This paper introduces a model-agnostic approach to study statistical synergy, a form of emergence in which patterns at large scales are not traceable from lower scales. Our framework leverages various multivariate extensions of Shannon's mutual information, and introduces the O-information as a metric that is capable of characterizing synergy- and redundancy-dominated systems. The O-information is a symmetric quantity, and can assess intrinsic properties of a system without dividing its parts into “predictors” and “targets.” We develop key analytical properties of the O-information, and study how it relates to other metrics of high-order interactions from the statistical mechanics and neuroscience literature. Finally, as a proof of concept,...
To fully characterize the information that two source variables carry about a third target variable,...
: Different information-theoretic measures are available in the literature for the study of pairwise...
O-information is an information-theoretic metric that captures the overall balance between redundant...
This paper introduces a model-agnostic approach to study statistical synergy, a form of emergence in...
High-order, beyond-pairwise interdependencies are at the core of biological, economic, and social co...
High-order, beyond-pairwise interdependencies are at the core of biological, economic, and social co...
We address the problem of efficiently and informatively quantifying how multiplets of variables carr...
We address the problem of efficiently and informatively quantifying how multiplets of variables carr...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
Quantifying synergy among stochastic variables is an important open problem in information theory. I...
O-information is an information-theoretic metric that captures the overall balance between redundant...
Quantifying synergy among stochastic variables is an important open problem in information theory. I...
One of the most well-established tools for modeling the brain as a complex system is the functional ...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
The interactions between three or more random variables are often nontrivial, poorly understood and,...
To fully characterize the information that two source variables carry about a third target variable,...
: Different information-theoretic measures are available in the literature for the study of pairwise...
O-information is an information-theoretic metric that captures the overall balance between redundant...
This paper introduces a model-agnostic approach to study statistical synergy, a form of emergence in...
High-order, beyond-pairwise interdependencies are at the core of biological, economic, and social co...
High-order, beyond-pairwise interdependencies are at the core of biological, economic, and social co...
We address the problem of efficiently and informatively quantifying how multiplets of variables carr...
We address the problem of efficiently and informatively quantifying how multiplets of variables carr...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
Quantifying synergy among stochastic variables is an important open problem in information theory. I...
O-information is an information-theoretic metric that captures the overall balance between redundant...
Quantifying synergy among stochastic variables is an important open problem in information theory. I...
One of the most well-established tools for modeling the brain as a complex system is the functional ...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
The interactions between three or more random variables are often nontrivial, poorly understood and,...
To fully characterize the information that two source variables carry about a third target variable,...
: Different information-theoretic measures are available in the literature for the study of pairwise...
O-information is an information-theoretic metric that captures the overall balance between redundant...