Suppr超能文献

新冠疫情时期学业韧性的机器学习模型:来自 PISA 2022 数学研究中 79 个国家/经济体的证据。

A machine-learning model of academic resilience in the times of the COVID-19 pandemic: Evidence drawn from 79 countries/economies in the PISA 2022 mathematics study.

机构信息

Educational Testing and Assessment Research Centre, Faculty of Education, University of Macau, Macao, China.

出版信息

Br J Educ Psychol. 2024 Dec;94(4):1224-1244. doi: 10.1111/bjep.12715. Epub 2024 Sep 22.

Abstract

BACKGROUND

Given that students from socio-economically disadvantaged family backgrounds are more likely to suffer from low academic performance, there is an interest in identifying features of academic resilience, which may mitigate the relationship between disadvantaged socio-economic status and academic performance.

AIMS

This study sought to combine machine learning and explainable artificial intelligence (XAI) technique to identify key features of academic resilience in mathematics learning during COVID-19.

MATERIALS AND METHODS

Based on PISA 2022 data in 79 countries/economies, the random forest model coupled with Shapley additive explanations (SHAP) value technique not only uncovered the key features of academic resilience but also examined the contributions of each key feature.

RESULTS

Findings indicated that 35 features were identified in the classification of academically resilient and non-academically resilient students, which largely validated the previous academic resilient framework. Notably, gender differences were shown in the distribution of some key features. Research findings also indicated that resilient students tended to have a stable emotional state, high levels of self-efficacy, low levels of truancy and positive future aspirations.

DISCUSSION

This study has established a research paradigm essentially methodological in nature to bridge the gap between psychological theories and big data in the field of educational psychology.

CONCLUSION

To sum up, our study shed light on the issues of education equity and quality from a global perspective in the times of the COVID-19 pandemic.

摘要

背景

鉴于来自社会经济弱势背景的学生更有可能学业成绩不佳,因此人们有兴趣确定学业韧性的特征,这些特征可能会减轻弱势社会经济地位与学业成绩之间的关系。

目的

本研究旨在结合机器学习和可解释人工智能 (XAI) 技术,确定 COVID-19 期间数学学习中学业韧性的关键特征。

材料和方法

基于 79 个国家/地区的 PISA 2022 数据,随机森林模型与 Shapley 加法解释 (SHAP) 值技术相结合,不仅揭示了学业韧性的关键特征,还检验了每个关键特征的贡献。

结果

研究结果表明,在学业韧性和非学业韧性学生的分类中确定了 35 个特征,这些特征在很大程度上验证了先前的学业韧性框架。值得注意的是,一些关键特征的分布存在性别差异。研究结果还表明,有韧性的学生往往情绪稳定、自我效能感高、逃学率低且对未来有积极的期望。

讨论

本研究建立了一种研究范式,从本质上讲是一种方法学范式,旨在弥合教育心理学领域心理理论与大数据之间的差距。

结论

总之,我们的研究从全球视角探讨了 COVID-19 时代的教育公平和质量问题。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验