It is a well established fact, that - in the case of classical random graphs like (variants of) Gn,p or random regular graphs - spectral methods yield efficient algorithms for clustering (e. g. colouring or bisection) problems. The theory of large networks emerging recently provides convincing evidence that such networks, albeit looking random in some sense, cannot sensibly be described by classical random graphs. A variety of new types of random graphs have been introduced. One of these types is characterized by the fact that we have a fixed expected degree sequence, that is for each vertex its expected degree is given. Recent theoretical work confirms that spectral methods can be successfully applied to clustering problems for such rand...
Abstract. A partition of a set of n items is a grouping of the items into k disjoint classes of equa...
Random graph generation is the foundation of the statistical study of complex networks, which are co...
In this paper we introduce a new clustering technique called Regularity Clustering. This new techniq...
It is a well established fact, that - in the case of classical random graphs like (variants of) Gn,p...
It is a well established fact, that – in the case of classical random graphs like variants of Gn,p o...
We consider the problem of recovering a planted partition such as a coloring, a small bisection, or ...
In this paper, we examine a spectral clustering algorithm for similarity graphs drawn from a simple ...
This paper studies how close random graphs are typically to their expectations. We interpret this qu...
We consider the problem of recovering a planted partition (e.g., a small bisection or a large cut) f...
Dans cette thèse, nous étudions les graphes aléatoires en utilisant des outils de la théorie des mat...
We analyze the eigenvalues of a random graph ensemble, proposed by Chung and Lu, in which a given se...
We present an algorithm for generating random networks with arbitrary degree distribution and cluste...
In this paper we study the use of spectral techniques for graph partitioning. Let G = (V, E) be a gr...
We deal with two intimately related subjects: quasi-randomness and regular partitions. The purpose o...
We study random graphs with possibly different edge probabilities in the challenging sparse regime o...
Abstract. A partition of a set of n items is a grouping of the items into k disjoint classes of equa...
Random graph generation is the foundation of the statistical study of complex networks, which are co...
In this paper we introduce a new clustering technique called Regularity Clustering. This new techniq...
It is a well established fact, that - in the case of classical random graphs like (variants of) Gn,p...
It is a well established fact, that – in the case of classical random graphs like variants of Gn,p o...
We consider the problem of recovering a planted partition such as a coloring, a small bisection, or ...
In this paper, we examine a spectral clustering algorithm for similarity graphs drawn from a simple ...
This paper studies how close random graphs are typically to their expectations. We interpret this qu...
We consider the problem of recovering a planted partition (e.g., a small bisection or a large cut) f...
Dans cette thèse, nous étudions les graphes aléatoires en utilisant des outils de la théorie des mat...
We analyze the eigenvalues of a random graph ensemble, proposed by Chung and Lu, in which a given se...
We present an algorithm for generating random networks with arbitrary degree distribution and cluste...
In this paper we study the use of spectral techniques for graph partitioning. Let G = (V, E) be a gr...
We deal with two intimately related subjects: quasi-randomness and regular partitions. The purpose o...
We study random graphs with possibly different edge probabilities in the challenging sparse regime o...
Abstract. A partition of a set of n items is a grouping of the items into k disjoint classes of equa...
Random graph generation is the foundation of the statistical study of complex networks, which are co...
In this paper we introduce a new clustering technique called Regularity Clustering. This new techniq...