AbstractTypically, the performance of swarm and evolutionary methods is assessed by comparing their results when applied to some known finite benchmarks. In general, these metaheuristics depend on many parameter values and many possible exchangeable sub-steps, which yields a huge number of possible algorithm configurations. In this paper we argue that this high setup versatility lets developers expressively tune the method, in an ad-hoc way, to the target inputs to be solved, and hence to those in the benchmark under consideration. However, this does not imply properly solving any other input not considered in the benchmark. Several subtle ways to support that tuning (which can be consciously noticed by the developer, but can also be uncons...
A metaheuristic is a generic algorithmic template that, once properly instantiated, can be used for ...
Optimization problems appear in many fields, as various as identification problems, supervised learn...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...
AbstractTypically, the performance of swarm and evolutionary methods is assessed by comparing their ...
Although metaheuristic optimization has become a common practice, new bio-inspired algorithms often ...
Although metaheuristic optimization has become a common practice, new bio-inspired algorithms often ...
The success of evolutionary algorithms and their hybrids on many difficult real-valued optimisation ...
We present Stochastic Optimisation Software (SOS), a Java platform facilitating the algorithmic desi...
Swarm intelligence has becoming a powerful technique in solving design and scheduling tasks. Metaheu...
Hard optimization stands for a class of problems which solutions cannot be found by an exact method,...
Metaheuristics are randomised search algorithms that are effective at finding "good enough" solution...
A number of methodological papers published during the last years testify that a need for a thorough...
Heuristic algorithms are often difficult to analyse theoretically; this holds in particular for adva...
Meta-heuristics are practical optimisation-techniques I a pragmatic approach to NP-hard optimisation...
Abstract. When assessing experimentally the performance of metaheuristic algorithms on a set of hard...
A metaheuristic is a generic algorithmic template that, once properly instantiated, can be used for ...
Optimization problems appear in many fields, as various as identification problems, supervised learn...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...
AbstractTypically, the performance of swarm and evolutionary methods is assessed by comparing their ...
Although metaheuristic optimization has become a common practice, new bio-inspired algorithms often ...
Although metaheuristic optimization has become a common practice, new bio-inspired algorithms often ...
The success of evolutionary algorithms and their hybrids on many difficult real-valued optimisation ...
We present Stochastic Optimisation Software (SOS), a Java platform facilitating the algorithmic desi...
Swarm intelligence has becoming a powerful technique in solving design and scheduling tasks. Metaheu...
Hard optimization stands for a class of problems which solutions cannot be found by an exact method,...
Metaheuristics are randomised search algorithms that are effective at finding "good enough" solution...
A number of methodological papers published during the last years testify that a need for a thorough...
Heuristic algorithms are often difficult to analyse theoretically; this holds in particular for adva...
Meta-heuristics are practical optimisation-techniques I a pragmatic approach to NP-hard optimisation...
Abstract. When assessing experimentally the performance of metaheuristic algorithms on a set of hard...
A metaheuristic is a generic algorithmic template that, once properly instantiated, can be used for ...
Optimization problems appear in many fields, as various as identification problems, supervised learn...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...