‘Causal ’ direction is of great importance when dealing with complex systems. Often big volumes of data in the form of time series are available and it is important to develop methods that can inform about possible causal connections between the different observables. Here we investigate the ability of the Transfer Entropy measure to identify causal relations embedded in emergent coherent correlations. We do this by firstly applying Transfer Entropy to an amended Ising model. In addition we use a simple Random Transition model to test the reliability of Transfer Entropy as a measure of ‘causal ’ direction in the presence of stochastic fluctuations. In particular we systematically study the effect of the finite size of data sets
Transfer Entropy has been applied to experimental datasets to unveil causality between variables. In...
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...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
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 present an improvement of an estimator of causality in financial time series via transfer entropy...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Identifying, from time series analysis, reliable indicators of causal relationships is essential for...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
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...
Causality is one of the most challenging topics in science and engineering. In many applications, th...
Transfer Entropy has been applied to experimental datasets to unveil causality between variables. In...
Transfer Entropy has been applied to experimental datasets to unveil causality between variables. In...
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...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
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 present an improvement of an estimator of causality in financial time series via transfer entropy...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Identifying, from time series analysis, reliable indicators of causal relationships is essential for...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
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...
Causality is one of the most challenging topics in science and engineering. In many applications, th...
Transfer Entropy has been applied to experimental datasets to unveil causality between variables. In...
Transfer Entropy has been applied to experimental datasets to unveil causality between variables. In...
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...