International audience—This article proposes a new spectral method for community detection in large dense networks following the degree-corrected stochastic block model. We theoretically support and analyze an approach based on a novel " α-regularization " of the modularity matrix. We provide a consistent estimator for the choice of α inducing the most favorable community detection in worst case scenarios. We further prove that spectral clustering ought to be performed on a 1 − α regularization of the dominant eigenvectors (rather than on the eigenvectors themselves) to compensate for biases due to degree heterogeneity. Although focused on dense graph models, our clustering method is shown to be very promising on real world networks with co...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral clustering is one of the most popular, yet still incompletely underst...
International audience—This article proposes a new spectral method for community detection in large ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
12 pages, 3 figures, Accepted for publication in the IEEE Transactions on Vehicular TechnologyIntern...
12 pages, 3 figures, Accepted for publication in the IEEE Transactions on Vehicular TechnologyIntern...
We consider community detection in Degree-Corrected Stochastic Block Models. We perform spectral clu...
12 pages, 3 figures, Accepted for publication in the IEEE Transactions on Vehicular TechnologyIntern...
International audienceThis article considers spectral community detection in the regime of sparse ne...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral clustering is one of the most popular, yet still incompletely underst...
International audience—This article proposes a new spectral method for community detection in large ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
International audienceThis article proposes a spectral analysis of dense random graphs generated by ...
12 pages, 3 figures, Accepted for publication in the IEEE Transactions on Vehicular TechnologyIntern...
12 pages, 3 figures, Accepted for publication in the IEEE Transactions on Vehicular TechnologyIntern...
We consider community detection in Degree-Corrected Stochastic Block Models. We perform spectral clu...
12 pages, 3 figures, Accepted for publication in the IEEE Transactions on Vehicular TechnologyIntern...
International audienceThis article considers spectral community detection in the regime of sparse ne...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral algorithms are classic approaches to clustering and community detecti...
International audienceSpectral clustering is one of the most popular, yet still incompletely underst...