This article studies the sensitivity of Granger causality to the addition of noise, the introduction of subsampling, and the application of causal invertible filters to weakly stationary processes. Using canonical spectral factors and Wold decompositions, we give general conditions under which additive noise or filtering distorts Granger‐causal properties by inducing (spurious) Granger causality, as well as conditions under which it does not. For the errors‐in‐variables case, we give a continuity result, which implies that: a ‘small’ noise‐to‐signal ratio entails ‘small’ distortions in Granger causality. On filtering, we give general necessary and sufficient conditions under which ‘spurious’ causal relations between (vector) time series are...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
In the past, causality measures based on Granger causality have been suggested for assessing directi...
Granger causality (GC) is a statistical notion of causal influence based on prediction via linear ve...
This article studies the sensitivity of Granger causality to the addition of noise, the introduction...
Granger causality (G-causality) is increasingly employed as a method for identifying directed functi...
Computing Granger causal relations among bivariate experimentally observed time series has received ...
Most of the signals recorded in experiments are inevitably contaminated by measurement noise. Hence,...
This paper extends multivariate Granger causality to take into account the subspaces along which Gra...
Using Monte Carlo methods, the properties of Granger causality test in stable VAR models are studied...
AbstractThis technical paper offers a critical re-evaluation of (spectral) Granger causality measure...
Granger causality is a statistical concept of causality that is based on prediction. According to Gr...
Granger-causality is a popular definition of causality that permits a statistical test to determine ...
Background: Granger causality is well established within the neurosciences for inference of directed...
In the past, causality measures based on Granger causality have been suggested for assessing directi...
Granger causality has long been a prominent method for inferring causal interactions between stochas...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
In the past, causality measures based on Granger causality have been suggested for assessing directi...
Granger causality (GC) is a statistical notion of causal influence based on prediction via linear ve...
This article studies the sensitivity of Granger causality to the addition of noise, the introduction...
Granger causality (G-causality) is increasingly employed as a method for identifying directed functi...
Computing Granger causal relations among bivariate experimentally observed time series has received ...
Most of the signals recorded in experiments are inevitably contaminated by measurement noise. Hence,...
This paper extends multivariate Granger causality to take into account the subspaces along which Gra...
Using Monte Carlo methods, the properties of Granger causality test in stable VAR models are studied...
AbstractThis technical paper offers a critical re-evaluation of (spectral) Granger causality measure...
Granger causality is a statistical concept of causality that is based on prediction. According to Gr...
Granger-causality is a popular definition of causality that permits a statistical test to determine ...
Background: Granger causality is well established within the neurosciences for inference of directed...
In the past, causality measures based on Granger causality have been suggested for assessing directi...
Granger causality has long been a prominent method for inferring causal interactions between stochas...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
In the past, causality measures based on Granger causality have been suggested for assessing directi...
Granger causality (GC) is a statistical notion of causal influence based on prediction via linear ve...