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A Parametric Method to Measure Time-Varying Linear and Nonlinear Causality With Applications to EEG Data

机译:测量时变线性和非线性因果关系的参数方法及其在脑电数据中的应用

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A linear and nonlinear causality detection method called the error-reduction-ratio causality (ERRC) test is introduced in this paper to investigate if linear or nonlinear models should be considered in the study of human electroencephalograph (EEG) data. In comparison to the traditional Granger methods, one significant advantage of the ERRC approach is that it can effectively detect the time-varying linear and nonlinear causalities between two signals without fitting a complete nonlinear model. Two numerical simulation examples are employed to compare the performance of the new method with other widely used methods in the presence of noise and in tracking time-varying causality. Finally, an application to measure the linear and nonlinear relationships between two EEG signals from different cortical sites for patients with childhood absence epilepsy is discussed.
机译:本文介绍了一种称为误差减少率因果关系(ERRC)检验的线性和非线性因果关系检测方法,以研究在研究人类脑电图(EEG)数据时是否应考虑线性或非线性模型。与传统的Granger方法相比,ERRC方法的一个显着优势是它可以有效地检测两个信号之间随时间变化的线性和非线性因果关系,而无需拟合完整的非线性模型。使用两个数值模拟示例来比较该新方法在存在噪声和跟踪时变因果关系方面的性能与其他广泛使用的方法的性能。最后,讨论了用于测量儿童缺席癫痫患者来自不同皮质部位的两个脑电信号之间线性和非线性关系的应用。

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