论辩的
心理学
生成语法
数学教育
认知
控制(管理)
实证研究
注重形式
分类学(生物学)
预写
批判性思维
教学方法
焦点小组
英语
纠正性反馈
治疗组和对照组
定性研究
协议分析
出国留学
教育学
语言学
公立大学
数据收集
第二语言
定性性质
收敛性思维
语言能力
语言习得
合作学习
定性分析
作者
Hongxia Hao,Abu Bakar Razali,Ruijia Zuo
出处
期刊:SAGE Open
[SAGE Publishing]
日期:2026-01-01
卷期号:16 (1)
标识
DOI:10.1177/21582440251413884
摘要
Although automated writing evaluation (AWE) and artificial intelligence (AI) tools have been widely practiced in EFL/ESL writing instruction, there is a lack of empirical research on the effect of the integration of both AWE and AI feedback on students’ higher-order thinking (HOT). Therefore, this study is to explore the impact of integrating AWE and AI feedback on Chinese EFL undergraduates’ higher-order thinking (HOT) in argumentative writing based on Revised Bloom’s Taxonomy and Cognitive Feedback Theory. Pre- and post-tests and semi-structured interviews were used to study 64 third-year students in the English major at a Chinese public university for 16 weeks. The experimental group ( n = 32) received AWE (Pigai) and AI (ChatGPT) feedback, while the control group ( n = 32) received only AWE (Pigai) feedback. Quantitative results showed that EG students had significant improvements in higher-order thinking (HOT; analysis, evaluation, and creation; p < .001) with a high effect size ( d > 0.80), while the CG students had a smaller improvement ( d > 0.15). ANOVA confirmed that analysis had the highest effect size ( p < .001, η 2 = .862), followed by evaluation ( p < .001, η 2 = .818) and creation ( p < .001, η 2 = .812). Qualitative results showed that AWE and AI tools were complementary, in which AWE could help students correct superficial language errors, but AI could improve students’ higher-order thinking (HOT) in analysis, evaluation, and creation. They can focus on language and higher-order thinking (HOT) and optimized revision strategies. However, students also faced problems in understanding feedback and over-reliance on it.
科研通智能强力驱动
Strongly Powered by AbleSci AI