计算机科学
反转课堂
元认知
课程
定性研究
扎根理论
论证理论
主题分析
控制(管理)
教育学
功能(生物学)
商务沟通
数学教育
商业教育
混合学习
教育技术
知识管理
半结构化面试
专业发展
主动学习(机器学习)
心理学
教学方法
领域(数学)
适应(眼睛)
多媒体
高等教育
专业写作
专业学习社区
技术写作
定性性质
生成模型
合作学习
钥匙(锁)
技术集成
批判性思维
计算机辅助教学
科学写作
写作过程
作者
Ashraf Atta M. S. Salem
标识
DOI:10.1177/07356331261431156
摘要
This longitudinal mixed-methods study investigates the effectiveness of AI-driven flipped writing workshops in business education by enhancing analytical writing skills, professional communication abilities, and self-regulated learning (SRL) strategies over a 14-week intervention. Grounded in socio-cognitive learning theory, the research compares an experimental group ( n = 113), which utilized AI-driven feedback scaffolds in flipped workshops, with a control group ( n = 81) that received traditional lecture-based instruction. Triangulated data - comprising pre/post writing assessments, AI-generated feedback logs, and semi-structured interviews - indicated that the AI-flipped model: (a) improved analytical writing skills (M Ex = 14.53, SD Ex = .787 vs M cont = 10.59, SD cont = .907; p < .01, Cohen’s d = 4.66), with notable gains in argumentation rigor and evidence-based synthesis; (b) enhanced professional communication, particularly in audience adaptation and clarity, with qualitative feedback highlighting AI’s role in replicating real-world business contexts; and (c) promoted self-regulated learning behaviors, evidenced by increased revision cycles (4.2 compared to 1.8 in the control group) and greater goal-setting precision, supported by AI-facilitated progress monitoring. Thematic analysis revealed AI’s dual function as both a personalized writing tutorby providing adaptive feedback, and a metacognitive motivator which encouraged reflective practice. These findings contribute to the field of business education research by: (1) demonstrating a scalable model of AI-enhanced writing instruction; (2) proposing a framework for integrating AI into self-regulated learning in professional training; and (3) addressing key gaps in longitudinal, technology-enhanced education. This study offers practical insights for curriculum designers seeking to harness AI’s transformative potential, while also emphasizing the ethical implications of human–AI collaboration in higher education.
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