结构化学习环境中自定进度学习的设计

Kurt Englmeier
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引用次数: 0

摘要

本文讨论了数字课程中的自定进度学习,重点是教学设计范例,以满足个体学习者的需求。通过内容结构化和利用大型语言模型(llm),数字学习平台可以为学习者提供对主题的清晰理解,同时实现灵活的学习。然而,在有效地测量和管理学习者的学习努力和认知负荷方面出现了挑战。设定最小阅读时间、建议学习休息时间、分配个人学习复杂性指数(LCIs)等策略有助于优化学习体验。本文还探讨了元认知在自我调节学习中的作用,强调学习者在管理学习过程中的责任。尽管数字学习环境取得了进步,但在支持不同背景和能力的学习者方面仍然存在挑战,特别是在基于聊天的学习环境中。来自学习平台原型实现的示例演示了如何通过数据驱动的见解和量身定制的建议来增强个性化学习体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Design of Self-Paced Learning for Structured Learning Environments
This paper addresses self-paced learning within digital courses, focusing on instructional design paradigms to cater to the needs of individual learners. Through content structuring and leveraging large language models (LLMs), digital learning platforms can provide learners with a clear understanding of the subject matter while enabling flexible learning. However, challenges arise in measuring and managing learners’ study efforts and cognitive loads effectively. Strategies such as setting minimum reading times, recommending study breaks, and assigning individual Learning Complexity Indices (LCIs) help optimize the learning experience. The paper also explores the role of metacognition in self-regulated learning, emphasizing learners’ responsibility in managing their learning processes. Despite advancements in digital learning environments, challenges persist in supporting learners with diverse backgrounds and abilities, especially in chat-based learning settings. Examples from the prototypical implementation of a learning platform demonstrate how personalized learning experiences can be enhanced through data-driven insights and tailored recommendations.
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