Literature DB >> 14525069

Subgraphs in random networks.

S Itzkovitz1, R Milo, N Kashtan, G Ziv, U Alon.   

Abstract

Understanding the subgraph distribution in random networks is important for modeling complex systems. In classic Erdos networks, which exhibit a Poissonian degree distribution, the number of appearances of a subgraph G with n nodes and g edges scales with network size as <G> approximately N(n-g). However, many natural networks have a non-Poissonian degree distribution. Here we present approximate equations for the average number of subgraphs in an ensemble of random sparse directed networks, characterized by an arbitrary degree sequence. We find scaling rules for the commonly occurring case of directed scale-free networks, in which the outgoing degree distribution scales as P(k) approximately k(-gamma). Considering the power exponent of the degree distribution, gamma, as a control parameter, we show that random networks exhibit transitions between three regimes. In each regime, the subgraph number of appearances follows a different scaling law, <G> approximately Nalpha, where alpha=n-g+s-1 for gamma<2, alpha=n-g+s+1-gamma for 2<gamma<gamma(c), and alpha=n-g for gamma>gamma(c), where s is the maximal outdegree in the subgraph, and gamma(c)=s+1. We find that certain subgraphs appear much more frequently than in Erdos networks. These results are in very good agreement with numerical simulations. This has implications for detecting network motifs, subgraphs that occur in natural networks significantly more than in their randomized counterparts.

Entities:  

Year:  2003        PMID: 14525069     DOI: 10.1103/PhysRevE.68.026127

Source DB:  PubMed          Journal:  Phys Rev E Stat Nonlin Soft Matter Phys        ISSN: 1539-3755


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