自主学习
计算机科学
人机交互
知识管理
电子学习
教育技术
计算机辅助通信
多媒体
协作学习
心理学
数学教育
技术集成
教学方法
互联网隐私
网络学习
主动学习(机器学习)
合作学习
分布式学习
高等教育
教学设计
计算机辅助教学
作者
Asma Hadyaoui,Lilia Cheniti-Belcadhi
标识
DOI:10.1080/15391523.2025.2586501
摘要
Conventional digital assessments often overlook learners’ real-time progress, peer interactions, and cognitive demands. This study addresses these limitations by introducing GenSolve, an adaptive artificial intelligence (AI)-driven stealth assessment framework designed to adjust scenario complexity, deliver personalized feedback, and monitor group regulation using socially regulated learning (SoRL) principles. A six-week quasi-experimental study involving 250 undergraduates compared GenSolve to traditional instruction. Results showed a 17.6% gain in problem-solving accuracy, a 21% increase in group cohesion, and a 12.7% improvement in delayed retention. AI-generated feedback reduced repeated errors by 23.4% and improved self-regulation, while SoRL mechanisms supported a 36% rise in independent conflict resolution. GenSolve contributes a scalable, ethically guided model for real-time collaborative assessment, offering practical advances in adaptive evaluation for digital learning environments.
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