Unlocking Potential: Key Factors Shaping Undergraduate Self-Directed Learning in AI-Enhanced Educational Environments

IF 2.3 4区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY Systems Pub Date : 2024-08-29 DOI:10.3390/systems12090332
Di Wu, Shuling Zhang, Zhiyuan Ma, Xiao-Guang Yue, Rebecca Kechen Dong
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Abstract

This study investigates the factors influencing undergraduate students’ self-directed learning (SDL) abilities in generative Artificial Intelligence (AI)-driven interactive learning environments. The advent of generative AI has revolutionized interactive learning environments, offering unprecedented opportunities for personalized and adaptive education. Generative AI supports teachers in delivering smart education, enhancing students’ acceptance of technology, and providing personalized, adaptive learning experiences. Nevertheless, the application of generative AI in higher education is underexplored. This study explores how these AI-driven platforms impact undergraduate students’ self-directed learning (SDL) abilities, focusing on the key factors of teacher support, learning strategies, and technology acceptance. Through a quantitative approach involving surveys of 306 undergraduates, we identified the key factors of motivation, technological familiarity, and the quality of AI interaction. The findings reveal the mediating roles of self-efficacy and learning motivation. Also, the findings confirmed that improvements in teacher support and learning strategies within generative AI-enhanced learning environments contribute to increasing students’ self-efficacy, technology acceptance, and learning motivation. This study contributes to uncovering the influencing factors that can inform the design of more effective educational technologies and strategies to enhance student autonomy and learning outcomes. Our theoretical model and research findings deepen the understanding of applying generative AI in higher education while offering important research contributions and managerial implications.
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释放潜能:塑造人工智能强化教育环境下本科生自主学习的关键因素
本研究探讨了影响本科生在生成式人工智能(AI)驱动的交互式学习环境中自主学习(SDL)能力的因素。生成式人工智能的出现彻底改变了交互式学习环境,为个性化和自适应教育提供了前所未有的机遇。生成式人工智能支持教师提供智能教育,提高学生对技术的接受程度,并提供个性化、自适应的学习体验。然而,生成式人工智能在高等教育中的应用还未得到充分探索。本研究探讨了这些人工智能驱动的平台如何影响本科生的自主学习(SDL)能力,重点关注教师支持、学习策略和技术接受度等关键因素。通过对 306 名本科生进行定量调查,我们确定了学习动机、技术熟悉程度和人工智能交互质量等关键因素。研究结果揭示了自我效能感和学习动机的中介作用。此外,研究结果还证实,在生成式人工智能强化学习环境中,教师支持和学习策略的改进有助于提高学生的自我效能感、技术接受度和学习动机。这项研究有助于揭示影响因素,为设计更有效的教育技术和策略提供依据,从而提高学生的自主性和学习效果。我们的理论模型和研究成果加深了人们对在高等教育中应用生成式人工智能的理解,同时提供了重要的研究贡献和管理启示。
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来源期刊
Systems
Systems Decision Sciences-Information Systems and Management
CiteScore
2.80
自引率
15.80%
发文量
204
审稿时长
11 weeks
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