We extend the graph spectral framework to a new class of undirected hypergraphs with bipartite hyperedges. A bipartite hyperedge is a pair of disjoint sets of nodes in which every node is associated with a weight. A bipartite hyperedge can be viewed as a relation between two teams of nodes in which every node has a weighted contribution to its team. Undirected hypergraphs generalize over undirected graphs. Consistently with the case of graphs, we define the notions of hypergraph gradient, hypergraph Laplacian, and hypergraph kernel as the Moore-Penrose pseudoinverse of a hypergraph Laplacian. Therefore, smooth labeling of (teams of) nodes and hypergraph regularization methods can be performed. Contrary to the graph case, we show that the cl...
Graphs are a natural model for representing binary relations. However, it is difficult to use graphs...
We propose a general regularization framework for transductive inference. The given data are thought...
International audienceThe graph Laplacian plays an important role in describing the structure of a g...
We extend the graph spectral framework to a new class of undirected hypergraphs with bipartite hyper...
Editor: We extend the graph spectral framework to a new class of undirected hypergraphs with biparti...
International audienceThe aim of this paper is to propose methods for learning from interactions bet...
National audienceWe introduce hypernode graphs as (weighted) binary relations between sets of nodes ...
Abstract. We introduce hypernode graphs as weighted binary relations between sets of nodes: a hypern...
The graph Laplacian plays key roles in information processing of relational data, and has analogies ...
Learning on graphs is an important problem in machine learning, computer vision and data mining. Tra...
Abstract. We propose a new formulation called hyperedge expansion (HE) for hypergraph learning. The ...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
In this thesis, we bring forward the study of the spectral properties of graphs and we extend this t...
Graph sparsification has been studied extensively over the past two decades, culminating in spectral...
Here we introduce $k$-tunnel join, a binary hypergraph operation, and $k$-domination, a unary hyperg...
Graphs are a natural model for representing binary relations. However, it is difficult to use graphs...
We propose a general regularization framework for transductive inference. The given data are thought...
International audienceThe graph Laplacian plays an important role in describing the structure of a g...
We extend the graph spectral framework to a new class of undirected hypergraphs with bipartite hyper...
Editor: We extend the graph spectral framework to a new class of undirected hypergraphs with biparti...
International audienceThe aim of this paper is to propose methods for learning from interactions bet...
National audienceWe introduce hypernode graphs as (weighted) binary relations between sets of nodes ...
Abstract. We introduce hypernode graphs as weighted binary relations between sets of nodes: a hypern...
The graph Laplacian plays key roles in information processing of relational data, and has analogies ...
Learning on graphs is an important problem in machine learning, computer vision and data mining. Tra...
Abstract. We propose a new formulation called hyperedge expansion (HE) for hypergraph learning. The ...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
In this thesis, we bring forward the study of the spectral properties of graphs and we extend this t...
Graph sparsification has been studied extensively over the past two decades, culminating in spectral...
Here we introduce $k$-tunnel join, a binary hypergraph operation, and $k$-domination, a unary hyperg...
Graphs are a natural model for representing binary relations. However, it is difficult to use graphs...
We propose a general regularization framework for transductive inference. The given data are thought...
International audienceThe graph Laplacian plays an important role in describing the structure of a g...