形成性评价
转化式学习
过程(计算)
启发式
科学教育
计算机科学
人类智力
生成语法
可用性
教育技术
领域(数学)
学习科学
人工智能
知识管理
工具箱
教学设计
主题专家
纪律
管理科学
工程设计过程
专家系统
课程开发
迭代和增量开发
知识整合
以用户为中心的设计
下一代科学标准
学习理论
课程
工程类
前景化
人机交互
生成模型
教育研究
作者
Tingting Li,Joseph Krajcik,Rand J. Spiro
标识
DOI:10.1007/s10956-025-10275-4
摘要
This study investigates how human and artificial intelligence (AI), specifically GPT-4, can collaborate to design knowledge-in-use science assessments aligned with three-dimensional (3D) learning goals. Using a design-based research approach grounded in Evidence-Centered Design and the NGSA framework, we guided GPT-4 through structured development processes supported by interdisciplinary expert feedback. Focusing on two NGSS performance expectations (3-PS2-1 and 3-LS4-3), we examined how human scaffolding—prompt design, expert evaluation, and iterative refinement—shaped the quality, equity, and classroom usability of AI-generated tasks. Findings indicate that GPT-4, when supported by principled human guidance, can co-produce standards-aligned and instructionally relevant assessments. We identified three key supports for productive human–AI collaboration: unpacked disciplinary goals, structured prompts aligned with learning performances, and expert-informed exemplars. Expert feedback improved linguistic accessibility, cultural relevance, and 3D integration across iterations. Notably, GPT-4 began anticipating feedback categories over time, suggesting emerging responsiveness to design expectations. This work offers practical insights into using generative AI as a collaborative design partner—rather than an automated tool—to support the development of equity-focused, NGSS-aligned classroom assessments. We propose a transferable refinement framework that can guide teachers, designers, and developers in producing high-quality tasks, particularly in under-resourced settings. By making the co-design process visible, this study contributes to the growing field of human–AI collaboration in education and offers actionable design heuristics for integrating AI into formative assessment practice.
科研通智能强力驱动
Strongly Powered by AbleSci AI