Stochastic cellular automaton

A stochastic cellular automaton (SCA), also known as a probabilistic cellular automaton (PCA), is a type of computational model. It consists of a grid of cells, where each cell has a particular state (e.g., "on" or "off"). The states of all cells evolve in discrete time steps according to a set of rules.

Unlike a standard cellular automaton where the rules are deterministic (fixed), the rules in a stochastic cellular automaton are probabilistic. This means a cell's next state is determined by chance, according to a set of probabilities that depend on the states of neighboring cells.[1]

Despite the simple, local, and random nature of the rules, these models can produce complex global patterns through processes like emergence and self-organization. They are used to model a wide variety of real-world phenomena where randomness is a factor, such as the spread of forest fires, the dynamics of disease epidemics, or the simulation of ferromagnetism in physics (see Ising model).

As a mathematical object, a stochastic cellular automaton is a discrete-time random dynamical system. It is often analyzed within the frameworks of interacting particle systems and Markov chains, where it may be called a system of locally interacting Markov chains.[2][3] See [4] for a more detailed introduction.

Formal definition

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From the perspective of probability theory, a stochastic cellular automaton is a discrete-time Markov process. The configuration of all cells at a given time is a state   in a product space  . Here,   is a graph representing the grid of cells (e.g.,  ), and each   is the finite set of possible states for the cell   (e.g.,  ).

The transition probability, which defines the dynamics, has a product form:

 

where   is the next configuration and   is a probability distribution on  .

Locality is a key requirement, meaning the probability of a cell   changing its state depends only on the states of its neighbors. This is expressed as  , where   is a finite neighborhood of cell   and   are the states of the cells in that neighborhood. See [5] for a more detailed introduction from this point of view.

Examples of stochastic cellular automaton

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Majority cellular automaton

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There is a version of the majority cellular automaton with probabilistic updating rules. See the Toom's rule.

Relation to lattice random fields

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PCA may be used to simulate the Ising model of ferromagnetism in statistical mechanics.[1] Some categories of models were studied from a statistical mechanics point of view.

Cellular Potts model

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There is a strong connection[6] between probabilistic cellular automata and the cellular Potts model in particular when it is implemented in parallel.

Non Markovian generalization

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The Galves–Löcherbach model is an example of a generalized PCA with a non Markovian aspect.

References

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  1. ^ a b Vichniac, G. (1984), "Simulating physics with cellular automata", Physica D, 10 (1–2): 96–115, Bibcode:1984PhyD...10...96V, doi:10.1016/0167-2789(84)90253-7.
  2. ^ Toom, A. L. (1978), Locally Interacting Systems and their Application in Biology: Proceedings of the School-Seminar on Markov Interaction Processes in Biology, held in Pushchino, March 1976, Lecture Notes in Mathematics, vol. 653, Springer-Verlag, Berlin-New York, ISBN 978-3-540-08450-1, MR 0479791
  3. ^ R. L. Dobrushin; V. I. Kri︠u︡kov; A. L. Toom (1978). Stochastic Cellular Systems: Ergodicity, Memory, Morphogenesis. Manchester University Press. ISBN 9780719022067.
  4. ^ Fernandez, R.; Louis, P.-Y.; Nardi, F. R. (2018). "Chapter 1: Overview: PCA Models and Issues". In Louis, P.-Y.; Nardi, F. R. (eds.). Probabilistic Cellular Automata. Springer. doi:10.1007/978-3-319-65558-1_1. ISBN 9783319655581. S2CID 64938352.
  5. ^ P.-Y. Louis PhD
  6. ^ Boas, Sonja E. M.; Jiang, Yi; Merks, Roeland M. H.; Prokopiou, Sotiris A.; Rens, Elisabeth G. (2018). "Chapter 18: Cellular Potts Model: Applications to Vasculogenesis and Angiogenesis". In Louis, P.-Y.; Nardi, F. R. (eds.). Probabilistic Cellular Automata. Springer. doi:10.1007/978-3-319-65558-1_18. hdl:1887/69811. ISBN 9783319655581.

Further reading

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