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Effective connectivity analysis of fMRI time-series based on Granger causality and complex network

机译:基于Granger因果关系和复杂网络的fMRI时间序列的有效连通性分析

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This paper develops a method to explore effective connectivity for time-series by using Granger causality and complex network. The Granger causality of multivariable time-series are analyzed based on VAR model, by which the weighed causality graph is built up to reveal a variety of causal relationship among components of time-series. Then the directed and weighted connectivity in Granger causality graph is described with complex network measures, and the statistical properties of multivariable time-series are characterized according to network topological parameters. Simulation and experiment analysis demonstrate that the proposed method is effective in testing the causality of fMRI time-series.
机译:本文提出了一种利用Granger因果关系和复杂网络探索时间序列有效连通性的方法。基于VAR模型,分析了多元时间序列的格兰杰因果关系,建立了加权因果关系图,揭示了时间序列各成分之间的各种因果关系。然后利用复杂的网络测度描述了格兰杰因果关系图中的有向连通性和加权连通性,并根据网络拓扑参数表征了多元时间序列的统计性质。仿真和实验分析表明,该方法可以有效地检验fMRI时间序列的因果关系。

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