Evolutionary algorithms (EA) are efficient population-based stochastic algorithms for solving optimization problems. The performance of EAs largely depends on the configuration of values of parameters that control their search. Previous works studied how to configure EAs, though, there is a lack of a general approach to effectively tune EAs. To fill this gap, this paper presents a consistent, automated approach for tuning and controlling parameterized search of an EA. For this, we propose a deep reinforcement learning (DRL) based approach called ‘DRL-APC-DE’ for online controlling search parameter values for a multi-objective Differential Evolution algorithm. The proposed method is trained and evaluated on widely adopted multi-objective tes...
This paper is focused on the adaptation of control parameters in differential evolution. Competition...
The performance of differential evolution (DE) largely depends on its mutation strategy and control ...
Evolutionary search algorithms are used routinely to find optimal solutions for multi-parameter prob...
Evolutionary algorithms (EA) are efficient population-based stochastic algorithms for solving optimi...
Adaptive Operator Selection (AOS) is an approach that controls discrete parameters of an Evolutionar...
Abstract-Traditional differential evolution (DE) mutation operators explore the search space with no...
Multi-objective evolutionary algorithms (MOEAs) are widely used to solve multi-objective optimizatio...
Differential evolution (DE) presents a class of evolutionary and meta-heuristic techniques that have...
Differential evolution has shown success in solving different optimization problems. However, its pe...
ABSTRACT Parameter control in Evolutionary Computing stands for an approach to parameter setting tha...
In solving problems with evolutionary algorithms (EAs), the performance of the EA will be affected b...
Differential evolution (DE) is a simple yet powerful evolutionary algorithm (EA). It has demonstrat...
The configuration of Evolutionary Algorithm (EA) parameters is a significant challenge. While previo...
Abstract—Differential evolution (DE) is an efficient and powerful population-based stochastic search...
Differential Evolution (DE) is a population-based algorithm that belongs to the Evolutionary algorit...
This paper is focused on the adaptation of control parameters in differential evolution. Competition...
The performance of differential evolution (DE) largely depends on its mutation strategy and control ...
Evolutionary search algorithms are used routinely to find optimal solutions for multi-parameter prob...
Evolutionary algorithms (EA) are efficient population-based stochastic algorithms for solving optimi...
Adaptive Operator Selection (AOS) is an approach that controls discrete parameters of an Evolutionar...
Abstract-Traditional differential evolution (DE) mutation operators explore the search space with no...
Multi-objective evolutionary algorithms (MOEAs) are widely used to solve multi-objective optimizatio...
Differential evolution (DE) presents a class of evolutionary and meta-heuristic techniques that have...
Differential evolution has shown success in solving different optimization problems. However, its pe...
ABSTRACT Parameter control in Evolutionary Computing stands for an approach to parameter setting tha...
In solving problems with evolutionary algorithms (EAs), the performance of the EA will be affected b...
Differential evolution (DE) is a simple yet powerful evolutionary algorithm (EA). It has demonstrat...
The configuration of Evolutionary Algorithm (EA) parameters is a significant challenge. While previo...
Abstract—Differential evolution (DE) is an efficient and powerful population-based stochastic search...
Differential Evolution (DE) is a population-based algorithm that belongs to the Evolutionary algorit...
This paper is focused on the adaptation of control parameters in differential evolution. Competition...
The performance of differential evolution (DE) largely depends on its mutation strategy and control ...
Evolutionary search algorithms are used routinely to find optimal solutions for multi-parameter prob...