ID: cond-mat/0501081

The dynamics of critical Kauffman networks under asynchronous stochastic update

January 5, 2005

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Florian Greil, Barbara Drossel
Condensed Matter
Disordered Systems and Neura...
Statistical Mechanics

We show that the mean number of attractors in a critical Boolean network under asynchronous stochastic update grows like a power law and that the mean size of the attractors increases as a stretched exponential with the system size. This is in strong contrast to the synchronous case, where the number of attractors grows faster than any power law.

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