Approximating min-sum k -clustering in metric spaces
- 6 July 2001
- conference paper
- Published by Association for Computing Machinery (ACM)
Abstract
The min-sum k-clustering problem in a metric space is to find a partition of the space into k clusters as to minimize the total sum of distances between pairs of points assigned to the same cluster. We give the first polynomial time non-trivial approximation algorithm for this problem. The algorithm provides an $\ratio$ approximation to the min-sum k-clustering problem in general metric spaces, with running time $\runtime$. The result is based on embedding of metric spaces into hierarchically separated trees. We also provide a bicriteria approximation result that provides a constant approximation factor solution with only a constant factor increase in the number of clusters. This result is obtained by modifying and drawing ideas from recently developed primal dual approximation algorithms for facility location.
Keywords
This publication has 5 references indexed in Scilit:
- Clustering for edge-cost minimization (extended abstract)Published by Association for Computing Machinery (ACM) ,2000
- Approximation algorithms for min-sum p-clusteringDiscrete Applied Mathematics, 1998
- Bicriteria Network Design ProblemsJournal of Algorithms, 1998
- On approximating arbitrary metrices by tree metricsPublished by Association for Computing Machinery (ACM) ,1998
- P-Complete Approximation ProblemsJournal of the ACM, 1976