Finding good parameter values for meta-heuristics is known as the parameter setting problem. A new parameter tuning strategy, called IPTS, is proposed that is a novel instance-specific method to take the trade-off between solution quality and computational time into consideration. Two important steps in the method are an a priori statistical analysis to identify the factors that determine heuristic performance in both quality and time for a specific type of problem, and the transformation of these insights into a fuzzy inference system rule base which aims to return parameter values on the Pareto-front with respect to a decision maker’s preference.Applied to the symmetric Travelling Salesman Problem and the meta-heuristic Guided Local Searc...
A metaheuristic is a generic algorithmic template that, once properly instantiated, can be used for ...
Parameter tuning in Evolutionary Algorithms (EA), is a great obstacle that can become the key to suc...
Although metaheuristic optimization has become a common practice, new bio-inspired algorithms often ...
Finding good parameter values for meta-heuristics is known as the parameter setting problem. A new p...
Two main concepts are established in the literature for the Parameter Setting Problem (PSP) of metah...
Metaheuristics are approximation methods used to solve combinatorial optimization problems. Their pe...
Metaheuristic algorithms are solution approaches to solve optimization problems by repeating some al...
The importance of balance between exploration and exploitation plays a crucial role while solving co...
There is a growing number of studies on general purpose metaheuristics that are directly...
Metaheuristics usually have algorithmic parameters whose initial settings can influence their search...
Metaheuristics are an approximate method widely used to solve many hard optimization problems in a m...
A priori incorporation of the decision makerrs preferences is a crucial issue in many-objective evol...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
This book describes recent advances on fuzzy logic augmentation of nature-inspired optimization meta...
International audienceThis book highlights state-of-the-art developments in metaheuristics research....
A metaheuristic is a generic algorithmic template that, once properly instantiated, can be used for ...
Parameter tuning in Evolutionary Algorithms (EA), is a great obstacle that can become the key to suc...
Although metaheuristic optimization has become a common practice, new bio-inspired algorithms often ...
Finding good parameter values for meta-heuristics is known as the parameter setting problem. A new p...
Two main concepts are established in the literature for the Parameter Setting Problem (PSP) of metah...
Metaheuristics are approximation methods used to solve combinatorial optimization problems. Their pe...
Metaheuristic algorithms are solution approaches to solve optimization problems by repeating some al...
The importance of balance between exploration and exploitation plays a crucial role while solving co...
There is a growing number of studies on general purpose metaheuristics that are directly...
Metaheuristics usually have algorithmic parameters whose initial settings can influence their search...
Metaheuristics are an approximate method widely used to solve many hard optimization problems in a m...
A priori incorporation of the decision makerrs preferences is a crucial issue in many-objective evol...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
This book describes recent advances on fuzzy logic augmentation of nature-inspired optimization meta...
International audienceThis book highlights state-of-the-art developments in metaheuristics research....
A metaheuristic is a generic algorithmic template that, once properly instantiated, can be used for ...
Parameter tuning in Evolutionary Algorithms (EA), is a great obstacle that can become the key to suc...
Although metaheuristic optimization has become a common practice, new bio-inspired algorithms often ...