Three models of growing random networks with fitness dependent growth rates are analysed using the rate equations for the distribution of their connectivities. In the first model (A), a network is built by connecting incoming nodes to nodes of connectivity $k$ and random additive fitness $\eta$, with rate $(k-1)+ \eta $. For $\eta >0$ we find the connectivity distribution is power law with exponent $\gamma=+2$. In the second model (B), the network is built by connecting nodes to nodes of connectivity $k$, random additive fitness $\eta$ and random multiplicative fitness $\zeta$ with rate $\zeta(k-1)+\eta$. This model also has a power law connectivity distribution, but with an exponent which depends on the multiplicative fitness at each node....
Random graphs is a well-studied field of probability theory, and have proven very useful in a range ...
Abstract. The combination of growth and preferential attachment is responsible for the power-law dis...
We introduce a fully nonhierarchical network growing mechanism, that furthermore does not impose exp...
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Networks are commonly observed structures in complex systems with interacting and interdependent pa...
We introduce a model which consists in a planar network which grows by adding nodes at a distance r ...
In this work we analyze the implications of using a power law distribution of vertice's quality in t...
In real networks, the resources that make up the nodes and edges are finite. This constraint poses a...
In real networks, the resources that make up the nodes and edges are finite. This constraint poses a...
We study a number of properties of a simple random growing directed network which can be used to mo...
Random graphs is a well-studied field of probability theory, and have proven very useful in a range ...
Abstract. The combination of growth and preferential attachment is responsible for the power-law dis...
We introduce a fully nonhierarchical network growing mechanism, that furthermore does not impose exp...
International audienceThe degree distributions of complex networks are usually considered to follow ...
We study a class of network growth models in which the choice of attachment by new nodes is governed...
In real networks, the resources that make up the nodes and edges are finite. This constraint poses a...
Many empirical studies on real-life networks show that many networks are small worlds, meaning that ...
AbstractWe propose a new mechanism leading to scale-free networks which is based on the presence of ...
As for many complex systems, network structures are important as their backbone. From research on dy...
Networks are commonly observed structures in complex systems with interacting and interdependent pa...
We introduce a model which consists in a planar network which grows by adding nodes at a distance r ...
In this work we analyze the implications of using a power law distribution of vertice's quality in t...
In real networks, the resources that make up the nodes and edges are finite. This constraint poses a...
In real networks, the resources that make up the nodes and edges are finite. This constraint poses a...
We study a number of properties of a simple random growing directed network which can be used to mo...
Random graphs is a well-studied field of probability theory, and have proven very useful in a range ...
Abstract. The combination of growth and preferential attachment is responsible for the power-law dis...
We introduce a fully nonhierarchical network growing mechanism, that furthermore does not impose exp...