绘制K-12教育中的数据素养发展路径 / Mapping data literacy trajectories in K-12 education
1️⃣ 一句话总结
这篇论文通过回顾大量研究,提出了一个分析K-12学生如何学习数据知识的框架,并描绘了四种不同的学习路径,帮助教育者根据具体情境设计更有效的数据素养课程。
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.
绘制K-12教育中的数据素养发展路径 / Mapping data literacy trajectories in K-12 education
这篇论文通过回顾大量研究,提出了一个分析K-12学生如何学习数据知识的框架,并描绘了四种不同的学习路径,帮助教育者根据具体情境设计更有效的数据素养课程。
源自 arXiv: 2603.28317