计学差异,这意味着修辞类别可以预测写作表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Automated Analysis of Rhetorical Categories in Students Essay Writings using Bloom’s Taxonomy
Essay writing has become one of the most common learning tasks assigned to students enrolled in various courses at different educational levels, owing to the growing demand for future professionals to effectively communicate information to an audience and develop a written product (i.e. essay). Evaluating a written product requires scorers who manually examine the existence of rhetorical categories, which is a time-consuming task. Machine Learning (ML) approaches have the potential to alleviate this challenge. As a result, several attempts have been made in the literature to automate the identification of rhetorical categories using Rhetorical Structure Theory (RST). However, RST do not provide information regarding students’ cognitive level, which motivates the use of Bloom’s Taxonomy. Therefore, in this research we propose to: i) investigate the extent to which classification of rhetorical categories can be automated based on Bloom’s taxonomy by comparing the traditional ML classifiers with the pre-trained language model BERT, ii) explore the associations between rhetorical categories and writing performance. Our results showed that BERT model outperformed the traditional ML-based classifiers with 18% better accuracy, indicating it can be used in future analytics tool. Moreover, we found a statistical difference between the associations of rhetorical categories in low-achiever, medium-achiever and high-achiever groups which implies that rhetorical categories can be predictive of writing performance.
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