The inference of causal interaction structures in multivariate systems enables a deeper understanding of the investigated network. Analyzing nonlinear systems using partial directed coherence requires high model orders of the underlying vector-autoregressive process. We present a method to overcome the drawbacks caused by the high model orders. We calculate the corresponding statistics and provide a significance level. The performance is illustrated by means of model systems and in an application to neurological data
International audienceGranger causality approaches have been widely used to estimate effective conne...
Neurons engage in causal interactions with one another and with the surrounding body and environment...
Effective connectivity measures the pattern of causal interactions between brain regions. Traditiona...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
We propose different approaches to infer causal influences between agents in a network using only ob...
AbstractThis is the final paper in a Comments and Controversies series dedicated to “The identificat...
Identifying causal relationships is a challenging yet crucial problem in many fields of science like...
Identifying and describing the dynamics of complex systems is a central challenge in various areas o...
This study introduces a new approach for the detection of nonlinear Granger causality between dynami...
Multivariate Granger causality is a well-established approach for inferring information flow in comp...
Multichannel data collection in the neurosciences is routine and has necessitated the development of...
In the analysis of neuroscience data, the identification of task-related causal relationships betwee...
Causal networks are essential in many applications to illustrate causal relations in dynamical syste...
To show how causal interactions in neural dynamics are modulated by behavior, it is valuable to anal...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
International audienceGranger causality approaches have been widely used to estimate effective conne...
Neurons engage in causal interactions with one another and with the surrounding body and environment...
Effective connectivity measures the pattern of causal interactions between brain regions. Traditiona...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
We propose different approaches to infer causal influences between agents in a network using only ob...
AbstractThis is the final paper in a Comments and Controversies series dedicated to “The identificat...
Identifying causal relationships is a challenging yet crucial problem in many fields of science like...
Identifying and describing the dynamics of complex systems is a central challenge in various areas o...
This study introduces a new approach for the detection of nonlinear Granger causality between dynami...
Multivariate Granger causality is a well-established approach for inferring information flow in comp...
Multichannel data collection in the neurosciences is routine and has necessitated the development of...
In the analysis of neuroscience data, the identification of task-related causal relationships betwee...
Causal networks are essential in many applications to illustrate causal relations in dynamical syste...
To show how causal interactions in neural dynamics are modulated by behavior, it is valuable to anal...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
International audienceGranger causality approaches have been widely used to estimate effective conne...
Neurons engage in causal interactions with one another and with the surrounding body and environment...
Effective connectivity measures the pattern of causal interactions between brain regions. Traditiona...