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Asymptotic Information-Theoretic Detection of Dynamical Organization in Complex Systems
Authors:Gianluca D&#x;Addese  Laura Sani  Luca La Rocca  Roberto Serra  Marco Villani
Institution:1.Department of Physics, Informatics and Mathematics, University of Modena and Reggio Emilia, 41125 Modena, Italy; (G.D.); (L.L.R.); (R.S.);2.Department of Engineering and Architecture, University of Parma, 43124 Parma, Italy;3.European Centre for Living Technology, 30123 Venice, Italy;4.Institute for Advanced Studies, University of Amsterdam, 1012 GC Amsterdam, The Netherlands
Abstract:The identification of emergent structures in complex dynamical systems is a formidable challenge. We propose a computationally efficient methodology to address such a challenge, based on modeling the state of the system as a set of random variables. Specifically, we present a sieving algorithm to navigate the huge space of all subsets of variables and compare them in terms of a simple index that can be computed without resorting to simulations. We obtain such a simple index by studying the asymptotic distribution of an information-theoretic measure of coordination among variables, when there is no coordination at all, which allows us to fairly compare subsets of variables having different cardinalities. We show that increasing the number of observations allows the identification of larger and larger subsets. As an example of relevant application, we make use of a paradigmatic case regarding the identification of groups in autocatalytic sets of reactions, a chemical situation related to the origin of life problem.
Keywords:chi-squared approximation  cluster index  integration  mutual information  relevance index  relevant subset
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