Adaptive and Multilevel Metaheuristics
Editat de Carlos Cotta, Marc Sevaux, Kenneth Sörensenen Limba Engleză Hardback – 30 mai 2008
These mechanisms can involve different aspects of the algorithm, such as for example, self-adjusting the parameters, self-adapting the functioning of internal components, evolving search strategies, etc.
Recently, the idea of hyperheuristics, i.e., using a metaheuristic layer for adapting the search by selectively using different low-level heuristics, has also been gaining popularity. This volume presents recent advances in the area of adaptativeness in metaheuristic optimization, including up-to-date reviews of hyperheuristics and self-adaptation in evolutionary algorithms, as well as cutting edge works on adaptive, self-adaptive and multilevel metaheuristics, with application to both combinatorial and continuous optimization.
| Toate formatele și edițiile | Preț | Express |
|---|---|---|
| Paperback (1) | 907.70 lei 6-8 săpt. | |
| Springer Berlin, Heidelberg – 28 oct 2010 | 907.70 lei 6-8 săpt. | |
| Hardback (1) | 861.15 lei 39-44 zile | |
| Springer – 30 mai 2008 | 861.15 lei 39-44 zile |
Preț: 861.15 lei
Preț vechi: 1133.09 lei
-24% Nou
Puncte Express: 1292
Preț estimativ în valută:
152.39€ • 177.71$ • 133.80£
152.39€ • 177.71$ • 133.80£
Carte tipărită la comandă
Livrare economică 12-17 ianuarie 26
Preluare comenzi: 021 569.72.76
Specificații
ISBN-13: 9783540794370
ISBN-10: 3540794379
Pagini: 292
Ilustrații: XV, 275 p.
Dimensiuni: 160 x 241 x 21 mm
Greutate: 0.61 kg
Ediția:2008
Editura: Springer
Locul publicării:Berlin, Heidelberg, Germany
ISBN-10: 3540794379
Pagini: 292
Ilustrații: XV, 275 p.
Dimensiuni: 160 x 241 x 21 mm
Greutate: 0.61 kg
Ediția:2008
Editura: Springer
Locul publicării:Berlin, Heidelberg, Germany
Public țintă
ResearchCuprins
Reviews of the Field.- Hyperheuristics: Recent Developments.- Self-Adaptation in Evolutionary Algorithms for Combinatorial Optimisation.- New Techniques and Applications.- An Efficient Hyperheuristic for Strip-Packing Problems.- Probability-Driven Simulated Annealing for Optimizing Digital FIR Filters.- RASH: A Self-adaptive Random Search Method.- Market Based Allocation of Transportation Orders to Vehicles in Adaptive Multi-objective Vehicle Routing.- A Simple Evolutionary Algorithm with Self-adaptation for Multi-objective Nurse Scheduling.- Individual Evolution as an Adaptive Strategy for Photogrammetric Network Design.- Adaptive Estimation of Distribution Algorithms.- Initialization and Displacement of the Particles in TRIBES, a Parameter-Free Particle Swarm Optimization Algorithm.- Evolution of Descent Directions.- “Multiple Neighbourhood” Search in Commercial VRP Packages: Evolving Towards Self-Adaptive Methods.- Automated Parameterisation of a Metaheuristic for the Orienteering Problem.
Textul de pe ultima copertă
One of the keystones in practical metaheuristic problem-solving is the fact that tuning the optimization technique to the problem under consideration is crucial for achieving top performance. This tuning/customization is usually in the hands of the algorithm designer, and despite some methodological attempts, it largely remains a scientific art. Transferring a part of this customization effort to the algorithm itself -endowing it with smart mechanisms to self-adapt to the problem- has been a long pursued goal in the field of metaheuristics.
These mechanisms can involve different aspects of the algorithm, such as for example, self-adjusting the parameters, self-adapting the functioning of internal components, evolving search strategies, etc.
Recently, the idea of hyperheuristics, i.e., using a metaheuristic layer for adapting the search by selectively using different low-level heuristics, has also been gaining popularity. This volume presents recent advances in the area of adaptativeness in metaheuristic optimization, including up-to-date reviews of hyperheuristics and self-adaptation in evolutionary algorithms, as well as cutting edge works on adaptive, self-adaptive and multilevel metaheuristics, with application to both combinatorial and continuous optimization.
These mechanisms can involve different aspects of the algorithm, such as for example, self-adjusting the parameters, self-adapting the functioning of internal components, evolving search strategies, etc.
Recently, the idea of hyperheuristics, i.e., using a metaheuristic layer for adapting the search by selectively using different low-level heuristics, has also been gaining popularity. This volume presents recent advances in the area of adaptativeness in metaheuristic optimization, including up-to-date reviews of hyperheuristics and self-adaptation in evolutionary algorithms, as well as cutting edge works on adaptive, self-adaptive and multilevel metaheuristics, with application to both combinatorial and continuous optimization.
Caracteristici
Presents recent results in Adaptive and Multilevel Metaheuristics