Mapping data literacy trajectories in K-12 education
AI 摘要
分析K-12教育中数据素养的学习路径,提出数据范式框架并构建学习轨迹。
主要贡献
- 提出数据范式框架,从逻辑和可解释性两个维度分类学习活动
- 构建数据素养学习轨迹,可视化学习路径
- 为研究者和教育者反思数据素养的内涵提供参考
方法论
系统性文献综述,分析84篇K-12教育领域的数据素养相关研究。
原文摘要
Data literacy skills are fundamental in computer science education. However, understanding how data-driven systems work represents a paradigm shift from traditional rule-based programming. We conducted a systematic literature review of 84 studies to understand K-12 learners' engagement with data across disciplines and contexts. We propose the data paradigms framework that categorises learning activities along two dimensions: (i) logic (knowledge-based or data-driven systems), and (ii) explainability (transparent or opaque models). We further apply the notion of learning trajectories to visualize the pathways learners follow across these distinct paradigms. We detail four distinct trajectories as a provocation for researchers and educators to reflect on how the notion of data literacy varies depending on the learning context. We suggest these trajectories could be useful to those concerned with the design of data literacy learning environments within and beyond CS education.