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<1/2, this algorithm generates sparse networks, in which the average node degree is finite. A power-law degree distribution also arises, with a nonuniversal 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≥1/2, the emergent networks are dense (the average degree increases with the number of nodes N), and they exhibit intriguing structural behaviors. In partic...
In this paper, we analyze the evolution of a small-world network and its subsequent transformation t...
In this paper we study the degree distribution and the two-node degree correlations in growing netwo...
AbstractThis paper focuses on the degree sequence of a random graph process with copying and vertex ...
We introduce a growing network model, the copying model, in which a new node attaches to a randomly ...
We introduce a minimal generative model for densifying networks in which a new node attaches to a ra...
Node copying is an important mechanism for network formation, yet most models assume uniform copying...
We present a continuum formalism for modeling growing random networks under addition and deletion of...
In order to explore further the underlying mechanism of scale-free networks, we study stochastic sec...
We investigate the growth of connectivity in a network. In our model, starting with a set of disjoin...
How do real graphs evolve over time? What are ``normal'' growth patterns in social, technological, a...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
The emergence of uncorrelated growing networks is proved when nodes are removed either uniformly or ...
Growing networks have a causal structure. We show that the causality strongly influences the scaling...
We generalize the Poissonian evolving random graph model of M. Bauer and D. Bernard (2003), to deal...
<p>The network size is 900. The parameter α is 1.0, 0.7, 0.3 and 0.0 respectively. α = 1 corresponds...
In this paper, we analyze the evolution of a small-world network and its subsequent transformation t...
In this paper we study the degree distribution and the two-node degree correlations in growing netwo...
AbstractThis paper focuses on the degree sequence of a random graph process with copying and vertex ...
We introduce a growing network model, the copying model, in which a new node attaches to a randomly ...
We introduce a minimal generative model for densifying networks in which a new node attaches to a ra...
Node copying is an important mechanism for network formation, yet most models assume uniform copying...
We present a continuum formalism for modeling growing random networks under addition and deletion of...
In order to explore further the underlying mechanism of scale-free networks, we study stochastic sec...
We investigate the growth of connectivity in a network. In our model, starting with a set of disjoin...
How do real graphs evolve over time? What are ``normal'' growth patterns in social, technological, a...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
The emergence of uncorrelated growing networks is proved when nodes are removed either uniformly or ...
Growing networks have a causal structure. We show that the causality strongly influences the scaling...
We generalize the Poissonian evolving random graph model of M. Bauer and D. Bernard (2003), to deal...
<p>The network size is 900. The parameter α is 1.0, 0.7, 0.3 and 0.0 respectively. α = 1 corresponds...
In this paper, we analyze the evolution of a small-world network and its subsequent transformation t...
In this paper we study the degree distribution and the two-node degree correlations in growing netwo...
AbstractThis paper focuses on the degree sequence of a random graph process with copying and vertex ...