We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the analogies between the intuitive concept of a cluster and that of a dominant set of vertices, a notion introduced here which generalizes that of\ud a maximal complete subgraph to edge-weighted graphs. We establish a correspondence between dominant sets and the extrema of a quadratic form over the standard simplex, thereby allowing the use of straightforward and easily implementable continuous optimization techniques from evolutionary game theory. Numerical examples on various point-set and image segmentation problems confirm the potential of the proposed approach
Dominant sets are a new graph-theoretic concept that has proven to be relevant in pairwise data clus...
Dominant sets are a new graph-theoretic concept that has proven to be relevant in pairwise data clus...
We develop a framework for the image segmentation problem based on a new graph-theoretic formulation...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
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 ...
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 ...
Pairwise (or graph-based) clustering algorithms typically assume the existence of a single affinity ...
Dominant sets are a new graph-theoretic concept that has proven to be relevant in pairwise data clus...
Dominant sets are a new graph-theoretic concept that has proven to be relevant in pairwise data clus...
We develop a framework for the image segmentation problem based on a new graph-theoretic formulation...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
We develop a new graph-theoretic approach for pairwise data clustering which is motivated by the ana...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
Clustering refers to the process of extracting maximally coherent groups from a set of objects using...
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 ...
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 ...
Pairwise (or graph-based) clustering algorithms typically assume the existence of a single affinity ...
Dominant sets are a new graph-theoretic concept that has proven to be relevant in pairwise data clus...
Dominant sets are a new graph-theoretic concept that has proven to be relevant in pairwise data clus...
We develop a framework for the image segmentation problem based on a new graph-theoretic formulation...