The proposed hybrid EEG-based framework improved predictive accuracy by up to 3.5% and early fatigue prediction by 7.6% compared to baseline models across multiple public datasets.
Does a hybrid EEG-based dual-attention predictive framework improve the accuracy of modeling motivational states and forecasting performance compared to baseline models?
Publicly available EEG and sensor datasets (PhyAAt, Age and Gender, eSports Sensors, CHB-MIT, MoBI, HASC) containing physiological signals for emotion recognition, cognitive workload, and motor activities.
Hybrid EEG-based framework integrating neural indicators of arousal and stress with contextual and biomechanical variables using a dual-attention predictive architecture and personalized adaptation mechanism.
Baseline machine learning and deep learning models (LSTM, GRU, SVM, Transformer, TCN, Informer, EEGNet, DeepConvNet).
Model classification accuracy and F1 score for emotion recognition and performance prediction.surrogate
A novel hybrid EEG-based predictive framework demonstrates improved accuracy in modeling stress and performance states across diverse physiological datasets, suggesting potential utility for real-time athletic monitoring.
Motivation is a key psychological factor influencing athletic performance, especially in high-intensity disciplines such as track and field. However, traditional assessment methods-ranging from self-report questionnaires to static physiological models-often fail to capture the temporal, individualized, and context-dependent nature of the motivation-performance relationship. In this study, we propose a hybrid EEG-based framework for modeling motivational states and forecasting athletic performance. The framework integrates neural indicators of arousal and stress with contextual and biomechanical variables using a dual-attention predictive architecture and a personalized adaptation mechanism. Rather than focusing on static prediction, the model dynamically adjusts to individual athletes' cognitive and physical states across training scenarios. Experimental validation on four public datasets, including two movement-oriented sets (MoBI and HASC), demonstrates consistent gains over strong baselines, with up to 3.5% improvement in accuracy and 7.6% improvement in early fatigue prediction. These findings suggest that the proposed system can support personalized monitoring and adaptive training strategies in performance-driven environments.
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Ning Xie
Kunming University of Science and Technology
Xiaolu Zhang
Mahasarakham University
Changchun Lu
University of Siedlce
Scientific Reports
Leshan Normal University
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Xie et al. (Fri,) conducted a other in Motivation and athletic performance. Hybrid EEG-based framework (Dynamic Athlete Performance Network) vs. Baseline machine learning models (e.g., Informer, Transformer, LSTM) was evaluated on Classification accuracy. The proposed hybrid EEG-based framework improved predictive accuracy by up to 3.5% and early fatigue prediction by 7.6% compared to baseline models across multiple public datasets.
synapsesocial.com/papers/6a08908f113ba5b476de46f0 — DOI: https://doi.org/10.1038/s41598-025-05420-3