SHAP-selected features from multimodal physiological signals fed to a hybrid XGBoost-LightGBM ensemble yield 80.91% test accuracy and 0.79 macro-F1 for driving behavior classification.
Eeg-based driving behavior classification: Recent advances and future directions
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Physiologically Grounded Driver Behavior Classification: SHAP-Driven Elite Feature Selection and Hybrid Gradient Boosting for Multimodal Physiological Signals
SHAP-selected features from multimodal physiological signals fed to a hybrid XGBoost-LightGBM ensemble yield 80.91% test accuracy and 0.79 macro-F1 for driving behavior classification.