The paper investigates the link between Granger causality graphs recently formalized by Eichler and directed information theory developed by Massey and Kramer. We particularly insist on the implication of two notions of causality that may occur in physical systems. It is well accepted that dy-namical causality is assessed by the conditional transfer entropy, a measure appearing naturally as a part of directed information. Surprisingly the notion of instantaneous causality is often overlooked, even if it was clearly under-stood in early works. In the bivariate case, instantaneous coupling is mea-sured adequately by the instantaneous information exchange, a measure that supplements the transfer entropy in the decomposition of directed informa...
It is a task of widespread interest to learn the underlying causal structure for systems of random v...
Information processing is common in complex systems, and information geometric theory provides a use...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
Available online jan 7th 2014.International audienceThis study aims at providing the definitive link...
This article belongs to the Special Issue 'Transfer Entropy'International audienceThis report review...
This report reviews the conceptual and theoretical links between Granger causality and directed info...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
Granger causality is a statistical notion of causal influence based on prediction via vector autoreg...
The concepts of information transfer and causal effect have received much recent attention, yet ofte...
Spectral measures of causality are used to explore the role of different rhythms in the causal conne...
Abstract. Information causality measures, i.e. transfer entropy and symbolic transfer entropy, are m...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
It is a task of widespread interest to learn the underlying causal structure for systems of random v...
Information processing is common in complex systems, and information geometric theory provides a use...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
Available online jan 7th 2014.International audienceThis study aims at providing the definitive link...
This article belongs to the Special Issue 'Transfer Entropy'International audienceThis report review...
This report reviews the conceptual and theoretical links between Granger causality and directed info...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
Granger causality is a statistical notion of causal influence based on prediction via vector autoreg...
The concepts of information transfer and causal effect have received much recent attention, yet ofte...
Spectral measures of causality are used to explore the role of different rhythms in the causal conne...
Abstract. Information causality measures, i.e. transfer entropy and symbolic transfer entropy, are m...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
It is a task of widespread interest to learn the underlying causal structure for systems of random v...
Information processing is common in complex systems, and information geometric theory provides a use...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...