Spectral clustering is a popular method for community detection in networks under the assumption of the standard stochastic blockmodel. Taking a matrix representation of the graph such as the adjacency matrix, the nodes are clustered on a low dimensional projection obtained from a truncated spectral decomposition of the matrix. Estimating the number of communities and the dimension of the reduced latent space well is crucial for good performance of spectral clustering algorithms. Real-world networks, such as computer networks studied in cyber-security applications, often present heterogeneous within-community degree distributions which are better addressed by the degree-corrected stochastic blockmodel. A novel, model-based method is propose...
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
Spectral embedding of adjacency or Laplacian matrices of undirected graphs is a common technique for...
Abstract. Spectral clustering is a fast and popular algorithm for finding clusters in networks. Rece...
Spectral clustering algorithms are often used to find clusters in the community detection problem. R...
We consider community detection in Degree-Corrected Stochastic Block Models. We perform spectral clu...
Networks or graphs can easily represent a diverse set of data sources that are characterized by inte...
International audience—This article proposes a new spectral method for community detection in large ...
International audience—This article proposes a new spectral method for community detection in large ...
Directed networks appear in various areas, such as biology, sociology, physiology and computer scien...
Modern network datasets are often composed of multiple layers, either as different views, time-varyi...
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
Spectral embedding of adjacency or Laplacian matrices of undirected graphs is a common technique for...
Abstract. Spectral clustering is a fast and popular algorithm for finding clusters in networks. Rece...
Spectral clustering algorithms are often used to find clusters in the community detection problem. R...
We consider community detection in Degree-Corrected Stochastic Block Models. We perform spectral clu...
Networks or graphs can easily represent a diverse set of data sources that are characterized by inte...
International audience—This article proposes a new spectral method for community detection in large ...
International audience—This article proposes a new spectral method for community detection in large ...
Directed networks appear in various areas, such as biology, sociology, physiology and computer scien...
Modern network datasets are often composed of multiple layers, either as different views, time-varyi...
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
PDF includes supplement with proofs, lemmas and additional simulation results.</p
Spectral embedding of adjacency or Laplacian matrices of undirected graphs is a common technique for...