Abstract
Although Branch and Bound (BnB) methods are among the most widely used
techniques for solving hard problems, it is still a challenge to make these methods
smarter. In this paper, we investigate iterative patching, a technique in which a
fixed patching procedure is applied at each node of the BnB search tree for the
Asymmetric Traveling Salesman Problem. Computational experiments show that
iterative patching results in general in search trees that are smaller than the usual
classical BnB trees, and that solution times are lower for usual random and sparse
instances. Furthermore, it turns out that, on average, iterative patching with the
Contract-or-Patch procedure of Glover, Gutin, Yeo and Zverovich (2001) and the
Karp-Steele procedure are the fastest, and that ‘iterative’ Modified Karp-Steele
patching generates the smallest search trees.
| Original language | English |
|---|---|
| Publisher | s.n. |
| Number of pages | 22 |
| Publication status | Published - 2004 |
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