Models for generating simple graphs are important in the study of real-world complex networks. A well established example of such a model is the erased configuration model, where each node receives a number of half-edges that are connected to half-edges of other nodes at random, and then self-loops are removed and multiple edges are concatenated to make the graph simple. Although asymptotic results for many properties of this model, such as the limiting degree distribution, are known, the exact speed of convergence in terms of the graph sizes remains an open question. We provide a first answer by analyzing the size dependence of the average number of removed edges in the erased configuration model. By combining known upper bounds with a Tau...
\u3cp\u3eDue to its ease of use, as well as its enormous flexibility in its degree structure, the co...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
Models for generating simple graphs are important in the study of real-world complex networks. A wel...
Models for generating simple graphs are important in the study of real-world complex networks. A wel...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
\u3cp\u3eDue to its ease of use, as well as its enormous flexibility in its degree structure, the co...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
Models for generating simple graphs are important in the study of real-world complex networks. A wel...
Models for generating simple graphs are important in the study of real-world complex networks. A wel...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
An important problem in modeling networks is how to generate a randomly sampled graph with given deg...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
\u3cp\u3eDue to its ease of use, as well as its enormous flexibility in its degree structure, the co...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...
Subgraphs reveal information about the geometry and functionalities of complex networks. For scale-f...