Abstract. The properties of local optimal solutions in multi-objective combinatorial optimization problems are crucial for the effectiveness of local search algorithms, particularly when these algorithms are based on Pareto dominance. Such local search algorithms typically return a set of mutually nondominated Pareto local optimal (PLO) solutions, that is, a PLO-set. This paper investigates two aspects of PLO-sets by means of experiments with Pareto local search (PLS). First, we examine the im-pact of several problem characteristics on the properties of PLO-sets for multi-objective NK-landscapes with correlated objectives. In particular, we report that either increasing the number of objectives or decreasing the correlation between objectiv...
International audienceLocal search algorithms have shown good performance for several multi-objectiv...
International audiencePareto local optimal solutions (PLOS) are believed to highly influence the dyn...
International audienceIn this paper, we formalize a multiobjective local search paradigm by combinin...
The properties of local optimal solutions in multi-objective combinatorial optimization problems are...
International audienceThe properties of local optimal solutions in multi-objective combinatorial opt...
International audienceThe properties of local optimal solutions in multi-objective combinatorial opt...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceThe structure of the search space explains the behavior of multiobjective sear...
International audienceThe structure of the search space explains the behavior of multiobjective sear...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceThe structure of the search space explains the behavior of multiobjective sear...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
Abstract. In this paper, we conduct a fitness landscape analysis for multiobjective combinatorial op...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceLocal search algorithms have shown good performance for several multi-objectiv...
International audiencePareto local optimal solutions (PLOS) are believed to highly influence the dyn...
International audienceIn this paper, we formalize a multiobjective local search paradigm by combinin...
The properties of local optimal solutions in multi-objective combinatorial optimization problems are...
International audienceThe properties of local optimal solutions in multi-objective combinatorial opt...
International audienceThe properties of local optimal solutions in multi-objective combinatorial opt...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceThe structure of the search space explains the behavior of multiobjective sear...
International audienceThe structure of the search space explains the behavior of multiobjective sear...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceThe structure of the search space explains the behavior of multiobjective sear...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
Abstract. In this paper, we conduct a fitness landscape analysis for multiobjective combinatorial op...
International audienceIn this paper, we conduct a fitness landscape analysis for multiobjective comb...
International audienceLocal search algorithms have shown good performance for several multi-objectiv...
International audiencePareto local optimal solutions (PLOS) are believed to highly influence the dyn...
International audienceIn this paper, we formalize a multiobjective local search paradigm by combinin...