ALFEE: Adaptive Large Foundation Model for EEG Representation
Wei Xiong, Junming Lin, Jiangtong Li, Jie Li, Changjun Jiang

TL;DR
ALFEE is a novel hybrid transformer model designed for EEG signals, improving robustness and adaptability across various tasks through multi-stage training and specialized attention mechanisms.
Contribution
The paper introduces ALFEE, a hybrid transformer architecture with adaptive channel and temporal encoding, addressing domain gaps and variability in EEG representation learning.
Findings
ALFEE outperforms existing models on six EEG tasks.
Pretraining with multiple objectives enhances multi-scale representation.
Fine-tuning with task-specific tokens improves task performance.
Abstract
While foundation models excel in text, image, and video domains, the critical biological signals, particularly electroencephalography(EEG), remain underexplored. EEG benefits neurological research with its high temporal resolution, operational practicality, and safety profile. However, low signal-to-noise ratio, inter-subject variability, and cross-paradigm differences hinder the generalization of current models. Existing methods often employ simplified strategies, such as a single loss function or a channel-temporal joint representation module, and suffer from a domain gap between pretraining and evaluation tasks that compromises efficiency and adaptability. To address these limitations, we propose the Adaptive Large Foundation model for EEG signal representation(ALFEE) framework, a novel hybrid transformer architecture with two learning stages for robust EEG representation learning.…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural dynamics and brain function · Emotion and Mood Recognition
MethodsSoftmax · Attention Is All You Need
