The increasing integration of AI tools in education has led prior research to explore their impact on learning processes. Nevertheless, most existing studies focus on higher education and conventional instructional contexts, leaving open questions about how key learning factors are related in AI-mediated learning environments and how these relationships may vary across different age groups. Addressing these gaps, our work investigates whether four critical learning factors, experience, clarity, comfort, and motivation, maintain coherent interrelationships in AI-augmented educational settings, and how the structure of these relationships differs between middle and high school students. The study was conducted in authentic classroom contexts where students interacted with AI tools as part of programming learning activities to collect data on the four learning factors and students' perceptions. Using a multimethod quantitative analysis, which combined correlation analysis and text mining, we revealed markedly different dimensional structures between the two age groups. Middle school students exhibit strong positive correlations across all dimensions, indicating holistic evaluation patterns whereby positive perceptions in one dimension generalise to others. In contrast, high school students show weak or near-zero correlations between key dimensions, suggesting a more differentiated evaluation process in which dimensions are assessed independently. These findings reveal that perception dimensions actively mediate AI-augmented learning and that the developmental stage moderates their interdependencies. This work establishes a foundation for the development of AI integration strategies that respond to learners' developmental levels and account for age-specific dimensional structures in student-AI interactions.
翻译:随着AI工具在教育领域的日益普及,已有研究开始探讨其对学习过程的影响。然而,现有研究大多聚焦于高等教育和传统教学情境,对于AI中介学习环境中关键学习因素间的关联机制,以及这些关联在不同年龄段学生中的差异性,仍存在研究空白。为填补这些空白,本研究探讨了在AI增强教育环境中,体验、清晰度、舒适度和动机这四个关键学习因素是否保持一致的相互关联,以及这些关联结构在初中与高中学生之间存在何种差异。研究在真实课堂情境中展开,学生通过参与编程学习活动与AI工具进行交互,从而收集关于四项学习因素及学生感知的数据。通过结合相关性分析与文本挖掘的多方法定量分析,我们揭示了两组年龄群体间显著不同的维度结构:初中学生在所有维度间均表现出强正相关性,显示出整体性评估模式,即某一维度的积极感知会泛化至其他维度;相比之下,高中学生在关键维度间仅呈现弱相关或接近零相关,表明其评估过程更具区分性,各维度被独立评估。这些发现揭示了感知维度在AI增强学习中发挥着主动中介作用,而发展阶段则调节着维度间的相互依存关系。本研究为制定适应学习者发展水平、兼顾学生-AI交互中年龄特异性维度结构的AI整合策略奠定了理论基础。