Causality is one of the most challenging topics in science and engineering. In many applications, the cause and effect relationships among complex systems are not clear. In the literature, many information theoretic approaches, such as the Granger causality and Transfer Entropy, have been successfully applied to estimate the direction of interactions among random variables. However, the majority of these analysis have focused on the relationships between pairs of variables. In complex systems, the number of variables can increase to large numbers and analysis of the interactions of each pair can be problematic. In this thesis, we propose using conditional Transfer Entropy in order to seek out the hidden information among many interacting v...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Uncovering causal interdependencies from observational data is one of the great challenges of nonlin...
Granger causality is a statistical notion of causal influence based on prediction via vector autoreg...
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...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
‘Causal ’ direction is of great importance when dealing with complex systems. Often big volumes of d...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Available online jan 7th 2014.International audienceThis study aims at providing the definitive link...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Uncovering causal interdependencies from observational data is one of the great challenges of nonlin...
Granger causality is a statistical notion of causal influence based on prediction via vector autoreg...
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...
'Causal' direction is of great importance when dealing with complex systems. Often big volumes of da...
‘Causal ’ direction is of great importance when dealing with complex systems. Often big volumes of d...
Transfer entropy, an information-theoretic measure of time-directed information trans-fer between jo...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Available online jan 7th 2014.International audienceThis study aims at providing the definitive link...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Information-theoretic quantities, such as entropy and mutual information (MI), can be used to quanti...
Uncovering causal interdependencies from observational data is one of the great challenges of nonlin...
Granger causality is a statistical notion of causal influence based on prediction via vector autoreg...