Densification and Structural Transitions in Networks that Grow by Node Copying

Abstract

We introduce a growing network model---the copying model---in which a new node attaches to a randomly selected target node and, in addition, independently to each of the neighbors of the target with copying probability p. When p<12, this algorithm generates sparse networks, in which the average node degree is finite. A power-law degree distribution also arises, with a non-universal exponent whose value is determined by a transcendental equation in p. In the sparse regime, the network is "normal", e.g., the relative fluctuations in the number of links are asymptotically negligible. For p≥ 12, the emergent networks are dense (the average degree increases with the number of nodes N) and they exhibit intriguing structural behaviors. In particular, the N-dependence of the number of m-cliques (complete subgraphs of m nodes) undergoes m-1 transitions from normal to progressively more anomalous behavior at a m-dependent critical values of p. Different realizations of the network, which start from the same initial state, exhibit macroscopic fluctuations in the thermodynamic limit---absence of self averaging. When linking to second neighbors of the target node can occur, the number of links asymptotically grows as N2 as N∞, so that the network is effectively complete as N ∞.

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