AI’s rapid integration into education has boosted learning efficiency but raised concerns about its impact on college students’ self- directed learning (SDL) abilities. This study uses qualitative literature analysis to explore the link between AI-assisted learning intensity and SDL, grounded in Zimmerman’s self-regulated learning theory. It reviews academic sources to build theoretical coherence and ensure methodological rigor. Key findings reveal a “double-edged sword” effect: moderate AI use enhances SDL through personalized goal management, real-time feedback, and motivation reinforcement, improving time management, critical thinking, and self-efficacy. Conversely, overreliance on AI leads to cognitive outsourcing, diminished goal-setting capacity, and superficial reasoning. This study proposes a “boundary-adaptive pairing” model, advocating for adaptive AI intervention strategies tailored to learners’ metacognitive levels and educational stages. Educators should balance technological empowerment with autonomy preservation, ensuring AI serves as a scaffold rather than a replacement. These insights provide a theoretical foundation for optimizing AI integration in higher education to foster sustainable, self-regulated learning outcomes.
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Jiarui Xu
SHS Web of Conferences
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Jiarui Xu (Wed,) studied this question.
www.synapsesocial.com/papers/68d462ca31b076d99fa6207d — DOI: https://doi.org/10.1051/shsconf/202522201002