团队研究论文在国际顶尖学术期刊《The Internet and Higher Education》在线发表

九月 25, 2025

教育学院微信公众号:https://mp.weixin.qq.com/s/QH87tAywKAGFgSHHbteLBw

Angxuan Chen, Jingjing Lian, Xinran Kuang, Jiyou Jia,
Can theory-driven learning analytics dashboard enhance human-AI collaboration in writing learning? Insights from an empirical experiment,
The Internet and Higher Education, Volume 68, 2026, 101054,ISSN 1096-7516,
https://doi.org/10.1016/j.iheduc.2025.101054.
https://www.sciencedirect.com/science/article/pii/S1096751625000636
Abstract: The integration of Generative AI (GenAI) into education has raised concerns about over-reliance and superficial learning, particularly in writing tasks in higher education. This study explores whether a theory-driven learning analytics dashboard (LAD) can enhance human-AI collaboration in the academic writing task by improving writing knowledge gains, fostering self-regulated learning (SRL) skills and shaping different human-AI dialogue characteristics. Grounded in Zimmerman's SRL framework, the LAD provided real-time feedback on learners' goal-setting, writing processes and reflection, while monitoring the quality of learner-AI interactions. A quasi-experiment was conducted involving 52 postgraduate students in a human-AI collaborative writing task. The students were divided into an experimental group (EG) that used the LAD and a control group (CG) that did not. Pre- and post- knowledge tests, questionnaires measuring SRL and cognitive load, and students' dialogue data with GenAI were collected and analyzed. Results showed that the EG achieved significantly higher writing knowledge gains and improved SRL skills, particularly in self-efficacy and cognitive strategies. However, the EG also reported increased test anxiety and cognitive load, possibly due to heightened metacognitive awareness. Epistemic Network Analysis revealed that the EG engaged in more reflective, evaluative interactions with GenAI, while the CG focused on more transactional and information-seeking exchanges. These findings contribute to the growing body of literature on the educational use of GenAI and highlight the importance of designing interventions that complement GenAI tools, ensuring that technology enhances rather than undermines the learning process.
Keywords: Generative AI; Learning analytics dashboard; Human-AI collaborative writing; Self-regulated learning; Cognitive load

https://authors.elsevier.com/a/1lqKC3vNrZ0zQy