In single-objective optimization it is possible to find a global optimum, while in the multi-objective case no optimal solution is clearly defined, but several that simultaneously optimize all the objectives. However, the majority of this kind of problems cannot be solved exactly as they have very large and highly complex search spaces. Recently, meta-heuristic approaches have become important tools for solving multi-objective problems encountered in industry as well as in the theoretical field. Most of these meta-heuristics use a population of solutions, and hence the runtime increases when the population size grows. An interesting way to overcome this problem is to apply parallel processing. This paper analyzes the performance of several ...
Abstract. The matter of using scheduling algorithms in parallel com-puting environments is discussed...
Tomo antraštė: 15th International conference on information and software technologies, IT 2009 : Kau...
Multi-Objective Combinatorial Optimization (MOCO) is fun-damental to the development and optimizatio...
In single-objective optimization it is possible to find a global optimum, while in the multi-objecti...
We present a state-of-the-art survey of parallel meta-heuristic developments and results, discuss ge...
In this work, we will look at a class of very hard practical problems which can, currently, only be ...
International audienceThis paper describes a unified view of parallel evolutionary algorithms for mu...
L’objectif de ce projet de trois ans est de proposer des avancées conceptuelles et technologiques da...
Metaheuristic parallel search methods -- tabu search, simulated annealing and genetic algorithms, es...
The increasing exploration of alternative methods for solving optimization problems causes that para...
The set of NP-hard problems require vast computational resources to solve exactly. With the aim of o...
Most real optimization problems often involve multiple objectives to optimize. In single-objective o...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Simulated annealing has proven to be a good technique for solving hard combinatorial optimization pr...
Real optimization problems often involve not one, but multiple objectives, usually in conflict. In s...
Abstract. The matter of using scheduling algorithms in parallel com-puting environments is discussed...
Tomo antraštė: 15th International conference on information and software technologies, IT 2009 : Kau...
Multi-Objective Combinatorial Optimization (MOCO) is fun-damental to the development and optimizatio...
In single-objective optimization it is possible to find a global optimum, while in the multi-objecti...
We present a state-of-the-art survey of parallel meta-heuristic developments and results, discuss ge...
In this work, we will look at a class of very hard practical problems which can, currently, only be ...
International audienceThis paper describes a unified view of parallel evolutionary algorithms for mu...
L’objectif de ce projet de trois ans est de proposer des avancées conceptuelles et technologiques da...
Metaheuristic parallel search methods -- tabu search, simulated annealing and genetic algorithms, es...
The increasing exploration of alternative methods for solving optimization problems causes that para...
The set of NP-hard problems require vast computational resources to solve exactly. With the aim of o...
Most real optimization problems often involve multiple objectives to optimize. In single-objective o...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Simulated annealing has proven to be a good technique for solving hard combinatorial optimization pr...
Real optimization problems often involve not one, but multiple objectives, usually in conflict. In s...
Abstract. The matter of using scheduling algorithms in parallel com-puting environments is discussed...
Tomo antraštė: 15th International conference on information and software technologies, IT 2009 : Kau...
Multi-Objective Combinatorial Optimization (MOCO) is fun-damental to the development and optimizatio...