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A qualitative systematic review on AI empowered self-regulated learning in higher education

Min Lan, Xiaofeng Zhou

2025npj Science of Learning74 citationsDOIOpen Access PDF

Abstract

This systematic review explores the burgeoning intersection of Artificial Intelligence (AI) applications and self-regulated learning (SRL) in higher education. Aiming to synthesize empirical studies, we employed a qualitative approach to scrutinize AI's role in supporting SRL processes. Through a meticulous selection process adhering to PRISMA guidelines, we identified 14 distinct studies that leveraged AI applications, including chatbots, adaptive feedback systems, serious games, and e-textbooks, to support student autonomy. Our findings reveal a nuanced landscape where AI demonstrates potential in facilitating SRL's forethought, performance, and reflection phases, yet also highlights whether the agency is human-centered or AI-centered leading to variations in the SRL model. This review underscores the imperative for balanced AI integration, ensuring technological advantages are harnessed without undermining student self-efficacy. The implications suggest a future where AI is a thoughtfully woven thread in the SRL fabric of higher education, calling for further research to optimize this synergy.

Topics & Concepts

AutonomySelf-regulated learningAgency (philosophy)Higher educationFormative assessmentComputer sciencePsychologyMathematics educationSociologyPolitical scienceSocial scienceLawOnline Learning and AnalyticsInnovative Teaching and Learning MethodsE-Learning and Knowledge Management
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