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arXiv 提交日期: 2026-05-19
📄 Abstract - Atoms of Thought: Universal EEG Representation Learning with Microstates

Learning universal representations from electroencephalogram (EEG) signals is a cutting-edge approach in the field of neuroinformatics and brain-computer interfaces (BCIs). Conventionally, EEG is treated as a multivariate temporal signal, where time- or frequency-domain features are extracted for representation learning. This paper investigates a simple yet effective EEG representation, i.e., microstates. Microstates represent the building blocks of brain activity patterns at a microscopic time scale. We build a universal microstate tokenizer from a large medical EEG dataset by clustering continuous EEG signals into sequences of discrete microstates. The microstate tokenizer is then adopted universally across a series of downstream tasks, including sleep staging, emotion recognition, and motor imagery classification. Experimental results show that EEG representation learning with microstates outperforms traditional time-domain and frequency-domain features under different models and across different tasks. Further analysis shows that microstates offer greater interpretability and scalability, thereby opening up applications in both cognitive neuroscience and clinical research.

顶级标签: medical machine learning model evaluation
详细标签: eeg microstates representation learning brain-computer interfaces benchmark 或 搜索:

思维原子:基于微状态的通用脑电图表示学习 / Atoms of Thought: Universal EEG Representation Learning with Microstates


1️⃣ 一句话总结

该论文提出一种将脑电图信号转化为离散“微状态”序列的通用方法,实验证明这种基于脑活动基本单位的表示方式,在睡眠分期、情绪识别等多个任务上优于传统特征提取方法,且具备更好的可解释性和可扩展性。

源自 arXiv: 2605.20182