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Granger Causality in Multivariate Time Series Using a Time-Ordered Restricted Vector Autoregressive Model

机译:使用时间顺序受限向量自回归模型的多元时间序列中的格兰杰因果关系

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Granger causality has been used for the investigation of the inter-dependence structure of the underlying systems of multivariate time series. In particular, the direct causal effects are commonly estimated by the conditional Granger causality index (CGCI). In the presence of many observed variables and relatively short time series, CGCI may fail because it is based on vector autoregressive models (VAR) involving a large number of coefficients to be estimated. In this paper, the VAR is restricted by a scheme that modifies the recently developed method of backward-in-time selection (BTS) of the lagged variables and the CGCI is combined with BTS. Further, the proposed approach is compared favorably to other restricted VAR representations, such as the top-down strategy, the bottom-up strategy, and the least absolute shrinkage and selection operator (LASSO), in terms of sensitivity and specificity of CGCI. This is shown by using simulations of linear and nonlinear, low- and high-dimensional systems and different time series lengths. For nonlinear systems, CGCI from the restricted VAR representations are compared with analogous nonlinear causality indices. Further, CGCI in conjunction with BTS and other restricted VAR representations is applied to multichannel scalp electroencephalogram (EEG) recordings of epileptic patients containing epileptiform discharges. CGCI on the restricted VAR, and BTS in particular, could track the changes in brain connectivity before, during and after epileptiform discharges, which was not possible using the full VAR representation.
机译:Granger因果关系已用于调查多元时间序列基础系统的相互依存结构。特别是,直接因果关系效应通常是通过条件格兰杰因果关系指数(CGCI)估算的。在存在许多观察到的变量和相对较短的时间序列的情况下,CGCI可能会失败,因为它基于矢量自回归模型(VAR),该模型涉及大量要估计的系数。在本文中,VAR受一种方案的限制,该方案修改了最近开发的滞后变量的后向选择(BTS)方法,并且CGCI与BTS组合在一起。此外,就CGCI的敏感性和特异性而言,所提出的方法与其他受限制的VAR表示法(例如,自上而下的策略,自下而上的策略以及最小绝对收缩和选择算子(LASSO))相比具有优势。这通过使用线性和非线性,低维和高维系统以及不同时间序列长度的仿真来显示。对于非线性系统,将来自受限VAR表示的CGCI与类似的非线性因果指数进行比较。此外,将CGCI与BTS和其他受限制的VAR表示相结合,应用于包含癫痫样放电的癫痫患者的多通道头皮脑电图(EEG)记录。受限VAR上的CGCI(尤其是BTS)可以追踪癫痫样放电之前,期间和之后大脑连通性的变化,而使用完整的VAR表示是不可能的。

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