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Time-Varying Nonlinear Causality Detection Using Regularized Orthogonal Least Squares and Multi-Wavelets With Applications to EEG

机译:时变非线性因果关系检测使用正则正交最小二乘和具有应用程序到EEG的多个小波

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摘要

A new transient Granger causality detection method is proposed based on a time-varying parametric modeling framework, and is applied to the real EEG signals to reveal the causal information flow during motor imagery (MI) tasks. The time-varying parametric modeling approach employs a nonlinear autoregressive with external input model, whose parameters are approximated by a set of multi-wavelet basis functions. A regularized orthogonal least squares (ROLS) algorithm is then used to produce a parsimonious or sparse regression model and estimate the associated model parameters. The time-varying Granger causality between nonstationary signals can be detected accurately by making use of both the good approximation properties of multi-wavelets and the good generalization performance of the ROLS in the presence of high-level noise. Two simulation examples are presented to demonstrate the effectiveness of the proposed method for both linear and nonlinear causal detection respectively. The proposed method is then applied to real EEG signals of MI tasks. It follows that transient causal information flow over the time course between various sensorimotor related channels can be successfully revealed during the whole reaction processes. Experimental results from these case studies confirm the applicability of the proposed scheme and show its utility for the understanding of the associated neural mechanism and the potential significance for developing MI tasks based brain-computer interface systems.
机译:基于时变的参数建模框架提出了一种新的瞬态格子因果区检测方法,并且应用于真实的EEG信号,以揭示电动机图像(MI)任务期间的因果信息流。时变的参数建模方法采用具有外部输入模型的非线性自回归,其参数由一组多小波基函数近似。然后使用正则正交最小二乘(ROL)算法来产生分类或稀疏的回归模型并估计相关的模型参数。通过利用多个小波的良好近似性能和ROL在存在高水平噪声的情况下,可以准确地检测非间断信号之间的时变的格兰杰因果关系。提出了两种模拟实施例以证明分别用于线性和非线性因果检测方法的提出方法的有效性。然后将所提出的方法应用于MI任务的真实EEG信号。在整个反应过程中,可以在各种传感器相关通道之间的时间路线上进行瞬态因果信息流程。这些案例研究的实验结果证实了拟议方案的适用性,并显示了其效用,以了解相关的神经机制以及开发基于MI任务的脑电接口系统的潜在意义。

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