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Very Large-Scale Neighborhood Search: Overview and Case Studies on Coloring Problems
| Book Series | Studies in Computational Intelligence |
| Publisher | Springer Berlin / Heidelberg |
| ISSN | 1860-949X (Print) 1860-9503 (Online) |
| Volume | Volume 114/2008 |
| Book | Hybrid Metaheuristics |
| DOI | 10.1007/978-3-540-78295-7 |
| Copyright | 2008 |
| ISBN | 978-3-540-78294-0 |
| DOI | 10.1007/978-3-540-78295-7_5 |
| Pages | 117-150 |
| Subject Collection | Engineering |
| SpringerLink Date | Tuesday, June 24, 2008 |
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Very Large-Scale Neighborhood Search: Overview and Case Studies on Coloring Problems
Marco Chiarandini6, Irina Dumitrescu7 and Thomas Stützle8
| (6) |
Department of Mathematics and Computer Science, University of Southern Denmark, Odense, Denmark |
| (7) |
School of Mathematics and Statistics, University of New South Wales, Sydney, Australia |
| (8) |
Computer & Decision Engineering Department, Université Libre de Bruxelles, Brussels, Belgium |
Two key issues in local search algorithms are the definition of a neighborhood and the way to examine it. In this chapter
we consider techniques for examining very large neighborhoods, in particular, ways for exactly searching them. We first illustrate
such techniques using three paradigmatic examples. In the largest part of the chapter, we focus on the development and experimental
study of very largescale neighborhood search algorithms for two coloring problems. The first example concerns the well-known
(vertex) graph coloring problem. Despite initial promising results on the use of very large-scale neighborhoods, our final
conclusion was negative: the usage of the proposed very large-scale neighborhoods did not help to improve the performance
of effective stochastic local search algorithms. The second example, the graph set T-coloring problem, yielded more positive
results. In this case, a very large-scale neighborhood that was specially tailored for this problem and that can be efficiently
searched, resulted to be an essential component of a new state-of-the-art algorithm for various instance classes.
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