A classification tool to foster self-regulated learning with generative artificial intelligence by applying self-determination theory: a case of ChatGPT

Thomas K. F. Chiu
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Abstract

Generative AI such as ChatGPT provides an instant and individualized learning environment, and may have the potential to motivate student self-regulated learning (SRL), more effectively than other non-AI technologies. However, the impact of ChatGPT on student motivation, SRL, and needs satisfaction is unclear. Motivation and the SRL process can be explained using self-determination theory (SDT) and the three phases of forethought, performance, and self-reflection, respectively. Accordingly, a Delphi design was employed in this study to determine how ChatGPT-based learning activities satisfy students’ each SDT need, and foster each SRL phase from a teacher perspective. We involved 36 SDT school teachers with extensive expertise in technology enhanced learning to develop a classification tool for learning activities that affect student needs satisfaction and SRL phases using ChatGPT. We collaborated with the teachers in three rounds to investigate and identify the activities, and we revised labels, descriptions, and explanations. The major finding is that a classification tool for 20 learning activities using ChatGPT was developed. The tool suggests how ChatGPT better satisfy SDT-based needs, and fosters the three SRL phrases. This classification tool can assist researchers in replicating, implementing, and integrating successful ChatGPT in education research and development projects. The tool can inspire teachers to modify the activities using generative AI for their own teaching, and inform policymakers on how to develop guidelines for AI in education.

应用自我决定理论,利用生成式人工智能促进自律学习的分类工具:以 ChatGPT 为例
与其他非人工智能技术相比,像 ChatGPT 这样的生成式人工智能技术可以提供即时和个性化的学习环境,并有可能更有效地激发学生的自我调节学习(SRL)。然而,ChatGPT 对学生学习动机、自律学习和需求满足的影响尚不明确。学习动机和自律学习过程可以分别用自我决定理论(SDT)和前瞻、表现和自省三个阶段来解释。因此,本研究采用了德尔菲设计,以确定基于 ChatGPT 的学习活动如何满足学生的各种 SDT 需求,并从教师的角度促进各个 SRL 阶段。我们邀请了 36 位在技术强化学习方面具有丰富专业知识的 SDT 学校教师参与,利用 ChatGPT 开发了影响学生需求满足和 SRL 阶段的学习活动分类工具。我们与教师合作进行了三轮调查和识别活动,并修订了标签、描述和解释。主要发现是,我们开发了一个使用 ChatGPT 对 20 个学习活动进行分类的工具。该工具提出了 ChatGPT 如何更好地满足基于 SDT 的需求,以及如何促进三个 SRL 短语。这一分类工具可以帮助研究人员在教育研发项目中复制、实施和整合成功的 ChatGPT。该工具可以激励教师在自己的教学中使用生成式人工智能修改活动,并为政策制定者提供如何制定人工智能教育指导方针的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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