In the last few years, a significant number of multi-objective metaheuristics have been proposed in the literature in order to address real-world problems. Local search methods play a major role in many of these metaheuristic procedures. In this paper, we adapt a recent and popular indicator-based selection method proposed by Zitzler and Künzli in 2004, in order to define a population-based multi-objective local search. The proposed algorithm is designed in order to be easily adaptable, parameter independent and to have a high convergence rate. In order to evaluate the capacity of our algorithm to reach these goals, a large part of the paper is dedicated to experiments. Three combinatorial optimisation problems are tested: a flow shop probl...
International audienceLocal Search metaheuristics are a recognized means of solving hard combinatori...
This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combi...
In this article, a local search approach is proposed for three variants of the bi-objective binary k...
International audienceIn the last few years, a significant number of multi-objective metaheuristics ...
Les problèmes d'optimisation combinatoire sont généralement NP-difficiles et les méthodes exactes de...
This paper presents a simple and generic indicator-based multi-objective local search. This algorith...
Local search algorithms constitute a growing area of interest to approximate the Pareto sets of mult...
International audienceIn this paper, we propose a general approach based on local search and increme...
This paper presents a multi-objective local search, where the selection is realized according to the...
This dissertation is concerned with configuring stochastic local search for combinatorial optimizati...
Abstract This paper presents a multi-objective local search, where the selection is realized accordi...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to o...
In this chapter, we review metaheuristics for solving multi-objective combinatorial optimization pro...
Automatic algorithm configuration (AAC) is becoming an increasingly crucial component in the design ...
Many problems from combinatorial optimization are NP-hard, so that exact methods remain inefficient ...
International audienceLocal Search metaheuristics are a recognized means of solving hard combinatori...
This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combi...
In this article, a local search approach is proposed for three variants of the bi-objective binary k...
International audienceIn the last few years, a significant number of multi-objective metaheuristics ...
Les problèmes d'optimisation combinatoire sont généralement NP-difficiles et les méthodes exactes de...
This paper presents a simple and generic indicator-based multi-objective local search. This algorith...
Local search algorithms constitute a growing area of interest to approximate the Pareto sets of mult...
International audienceIn this paper, we propose a general approach based on local search and increme...
This paper presents a multi-objective local search, where the selection is realized according to the...
This dissertation is concerned with configuring stochastic local search for combinatorial optimizati...
Abstract This paper presents a multi-objective local search, where the selection is realized accordi...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to o...
In this chapter, we review metaheuristics for solving multi-objective combinatorial optimization pro...
Automatic algorithm configuration (AAC) is becoming an increasingly crucial component in the design ...
Many problems from combinatorial optimization are NP-hard, so that exact methods remain inefficient ...
International audienceLocal Search metaheuristics are a recognized means of solving hard combinatori...
This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combi...
In this article, a local search approach is proposed for three variants of the bi-objective binary k...