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Dynamic GSCA (Generalized Structured Component Analysis) with Applications to the Analysis of Effective Connectivity in Functional Neuroimaging Data

机译:动态GSCA(广义结构成分分析)及其在功能性神经影像数据中有效连通性分析中的应用

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We propose a new method of structural equation modeling (SEM) for longitudinal and time series data, named Dynamic GSCA (Generalized Structured Component Analysis). The proposed method extends the original GSCA by incorporating a multivariate autoregressive model to account for the dynamic nature of data taken over time. Dynamic GSCA also incorporates direct and modulating effects of input variables on specific latent variables and on connections between latent variables, respectively. An alternating least square (ALS) algorithm is developed for parameter estimation. An improved bootstrap method called a modified moving block bootstrap method is used to assess reliability of parameter estimates, which deals with time dependence between consecutive observations effectively. We analyze synthetic and real data to illustrate the feasibility of the proposed method.
机译:我们提出了一种用于纵向和时间序列数据的结构方程模型(SEM)的新方法,称为动态GSCA(广义结构化分量分析)。所提出的方法通过合并多元自回归模型来扩展原始GSCA,以解决随时间推移获取的数据的动态特性。动态GSCA还分别结合了输入变量对特定潜在变量和潜在变量之间的连接的直接和调制效果。开发了交替最小二乘(ALS)算法进行参数估计。一种改进的引导程序方法,称为改进的移动块引导程序方法,用于评估参数估计值的可靠性,可有效处理连续观测之间的时间依赖性。我们分析综合和实际数据,以说明该方法的可行性。

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