This paper addresses the topic of evaluating the significance of frequency domain measures of causal coupling in multivariate time series through generation of surrogate data. The considered approaches are the traditional Fourier Transform (FT) algorithm and a new causal FT (CFT) algorithm for surrogate data generation. Both algorithms preserve the FT modulus of the original series; differences are in the phase relationships, that are completely destroyed for FT surrogates and imposed after switching off the link over the considered causal direction for CFT surrogates. The ability of the algorithms to assess causality in the frequency domain was tested using the directed coherence as discriminating parameter. Evaluation on simulated multiva...
This tutorial paper introduces a common framework for the evaluation of widely used frequency-domain...
Biological systems are usually non-linear and, as a result, the driving signal frequency (say, MHz) ...
The problem of the definition and evaluation of brain connectivity has become a central one in neuro...
This paper addresses the topic of evaluating the significance of frequency domain measures of causal...
This paper addresses the topic of evaluating the significance of frequency domain measures of causal...
This paper addresses the topic of evaluating the significance of frequency domain measures of causal...
We introduce a new hypothesis-testing framework, based on surrogate data generation, to assess in th...
We introduce a new hypothesis-testing framework, based on surrogate data generation, to assess in th...
In cardiovascular variability analysis, the significance of the coupling between two time series is ...
The detection of causal effects among simultaneous observations provides knowledge about the underly...
In cardiovascular variability analysis, the significance of the coupling between two time series is ...
In cardiovascular variability analysis, the significance of the coupling between two time series is ...
The major problem in examining interactions between sources of brain activity from MEG and EEG data ...
Introduction: Aggregating statistical dependencies between multivariate time series is important to ...
This tutorial paper introduces a common framework for the evaluation of widely used frequency-domain...
This tutorial paper introduces a common framework for the evaluation of widely used frequency-domain...
Biological systems are usually non-linear and, as a result, the driving signal frequency (say, MHz) ...
The problem of the definition and evaluation of brain connectivity has become a central one in neuro...
This paper addresses the topic of evaluating the significance of frequency domain measures of causal...
This paper addresses the topic of evaluating the significance of frequency domain measures of causal...
This paper addresses the topic of evaluating the significance of frequency domain measures of causal...
We introduce a new hypothesis-testing framework, based on surrogate data generation, to assess in th...
We introduce a new hypothesis-testing framework, based on surrogate data generation, to assess in th...
In cardiovascular variability analysis, the significance of the coupling between two time series is ...
The detection of causal effects among simultaneous observations provides knowledge about the underly...
In cardiovascular variability analysis, the significance of the coupling between two time series is ...
In cardiovascular variability analysis, the significance of the coupling between two time series is ...
The major problem in examining interactions between sources of brain activity from MEG and EEG data ...
Introduction: Aggregating statistical dependencies between multivariate time series is important to ...
This tutorial paper introduces a common framework for the evaluation of widely used frequency-domain...
This tutorial paper introduces a common framework for the evaluation of widely used frequency-domain...
Biological systems are usually non-linear and, as a result, the driving signal frequency (say, MHz) ...
The problem of the definition and evaluation of brain connectivity has become a central one in neuro...