Accurately determining dependency structure is critical to discovering a system's causal organization. We recently showed that the transfer entropy fails in a key aspect of this---measuring information flow---due to its conflation of dyadic and polyadic relationships. We extend this observation to demonstrate that this is true of all such Shannon information measures when used to analyze multivariate dependencies. This has broad implications, particularly when employing information to express the organization and mechanisms embedded in complex systems, including the burgeoning efforts to combine complex network theory with information theory. Here, we do not suggest that any asp...
Context dependence is central to the description of complexity. Keying on the pairwise definition of...
Statistical relationships among the variables of a complex system reveal a lot about its physical be...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
Accurately determining dependency structure is critical to discovering a system's causal or...
Accurately determining dependency structure is critical to understanding a complex system’s organiza...
A central task in analyzing complex dynamics is to determine the loci of information storage and the...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
Context dependence is central to the description of complexity. Keying on the pairwise definition of...
Abstract. Information causality measures, i.e. transfer entropy and symbolic transfer entropy, are m...
Measuring the dependence of data plays a central role in statistics and machine learning. In this wo...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
The paper investigates the link between Granger causality graphs recently formalized by Eichler and ...
This article belongs to the Special Issue 'Transfer Entropy'International audienceThis report review...
The interactions between three or more random variables are often nontrivial, poorly understood and,...
Context dependence is central to the description of complexity. Keying on the pairwise definition of...
Statistical relationships among the variables of a complex system reveal a lot about its physical be...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
Accurately determining dependency structure is critical to discovering a system's causal or...
Accurately determining dependency structure is critical to understanding a complex system’s organiza...
A central task in analyzing complex dynamics is to determine the loci of information storage and the...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
Context dependence is central to the description of complexity. Keying on the pairwise definition of...
Abstract. Information causality measures, i.e. transfer entropy and symbolic transfer entropy, are m...
Measuring the dependence of data plays a central role in statistics and machine learning. In this wo...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
The paper investigates the link between Granger causality graphs recently formalized by Eichler and ...
This article belongs to the Special Issue 'Transfer Entropy'International audienceThis report review...
The interactions between three or more random variables are often nontrivial, poorly understood and,...
Context dependence is central to the description of complexity. Keying on the pairwise definition of...
Statistical relationships among the variables of a complex system reveal a lot about its physical be...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...