The Journal of Grey System ›› 2025, Vol. 37 ›› Issue (4): 91-105.

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A Hybrid Evaluation Approach for Personalized Learning Effects Based on EEG Data: Integrating Grey Correlation, BP Neural Network and Fuzzy Evaluation

  

  1. 1. Quality Monitoring and Evaluation Center, Office of Development Planning, Sanming University,Sanming Fujian, 365004, P.R. China
    2. School of Information Engineering, Sanming University,Sanming Fujian, 365004, P.R. China
  • Online:2025-08-15 Published:2025-07-31
  • Supported by:
    This research is supported and funded by:Fujian Provincial Natural Science Foundation General Project, Grant No.2022 J011-
    177; Fujian Key Field Big Data Research Project-Digital Fujian Industrial Energy Big Data Research Institute, Grant No. FG08001;
    Fujian Provincial Universities Key Laboratory of Industrial Big Data Analysis and Application, Grant No. Fujian Education Science [2017] No.108.

Abstract:

With the advancement of educational informatization and personalized learning, scientific evaluation of learning outcomes has become crucial for educational quality assurance. This paper proposes a hybrid evaluation approach integrating grey correlation analysis, BP neural network, and fuzzy evaluation based on EEG data for assessing personalized learning effects. The method establishes objective evaluation indicators through EEG data analysis, enabling real-time monitoring and assessment of the learning process. By adopting a multi-model fusion strategy, the accuracy and reliability of the evaluation are enhanced. The evaluation framework encompasses data preprocessing, feature extraction, model fusion, and result validation. Empirical research in primary education demonstrates that this method achieves 89% consistency with expert evaluation, 85% accuracy in cross-validation, and a correlation coefficient of 0.82 with academic performance. Over an eight-week intervention period, students showed significant improvements: attention levels increased by 35%, learning efficiency improved by 40%, and assignment quality enhanced by 28%. The research findings provide a new paradigm for data-driven educational evaluation and make significant contributions to advancing scientific and personalized development in educational assessment.