Exploiting Decomposition on Constraint Problems with High Tree-Width
Kitching, Matthew (University of Toronto) | Bacchus, Fahiem (University of Toronto)
Decomposition is an effective technique for solving discrete Constraint Optimization Problems (COPs) with low tree-width. On problems with high treewidth, however, existing decomposition algorithms offer little advantage over branch and bound search (B&B). In this paper we propose a method for exploiting decomposition on problems with high treewidth. Our technique involves modifying B&B to detect and exploit decomposition on a selected subset of the problem’s objectives. Decompositions over this subset, generated during search, are exploited to compute tighter bounds allowing B&B to prune more of its search space. We present a heuristic for selecting an appropriate subset of objectives—one that readily decomposes during search and yet can still provide good bounds. We demonstrate empirically that our approach can significantly improve B&B’s performance and outperform standard decomposition algorithms on a variety of high tree-width problems.
Jun-23-2009
- Country:
- North America > Canada > Ontario > Toronto (0.14)
- Genre:
- Research Report > New Finding (0.46)
- Technology: