In recent decades, complex real-world networks, such as social networks, the World Wide Web, financial networks, etc., have become a popular subject for both researchers and practitioners. This is largely due to the advances in computing power and big-data analytics. A key issue of analyzing these networks is the centrality of nodes. Ranking algorithms are designed to achieve the goal, e.g., Google's PageRank. We analyze the asymptotic distribution of the rank of a randomly chosen node, computed by a family of ranking algorithms on a random graph, including PageRank, when the size of the network grows to infinity. We propose a configuration model generating the structure of a directed graph given in- and out-degree distributions of th...
Most real world dynamic networks are evolved very fast with time. It is not feasible to collect the ...
We present a model of network formation where entering nodes find other nodes to link to both comple...
Large real-world networks typically follow a power-law degree distribution. To study such networks, ...
This paper studies the distribution of a family of rankings, which includes Google’s PageRank, on a ...
Note: formula is not displayed correctly. This paper studies the distribution of a family of ranking...
Page Rank is a well-known algorithm for measuring centrality in networks. It was originally proposed...
We analyze the distribution of PageRank on a directed configuration model and show that as the size ...
PageRank is a well-known algorithm for measuring centrality in net-works. It was originally proposed...
Our world is filled with complex systems, ranging from technological systems such as the Internet an...
Abstract. We analyze the distribution of PageRank on a directed con-figuration model and show that a...
We present a generator of random networks where both the degree-dependent clustering coefficient and...
Complex network theory crucially depends on the assumptions made about the degree distribution, whil...
AbstractWe introduce a new class of random graph models for complex real-world networks, based on th...
open3siIdentifying hierarchies and rankings of nodes in directed graphs is fundamental in many appli...
The basis of Google’s acclaimed PageRank is an artificial mixing of the Markov chain representing th...
Most real world dynamic networks are evolved very fast with time. It is not feasible to collect the ...
We present a model of network formation where entering nodes find other nodes to link to both comple...
Large real-world networks typically follow a power-law degree distribution. To study such networks, ...
This paper studies the distribution of a family of rankings, which includes Google’s PageRank, on a ...
Note: formula is not displayed correctly. This paper studies the distribution of a family of ranking...
Page Rank is a well-known algorithm for measuring centrality in networks. It was originally proposed...
We analyze the distribution of PageRank on a directed configuration model and show that as the size ...
PageRank is a well-known algorithm for measuring centrality in net-works. It was originally proposed...
Our world is filled with complex systems, ranging from technological systems such as the Internet an...
Abstract. We analyze the distribution of PageRank on a directed con-figuration model and show that a...
We present a generator of random networks where both the degree-dependent clustering coefficient and...
Complex network theory crucially depends on the assumptions made about the degree distribution, whil...
AbstractWe introduce a new class of random graph models for complex real-world networks, based on th...
open3siIdentifying hierarchies and rankings of nodes in directed graphs is fundamental in many appli...
The basis of Google’s acclaimed PageRank is an artificial mixing of the Markov chain representing th...
Most real world dynamic networks are evolved very fast with time. It is not feasible to collect the ...
We present a model of network formation where entering nodes find other nodes to link to both comple...
Large real-world networks typically follow a power-law degree distribution. To study such networks, ...