A fractional dynamical networks ML framework detects cognitive fatigue transitions from EEG with 93.33% accuracy and 95% AUROC by capturing non-Markovian interdependencies via multifractal signatures.
Fatigue monitoring through wearables: A state-of-the-art review,
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Non-Markovian Dynamical Systems Modeling of Electroencephalogram-based Brain Activity for Anticipating the Cognitive Fatigue Level
A fractional dynamical networks ML framework detects cognitive fatigue transitions from EEG with 93.33% accuracy and 95% AUROC by capturing non-Markovian interdependencies via multifractal signatures.