Experiments in many fields of science and engineering yield data in the form of time series. The Fourier and wavelet transform-based nonparametric methods are used widely to study the spectral characteristics of these time series data. Here, we extend the framework of nonparametric spectral methods to include the estimation of Granger causality spectra for assessing directional influences. We illustrate the utility of the proposed methods using synthetic data from network models consisting of interacting dynamical systems
Spectral causalities are now widely used in physical and biological sciences to characterize directi...
Since interactions in neural systems occur across multiple temporal scales, it is likely that inform...
A widely agreed upon definition of time series causality inference, established in the sem-inal 1969...
Experiments in many fields of science and engineering yield data in the form of time series. The Fou...
Experiments in many fields of science and engineering yield data in the form of time series. The Fou...
Granger-causality is a popular definition of causality that permits a statistical test to determine ...
International audienceNowadays, Granger causality techniques are frequently applied to investigate c...
Multielectrode neurophysiological recording and high-resolution neuroimaging generate multivariate d...
The traditional parametric approach to Granger causality (GC), based on linear vector autoregressive...
AbstractThis technical paper offers a critical re-evaluation of (spectral) Granger causality measure...
Granger causality analysis is becoming central for the analysis of interactions between neural popul...
Granger causality (GC) is a method for determining whether and how two time series exert causal infl...
Brain function arises from networks of distributed brain areas whose directed interactions vary at ...
We develop a bivariate spectral Granger-causality test that can be applied at each individual freque...
The notion of Granger causality between two time series examines if the prediction of one series cou...
Spectral causalities are now widely used in physical and biological sciences to characterize directi...
Since interactions in neural systems occur across multiple temporal scales, it is likely that inform...
A widely agreed upon definition of time series causality inference, established in the sem-inal 1969...
Experiments in many fields of science and engineering yield data in the form of time series. The Fou...
Experiments in many fields of science and engineering yield data in the form of time series. The Fou...
Granger-causality is a popular definition of causality that permits a statistical test to determine ...
International audienceNowadays, Granger causality techniques are frequently applied to investigate c...
Multielectrode neurophysiological recording and high-resolution neuroimaging generate multivariate d...
The traditional parametric approach to Granger causality (GC), based on linear vector autoregressive...
AbstractThis technical paper offers a critical re-evaluation of (spectral) Granger causality measure...
Granger causality analysis is becoming central for the analysis of interactions between neural popul...
Granger causality (GC) is a method for determining whether and how two time series exert causal infl...
Brain function arises from networks of distributed brain areas whose directed interactions vary at ...
We develop a bivariate spectral Granger-causality test that can be applied at each individual freque...
The notion of Granger causality between two time series examines if the prediction of one series cou...
Spectral causalities are now widely used in physical and biological sciences to characterize directi...
Since interactions in neural systems occur across multiple temporal scales, it is likely that inform...
A widely agreed upon definition of time series causality inference, established in the sem-inal 1969...