We propose a new measure (phase-slope index) to estimate the direction of information flux in multivariate time series. This measure (a) is insensitive to mixtures of independent sources, (b) gives meaningful results even if the phase spectrum is not linear, and (c) properly weights contributions from different frequencies. These properties are shown in extended simulations and contrasted to Granger causality which yields highly significant false detections for mixtures of independent sources. An application to electroencephalography data (eyes-closed condition) reveals a clear front-to-back information flow
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
International audienceWe propose a fast nonlinear method for assessing quantitatively both the exist...
We propose a new measure (phase-slope index) to estimate the direction of information flux in multiv...
International audienceIn this paper we present an approach to analyze the direction of information f...
International audiencePhase slope index is a measure which aims at detecting relation of interdepend...
International audiencePhase slope index is a measure which can detect causal direction of interdepen...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
The directed transfer function (dtf) has been proposed as a measure of information flow between the ...
International audienceOur objective is to analyze EEG signals recorded with depth electrodes during ...
In many signal processing applications, especially in the analysis of complex physiological systems,...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
International audienceWe propose a fast nonlinear method for assessing quantitatively both the exist...
We propose a new measure (phase-slope index) to estimate the direction of information flux in multiv...
International audienceIn this paper we present an approach to analyze the direction of information f...
International audiencePhase slope index is a measure which aims at detecting relation of interdepend...
International audiencePhase slope index is a measure which can detect causal direction of interdepen...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
The directed transfer function (dtf) has been proposed as a measure of information flow between the ...
International audienceOur objective is to analyze EEG signals recorded with depth electrodes during ...
In many signal processing applications, especially in the analysis of complex physiological systems,...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
International audienceWe propose a fast nonlinear method for assessing quantitatively both the exist...