拆箱
弱势群体
结构方程建模
成绩单
稳健性(进化)
官僚主义
测量数据收集
工作量
主题分析
调解
文档
中国
编码(社会科学)
政治学
合法性
数学教育
标杆管理
学业成绩
中心性
叙述的
社会学
定性性质
计算能力
验证性因素分析
义务教育
公共关系
质量(理念)
数据质量
草根
教育评估
认知重构
心理学
相互依存
精英政治
名义本金
教育学
多级模型
定性研究
因果模型
成果教育
作者
Suleman Bawa,Frederick Nii Ofei Bruce,Emmanuel Lartey Ayiku,Issahaku Bawa
出处
期刊:Asian Education and Development Studies
[Emerald Publishing Limited]
日期:2026-04-01
卷期号:: 1-23
标识
DOI:10.1108/aeds-01-2026-0006
摘要
Purpose This study investigates how artificial intelligence (AI)-driven education reforms in China shape instructional quality, teacher workload and student learning experiences across urban, rural and migrant-serving schools, assessing whether these reforms mitigate or exacerbate existing inequalities. Design/methodology/approach A mixed-methods design integrates multilevel modeling, structural equation modeling and a causal difference-in-differences approach. Administrative census data were combined with platform-generated logs and weighted survey responses from over 18,000 teachers and 12,500 students. The staggered provincial rollout of AI platforms enabled quasi-experimental identification, supported by event-study pre-trend tests and robustness checks using modern staggered-adoption estimators. Latent constructs were validated through reliability and measurement invariance tests, and qualitative insights were incorporated through a systematic coding protocol. Findings AI integration improves student engagement and learning outcomes on average, yet these gains are unevenly distributed. Urban, well-resourced schools show significant improvements, whereas rural and migrant-serving schools experience limited benefits. Causal estimates reveal that school-level resources moderate the strength of AI's impact. Mediation analyses show that improvements in instructional quality and engagement primarily drive gains in advantaged contexts. Infrastructure gaps and insufficient teacher preparation restrict these pathways in disadvantaged schools, thereby widening pre-existing disparities. Originality/value This study offers a rare classroom-level, mechanism-focused assessment of China's AI reforms, linking quasi-experimental evidence with latent-variable modeling to illuminate both the size and structure of unequal AI effects. It challenges deterministic narratives of technological progress and underscores the centrality of institutional capacity in shaping equitable educational innovation.
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