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Finite Dynamical Systems: A Mathematical Framework for Computer Simulation

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Mathematical Modeling, Simulation, Visualization and e-Learning
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Dynamical systems over finite fields provide a natural mathematical framework for interaction-based computer simulation of complex systems. This paper provides an introduction to a theory of these systems. Motivating examples of agent-based simulations are given.

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Jarrah, A.S., Laubenbacher, R. (2008). Finite Dynamical Systems: A Mathematical Framework for Computer Simulation. In: Konaté, D. (eds) Mathematical Modeling, Simulation, Visualization and e-Learning. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-540-74339-2_21

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