This paper presents a simple and generic indicator-based multi-objective local search. This algorithm is a direct extension of the IBEA algorithm, an indicator- based evolutionary algorithm proposed in 2004 by Zitzler and Kuenzli, where the optimization goal is defined in terms of a binary indicator defining the selection operator. The methodology proposed in this paper has been defined in order to be easily adaptable and to be as parameter-independent as possible. We carry out a range of experiments on different binary indicators: Those used in IBEA experiments, and also the indicators derived from classical Pareto ranking methods taken from well-known multi-objective evolutionary algorithms of the literature. Experiments show that the bes...
AbstractThe use of metaheuristics to solve multi-objective optimization problems (MOP) is a very act...
short paperInternational audienceAn indicator-based evolutionary multiobjective optimization algorit...
For almost 20 years, quality indicators (QIs) have promoted the design of new selection mechanisms o...
Abstract This paper presents a multi-objective local search, where the selection is realized accordi...
This paper presents a multi-objective local search, where the selection is realized according to the...
Multi-objective evolutionary algorithms (MOEAs) based on the concept of Pareto-dominance have been s...
In the last few years, a significant number of multi-objective metaheuristics have been proposed in ...
Abstract—In the last two decades, multiobjective optimization has become mainstream because of its w...
Local search algorithms constitute a growing area of interest to approximate the Pareto sets of mult...
Abstract. An indicator-based evolutionary multiobjective optimization algorithm (EMOA) is introduced...
This article proposes a simple yet effective multiobjective evolutionary algorithm (EA) for dealing ...
Evolutionary multi-objective optimization deals with the task of computing a minimal set of search p...
One of the major limitations of evolutionary algorithms based on the Lebesgue measure for multi-obje...
During the past two decades, a variety of multiobjective evolutionary algorithms (MOEAs) have been ...
This paper deals with the adaptive selection of operators in the context of local search (LS). In ev...
AbstractThe use of metaheuristics to solve multi-objective optimization problems (MOP) is a very act...
short paperInternational audienceAn indicator-based evolutionary multiobjective optimization algorit...
For almost 20 years, quality indicators (QIs) have promoted the design of new selection mechanisms o...
Abstract This paper presents a multi-objective local search, where the selection is realized accordi...
This paper presents a multi-objective local search, where the selection is realized according to the...
Multi-objective evolutionary algorithms (MOEAs) based on the concept of Pareto-dominance have been s...
In the last few years, a significant number of multi-objective metaheuristics have been proposed in ...
Abstract—In the last two decades, multiobjective optimization has become mainstream because of its w...
Local search algorithms constitute a growing area of interest to approximate the Pareto sets of mult...
Abstract. An indicator-based evolutionary multiobjective optimization algorithm (EMOA) is introduced...
This article proposes a simple yet effective multiobjective evolutionary algorithm (EA) for dealing ...
Evolutionary multi-objective optimization deals with the task of computing a minimal set of search p...
One of the major limitations of evolutionary algorithms based on the Lebesgue measure for multi-obje...
During the past two decades, a variety of multiobjective evolutionary algorithms (MOEAs) have been ...
This paper deals with the adaptive selection of operators in the context of local search (LS). In ev...
AbstractThe use of metaheuristics to solve multi-objective optimization problems (MOP) is a very act...
short paperInternational audienceAn indicator-based evolutionary multiobjective optimization algorit...
For almost 20 years, quality indicators (QIs) have promoted the design of new selection mechanisms o...