Algorithms based on the two-phase local search (TPLS) framework are a powerful method to efficiently tackle multi-objective combinatorial optimization problems. TPLS algorithms solve a sequence of scalarizations, that is, weighted sum aggregations, of the multi-objective problem. Each successive scalarization uses a different weight from a predefined sequence of weights. TPLS requires defining the stopping criterion (the number of weights) a priori, and it does not produce satisfactory results if stopped before completion. Therefore, TPLS has poor "anytime" behavior. This article examines variants of TPLS that improve its "anytime" behavior by adaptively generating the sequence of weights while solving the problem. The aim is to fill the "l...
Pareto local search (PLS) methods are local search algorithms for multi-objective combinatorial opti...
Optimising in many-objective search spaces, i.e. search spaces with more than three objectives, is a...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Pareto Local Search (PLS) is a simple and effective local search method for tackling multi-objective...
Pareto local search (PLS) is an extension of iterative improvement methods for multi-objective combi...
Searching in multi-objective search spaces is considered a challenging problem. Pareto local search ...
In this chapter, we review metaheuristics for solving multi-objective combinatorial optimization pro...
Many real-world optimization problems involve balancing multiple objectives. When there is no soluti...
Published in Annals of Mathematics and Artificial IntelligenceTR/IRIDIA/2010-022info:eu-repo/semanti...
Local search algorithms for global optimization often suffer from getting trapped in a local optimum...
International audienceGiven the availability of high-performing local search (LS) for single-objecti...
Abstract—We develop a stochastic local search algorithm for finding Pareto points for multi-criteria...
International audienceIn this paper, we propose a general approach based on local search and increme...
Anytime search algorithms solve optimisation problems by quickly finding a (usually suboptimal) firs...
We develop a stochastic local search algorithm for finding Pareto points for multicriteria opti-miza...
Pareto local search (PLS) methods are local search algorithms for multi-objective combinatorial opti...
Optimising in many-objective search spaces, i.e. search spaces with more than three objectives, is a...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Pareto Local Search (PLS) is a simple and effective local search method for tackling multi-objective...
Pareto local search (PLS) is an extension of iterative improvement methods for multi-objective combi...
Searching in multi-objective search spaces is considered a challenging problem. Pareto local search ...
In this chapter, we review metaheuristics for solving multi-objective combinatorial optimization pro...
Many real-world optimization problems involve balancing multiple objectives. When there is no soluti...
Published in Annals of Mathematics and Artificial IntelligenceTR/IRIDIA/2010-022info:eu-repo/semanti...
Local search algorithms for global optimization often suffer from getting trapped in a local optimum...
International audienceGiven the availability of high-performing local search (LS) for single-objecti...
Abstract—We develop a stochastic local search algorithm for finding Pareto points for multi-criteria...
International audienceIn this paper, we propose a general approach based on local search and increme...
Anytime search algorithms solve optimisation problems by quickly finding a (usually suboptimal) firs...
We develop a stochastic local search algorithm for finding Pareto points for multicriteria opti-miza...
Pareto local search (PLS) methods are local search algorithms for multi-objective combinatorial opti...
Optimising in many-objective search spaces, i.e. search spaces with more than three objectives, is a...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...