SPLGNCNov 5, 2025

THD-BAR: Topology Hierarchical Derived Brain Autoregressive Modeling for EEG Generic Representations

arXiv:2511.13733v15 citationsh-index: 4
Originality Incremental advance
AI Analysis

This work improves EEG analysis for neuroscience and medical applications, but it is incremental as it builds on existing autoregressive and pre-trained model frameworks.

The paper tackled the problem of learning universal EEG representations by addressing the limitations of existing autoregressive frameworks that fail to capture physiological characteristics and dynamic spatial topology, resulting in THD-BAR consistently outperforming existing methods across 10 downstream datasets spanning 5 tasks.

Large-scale pre-trained models hold significant potential for learning universal EEG representations. However, most existing methods, particularly autoregressive (AR) frameworks, primarily rely on straightforward temporal sequencing of multi-channel EEG data, which fails to capture the rich physiological characteristics inherent to EEG signals. Moreover, their time-centered modeling approach also limits the effective representation of the dynamic spatial topology of brain activity. To address these challenges and fully exploit the potential of large-scale EEG models, we propose a novel Topology Hierarchical Derived Brain Autoregressive Modeling (THD-BAR) for EEG generic representations. The core innovation of THD-BAR lies in the introduction of the Brain Topology Hierarchy (BTH), which establishes a multi-scale spatial order for EEG channels. This hierarchical structure enables a redefinition of autoregressive learning as a "next-scale-time prediction" problem, effectively capturing both spatial and temporal dynamics. Based on BTH, we design a Topology-Hierarchical Vector Quantized-Variational Autoencoder (THVQ-VAE) for multi-scale tokenization and develop an enhanced Brain Autoregressive (BAR) module with specialized masking strategies for prediction. Through extensive large-scale pre-training on 17 datasets, followed by rigorous validation on 10 downstream datasets spanning 5 distinct tasks, THD-BAR consistently outperforms existing methods. These results highlight the superior generalization and modeling capabilities of our proposed approach.

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