SAMBA: Toward a Long-Context EEG Foundation Model via Spatial Embedding and Differential Mamba
Jiazhen Hong, Geoffrey Mackellar, Soheila Ghane

TL;DR
SAMBA introduces a novel self-supervised EEG foundation model that effectively captures long-range temporal dependencies and spatial variability, outperforming existing methods across diverse datasets and tasks.
Contribution
The paper presents SAMBA, a new EEG modeling framework with a Mamba-based architecture, novel masking, and spatial embedding techniques for improved long-context understanding and robustness.
Findings
Outperforms state-of-the-art methods on 13 EEG datasets.
Maintains low memory and inference time.
Learned spatial maps align with neurophysiological regions.
Abstract
Long-sequence electroencephalogram (EEG) modeling is essential for developing generalizable EEG representation models. This need arises from the high sampling rate of EEG data and the long recording durations required to capture extended neurological patterns in brain activity. Transformer-based models have shown promise in modeling short sequences of a few seconds; however, their quadratic complexity limits scalability to longer contexts. Moreover, variability in electrode montage across available datasets, along with inter-subject differences in brain signals, pose significant challenges to developing a generalizable and robust foundation model. We propose \textit{SAMBA}, a self-supervised learning framework with a Mamba-based U-shaped encoder-decoder architecture, which effectively captures long-range temporal dependencies and spatial variability in EEG data. Leveraging the inherent…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Advanced Memory and Neural Computing
