Information processing is common in complex systems, and information geometric theory provides a useful tool to elucidate the characteristics of non-equilibrium processes, such as rare, extreme events, from the perspective of geometry. In particular, their time-evolutions can be viewed by the rate (information rate) at which new information is revealed (a new statistical state is accessed). In this paper, we extend this concept and develop a new information-geometric measure of causality by calculating the effect of one variable on the information rate of the other variable. We apply the proposed causal information rate to the Kramers equation and compare it with the entropy-based causality measure (information flow). Overall, the causal in...
The need to measure causal influences between random variables or processes in complex networks aris...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Information theory provides an interdisciplinary method to understand important phenomena in many re...
Abstract. Information causality measures, i.e. transfer entropy and symbolic transfer entropy, are m...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
Available online jan 7th 2014.International audienceThis study aims at providing the definitive link...
The paper investigates the link between Granger causality graphs recently formalized by Eichler and ...
Assessment of causal influences is a ubiquitous and important subject across diverse research fields...
Assessment of causal influences is a ubiquitous and important subject across diverse research fields...
Motivated by the presence of deep connections among dynamical equations, experimental data, physical...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
Abstract—In the analysis of physiological time series it is important to investigate the inter-depen...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
The need to measure causal influences between random variables or processes in complex networks aris...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Information theory provides an interdisciplinary method to understand important phenomena in many re...
Abstract. Information causality measures, i.e. transfer entropy and symbolic transfer entropy, are m...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
Available online jan 7th 2014.International audienceThis study aims at providing the definitive link...
The paper investigates the link between Granger causality graphs recently formalized by Eichler and ...
Assessment of causal influences is a ubiquitous and important subject across diverse research fields...
Assessment of causal influences is a ubiquitous and important subject across diverse research fields...
Motivated by the presence of deep connections among dynamical equations, experimental data, physical...
submitted, minor changes, different presentation of simulation resultsThis paper deals with the stud...
Abstract—In the analysis of physiological time series it is important to investigate the inter-depen...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
The need to measure causal influences between random variables or processes in complex networks aris...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...
We present an approach, framed in information theory, to assess nonlinear causality between the subs...