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Complexity characterization in a probabilistic approach to dynamical systems through information geometry and inductive inference

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Abstract

Information geometric techniques and inductive inference methods hold great promise for solving computational problems of interest in classical and quantum physics, especially with regard to complexity characterization of dynamical systems in terms of their probabilistic description on curved statistical manifolds. In this paper, we investigate the possibility of describing the macroscopic behavior of complex systems in terms of the underlying statistical structure of their microscopic degrees of freedom by the use of statistical inductive inference and information geometry. We review the maximum relative entropy formalism and the theoretical structure of the information geometrodynamical approach to chaos on statistical manifolds MS. Special focus is devoted to a description of the roles played by the sectional curvature K MS, the Jacobi field intensity J MS and the information geometrodynamical entropy SMS . These quantities serve as powerful information-geometric complexity measures of information-constrained dynamics associated with arbitrary chaotic and regular systems defined onMS. Finally, the application of such information-geometric techniques to several theoretical models is presented.

Original languageEnglish
Article number025009
JournalPhysica Scripta
Volume85
Issue number2
DOIs
StatePublished - Feb 2012

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