Zhao Yifan, Billings Steve A, Wei Hualiang, Sarrigiannis Ptolemaios G
Department of Automatic Control and System Engineering, University of Sheffield, Sheffield, United Kingdom.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Nov;86(5 Pt 1):051919. doi: 10.1103/PhysRevE.86.051919. Epub 2012 Nov 29.
This paper introduces an error reduction ratio-causality (ERR-causality) test that can be used to detect and track causal relationships between two signals. In comparison to the traditional Granger method, one significant advantage of the new ERR-causality test is that it can effectively detect the time-varying direction of linear or nonlinear causality between two signals without fitting a complete model. Another important advantage is that the ERR-causality test can detect both the direction of interactions and estimate the relative time shift between the two signals. Numerical examples are provided to illustrate the effectiveness of the new method together with the determination of the causality between electroencephalograph signals from different cortical sites for patients during an epileptic seizure.
本文介绍了一种误差减少率-因果关系(ERR-因果关系)测试,该测试可用于检测和跟踪两个信号之间的因果关系。与传统的格兰杰方法相比,新的ERR-因果关系测试的一个显著优点是,它可以在不拟合完整模型的情况下有效地检测两个信号之间线性或非线性因果关系的时变方向。另一个重要优点是,ERR-因果关系测试可以检测相互作用的方向,并估计两个信号之间的相对时间偏移。提供了数值示例来说明新方法的有效性,以及确定癫痫发作期间患者不同皮质部位脑电图信号之间的因果关系。