PreprintWe provide the global optimization community with new optimality proofs for 6 deceptive benchmark functions (5 bound-constrained functions and one nonlinearly constrained problem). These highly multimodal nonlinear test problems are among the most challenging benchmark functions for global optimization solvers; some have not been solved even with approximate methods. The global optima that we report have been numerically certified using Charibde (Vanaret et al., 2013), a hybrid algorithm that combines an Evolutionary Algorithm and interval-based methods. While metaheuristics generally solve large problems and provide sufficiently good solutions with limited computation capacity, exact methods are deemed unsuitable for difficult mult...
In this work, we propose a meta algorithm that can solve a multivariate global optimization problem ...
In this paper, we envision global optimization as finding, for a given calculation complexity, a sui...
Global optimization is concerned with finding the minimum value of a function where many local minim...
International audienceNonconvex and highly multimodal optimization problems represent a challenge bo...
The only rigorous approaches for achieving a numerical proof of optimality in global optimization ar...
PreprintHighly nonlinear and ill-conditioned numerical optimization problems take their toll on the ...
Reliable global optimization is dedicated to finding a global minimum in the presence of rounding er...
Evolutionary Algorithms (EA) usually carry out an efficient exploration of the search-space, but get...
L’optimisation globale fiable est dédiée à la recherche d’un minimum global en présence d’erreurs d’...
L’optimisation globale fiable est dédiée à la recherche d’un minimum global en présence d’erreurs d’...
Award : Prix math/info de l'académie des sciences de Toulouse 2015Reliable global optimization is de...
International audienceNonconvex and highly multimodal optimization problems represent a challenge bo...
http://ea2013.inria.fr//proceedings.pdfInternational audienceEvolutionary Algorithms (EA) usually ca...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
Specialized techniques are needed to solve global optimization problems, due to the existence of mul...
In this work, we propose a meta algorithm that can solve a multivariate global optimization problem ...
In this paper, we envision global optimization as finding, for a given calculation complexity, a sui...
Global optimization is concerned with finding the minimum value of a function where many local minim...
International audienceNonconvex and highly multimodal optimization problems represent a challenge bo...
The only rigorous approaches for achieving a numerical proof of optimality in global optimization ar...
PreprintHighly nonlinear and ill-conditioned numerical optimization problems take their toll on the ...
Reliable global optimization is dedicated to finding a global minimum in the presence of rounding er...
Evolutionary Algorithms (EA) usually carry out an efficient exploration of the search-space, but get...
L’optimisation globale fiable est dédiée à la recherche d’un minimum global en présence d’erreurs d’...
L’optimisation globale fiable est dédiée à la recherche d’un minimum global en présence d’erreurs d’...
Award : Prix math/info de l'académie des sciences de Toulouse 2015Reliable global optimization is de...
International audienceNonconvex and highly multimodal optimization problems represent a challenge bo...
http://ea2013.inria.fr//proceedings.pdfInternational audienceEvolutionary Algorithms (EA) usually ca...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
Specialized techniques are needed to solve global optimization problems, due to the existence of mul...
In this work, we propose a meta algorithm that can solve a multivariate global optimization problem ...
In this paper, we envision global optimization as finding, for a given calculation complexity, a sui...
Global optimization is concerned with finding the minimum value of a function where many local minim...