An important problem in modeling networks is how to generate a randomly sampled graph with given degrees. A popular model is the configuration model, a network with assigned degrees and random connections. The erased configuration model is obtained when self-loops and multiple edges in the configuration model are removed. We prove an upper bound for the number of such erased edges for regularly-varying degree distributions with infinite variance, and use this result to prove central limit theorems for Pearson's correlation coefficient and the clustering coefficient in the erased configuration model. Our results explain the structural correlations in the erased configuration model and show that removing edges leads to different scaling of th...
We present a generator of random networks where both the degree-dependent clustering coefficient and...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
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...
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...
We study the average nearest neighbor degree $a(k)$ of vertices with degree $k$. In many real-world ...
The average nearest neighbor degree (ANND) of a node of degree k is widely used to measure dependenc...
We study the average nearest neighbor degree $a(k)$ of vertices with degree $k$. In many real-world ...
The average nearest neighbor degree (ANND) of a node of degree k is widely used to measure dependenc...
Models for generating simple graphs are important in the study of real-world complex networks. A wel...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
We present a generator of random networks where both the degree-dependent clustering coefficient and...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
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...
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...
We study the average nearest neighbor degree $a(k)$ of vertices with degree $k$. In many real-world ...
The average nearest neighbor degree (ANND) of a node of degree k is widely used to measure dependenc...
We study the average nearest neighbor degree $a(k)$ of vertices with degree $k$. In many real-world ...
The average nearest neighbor degree (ANND) of a node of degree k is widely used to measure dependenc...
Models for generating simple graphs are important in the study of real-world complex networks. A wel...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
We present a generator of random networks where both the degree-dependent clustering coefficient and...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Models for generating simple graphs are important in the study of real-world complex networks. A wel...