Partial information decomposition (PID) separates the contributions of sources about a target into unique, redundant, and synergistic components of information. In essence, PID answers the question of "who knows what" of a system of random variables and hence has applications to a wide spectrum of fields ranging from social to biological sciences. The paper presents MAXENT3D_PID, an algorithm that computes the PID of three sources, based on a recently-proposed maximum entropy measure, using convex optimization (cone programming). We describe the algorithm and its associated software utilization and report the results of various experiments assessing its accuracy. Moreover, the paper shows that a hierarchy of bivariate and trivariate PID all...
In the present communication entropy optimization principles namely maximum entropy principle and mi...
Each of the three information decompositions (the PID, PED, and GID) can be related to each-other in...
Bivariate partial information decompositions (PIDs) characterize how the information in a "message" ...
The Partial Information Decomposition, introduced by Williams P. L. et al. (2010), provides a theore...
Bertschinger, Rauh, Olbrich, Jost, and Ay (Entropy, 2014) have proposed a definition of a decomposit...
In a system of three stochastic variables, the Partial Information Decomposition (PID) of Williams a...
This package is composed by four parts: A MATLAB implementation of the partial information decomp...
In a system of three stochastic variables, the Partial Information Decomposition (PID) of Williams a...
Maximum entropy spectral density estimation is a technique for reconstructing an unknown density fun...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
The idea of a partial information decomposition (PID) gained significant attention for attributing t...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
Abstract. In this paper, we propose a Robust Discriminant Analysis based on maximum entropy (MaxEnt)...
We study a curve of Gibbsian families of complex 3 × 3-matrices and point out new features, absent i...
We describe an algorithm to efficiently compute maximum entropy densities, i.e. densities maximizing...
In the present communication entropy optimization principles namely maximum entropy principle and mi...
Each of the three information decompositions (the PID, PED, and GID) can be related to each-other in...
Bivariate partial information decompositions (PIDs) characterize how the information in a "message" ...
The Partial Information Decomposition, introduced by Williams P. L. et al. (2010), provides a theore...
Bertschinger, Rauh, Olbrich, Jost, and Ay (Entropy, 2014) have proposed a definition of a decomposit...
In a system of three stochastic variables, the Partial Information Decomposition (PID) of Williams a...
This package is composed by four parts: A MATLAB implementation of the partial information decomp...
In a system of three stochastic variables, the Partial Information Decomposition (PID) of Williams a...
Maximum entropy spectral density estimation is a technique for reconstructing an unknown density fun...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
The idea of a partial information decomposition (PID) gained significant attention for attributing t...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
Abstract. In this paper, we propose a Robust Discriminant Analysis based on maximum entropy (MaxEnt)...
We study a curve of Gibbsian families of complex 3 × 3-matrices and point out new features, absent i...
We describe an algorithm to efficiently compute maximum entropy densities, i.e. densities maximizing...
In the present communication entropy optimization principles namely maximum entropy principle and mi...
Each of the three information decompositions (the PID, PED, and GID) can be related to each-other in...
Bivariate partial information decompositions (PIDs) characterize how the information in a "message" ...