In the field of evolutionary computation, it is usual to generate artificial benchmarks of instances that are used as a test-bed to determine the performance of the algorithms at hand. In this context, a recent work on permutation problems analyzed the implications of generating instances uniformly at random (u.a.r.) when building those benchmarks. Particularly, the authors analyzed instances as rankings of the solutions of the search space sorted according to their objective function value. Thus, two instances are considered equivalent when their objective functions induce the same ranking over the search space. Based on the analysis, they suggested that, when some restrictions hold, the probability to create easy rankings is higher than ...
We study the effect of varying perturbation strength on the fractal dimensions of Quadratic Assignme...
International audienceUsing the recently proposed model of combinatorial landscapes: local optima ne...
Abstract—Evolutionary algorithms (EAs), a large class of gen-eral purpose optimization algorithms in...
In the field of evolutionary computation, it is usual to generate artificial benchmarks of instances...
Many exact and metaheuristic algorithms presented in the literature are tested by comparing their pe...
AbstractLocal search and its variants simulated annealing and tabu search are very popular meta-heur...
The inclusion of local search (LS) techniques in evolutionary algorithms (EAs) is known to be very i...
Different studies have theoretically analyzed the performance of artificial immune systems in the co...
AbstractThe development in the area of randomized search heuristics has shown the importance of a ri...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
Challenging optimisation problems are abundant in all areas of science and industry. Since the 1950s...
We consider optimization problems for which the best known approximation algorithms are randomized a...
The study of Stochastic Local Search (SLS) algorithms is becoming more pivotal these days, due to th...
Parallel Problem Solving from Nature – PPSN XIVUnderstanding the behaviour of heuristic search metho...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
We study the effect of varying perturbation strength on the fractal dimensions of Quadratic Assignme...
International audienceUsing the recently proposed model of combinatorial landscapes: local optima ne...
Abstract—Evolutionary algorithms (EAs), a large class of gen-eral purpose optimization algorithms in...
In the field of evolutionary computation, it is usual to generate artificial benchmarks of instances...
Many exact and metaheuristic algorithms presented in the literature are tested by comparing their pe...
AbstractLocal search and its variants simulated annealing and tabu search are very popular meta-heur...
The inclusion of local search (LS) techniques in evolutionary algorithms (EAs) is known to be very i...
Different studies have theoretically analyzed the performance of artificial immune systems in the co...
AbstractThe development in the area of randomized search heuristics has shown the importance of a ri...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
Challenging optimisation problems are abundant in all areas of science and industry. Since the 1950s...
We consider optimization problems for which the best known approximation algorithms are randomized a...
The study of Stochastic Local Search (SLS) algorithms is becoming more pivotal these days, due to th...
Parallel Problem Solving from Nature – PPSN XIVUnderstanding the behaviour of heuristic search metho...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
We study the effect of varying perturbation strength on the fractal dimensions of Quadratic Assignme...
International audienceUsing the recently proposed model of combinatorial landscapes: local optima ne...
Abstract—Evolutionary algorithms (EAs), a large class of gen-eral purpose optimization algorithms in...