We usually endow the investigated objects with pairwise relationships, which can be illustrated as graphs. In many real-world problems, however, relationships among the objects of our interest are more complex than pair- wise. Naively squeezing the complex relationships into pairwise ones will inevitably lead to loss of information which can be expected valuable for our learning tasks however. Therefore we consider using hypergraphs in- stead to completely represent complex relationships among the objects of our interest, and thus the problem of learning with hypergraphs arises. Our main contribution in this paper is to generalize the powerful methodology of spectral clustering which originally operates on undirected graphs to hy- pergraphs...
Graph-based methods are a useful class of meth-ods for improving the performance of unsupervised and...
Abstract. We propose a new formulation called hyperedge expansion (HE) for hypergraph learning. The ...
Recently, graph neural networks have been widely used for network embedding because of their promine...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
Hypergraphs have attracted increasing attention in recent years thanks to their flexibility in natur...
We propose a theoretical framework of multi-way similarity to model real-valued data into hypergraph...
Learning on graphs is an important problem in machine learning, computer vision and data mining. Tra...
In many applications, relationships among objects of interest are more complex than pairwise. Simply...
The images of an object may look very different under different illumination conditions or viewing d...
International audienceIn the last few years, hypergraph-based methods have gained considerable atten...
Clustering analysis is one of the main tools for exploratory data analysis, with applications from s...
Abstract. We introduce hypernode graphs as weighted binary relations between sets of nodes: a hypern...
A hypergraph is a generalization of the traditional graph in which the edges are arbitrary non-empty...
Paper accepted for publication at ECML/PKDD 2014International audienceWe introduce hypernode graphs ...
Spectral clustering, a graph partitioning technique, has gained immense popularity in machine learni...
Graph-based methods are a useful class of meth-ods for improving the performance of unsupervised and...
Abstract. We propose a new formulation called hyperedge expansion (HE) for hypergraph learning. The ...
Recently, graph neural networks have been widely used for network embedding because of their promine...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
Hypergraphs have attracted increasing attention in recent years thanks to their flexibility in natur...
We propose a theoretical framework of multi-way similarity to model real-valued data into hypergraph...
Learning on graphs is an important problem in machine learning, computer vision and data mining. Tra...
In many applications, relationships among objects of interest are more complex than pairwise. Simply...
The images of an object may look very different under different illumination conditions or viewing d...
International audienceIn the last few years, hypergraph-based methods have gained considerable atten...
Clustering analysis is one of the main tools for exploratory data analysis, with applications from s...
Abstract. We introduce hypernode graphs as weighted binary relations between sets of nodes: a hypern...
A hypergraph is a generalization of the traditional graph in which the edges are arbitrary non-empty...
Paper accepted for publication at ECML/PKDD 2014International audienceWe introduce hypernode graphs ...
Spectral clustering, a graph partitioning technique, has gained immense popularity in machine learni...
Graph-based methods are a useful class of meth-ods for improving the performance of unsupervised and...
Abstract. We propose a new formulation called hyperedge expansion (HE) for hypergraph learning. The ...
Recently, graph neural networks have been widely used for network embedding because of their promine...