ection of the most appropriate Evolutionary Algorithm for a given optimization problem is a difficult task. Hybrid Evolutionary Algorithms are a promising alternative to deal with this problem. By means of the combination of different heuristic optimization approaches, it is possible to profit from the benefits of the best approach, avoiding the limitations of the others. Nowadays, there is an active research in the design of dynamic or adaptive hybrid algorithms. However, little research has been done in the automatic learning of the best hybridization strategy. This paper proposes a mechanism to learn a strategy based on the analysis of the results from past executions. The proposed algorithm has been evaluated on a well-known benchmark o...
Hybrid methods of using evolutionary algorithms with a local search method are often used in the con...
none4The combination of components from different algorithms is currently one of the most successful...
Many optimization functions have complex landscapes with multiple global or local optima. In order t...
A simple but effective evolutionary algorithm is proposed in this paper for solving complicated opti...
The study conducted in this work analyses the interactions between different Evolutionary Algorithms...
Hybrid evolutionary algorithms (EAs) are effective optimization methods that combine multiple EAs. W...
In a stationary optimization problem, the fitness landscape does not change during the optimization ...
Metaheuristics are stochastic approaches to provide better solutions in a reasonable time. However, ...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
Dynamic optimization problems are a kind of optimization problems that involve changes over time. Th...
The ability to track the optimum of dynamic environments is important in many practical applications...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
This chapter presents a heuristic evolutionary optimization algorithm that is loosely based on the p...
Abstract: Dynamic optimization problems are a kind of optimization problems that involve changes ove...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
Hybrid methods of using evolutionary algorithms with a local search method are often used in the con...
none4The combination of components from different algorithms is currently one of the most successful...
Many optimization functions have complex landscapes with multiple global or local optima. In order t...
A simple but effective evolutionary algorithm is proposed in this paper for solving complicated opti...
The study conducted in this work analyses the interactions between different Evolutionary Algorithms...
Hybrid evolutionary algorithms (EAs) are effective optimization methods that combine multiple EAs. W...
In a stationary optimization problem, the fitness landscape does not change during the optimization ...
Metaheuristics are stochastic approaches to provide better solutions in a reasonable time. However, ...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
Dynamic optimization problems are a kind of optimization problems that involve changes over time. Th...
The ability to track the optimum of dynamic environments is important in many practical applications...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
This chapter presents a heuristic evolutionary optimization algorithm that is loosely based on the p...
Abstract: Dynamic optimization problems are a kind of optimization problems that involve changes ove...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
Hybrid methods of using evolutionary algorithms with a local search method are often used in the con...
none4The combination of components from different algorithms is currently one of the most successful...
Many optimization functions have complex landscapes with multiple global or local optima. In order t...