The Euclidean K-means problem is fundamental to clustering and over the years it has been intensely investigated. More recently, generalizations such as Bregman k-means [8], co-clustering [10], and tensor (multi-way) clustering [40] have also gained prominence. A well-known computational difficulty encountered by these clustering problems is the NP-Hardness of the associated optimization task, and commonly used methods guarantee at most local optimality. Consequently, approximation algorithms of varying degrees of sophistication have been developed, though largely for the basic Euclidean K-means (or `1-norm K-median) problem. In this paper we present approximation algorithms for several Bregman clustering problems by building upon the recen...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
Clustering is a classic topic in optimization with k-means being one of the most fundamental such pr...
The Euclidean K-means problem is fundamental to clustering and over the years it has been intensely ...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
We present the first (to our knowledge) approximation algorithm for tensor clustering—a powerful gen...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
We review Bregman divergences and use them in clustering algorithms which we have previously develop...
We study approximation algorithms for k-median clustering. We obtain small coresets for k-median clu...
We review Bregman divergences and use them in clustering algorithms which we have previously develop...
Approximation algorithms for clustering points in metric spaces is a flourishing area of research, w...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
Approximation algorithms for clustering points in metric spaces is a flourishing area of re-search, ...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
We present a general approach for designing approximation algorithms for a fundamental class of geom...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
Clustering is a classic topic in optimization with k-means being one of the most fundamental such pr...
The Euclidean K-means problem is fundamental to clustering and over the years it has been intensely ...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
We present the first (to our knowledge) approximation algorithm for tensor clustering—a powerful gen...
We present the first (to our knowledge) approximation algo- rithm for tensor clusteringa powerful g...
We review Bregman divergences and use them in clustering algorithms which we have previously develop...
We study approximation algorithms for k-median clustering. We obtain small coresets for k-median clu...
We review Bregman divergences and use them in clustering algorithms which we have previously develop...
Approximation algorithms for clustering points in metric spaces is a flourishing area of research, w...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
Approximation algorithms for clustering points in metric spaces is a flourishing area of re-search, ...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
We present a general approach for designing approximation algorithms for a fundamental class of geom...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
Clustering is a classic topic in optimization with k-means being one of the most fundamental such pr...