International audienceDesigning portfolio adaptive selection strategies is a promising approach to gain in generality when tackling a given optimization problem. However, we still lack much understanding of what makes a strategy effective, even if different benchmarks have been already designed for these issues. In this paper, we propose a new model based on fitness cloud allowing us to provide theoretical and empirical insights on when an on-line adaptive strategy can be beneficial to the search. In particular, we investigate the relative performance and behavior of two representative and commonly used selection strategies with respect to static (off-line) and purely random approaches, in a simple, yet sound realistic, setting of the propo...
International audienceThe choice of which of the available strategies should be used within the Diff...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Understanding how the complex interactions of the problem-algorithm combination lead to an algorithm...
International audienceDesigning portfolio adaptive selection strategies is a promising approach to g...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
International audienceDifferent strategies can be used for the generation of new candidate solutions...
International audienceIn Distributed Adaptive Metaheuristics Selection (DAMS) methods, each computat...
Abstract. Self-adaptive mechanisms for the identification of the most suitable variation operator in...
Many good evolutionary algorithms have been proposed in the past. However, frequently, the question ...
International audienceDifferential evolution (DE) is a simple yet powerful evolutionary algorithm fo...
Genetic algorithms (GA) are stochastic search techniques based on the mechanics of natural selection...
Most randomized search methods can be regarded as random sampling methods with a (non-uniform) sampl...
Dynamic optimization problems provide a challenge in that optima have to be tracked as the environme...
International audienceDistributed Adaptive Metaheuristics Selection (DAMS) is a framework dedicated ...
Nowadays, there are various optimization problems that exact mathematical methods are not applicable...
International audienceThe choice of which of the available strategies should be used within the Diff...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Understanding how the complex interactions of the problem-algorithm combination lead to an algorithm...
International audienceDesigning portfolio adaptive selection strategies is a promising approach to g...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
International audienceDifferent strategies can be used for the generation of new candidate solutions...
International audienceIn Distributed Adaptive Metaheuristics Selection (DAMS) methods, each computat...
Abstract. Self-adaptive mechanisms for the identification of the most suitable variation operator in...
Many good evolutionary algorithms have been proposed in the past. However, frequently, the question ...
International audienceDifferential evolution (DE) is a simple yet powerful evolutionary algorithm fo...
Genetic algorithms (GA) are stochastic search techniques based on the mechanics of natural selection...
Most randomized search methods can be regarded as random sampling methods with a (non-uniform) sampl...
Dynamic optimization problems provide a challenge in that optima have to be tracked as the environme...
International audienceDistributed Adaptive Metaheuristics Selection (DAMS) is a framework dedicated ...
Nowadays, there are various optimization problems that exact mathematical methods are not applicable...
International audienceThe choice of which of the available strategies should be used within the Diff...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Understanding how the complex interactions of the problem-algorithm combination lead to an algorithm...