Deep learning based multi attribute evaluation for holistic student assessment in physical education.
Journal:
Scientific reports
Published Date:
May 21, 2025
Abstract
The evaluation of students in physical education remains a formidable challenge due to the limitations of traditional assessment approaches, which are often excessively one-dimensional. This study proposes a solution utilizing deep learning via multi-attribute user evaluation modelling to address these issues. This development proposal utilizes all available data, including physical activities, cognitive tasks, emotional responses, and social interactions, for a comprehensive assessment of student performance. The methodology comprises a ten-step process that involves information collection, preparation, model construction, and deployment, followed by regular review and adjustments. The model has considerable efficacy, with a high level of accuracy and reduced errors. Moreover, an experimental investigation illustrates its robustness, having attained a low mean score. The analysis indicates that the current models exhibit more flexibility in providing personalized feedback to improve educational outcomes and enhance decision-making. Moreover, the model incorporates visualization tools such as heatmaps, which affirm the system's ability to monitor performance and progressively adjust to the dynamics of students. The developed approach incorporates automated, objective, and scalable attributes that improve student assessment. This also aids in tackling many multi-faceted challenges in physical education while formulating effective interventions for student advancement. Subsequent research may focus on the integration of real-time sensor data, enhancement of computational efficiency, and wider application across diverse educational organizations.
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