知识锚定的语义动态拓扑脑自回归建模:面向通用神经解码的统一方法 / KAST-BAR: Knowledge-Anchored Semantically-Dynamic Topology Brain Autoregressive Modeling for Universal Neural Interpretation
1️⃣ 一句话总结
该论文提出了一种新型人工智能模型,通过将脑电信号的复杂时空结构与专家医学知识对齐,像理解文字一样理解大脑活动,从而在多种脑机接口任务上取得了超越现有方法的表现。
While EEG foundation models have shown significant potential in universal neural decoding across tasks, their advancement remains constrained by the inadequacy modeling of complex spatiotemporal topology, as well as the inherent modality gap between low-level physiological signals and high-level textual semantics. To address these challenges, we propose a Knowledge-Anchored Semantically-Dynamic Topology Brain Autoregressive Model (KAST-BAR), which dynamically aligns physiological representations derived from multi-level brain topology with an expert-level semantic space. Specifically, we design a Dual-Stream Hierarchical Attention (DSHA) encoder that accurately captures the brain's intrinsic non-Euclidean topology by modeling local temporal dynamics with global spatial contexts. On this basis, a Knowledge-Anchored Semantic Profiler (KASP) is proposed to synthesize physically-grounded and instance-level textual profiles, which subsequently drive a Semantic Text-Aware Refiner (STAR) to dynamically reconstruct EEG representations using Latent Expert Queries. By conducting large-scale pre-training on 21 diverse datasets to build a foundation model, KAST-BAR effectively integrates expert-level medical knowledge into EEG signal representations, consistently achieving superior performance across six downstream tasks. Our code is available at this https URL
知识锚定的语义动态拓扑脑自回归建模:面向通用神经解码的统一方法 / KAST-BAR: Knowledge-Anchored Semantically-Dynamic Topology Brain Autoregressive Modeling for Universal Neural Interpretation
该论文提出了一种新型人工智能模型,通过将脑电信号的复杂时空结构与专家医学知识对齐,像理解文字一样理解大脑活动,从而在多种脑机接口任务上取得了超越现有方法的表现。
源自 arXiv: 2605.13133