工作流程
云计算
转化式学习
计算机科学
学习分析
分析
数据科学
数学教育
多媒体
心理学
教育学
数据库
操作系统
作者
Yi Dai,Huang Yizhe,Yunfeng Zhang,Xiaoshu Xu
标识
DOI:10.1109/ieir59294.2023.10391211
摘要
The infusion of technology into educational settings has become a pivotal element in modern teaching methodologies. Technology-Supported Classrooms (TSCs) blend digital tools with traditional teaching methods, fostering an interactive learning environment. While these classrooms offer distinct advantages, such as streamlined teaching workflows and heightened student engagement, they have not consistently translated into improved academic outcomes. This paper explores the potential of Artificial Intelligence Generated Content (AIGC) to address these limitations. Through data analytics, the study evaluates and refines learning processes and academic results, focusing on three unique types of TSCs: Cloud-Service, Cloud-Interaction, and Cloud-Collaboration Classrooms. Several critical factors are scrutinized, including the ability of TSCs to support cognitive development, the appropriateness of software tools across various academic disciplines, shifts in student behavior trends, and the effectiveness of these classrooms in generating student-driven content. The findings underscore the effectiveness of TSCs in improving learning efficiency, fostering classroom interaction, and facilitating independent learning. However, it is essential to acknowledge the limitation of relying on a restricted dataset for AI analysis. This research offers valuable insights for educators and policymakers, emphasizing the transformative potential of AIGC and AI in the educational landscape.
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