English

Complex Network Analysis of State Spaces for Random Boolean Networks

Statistical Mechanics 2009-11-13 v2 Disordered Systems and Neural Networks

Abstract

We apply complex network analysis to the state spaces of random Boolean networks (RBNs). An RBN contains NN Boolean elements each with KK inputs. A directed state space network (SSN) is constructed by linking each dynamical state, represented as a node, to its temporal successor. We study the heterogeneity of an SSN at both local and global scales, as well as sample-to-sample fluctuations within an ensemble of SSNs. We use in-degrees of nodes as a local topological measure, and the path diversity [Phys. Rev. Lett. 98, 198701 (2007)] of an SSN as a global topological measure. RBNs with 2K52 \leq K \leq 5 exhibit non-trivial fluctuations at both local and global scales, while K=2 exhibits the largest sample-to-sample, possibly non-self-averaging, fluctuations. We interpret the observed ``multi scale'' fluctuations in the SSNs as indicative of the criticality and complexity of K=2 RBNs. ``Garden of Eden'' (GoE) states are nodes on an SSN that have in-degree zero. While in-degrees of non-GoE nodes for K>1K>1 SSNs can assume any integer value between 0 and 2N2^N, for K=1 all the non-GoE nodes in an SSN have the same in-degree which is always a power of two.

Keywords

Cite

@article{arxiv.0710.0611,
  title  = {Complex Network Analysis of State Spaces for Random Boolean Networks},
  author = {Amer Shreim and Andrew Berdahl and Vishal Sood and Peter Grassberger and Maya Paczuski},
  journal= {arXiv preprint arXiv:0710.0611},
  year   = {2009}
}
R2 v1 2026-06-21T09:25:32.074Z