ODEBrain:用于建模动态脑网络的连续时间脑电图图模型 / ODEBrain: Continuous-Time EEG Graph for Modeling Dynamic Brain Networks
1️⃣ 一句话总结
这篇论文提出了一个名为ODEBrain的新框架,它利用神经常微分方程来连续建模脑电图信号中的动态变化,从而更准确、更鲁棒地预测大脑活动,克服了传统方法因离散化时间而导致的误差累积问题。
Modeling neural population dynamics is crucial for foundational neuroscientific research and various clinical applications. Conventional latent variable methods typically model continuous brain dynamics through discretizing time with recurrent architecture, which necessarily results in compounded cumulative prediction errors and failure of capturing instantaneous, nonlinear characteristics of EEGs. We propose ODEBRAIN, a Neural ODE latent dynamic forecasting framework to overcome these challenges by integrating spatio-temporal-frequency features into spectral graph nodes, followed by a Neural ODE modeling the continuous latent dynamics. Our design ensures that latent representations can capture stochastic variations of complex brain states at any given time point. Extensive experiments verify that ODEBRAIN can improve significantly over existing methods in forecasting EEG dynamics with enhanced robustness and generalization capabilities.
ODEBrain:用于建模动态脑网络的连续时间脑电图图模型 / ODEBrain: Continuous-Time EEG Graph for Modeling Dynamic Brain Networks
这篇论文提出了一个名为ODEBrain的新框架,它利用神经常微分方程来连续建模脑电图信号中的动态变化,从而更准确、更鲁棒地预测大脑活动,克服了传统方法因离散化时间而导致的误差累积问题。
源自 arXiv: 2602.23285