运用自然语言处理方法分析小学教师在网络实践社区中的数学教学内容知识

IF 2.4 Q1 EDUCATION & EDUCATIONAL RESEARCH
Jiseung Yoo, Min Kyeong Kim
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引用次数: 0

摘要

本研究的重点是在线教师实践社区(CoP)中教师的互动如何影响教师的数学教学内容知识(PCK)。该研究利用了韩国自学在线教师CoP“Indischool”收集的26857条帖子的数据。然后使用自然语言处理技术对这些数据进行分析;具体来说,使用word2vec、BERT和机器学习分类器进行文本分类。结果表明,帖子文本可以预测在线CoP中教师互动的水平。BERT嵌入和分类器表现最好,最终F1得分为0.756。此外,利用BERT嵌入的主题建模,通过高互动和低互动的帖子揭示教师的具体PCK。结果表明,高互动、点赞和回复多的帖子更能体现出对数学教学的深入思考和对PCK的精细化。这项研究有两个重要贡献。首先,它应用了一个数据科学框架,允许分析来自实际在线教师社区的真实数据。其次,它揭示了在线教师CoP中知识管理的复杂性,这一领域迄今为止受到的实证关注有限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using natural language processing to analyze elementary teachers’ mathematical pedagogical content knowledge in online community of practice
This study focuses on how teachers’ pedagogical content knowledge (PCK) of mathematics may differ depending on teacher interactions in an online teacher community of practice (CoP). The study utilizes data from 26,857 posts collected from the South Korean self-generated online teacher CoP, ‘Indischool’. This data was then analyzed using natural language processing techniques; specifically, text classification with word2vec, BERT, and machine learning classifiers was used. The results indicate that the texts of posts can predict the level of teacher interactions in the online CoP. BERT embedding and classifier exhibited the best performance, ultimately achieving an F1 score of .756. Moreover, topic modeling utilizing BERT embedding is used to uncover the specific PCK of teachers through high- and low-interaction posts. The results reveal that high-interaction posts with numerous likes and replies demonstrate more in-depth reflections on teaching mathematics and refined PCK. This study makes two significant contributions. First, it applies a data science framework that allows for the analysis of real data from an actual online teacher community. Secondly, it sheds light on the intricacies of knowledge management in an online teacher CoP, an area that has to this point received limited empirical attention.
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来源期刊
Contemporary Educational Technology
Contemporary Educational Technology Social Sciences-Education
CiteScore
6.20
自引率
0.00%
发文量
55
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