Zhang Kai
Informatization Office, Fudan University, Shanghai 200433, China.
Behav Sci (Basel). 2025 Apr 30;15(5):600. doi: 10.3390/bs15050600.
This study investigates the effectiveness of artificial intelligence-generated content (AIGC) systems on undergraduate writing development through a randomized controlled trial with 259 Chinese students. Despite promising applications of AI in educational settings, empirical evidence regarding its comparative effectiveness in writing instruction remains limited. Using a four-week intervention comparing Qwen-powered AI feedback to traditional instructor feedback, we employed difference-in-differences (DiD) analysis and structural equation modeling to examine how technology acceptance factors influence writing outcomes. Results demonstrated significant improvements in the AIGC intervention group compared to controls (β = 0.149, < 0.001), with particularly strong effects on organization (β = 0.311, < 0.001) and content development (β = 0.191, < 0.001). Path analysis revealed that perceived usefulness fully mediated the relationship between perceived ease of use and attitudes toward the system (β = 0.326, < 0.001), with attitudes strongly predicting behavioral engagement (β = 0.431, < 0.001). Contrary to traditional technology acceptance models, perceived ease of use showed no direct effect on attitudes, suggesting that students prioritize functional benefits over interface simplicity in educational technology contexts. These findings contribute to an expanded technology acceptance model for educational settings while providing evidence-based guidelines for implementing AI writing assistants in higher education.
本研究通过对259名中国学生进行随机对照试验,调查了人工智能生成内容(AIGC)系统对本科生写作发展的有效性。尽管人工智能在教育环境中有很有前景的应用,但关于其在写作教学中相对有效性的实证证据仍然有限。我们进行了为期四周的干预,将基于文心一言的人工智能反馈与传统教师反馈进行比较,采用双重差分(DiD)分析和结构方程模型来研究技术接受因素如何影响写作成果。结果表明,与对照组相比,AIGC干预组有显著改善(β = 0.149,< 0.001),对组织(β = 0.311,< 0.001)和内容发展(β = 0.191,< 0.001)的影响尤为显著。路径分析表明,感知有用性完全中介了感知易用性与对系统态度之间的关系(β = 0.326,< 0.001),态度强烈预测行为参与度(β = 0.431,< 0.001)。与传统技术接受模型相反,感知易用性对态度没有直接影响,这表明在教育技术环境中,学生更看重功能效益而非界面简单性。这些发现有助于扩展教育环境中的技术接受模型,同时为高等教育中实施人工智能写作助手提供基于证据的指导方针。