none3siA specialized thread of metaheuristic research, bordering and often overlapping with Artificial Intelligence, studied heuristics that evolved whole sets of candidate solutions, often named “populations” of solutions. Genetic algorithms were among the first results, and following their success it became common to get inspiration from some natural phenomenon to design the heuristic. This chapter considers three representative population-evolving metaheuristics, namely genetic algorithms, ant colony optimization, and scatter search (with path relinking) and shows how they have been complemented with mathematical programming modules to achieve better performance.noneManiezzo, Vittorio; Boschetti, Marco Antonio; Stützle, ThomasManiezzo, V...
Conventional and classical optimization methods are not efficient enough to deal with complicated, N...
The combination of components from different algorithms is currently one of most successful trends i...
A metaheuristic proposed by us recently, Ant Colony Optimization (ACO) hybridized with socio-cogniti...
A specialized thread of metaheuristic research, bordering and often overlapping with Artificial Inte...
International audienceThis chapter describes metaheuristics evolving a set of solutions and generati...
“… an excellent book if you want to learn about a number of individual metaheuristics." (U. Aickelin...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
A metaheuristic is an intelligent, iterative process that guides a search and can be applied towards...
none4The combination of components from different algorithms is currently one of the most successful...
Abstract: Biological systems are, by their very nature, adaptive. However, the meta-heuristic search...
Recently, a number of algorithms inspired by the foraging behavior of ant colonies have been applied...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...
This textbook provides a comprehensive introduction to nature-inspired metaheuristic methods for sea...
There are numerous optimisation problems for which heuristics are currently the only practical solut...
Conventional and classical optimization methods are not efficient enough to deal with complicated, N...
The combination of components from different algorithms is currently one of most successful trends i...
A metaheuristic proposed by us recently, Ant Colony Optimization (ACO) hybridized with socio-cogniti...
A specialized thread of metaheuristic research, bordering and often overlapping with Artificial Inte...
International audienceThis chapter describes metaheuristics evolving a set of solutions and generati...
“… an excellent book if you want to learn about a number of individual metaheuristics." (U. Aickelin...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
A metaheuristic is an intelligent, iterative process that guides a search and can be applied towards...
none4The combination of components from different algorithms is currently one of the most successful...
Abstract: Biological systems are, by their very nature, adaptive. However, the meta-heuristic search...
Recently, a number of algorithms inspired by the foraging behavior of ant colonies have been applied...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...
This textbook provides a comprehensive introduction to nature-inspired metaheuristic methods for sea...
There are numerous optimisation problems for which heuristics are currently the only practical solut...
Conventional and classical optimization methods are not efficient enough to deal with complicated, N...
The combination of components from different algorithms is currently one of most successful trends i...
A metaheuristic proposed by us recently, Ant Colony Optimization (ACO) hybridized with socio-cogniti...