Given a finite set N of feasible points of a multi-objective optimization (MOO) problem, the search region corresponds to the part of the objective space containing all the points that are not dominated by any point of N, i.e. the part of the objective space which may contain further nondominated points. In this paper, we consider a representation of the search region by a set of tight local upper bounds (in the minimization case) that can be derived from the points of N. Local upper bounds play an important role in methods for generating or approximating the nondominated set of an MOO problem, yet few works in the field of MOO address their efficient incremental determination. We relate this issue to the state of the art in computational g...
Standard local search algorithms for combinatorial optimization problems repeatedly apply small chan...
Standard local search algorithms for combinatorial optimization problems repeatedly apply small chan...
Local search techniques have proved to be very efficient in evolutionary multi-objective optimizatio...
International audienceMulti-objective optimization procedures usually proceed by iteratively produci...
Finding, all nondominated vectors for multi-objective combinatorial optimization (MOCO) problems is ...
This thesis deals with several aspects related to solving multi-objective problems, without restrict...
International audienceThis work proposes an upper bound on the maximal number of non-dominated point...
This work proposes an upper bound on the maximal number of non-dominated points of a multicriteria o...
Finding the true nondominated points is typically hard for Multi-objective Combinatorial Optimizatio...
When applied to multiobjective combinatorial optimization problems defined in terms of Pareto optima...
Abstract In branch and bound algorithms for constrained global optimization, an acceleration techniq...
Le but de cette thèse est de proposer des méthodes générales afin de contourner l’intractabilité de ...
Le but de cette thèse est de proposer des méthodes générales afin de contourner l’intractabilité de ...
[[abstract]]The authors propose a systematic method to find several local minima for general nonline...
Abstract. Large neighborhood search (LNS) [25] is a framework that combines the expressiveness of co...
Standard local search algorithms for combinatorial optimization problems repeatedly apply small chan...
Standard local search algorithms for combinatorial optimization problems repeatedly apply small chan...
Local search techniques have proved to be very efficient in evolutionary multi-objective optimizatio...
International audienceMulti-objective optimization procedures usually proceed by iteratively produci...
Finding, all nondominated vectors for multi-objective combinatorial optimization (MOCO) problems is ...
This thesis deals with several aspects related to solving multi-objective problems, without restrict...
International audienceThis work proposes an upper bound on the maximal number of non-dominated point...
This work proposes an upper bound on the maximal number of non-dominated points of a multicriteria o...
Finding the true nondominated points is typically hard for Multi-objective Combinatorial Optimizatio...
When applied to multiobjective combinatorial optimization problems defined in terms of Pareto optima...
Abstract In branch and bound algorithms for constrained global optimization, an acceleration techniq...
Le but de cette thèse est de proposer des méthodes générales afin de contourner l’intractabilité de ...
Le but de cette thèse est de proposer des méthodes générales afin de contourner l’intractabilité de ...
[[abstract]]The authors propose a systematic method to find several local minima for general nonline...
Abstract. Large neighborhood search (LNS) [25] is a framework that combines the expressiveness of co...
Standard local search algorithms for combinatorial optimization problems repeatedly apply small chan...
Standard local search algorithms for combinatorial optimization problems repeatedly apply small chan...
Local search techniques have proved to be very efficient in evolutionary multi-objective optimizatio...