Combining constraint Propagation and meta-heuristics for searching a Maximum Weight Hamiltonian Chain

This paper presents the approach that we developed to solve the ROADEF 2003 challenge problem. This work is part of a research program whose aim is to study the benefits and the computer-aided generation of hybrid solutions that mix constraint programming and meta-heuristics, such as large neighborh...

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Veröffentlicht in:R.A.I.R.O. Recherche opérationnelle 2006-04, Vol.40 (2), p.77-95
1. Verfasser: Caseau, Yves
Format: Artikel
Sprache:eng
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Zusammenfassung:This paper presents the approach that we developed to solve the ROADEF 2003 challenge problem. This work is part of a research program whose aim is to study the benefits and the computer-aided generation of hybrid solutions that mix constraint programming and meta-heuristics, such as large neighborhood search (LNS). This paper focuses on three contributions that were obtained during this project: an improved method for propagating Hamiltonian chain constraints, a fresh look at limited discrepancy search and the introduction of randomization and de-randomization within our combination algebra. This algebra is made of terms that represent optimization algorithms, following the approach of SALSA [1], which can be generated or tuned automatically using a learning meta-strategy [2]. In this paper, the hybrid combination that is investigated mixes constraint propagation, a special form of limited discrepancy search and large neighborhood search.
ISSN:0399-0559
1290-3868
DOI:10.1051/ro:2006018