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arXiv 提交日期: 2026-02-02
📄 Abstract - Draw2Learn: A Human-AI Collaborative Tool for Drawing-Based Science Learning

Drawing supports learning by externalizing mental models, but providing timely feedback at scale remains challenging. We present Draw2Learn, a system that explores how AI can act as a supportive teammate during drawing-based learning. The design translates learning principles into concrete interaction patterns: AI generates structured drawing quests, provides optional visual scaffolds, monitors progress, and delivers multidimensional feedback. We collected formative user feedback during system development and open-ended comments. Feedback showed positive ratings for usability, usefulness, and user experience, with themes highlighting AI scaffolding value and learner autonomy. This work contributes a design framework for teammate-oriented AI in generative learning and identifies key considerations for future research.

顶级标签: multi-modal aigc education
详细标签: human-ai collaboration drawing-based learning scaffolding generative learning interactive system 或 搜索:

Draw2Learn:一个用于基于绘画的科学学习的人机协作工具 / Draw2Learn: A Human-AI Collaborative Tool for Drawing-Based Science Learning


1️⃣ 一句话总结

这篇论文介绍了一个名为Draw2Learn的人机协作工具,它利用人工智能作为学习伙伴,通过生成绘画任务、提供视觉辅助和即时反馈,来帮助学生在科学学习中通过绘画更好地理解和构建知识。

源自 arXiv: 2602.01494