This document presents a multiple reference point approach for multi-objective optimization problems of discrete and combinatorial nature. When approximating the Pareto Frontier, multiple reference points can be used instead of traditional techniques. These multiple reference points can easily be implemented in a parallel algorithmic framework. The reference points can be uniformly distributed within a region that covers the Pareto Frontier. An evolutionary algorithm is based on an achievement scalarizing function that does not impose any restrictions with respect to the location of the reference points in the objective space. Computational experiments are performed on a bi-objective flow-shop scheduling problem. Results, quality measures a...
The file attached to this record is the author's final peer reviewed version.The main goal of multio...
The paper presents a survey of known results and some new developments in the use of reference objec...
EMO 2017: 9th International Conference on Evolutionary Multi-Criterion Optimization, 19-22 March 201...
This document presents a multiple reference point approach for multi-objective optimization problems...
International audienceThis paper presents a multiple reference point approach for multi-objective op...
International audienceThis paper presents a multiple reference point approach for multi-objective op...
L’objectif de ce projet de trois ans est de proposer des avancées conceptuelles et technologiques da...
International audienceBayesian optimization algorithms, i.e., algorithms using Gaussian Processes, a...
The real world applications of optimisation algorithms often are only interested in the running time...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, an...
In this thesis we propose a set of reference point based decision support tools for interactive mult...
Tomo antraštė: 15th International conference on information and software technologies, IT 2009 : Kau...
Decomposition based multiobjective evolutionary algorithms approximate the Pareto front of a multiob...
As they often require a high amount of computing resources to explore large portions of the search s...
International audienceBayesian algorithms (e.g., EGO, GPareto) are a popular approach to the mono an...
The file attached to this record is the author's final peer reviewed version.The main goal of multio...
The paper presents a survey of known results and some new developments in the use of reference objec...
EMO 2017: 9th International Conference on Evolutionary Multi-Criterion Optimization, 19-22 March 201...
This document presents a multiple reference point approach for multi-objective optimization problems...
International audienceThis paper presents a multiple reference point approach for multi-objective op...
International audienceThis paper presents a multiple reference point approach for multi-objective op...
L’objectif de ce projet de trois ans est de proposer des avancées conceptuelles et technologiques da...
International audienceBayesian optimization algorithms, i.e., algorithms using Gaussian Processes, a...
The real world applications of optimisation algorithms often are only interested in the running time...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, an...
In this thesis we propose a set of reference point based decision support tools for interactive mult...
Tomo antraštė: 15th International conference on information and software technologies, IT 2009 : Kau...
Decomposition based multiobjective evolutionary algorithms approximate the Pareto front of a multiob...
As they often require a high amount of computing resources to explore large portions of the search s...
International audienceBayesian algorithms (e.g., EGO, GPareto) are a popular approach to the mono an...
The file attached to this record is the author's final peer reviewed version.The main goal of multio...
The paper presents a survey of known results and some new developments in the use of reference objec...
EMO 2017: 9th International Conference on Evolutionary Multi-Criterion Optimization, 19-22 March 201...