We consider spectral methods that uncover hidden structures in directed networks. We establish and exploit connections between node reordering via (a) minimizing an objective function and (b) maximizing the likelihood of a random graph model. We focus on two existing spectral approaches that build and analyse Laplacian-style matrices via the minimization of frustration and trophic incoherence. These algorithms aim to reveal directed periodic and linear hierarchies, respectively. We show that reordering nodes using the two algorithms, or mapping them onto a specified lattice, is associated with new classes of directed random graph models. Using this random graph setting, we are able to compare the two algorithms on a given network and quanti...
Generative models for graphs have been typ-ically committed to strong prior assumptions concerning t...
International audienceGenerative models for graphs have been typically committed to strong prior ass...
International audienceGenerative models for graphs have been typically committed to strong prior ass...
The graph Laplacian is a tool which is commonly used in different applications, amongst which spectr...
© 2017 Elsevier Inc. Deformations of the combinatorial Laplacian are proposed, which generalize seve...
Abstract. Directed networks have been discussed in many literature. For the purpose of understanding...
In this dissertation we study a problem in mathematical physics concerning the eigenvalues of random...
In this report, we present three spectral algorithms for partitioning nodes in directed graphs respe...
Reordering under a random graph hypothesis can be regarded as an extension of clustering and fits in...
For many networks in nature, science and technology, it is possible to order the nodes so that most ...
International audienceThe graph Laplacian plays an important role in describing the structure of a g...
International audienceThe graph Laplacian plays an important role in describing the structure of a g...
Abstract. We study random graphs with possibly different edge prob-abilities in the challenging spar...
For many networks in nature, science and technology, it is possible to order the nodes so that most ...
We study random graphs with possibly different edge probabilities in the challenging sparse regime o...
Generative models for graphs have been typ-ically committed to strong prior assumptions concerning t...
International audienceGenerative models for graphs have been typically committed to strong prior ass...
International audienceGenerative models for graphs have been typically committed to strong prior ass...
The graph Laplacian is a tool which is commonly used in different applications, amongst which spectr...
© 2017 Elsevier Inc. Deformations of the combinatorial Laplacian are proposed, which generalize seve...
Abstract. Directed networks have been discussed in many literature. For the purpose of understanding...
In this dissertation we study a problem in mathematical physics concerning the eigenvalues of random...
In this report, we present three spectral algorithms for partitioning nodes in directed graphs respe...
Reordering under a random graph hypothesis can be regarded as an extension of clustering and fits in...
For many networks in nature, science and technology, it is possible to order the nodes so that most ...
International audienceThe graph Laplacian plays an important role in describing the structure of a g...
International audienceThe graph Laplacian plays an important role in describing the structure of a g...
Abstract. We study random graphs with possibly different edge prob-abilities in the challenging spar...
For many networks in nature, science and technology, it is possible to order the nodes so that most ...
We study random graphs with possibly different edge probabilities in the challenging sparse regime o...
Generative models for graphs have been typ-ically committed to strong prior assumptions concerning t...
International audienceGenerative models for graphs have been typically committed to strong prior ass...
International audienceGenerative models for graphs have been typically committed to strong prior ass...