We evaluate the information geometric complexity of entropic motion on low-dimensional Gaussian statistical manifolds in order to quantify how difficult it is to make macroscopic predictions about systems in the presence of limited information. Specifically, we observe that the complexity of such entropic inferences not only depends on the amount of available pieces of information but also on the manner in which such pieces are correlated. Finally, we uncover that, for certain correlational structures, the impossibility of reaching the most favorable configuration from an entropic inference viewpoint seems to lead to an information geometric analog of the well-known frustration effect that occurs in statistical physics
Entropic Dynamics (ED) is a theoretical framework developed to investigate the possibility that laws...
Markov random field models are powerful tools for the study of complex systems. However, little is k...
This volume will be useful to practising scientists and students working in the application of stati...
We evaluate the information geometric complexity of entropic motion on low-dimensional Gaussian stat...
We study the information geometry and the entropic dynamics of a three- dimensional Gaussian stati...
In a previous paper (C. Cafaro et al., 2012), we compared an uncorrelated 3 D Gaussian statistical m...
Motivated by the presence of deep connections among dynamical equations, experimental data, physical...
We analyze the information geometry and the entropic dynamics of a 3D Gaussian statistical model and...
Research on the use of information geometry (IG) in modern physics has witnessed significant advance...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
International audienceWe consider a Gaussian statistical model whose parameter space is given by the...
We present an extension of the ergodic, mixing and Bernoulli levels of the ergodic hierarchy in dyna...
In this work, using information geometric (IG) techniques, we investigate the effects of micro-corre...
Abstract: A novel information-geometrodynamical approach to chaotic dynamics (IGAC) on curved statis...
We outline the information-theoretic differential geometry of gamma distributions, which contain exp...
Entropic Dynamics (ED) is a theoretical framework developed to investigate the possibility that laws...
Markov random field models are powerful tools for the study of complex systems. However, little is k...
This volume will be useful to practising scientists and students working in the application of stati...
We evaluate the information geometric complexity of entropic motion on low-dimensional Gaussian stat...
We study the information geometry and the entropic dynamics of a three- dimensional Gaussian stati...
In a previous paper (C. Cafaro et al., 2012), we compared an uncorrelated 3 D Gaussian statistical m...
Motivated by the presence of deep connections among dynamical equations, experimental data, physical...
We analyze the information geometry and the entropic dynamics of a 3D Gaussian statistical model and...
Research on the use of information geometry (IG) in modern physics has witnessed significant advance...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
International audienceWe consider a Gaussian statistical model whose parameter space is given by the...
We present an extension of the ergodic, mixing and Bernoulli levels of the ergodic hierarchy in dyna...
In this work, using information geometric (IG) techniques, we investigate the effects of micro-corre...
Abstract: A novel information-geometrodynamical approach to chaotic dynamics (IGAC) on curved statis...
We outline the information-theoretic differential geometry of gamma distributions, which contain exp...
Entropic Dynamics (ED) is a theoretical framework developed to investigate the possibility that laws...
Markov random field models are powerful tools for the study of complex systems. However, little is k...
This volume will be useful to practising scientists and students working in the application of stati...