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首页> 外文期刊>Frontiers in Computational Neuroscience >Decoding Time-Varying Functional Connectivity Networks via Linear Graph Embedding Methods
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Decoding Time-Varying Functional Connectivity Networks via Linear Graph Embedding Methods

机译:通过线性图嵌入方法解码时变功能连接网络

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An exciting avenue of neuroscientific research involves quantifying the time-varying properties of functional connectivity networks. As a result, many methods have been proposed to estimate the dynamic properties of such networks. However, one of the challenges associated with such methods involves the interpretation and visualization of high-dimensional, dynamic networks. In this work, we employ graph embedding algorithms to provide low-dimensional vector representations of networks, thus facilitating traditional objectives such as visualization, interpretation and classification. We focus on linear graph embedding methods based on principal component analysis and regularized linear discriminant analysis. The proposed graph embedding methods are validated through a series of simulations and applied to fMRI data from the Human Connectome Project.
机译:神经科学研究的一个令人兴奋的途径涉及量化功能连接网络的时变特性。结果,已经提出了许多方法来估计这种网络的动态特性。然而,与这些方法相关的挑战之一涉及高维动态网络的解释和可视化。在这项工作中,我们采用图嵌入算法来提供网络的低维矢量表示,从而促进了诸如可视化,解释和分类等传统目标。我们专注于基于主成分分析和正则化线性判别分析的线性图嵌入方法。通过一系列模拟验证了所提出的图形嵌入方法,并将其应用于人类Connectome项目的fMRI数据。

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