This thesis is about the tuning and simplification of black-box (direct-search, derivative-free) optimization methods, which by definition do not use gradient information to guide their search for an optimum but merely need a fitness (cost, error, objective) measure for each candidate solution to the optimization problem. Such optimization methods often have parameters that infuence their behaviour and efficacy. A Meta-Optimization technique is presented here for tuning the behavioural parameters of an optimization method by employing an additional layer of optimization. This is used in a number of experiments on two popular optimization methods, Differential Evolution and Particle Swarm Optimization, and unveils the true performance capabi...
Meta-heuristics are practical optimisation-techniques I a pragmatic approach to NP-hard optimisation...
The paper presents the results of comparison of three metaheuristics that currently exist in the pro...
The problem of detecting suitable parameters for metaheuristic optimization algorithms is well known...
The general purpose optimization method known as Particle Swarm Optimization (PSO) has received much...
Optimization is omnipresent in our world. Its numerous applications spread from industrial cases, su...
We present an approach that is able to automatically choose the best meta-heuristic and configuratio...
In the field of systems biology the task of finding optimal model parameters is a common procedure. ...
This paper deals with various approaches to solving optimization tasks. In prolog some examples from...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
Solving complex optimization problems can be painstakingly difficult endeavor considering multiple a...
International audienceMetaheuristic methods have been demonstrated to be efficient tools to solve ha...
Evolutionary Algorithms (EAs) and other metaheuristics are greatly affected by the choice of their p...
Properly configuring Evolutionary Algorithms (EAs) is a challenging task made difficult by many diff...
The efficacy of an optimization method often depends on the choosing of a num-ber of behavioural par...
In practical applications, solving dynamic optimization problem is a challenging field. In recent de...
Meta-heuristics are practical optimisation-techniques I a pragmatic approach to NP-hard optimisation...
The paper presents the results of comparison of three metaheuristics that currently exist in the pro...
The problem of detecting suitable parameters for metaheuristic optimization algorithms is well known...
The general purpose optimization method known as Particle Swarm Optimization (PSO) has received much...
Optimization is omnipresent in our world. Its numerous applications spread from industrial cases, su...
We present an approach that is able to automatically choose the best meta-heuristic and configuratio...
In the field of systems biology the task of finding optimal model parameters is a common procedure. ...
This paper deals with various approaches to solving optimization tasks. In prolog some examples from...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
Solving complex optimization problems can be painstakingly difficult endeavor considering multiple a...
International audienceMetaheuristic methods have been demonstrated to be efficient tools to solve ha...
Evolutionary Algorithms (EAs) and other metaheuristics are greatly affected by the choice of their p...
Properly configuring Evolutionary Algorithms (EAs) is a challenging task made difficult by many diff...
The efficacy of an optimization method often depends on the choosing of a num-ber of behavioural par...
In practical applications, solving dynamic optimization problem is a challenging field. In recent de...
Meta-heuristics are practical optimisation-techniques I a pragmatic approach to NP-hard optimisation...
The paper presents the results of comparison of three metaheuristics that currently exist in the pro...
The problem of detecting suitable parameters for metaheuristic optimization algorithms is well known...