聊天机器人
对话
生成语法
过程(计算)
计算机科学
内容分析
内容(测量理论)
心理学
人工智能
社会学
沟通
社会科学
数学
操作系统
数学分析
作者
Weipeng Shen,Xiao‐Fan Lin,Jiachun Liu,Xinxian Liang,Ruiqing Chen,Lai Xiao-yun,X. N. Zheng
摘要
ABSTRACT Background Generative artificial intelligence (GenAI) chatbots extend transformative impact in higher education. Current research requires more comprehensive evaluations of the collaborative learning fostered by students and GenAI chatbots. However, existing articles have rarely explored the dynamic process of student–AI collaboration in higher education. Objectives This study aims to analyse and visualise the changes in the process of undergraduates' collaboration with a GenAI chatbot. The interaction patterns of the collaboration were explored under the perspective of social constructivist learning theory. The differences between student‐AI interaction patterns at 5 time points (after 5 lessons) were further compared to show the dynamic collaboration process. Method A 9‐week course was implemented for 40 Chinese undergraduates, who completed 5 rounds of collaboration with a GenAI chatbot named ERNIE Bot. Employing a designed coding scheme, a total of 6180 codes was collected from the conversation content of each round. Based on the interval data, content analysis and epistemic network analysis (ENA) were conducted. Results First, undergraduates gradually became more active and targeted in their collaboration with the GenAI chatbot. Second, the focal points of their collaboration changed from “Comprehension” (the first–third lessons) to “Generation” (the third–fifth lessons), along with different interaction patterns. Notably, the interaction patterns changed more rapidly and prominently during the “Comprehension” phase than the “Generation” phase. Implications The findings contribute to understanding the social constructivist learning process within student‐AI collaboration in higher education. Practical recommendations for students and educators were offered as well.
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