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Blockwise Granger causality and blockwise new causality

机译:群体格兰杰因果关系和孤立的新因果关系

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Multivariate blockwise Granger causality (BGC) is used to reflect causal interactions among blocks of multivariate time series. Especially, spectral BGC and conditional spectral BGC is used to disclose blockwise causal flow among different brain areas in variant frequencies. In this paper, we demonstrate that (i) BGC in time domain may not disclose true causality at all. (ii) Due to the use of the transfer function or its inverse matrix and partial information of the multivariate linear regression model, both of spectral BGC and conditional spectral BGC have shortcomings and/or limitations which may inevitably lead to misinterpretation results. We then in time and frequency domains develop two new multivariate causality methods for the multivariate linear regression model, called blockwise new causality (BNC) and spectral BNC respectively. By several examples we confirm that BNC measures are more reasonable and understandable than BGC or conditional BGC. Finally, for EEG data from an epilepsy patient we analyze event-related potential (ERP) causality and demonstrate that both of BGC and BNC methods show significant causality flow in frequency domain, but the spectral BNC method yields satisfactory and convincing result which is consistent with event-related time-frequency power spectrum activity. The spectral BGC method is shown to generate misleading results.
机译:多变量障碍格子因因果(BGC)用于反映多变量时间序列块之间的因果关系。特别地,光谱BGC和条件光谱BGC用于公开变体频率的不同脑区域之间的块状因果流。在本文中,我们证明(i)时域中的BGC可能根本无法透露真正的因果关系。 (ii)由于使用传递函数或其逆矩阵和多变量线性回归模型的部分信息,光谱BGC和条件光谱BGC都具有不可避免地导致误解结果的缺点和/或限制。然后,在时间和频率域中,为多变量线性回归模型开发了两个新的多变量因果关系,分别称为块状新的因果关系(BNC)和光谱BNC。通过几个例子,我们确认BNC测量比BGC或条件BGC更合理且可理解。最后,对于来自癫痫患者的EEG数据,我们分析了与事件相关的潜在(ERP)因果关系,并证明BGC和BNC方法两种方法都显示出频域中的显着因果关系,但光谱BNC方法产生令人满意和令人信服的结果事件相关的时间频率功率谱活动。示出光谱BGC方法以产生误导性结果。

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