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首页> 外文期刊>Annals of Mathematics and Artificial Intelligence >Data-driven Koopman operator approach for computational neuroscience
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Data-driven Koopman operator approach for computational neuroscience

机译:数据驱动的Koopman操作员方法,用于计算神经科学

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This article presents a novel, nonlinear, data-driven signal processing method, which can help neuroscience researchers visualize and understand complex dynamical patterns in both time and space. Specifically, we present applications of a Koopman operator approach for eigendecomposition of electrophysiological signals into orthogonal, coherent components and examine their associated spatiotemporal dynamics. This approach thus provides enhanced capabilities over conventional computational neuroscience tools restricted to analyzing signals in either the time or space domains. This is achieved via machine learning and kernel methods for data-driven approximation of skew-product dynamical systems. The approximations successfully converge to theoretical values in the limit of long embedding windows. First, we describe the method, then using electrocorticographic (ECoG) data from a mismatch negativity experiment, we extract time-separable frequencies without bandpass filtering or prior selection of wavelet features. Finally, we discuss in detail two of the extracted components, Beta (similar to) frequencies, and explore the spatiotemporal dynamics of high- and low- frequency components.
机译:本文提出了一种新颖的非线性数据驱动信号处理方法,可以帮助神经科学研究人员在时间和空间中可视化和理解复杂的动态模式。具体地,我们向Koopman算子方法的应用展示用于正交,相干组分的电生理信号的实际分解,并检查其相关的时空动力学。因此,这种方法提供了通过在时间或空间域中分析信号的传统计算神经科学工具上的增强能力。这是通过机器学习和内核方法实现的,用于偏斜产品动态系统的数据驱动近似。近似值成功收敛于长嵌入窗口的极限中的理论值。首先,我们描述了该方法,然后使用来自不匹配的消极实验的电容照片(ECOG)数据,我们提取时间可分离的频率,而无带通道滤波或先前选择小波特征。最后,我们详细讨论了两个提取的组件,β(类似于)频率,并探索了高频和低频分量的时空动态。

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