- Metaheuristics: Intelligent Problem Solving
- Just MIP it!
- MetaBoosting: Enhancing Integer Programming Techniques by Metaheuristics
- Usage of Exact Algorithms to Enhance Stochastic Local Search Algorithms
- Decomposition Techniques as Metaheuristic Frameworks
- Convergence Analysis of Metaheuristics
- MIP-based GRASP and Genetic Algorithm for Balancing Transfer Lines
- (Meta-)Heuristic Separation of Jump Cuts in a Branch & Cut Approach for the Bounded Diameter Minimum Spanning Tree Problem
- A Good Recipe for Solving MINLPs
- Variable Intensity Local Search
- A Hybrid Tabu Search for the m-Peripatetic Vehicle Routing Problem Sandra Ulrich Ngueveu, Christian Prins, and Roberto Wolfer Calvo
Marco Caserta and Stefan Voß
Matteo Fischetti, Andrea Lodi, and Domenico Salvagnin
Jakob Puchinger, Günther R. Raidl, and Sandro Pirkwieser
Irina Dumitrescu and Thomas Stützle
Marco Boschetti, Vittorio Maniezzo, and Matteo Roffilli
Walter J. Gutjahr
Alexandre Dolgui, Anton Eremeev, and Olga Guschinskaya
Martin Gruber and Günther R. Raidl
Leo Liberti, Giacomo Nannicini, and Nenad Mladenovic
Snezana Mitrovic-Minic and Abraham P. Punnen
Zusammenfassung
Metaheuristics support managers in decision-making with robust tools that provide high-quality solutions to important applications in business, engineering, economics, and science in reasonable time frames, but finding exact solutions in these applications still poses a real challenge. However, because of advances in the fields of mathematical optimization and metaheuristics, major efforts have been made on their interface regarding efficient hybridization.
This edited book will provide a survey of the state of the art in this field by providing some invited reviews by well-known specialists as well as refereed papers from the second Matheuristics workshop to be held in Bertinoro, Italy, June 2008. Papers will explore mathematical programming techniques in metaheuristics frameworks, and especially focus on the latest developments in Mixed Integer Programming in solving real-world problems.
Inhalt
Metaheuristics: Intelligent Problem Solving.- Just MIP it#x0021;.- MetaBoosting: Enhancing Integer Programming Techniques by Metaheuristics.- Usage of Exact Algorithms to Enhance Stochastic Local Search Algorithms.- Decomposition Techniques as Metaheuristic Frameworks.- Convergence Analysis of Metaheuristics.- MIP-based GRASP and Genetic Algorithm for Balancing Transfer Lines.- (Meta-)Heuristic Separation of Jump Cuts in a Branch#x0026;Cut Approach for the Bounded Diameter Minimum Spanning Tree Problem.- A Good Recipe for Solving MINLPs.- Variable Intensity Local Search.- A Hybrid Tabu Search for the -Peripatetic Vehicle Routing Problem.