Publication | Open Access
Topological Characterization of Complex Systems: Using Persistent Entropy
62
Citations
21
References
2015
Year
EngineeringArtificial Immune SystemNetwork AnalysisImmunological ComputingComplex SystemsTopological PropertyData ScienceBiological NetworkPersistent EntropyComplex Biological SystemTopological DynamicTopological CharacterizationTopological RepresentationTopological Data AnalysisComputer ScienceNetwork ScienceEntropyComputational NeuroscienceSystems BiologyPersistent Entropy Automaton
In this paper, we propose a methodology for deriving a model of a complex system by exploiting the information extracted from topological data analysis. Central to our approach is the S[B] paradigm in which a complex system is represented by a two-level model. One level, the structural S one, is derived using the newly-introduced quantitative concept of persistent entropy, and it is described by a persistent entropy automaton. The other level, the behavioral B one, is characterized by a network of interacting computational agents. The presented methodology is applied to a real case study, the idiotypic network of the mammalian immune system.
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