What is the role of each node in a system of many interconnected nodes? This can be quantified by comparing the dynamics of the nodes in the intact system, with their modified dynamics in the edited system, where one node is deleted. In detail, the spectra are calculated from a causal multivariate autoregressive model for the intact system. Next, without re-estimation, one node is deleted from the model and the modified spectra at all other nodes are re-calculated. The change in spectra from the edited system to the intact system quantifies the role of the deleted node, giving a measure of its Granger-causal effects (CFX) on the system. A generalization of this novel measure is available for networks (i.e. for groups of nodes), which quanti...
This paper proposes a novel methodology to detect Granger causality on average in vector autoregress...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...
What is the role of each node in a system of many interconnected nodes? This can be quantified by co...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
Granger causality (GC) is a method for determining whether and how two time series exert causal infl...
www.ufl.edu Granger causality is becoming an important tool for determining causal relations between...
Multivariate Granger causality is a well-established approach for inferring information flow in comp...
Motivation: Feedback circuits are crucial network motifs, ubiquitously found in many intra- and inte...
International audienceNowadays, Granger causality techniques are frequently applied to investigate c...
Background Reverse-engineering approaches such as Bayesian network inference, ordinary differential...
Abstract: This article describes the combination of multivariate Ganger causality analysis, temporal...
We analyze, by means of Granger causality (GC), the effect of synergy and redundancy in the inferenc...
Background: Inference and understanding of gene networks from experimental data is an important but ...
This paper proposes a novel methodology to detect Granger causality on average in vector autoregress...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...
What is the role of each node in a system of many interconnected nodes? This can be quantified by co...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
Granger causality (GC) is a method for determining whether and how two time series exert causal infl...
www.ufl.edu Granger causality is becoming an important tool for determining causal relations between...
Multivariate Granger causality is a well-established approach for inferring information flow in comp...
Motivation: Feedback circuits are crucial network motifs, ubiquitously found in many intra- and inte...
International audienceNowadays, Granger causality techniques are frequently applied to investigate c...
Background Reverse-engineering approaches such as Bayesian network inference, ordinary differential...
Abstract: This article describes the combination of multivariate Ganger causality analysis, temporal...
We analyze, by means of Granger causality (GC), the effect of synergy and redundancy in the inferenc...
Background: Inference and understanding of gene networks from experimental data is an important but ...
This paper proposes a novel methodology to detect Granger causality on average in vector autoregress...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...