Multichannel data collection in the neurosciences is routine and has necessitated the development of methods to identify the direction of interactions among processes. The most widely used approach for detecting these interactions in such data is based on autoregressive models of stochastic processes, although some work has raised the possibility of serious difficulties with this approach. This article demonstrates that these difficulties are present and that they are intrinsic features of the autoregressive method. Here, we introduce a new method taking into account unobserved processes and based on coherence. Two examples of three-process networks are used to demonstrate that although coherence measures are intrinsically non-directional, ...
Quantification of functional connectivity in physiological networks is frequently performed by means...
Abstract We consider the analysis of brain networks based on multi-electrode neural recordings. Gran...
Optimal adjustment of brain networks allows the biased processing of information in response to the ...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
We investigate interaction networks that we derive from multivariate time series with methods freque...
Directed connectivity inference has become a cornerstone in neuroscience to analyze multivariate dat...
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...
One major challenge in neuroscience is the identification of interrelations between signals reflecti...
A problem of great interest in real world systems, where multiple time series measurements are avail...
In the analysis of neuroscience data, the identification of task-related causal relationships betwee...
For the past decade, the detection and quantification of interactions within and between physiologic...
Network or graph theory has become a popular tool to represent and analyze large-scale interaction p...
Neuroscientific analyses balance between capturing the brain’s complexity and expressing that comple...
The inference of an underlying network topology from local observations of a complex system composed...
Quantification of functional connectivity in physiological networks is frequently performed by means...
Abstract We consider the analysis of brain networks based on multi-electrode neural recordings. Gran...
Optimal adjustment of brain networks allows the biased processing of information in response to the ...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
We investigate interaction networks that we derive from multivariate time series with methods freque...
Directed connectivity inference has become a cornerstone in neuroscience to analyze multivariate dat...
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...
One major challenge in neuroscience is the identification of interrelations between signals reflecti...
A problem of great interest in real world systems, where multiple time series measurements are avail...
In the analysis of neuroscience data, the identification of task-related causal relationships betwee...
For the past decade, the detection and quantification of interactions within and between physiologic...
Network or graph theory has become a popular tool to represent and analyze large-scale interaction p...
Neuroscientific analyses balance between capturing the brain’s complexity and expressing that comple...
The inference of an underlying network topology from local observations of a complex system composed...
Quantification of functional connectivity in physiological networks is frequently performed by means...
Abstract We consider the analysis of brain networks based on multi-electrode neural recordings. Gran...
Optimal adjustment of brain networks allows the biased processing of information in response to the ...