Understanding the details of the correlation between time series is an essential step on the route to assessing the causal relation between systems. Traditional statistical indicators, such as the Pearson correlation coefficient and the mutual information, have some significant limitations. More recently, transfer entropy has been proposed as a powerful tool to understand the flow of information between signals. In this paper, the comparative advantages of transfer entropy, for determining the time horizon of causal influence, are illustrated with the help of synthetic data. The technique has been specifically revised for the analysis of synchronization experiments. The investigation of experimental data from thermonuclear plasma diagnostic...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
In the study of interacting physiological systems, model-free tools for time series analysis are fun...
Identifying, from time series analysis, reliable indicators of causal relationships is essential for...
Understanding the details of the correlation between time series is an essential step on the route t...
Understanding the details of the correlation between time series is an essential step on the route t...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
We present a framework for the estimation of transfer entropy (TE) under the conditions typical of p...
Statistical relationships among the variables of a complex system reveal a lot about its physical be...
Statistical relationships among the variables of a complex system reveal a lot about its physical be...
We introduce an information-theoretical approach for analyzing cause-effect relationships between ti...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
We present a modification of the well known transfer entropy (TE) which makes it able to detect, bes...
We introduce an information-theoretical approach for analyzing information transfer between time ser...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
In the study of interacting physiological systems, model-free tools for time series analysis are fun...
Identifying, from time series analysis, reliable indicators of causal relationships is essential for...
Understanding the details of the correlation between time series is an essential step on the route t...
Understanding the details of the correlation between time series is an essential step on the route t...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
We present a framework for the estimation of transfer entropy (TE) under the conditions typical of p...
Statistical relationships among the variables of a complex system reveal a lot about its physical be...
Statistical relationships among the variables of a complex system reveal a lot about its physical be...
We introduce an information-theoretical approach for analyzing cause-effect relationships between ti...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
We present a modification of the well known transfer entropy (TE) which makes it able to detect, bes...
We introduce an information-theoretical approach for analyzing information transfer between time ser...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
In the study of interacting physiological systems, model-free tools for time series analysis are fun...
Identifying, from time series analysis, reliable indicators of causal relationships is essential for...