Clustering refers to the process of extracting maximally coherent groups from a set of objects using pairwise, or high-order, similarities. Traditional approaches to this problem are based on the idea of partitioning the input data into a predetermined number of classes, thereby obtaining the clusters as a by-product of the partitioning process. In this chapter, we provide a brief review of our recent work which offers a radically different view of the problem and allows one to work directly on non-(geo)metric data. In contrast to the classical approach, in fact, we attempt to provide a meaningful formalization of the very notion of a cluster in the presence of non-metric (even asymmetric and/or negative) (dis)similarities and show that gam...
Recently dominant sets, a generalization of the notion of the maximal clique to edge-weighted graphs...
Feature matching is used to build correspondences between features in the model and test images. As ...
In this paper, we develop a game theoretic approach for clustering features in a learning problem. F...
Hypergraph clustering refers to the process of extracting maximally coherent groups from a set of ob...
The field of pairwise clustering is currently domi-nated by the idea of dividing a set of objects in...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
In this paper, we approach the classical problem of clustering using solution concepts from cooperat...
Clustering is a technique for discovering patterns and structure in data. Often, the most difficult ...
Pairwise (or graph-based) clustering algorithms typically assume the existence of a single affinity ...
Pairwise (or graph-based) clustering algorithms typically assume the existence of a single affinity ...
The problem of clustering consists in organizing a set of objects into groups or clusters, in a way ...
Pairwise grouping and clustering approaches have tra-ditionally worked under the assumption that the...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
Data clustering considers the problem of grouping data into clusters based on its similarity measure...
In the work, a cooperative game where distance or similarity of players may be defined is considere...
Recently dominant sets, a generalization of the notion of the maximal clique to edge-weighted graphs...
Feature matching is used to build correspondences between features in the model and test images. As ...
In this paper, we develop a game theoretic approach for clustering features in a learning problem. F...
Hypergraph clustering refers to the process of extracting maximally coherent groups from a set of ob...
The field of pairwise clustering is currently domi-nated by the idea of dividing a set of objects in...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
In this paper, we approach the classical problem of clustering using solution concepts from cooperat...
Clustering is a technique for discovering patterns and structure in data. Often, the most difficult ...
Pairwise (or graph-based) clustering algorithms typically assume the existence of a single affinity ...
Pairwise (or graph-based) clustering algorithms typically assume the existence of a single affinity ...
The problem of clustering consists in organizing a set of objects into groups or clusters, in a way ...
Pairwise grouping and clustering approaches have tra-ditionally worked under the assumption that the...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
Data clustering considers the problem of grouping data into clusters based on its similarity measure...
In the work, a cooperative game where distance or similarity of players may be defined is considere...
Recently dominant sets, a generalization of the notion of the maximal clique to edge-weighted graphs...
Feature matching is used to build correspondences between features in the model and test images. As ...
In this paper, we develop a game theoretic approach for clustering features in a learning problem. F...