Author:
CUCURINGU MIHAI,ROMBACH PUCK,LEE SANG HOON,PORTER MASON A.
Abstract
We introduce several novel and computationally efficient methods for detecting “core–periphery structure” in networks. Core–periphery structure is a type of mesoscale structure that consists of densely connected core vertices and sparsely connected peripheral vertices. Core vertices tend to be well-connected both among themselves and to peripheral vertices, which tend not to be well-connected to other vertices. Our first method, which is based on transportation in networks, aggregates information from many geodesic paths in a network and yields a score for each vertex that reflects the likelihood that that vertex is a core vertex. Our second method is based on a low-rank approximation of a network's adjacency matrix, which we express as a perturbation of a tensor-product matrix. Our third approach uses the bottom eigenvector of the random-walk Laplacian to infer a coreness score and a classification into core and peripheral vertices. We also design an objective function to (1) help classify vertices into core or peripheral vertices and (2) provide a goodness-of-fit criterion for classifications into core versus peripheral vertices. To examine the performance of our methods, we apply our algorithms to both synthetically generated networks and a variety of networks constructed from real-world data sets.
Publisher
Cambridge University Press (CUP)
Reference92 articles.
1. Community detection in graphs
2. Jeub L. G. S. , Mahoney M. W. , Mucha P. J. & Porter M. A. (2015) A local perspective on community structure in multilayer networks, arXiv:1510.05185.
3. Role Discovery in Networks
4. A Set of Measures of Centrality Based on Betweenness
5. Mixing Patterns and Community Structure in Networks
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