3 research outputs found
Connected k-Center and k-Diameter Clustering
Motivated by an application from geodesy, we introduce a novel clustering
problem which is a -center (or k-diameter) problem with a side constraint.
For the side constraint, we are given an undirected connectivity graph on
the input points, and a clustering is now only feasible if every cluster
induces a connected subgraph in . We call the resulting problems the
connected -center problem and the connected -diameter problem.
We prove several results on the complexity and approximability of these
problems. Our main result is an -approximation algorithm for the
connected -center and the connected -diameter problem. For Euclidean
metrics and metrics with constant doubling dimension, the approximation factor
of this algorithm improves to . We also consider the special cases that
the connectivity graph is a line or a tree. For the line we give optimal
polynomial-time algorithms and for the case that the connectivity graph is a
tree, we either give an optimal polynomial-time algorithm or a
-approximation algorithm for all variants of our model. We complement our
upper bounds by several lower bounds