ID: cond-mat/0506807

Scaling in critical random Boolean networks

June 30, 2005

View on ArXiv
Viktor Kaufman, Tamara Mihaljev, Barbara Drossel
Condensed Matter
Statistical Mechanics
Disordered Systems and Neura...

We derive mostly analytically the scaling behavior of the number of nonfrozen and relevant nodes in critical Kauffman networks (with two inputs per node) in the thermodynamic limit. By defining and analyzing a stochastic process that determines the frozen core we can prove that the mean number of nonfrozen nodes scales with the network size N as N^{2/3}, with only N^{1/3} nonfrozen nodes having two nonfrozen inputs. We also show the probability distributions for the numbers of these nodes. Using a different stochastic process, we determine the scaling behavior of the number of relevant nodes. Their mean number increases for large N as N^{1/3}, and only a finite number of relevant nodes have two relevant inputs. It follows that all relevant components apart from a finite number are simple loops, and that the mean number and length of attractors increases faster than any power law with network size.

Similar papers 1

Scaling in a general class of critical random Boolean networks

June 23, 2006

99% Match
Tamara Mihaljev, Barbara Drossel
Disordered Systems and Neura...
Statistical Mechanics

We derive analytically the scaling behavior in the thermodynamic limit of the number of nonfrozen and relevant nodes in the most general class of critical Kauffman networks for any number of inputs per node, and for any choice of the probability distribution for the Boolean functions. By defining and analyzing a stochastic process that determines the frozen core we can prove that the mean number of nonfrozen nodes in any critical network with more than one input per node scal...

Find SimilarView on arXiv

On the number of attractors in random Boolean networks

March 21, 2005

93% Match
Barbara Drossel
Statistical Mechanics
Disordered Systems and Neura...

The evaluation of the number of attractors in Kauffman networks by Samuelsson and Troein is generalized to critical networks with one input per node and to networks with two inputs per node and different probability distributions for update functions. A connection is made between the terms occurring in the calculation and between the more graphic concepts of frozen, nonfrozen and relevant nodes, and relevant components. Based on this understanding, a phenomenological argument...

Find SimilarView on arXiv

Relevant components in critical random Boolean networks

June 20, 2006

91% Match
V. Kaufman, B. Drossel
Disordered Systems and Neura...

Random Boolean networks were introduced in 1969 by Kauffman as a model for gene regulation. By combining analytical arguments and efficient numerical simulations, we evaluate the properties of relevant components of critical random Boolean networks independently of update scheme. As known from previous work, the number of relevant components grows logarithmically with network size. We find that in most networks all relevant nodes with more than one relevant input sit in the s...

Find SimilarView on arXiv

Scaling in ordered and critical random Boolean networks

December 12, 2002

91% Match
Joshua E. S. Duke University, Durham, NC Socolar, Stuart A. Bios Group, Santa Fe, NM Kauffman
Disordered Systems and Neura...
Molecular Networks

Random Boolean networks, originally invented as models of genetic regulatory networks, are simple models for a broad class of complex systems that show rich dynamical structures. From a biological perspective, the most interesting networks lie at or near a critical point in parameter space that divides ``ordered'' from ``chaotic'' attractor dynamics. In the ordered regime, we show rigorously that the average number of relevant nodes (the ones that determine the attractor dyna...

Find SimilarView on arXiv

Critical Boolean networks with scale-free in-degree distribution

January 4, 2009

91% Match
Barbara Drossel, Florian Greil
Disordered Systems and Neura...
Statistical Mechanics

We investigate analytically and numerically the dynamical properties of critical Boolean networks with power-law in-degree distributions. When the exponent of the in-degree distribution is larger than 3, we obtain results equivalent to those obtained for networks with fixed in-degree, e.g., the number of the non-frozen nodes scales as $N^{2/3}$ with the system size $N$. When the exponent of the distribution is between 2 and 3, the number of the non-frozen nodes increases as $...

Find SimilarView on arXiv

Number and length of attractors in a critical Kauffman model with connectivity one

October 22, 2004

90% Match
Barbara Drossel, Tamara Mihaljev, Florian Greil
Disordered Systems and Neura...
Statistical Mechanics

The Kauffman model describes a system of randomly connected nodes with dynamics based on Boolean update functions. Though it is a simple model, it exhibits very complex behavior for "critical" parameter values at the boundary between a frozen and a disordered phase, and is therefore used for studies of real network problems. We prove here that the mean number and mean length of attractors in critical random Boolean networks with connectivity one both increase faster than any ...

Find SimilarView on arXiv

Scaling laws in critical random Boolean networks with general in- and out-degree distributions

January 29, 2013

90% Match
Marco Möller, Barbara Drossel
Molecular Networks
Statistical Mechanics
Physics and Society

We evaluate analytically and numerically the size of the frozen core and various scaling laws for critical Boolean networks that have a power-law in- and/or out-degree distribution. To this purpose, we generalize an efficient method that has previously been used for conventional random Boolean networks and for networks with power-law in-degree distributions. With this generalization, we can also deal with power-law out-degree distributions. When the power-law exponent is betw...

Find SimilarView on arXiv

The dynamics of critical Kauffman networks under asynchronous stochastic update

January 5, 2005

90% Match
Florian Greil, Barbara Drossel
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.

Find SimilarView on arXiv

The properties of attractors of canalyzing random Boolean networks

November 2, 2005

89% Match
U. Paul, V. Kaufman, B. Drossel
Statistical Mechanics
Disordered Systems and Neura...

We study critical random Boolean networks with two inputs per node that contain only canalyzing functions. We present a phenomenological theory that explains how a frozen core of nodes that are frozen on all attractors arises. This theory leads to an intuitive understanding of the system's dynamics as it demonstrates the analogy between standard random Boolean networks and networks with canalyzing functions only. It reproduces correctly the scaling of the number of nonfrozen ...

Find SimilarView on arXiv

Boolean Dynamics of Kauffman Models with a Scale-Free Network

October 17, 2005

89% Match
Kazumoto Iguchi, Shuichi Kinoshita, Hiroaki S. Yamada
Disordered Systems and Neura...

We study the Boolean dynamics of the "quenched" Kauffman models with a directed scale-free network, comparing with that of the original directed random Kauffman networks and that of the directed exponential-fluctuation networks. We have numerically investigated the distributions of the state cycle lengths and its changes as the network size $N$ and the average degree $<k>$ of nodes increase. In the relatively small network ($N \sim 150$), the median, the mean value and the st...

Find SimilarView on arXiv