严格建构主义
叙述的
代理(哲学)
建构主义
课程
读写能力
教育学
数字素养
计算机科学
概念框架
数学教育
具身认知
叙述性探究
社会学
批判性识字
定性研究
教育技术
工程伦理学
教学设计
教学方法
元认知
教师教育
主动学习(机器学习)
扎根理论
心理学
社会建构主义
教育研究
知识管理
学习理论
语篇分析
课程开发
信息素养
基于设计的研究
有意义的学习
标识
DOI:10.15388/infedu.2025.26
摘要
This narrative literature review examines constructionist approaches to AI literacy education for school-aged children, synthesizing research from 2009–2024 to develop a pedagogical framework grounded in hands-on learning principles. Through systematic analysis of studies retrieved from Web of Science, Scopus, IEEE Xplore, and ACM Digital Library, five interconnected themes emerged: active hands-on learning, project-based inquiry, ethics integration, age-appropriate scaffolding, and teacher support with accessible tools. The findings demonstrate that constructionist methodologies – emphasizing learning through creating AI-powered artifacts – effectively foster conceptual understanding, ethical reasoning, and critical agency among young learners. The review reveals that AI literacy develops most effectively when students actively manipulate and experiment with AI systems rather than passively consuming theoretical content. Age-differentiated strategies are essential, with primary students benefiting from embodied analogies and narrative contexts, while secondary students engage with collaborative design projects addressing real-world challenges. Teacher preparation and accessible tools emerge as critical implementation factors. This framework provides educators and policymakers with evidence-based guidance for integrating meaningful AI literacy experiences into K-12 curricula through constructionist pedagogies.
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