Clustering is often formulated as a discrete optimization problem. The objective is to find, among all partitions of the data set, the best one according to some quality measure. However, in the statistical setting where we assume that the finite data set has been sampled from some underlying space, the goal is not to find the best partition of the given sample, but to approximate the true partition of the underlying space. We argue that the discrete optimization approach usually does not achieve this goal. As an alternative, we suggest the paradigm of ``nearest neighbor clustering‘‘. Instead of selecting the best out of all partitions of the sample, it only...
Approximation algorithms for clustering points in metric spaces is a flourishing area of re-search, ...
Optimal clustering is a notoriously hard task. Recently, several papers have suggested a new approac...
In some optimization problems, the objective function can be taken quite literally. If one wants to ...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
International audienceClustering is often formulated as a discrete optimization problem. The objecti...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
International audienceClustering is often formulated as a discrete optimization problem. The objecti...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Approximation algorithms for clustering points in metric spaces is a flourishing area of research, w...
Approximation algorithms for clustering points in metric spaces is a flourishing area of re-search, ...
Optimal clustering is a notoriously hard task. Recently, several papers have suggested a new approac...
In some optimization problems, the objective function can be taken quite literally. If one wants to ...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
International audienceClustering is often formulated as a discrete optimization problem. The objecti...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
International audienceClustering is often formulated as a discrete optimization problem. The objecti...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Approximation algorithms for clustering points in metric spaces is a flourishing area of research, w...
Approximation algorithms for clustering points in metric spaces is a flourishing area of re-search, ...
Optimal clustering is a notoriously hard task. Recently, several papers have suggested a new approac...
In some optimization problems, the objective function can be taken quite literally. If one wants to ...