A branch‐and‐cut algorithm based on semidefinite programming for the minimum k‐partition problem

A branch‐and‐cut algorithm based on semidefinite programming for the minimum k‐partition problem

0.00 Avg rating0 Votes
Article ID: iaor20117899
Volume: 188
Issue: 1
Start Page Number: 155
End Page Number: 174
Publication Date: Aug 2011
Journal: Annals of Operations Research
Authors: , ,
Keywords: branch-and-cut, graph partitioning
Abstract:

The minimum k‐partition (MkP) problem is the problem of partitioning the set of vertices of a graph into k disjoint subsets so as to minimize the total weight of the edges joining vertices in the same partition. The main contribution of this paper is the design and implementation of a branch‐and‐cut algorithm based on semidefinite programming (SBC) for the MkP problem. The two key ingredients for this algorithm are: the combination of semidefinite programming with polyhedral results; and a novel iterative clustering heuristic (ICH) that finds feasible solutions for the MkP problem. We compare ICH to the hyperplane rounding techniques of Goemans and Williamson and of Frieze and Jerrum, and the computational results support the conclusion that ICH consistently provides better feasible solutions for the MkP problem. ICH is used in our SBC algorithm to provide feasible solutions at each node of the branch‐and‐bound tree. The SBC algorithm computes globally optimal solutions for dense graphs with up to 60 vertices, for grid graphs with up to 100 vertices, and for different values of k, providing a fast exact approach for k≥3.

Reviews

Required fields are marked *. Your email address will not be published.