In many applications, relationships among objects of interest are more complex than pairwise. Simply approximating complex relationships as pairwise ones can lead to loss of information. An alternative for these applications is to analyze complex relationships among data directly, without the need to first represent the complex relationships into pairwise ones. A natural way to describe complex relationships is to use hypergraphs. A hypergraph is a graph in which edges can connect more than two vertices. Thus we consider learning from a hypergraph, and develop a general framework which is applicable to classification and clustering for complex relational data. We have applied our framework to real-world web classification problems and obtai...
International audienceWe present a novel extension of watershed cuts to hyper-graphs, allowing the c...
Clustering is an underspecified task: there are no universal criteria for what makes a good clusteri...
In this thesis, we develop methods to efficiently and accurately characterize edges in complex netwo...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
Abstract(#br)Hypergraph learning has been widely applied to various learning tasks. To ensure learni...
Hypergraphs are widely used for modeling and representing relationships between entities, one such f...
Clustering of data in a large dimension space is of a great interest in many data mining application...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
We argue that any document set can be modelled as a hypergraph, and we apply a graph clustering proc...
Clustering of data in a large dimension space is of a great interest in many data mining application...
Recently, graph neural networks have been widely used for network embedding because of their promine...
Abstract: Large datasets with interactions between objects are common to numerous scientific fields ...
Real-world complex networks are usually being modeled as graphs. The concept of graphs assumes that ...
Real world data is complex and multi-related among itself. Considering a social media, multiple user...
Graphs are a natural model for representing binary relations. However, it is difficult to use graphs...
International audienceWe present a novel extension of watershed cuts to hyper-graphs, allowing the c...
Clustering is an underspecified task: there are no universal criteria for what makes a good clusteri...
In this thesis, we develop methods to efficiently and accurately characterize edges in complex netwo...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
Abstract(#br)Hypergraph learning has been widely applied to various learning tasks. To ensure learni...
Hypergraphs are widely used for modeling and representing relationships between entities, one such f...
Clustering of data in a large dimension space is of a great interest in many data mining application...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
We argue that any document set can be modelled as a hypergraph, and we apply a graph clustering proc...
Clustering of data in a large dimension space is of a great interest in many data mining application...
Recently, graph neural networks have been widely used for network embedding because of their promine...
Abstract: Large datasets with interactions between objects are common to numerous scientific fields ...
Real-world complex networks are usually being modeled as graphs. The concept of graphs assumes that ...
Real world data is complex and multi-related among itself. Considering a social media, multiple user...
Graphs are a natural model for representing binary relations. However, it is difficult to use graphs...
International audienceWe present a novel extension of watershed cuts to hyper-graphs, allowing the c...
Clustering is an underspecified task: there are no universal criteria for what makes a good clusteri...
In this thesis, we develop methods to efficiently and accurately characterize edges in complex netwo...