This research develops an intelligent cognitive load regulation framework for digital learning environments in the context of educational policy reforms. After China's Double Reduction Policy took effect, tutorial-concentrated schooling evolved into technology-facilitated learning, putting unimaginable cognitive burdens on students. In response, the research combines cognitive load theory with adaptive technologies to resolve these issues through real-time recognition of cognitive states and personalized interventions. Based on the mixed-methods design with 320 Dongcheng District students, the research uses established measures such as NASA-TLX adapted to e-learning environments to assess multidimensional patterns of cognitive load. The smart regulation system shows significant efficacy with lower socioeconomic students posting 15.3-point improvements in academic scores, task accomplishment rates enhanced by 32%, and the level of cognitive loads decreased by 23.1% on average across various types of learners. The system can recognize with 87.3% accuracy and respond in 234 milliseconds, thus facilitating timely interventions. Self-paced review activities yield 91.2% success rates, while collaborative tasks remain problematic at 68.4% success rates. The results extend cognitive load theory with dynamic adaptation capacities needed for self-managed digital learning. The present study provides evidence-based practice to maximize cognitive experiences of e-learning, facilitating education equity objectives while developing core self-regulated learning skills in post-reform education systems.
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Zhai et al. (Sat,) studied this question.
www.synapsesocial.com/papers/690fdce2f60c54d04ea384b7 — DOI: https://doi.org/10.55670/fpll.futech.4.4.17
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