The aim of this paper is to check feasibility of using the maximal-entropy random walk in algorithms finding communities in complex networks. A number of such algorithms exploit an ordinary or a biased random walk for this purpose. Their key part is a (dis)similarity matrix, according to which nodes are grouped. This study en- compasses the use of a stochastic matrix of a random walk, its mean first-passage time matrix, and a matrix of weighted paths count. We briefly indicate the connection between those quantities and propose substituting the maximal-entropy random walk for the previously chosen models. This unique random walk maximises the entropy of ensembles of paths of given length and endpoints, which results in equiprobability of th...
We quantify the effectiveness of random walks for searching and construction of unstructured peer-to...
We study the fundamental limits on learning latent community structure in dynamic networks. Specific...
Random walks are ubiquitous in the sciences, and they are interesting from both theoretical and prac...
The aim of this paper is to check feasibility of using the maximal-entropy random walk in algorithms...
6 pages, 1 figure6 pages, 1 figure6 pages, 1 figureA simple strategy to explore a network is to use ...
This book is an introduction to maximum-entropy models of random graphs with given topological prope...
We present an approach of topology biased random walks for undirected networks. We focus on a one-pa...
WOS: 000426423600003Community structure and its detection in complex networks has been the subject o...
J.G.-G. was supported by MICINN through the Ramon y Cajal program and by grants FIS2008-01240 and MT...
Link prediction is a fundamental problem in social network analysis. The key technique in unsupervis...
Dense subgraphs of sparse graphs (communities), which appear in most real-world complex networks, pl...
In this article, we lay solid foundations for the study of Maximal Entropy Random Walks (MERWs) on i...
The problem of detecting dense subgraphs (communities) in large sparse graphs is inherent to many re...
Doctor of PhilosophyDepartment of StatisticsMichael HigginsIn many sciences---for example Sociology,...
Abstract We present a new algorithm for community detection. The algorithm uses random walks to embe...
We quantify the effectiveness of random walks for searching and construction of unstructured peer-to...
We study the fundamental limits on learning latent community structure in dynamic networks. Specific...
Random walks are ubiquitous in the sciences, and they are interesting from both theoretical and prac...
The aim of this paper is to check feasibility of using the maximal-entropy random walk in algorithms...
6 pages, 1 figure6 pages, 1 figure6 pages, 1 figureA simple strategy to explore a network is to use ...
This book is an introduction to maximum-entropy models of random graphs with given topological prope...
We present an approach of topology biased random walks for undirected networks. We focus on a one-pa...
WOS: 000426423600003Community structure and its detection in complex networks has been the subject o...
J.G.-G. was supported by MICINN through the Ramon y Cajal program and by grants FIS2008-01240 and MT...
Link prediction is a fundamental problem in social network analysis. The key technique in unsupervis...
Dense subgraphs of sparse graphs (communities), which appear in most real-world complex networks, pl...
In this article, we lay solid foundations for the study of Maximal Entropy Random Walks (MERWs) on i...
The problem of detecting dense subgraphs (communities) in large sparse graphs is inherent to many re...
Doctor of PhilosophyDepartment of StatisticsMichael HigginsIn many sciences---for example Sociology,...
Abstract We present a new algorithm for community detection. The algorithm uses random walks to embe...
We quantify the effectiveness of random walks for searching and construction of unstructured peer-to...
We study the fundamental limits on learning latent community structure in dynamic networks. Specific...
Random walks are ubiquitous in the sciences, and they are interesting from both theoretical and prac...