Voir aussi article : http://dx.doi.org/10.1016/j.crma.2012.03.014International audienceThe steepest-descent method is a well-known and effective single-objective descent algorithm when the gradient of the objective function is known. Here, we propose a particular generalization of this method to multi-objective optimization by considering the concurrent minimization of n smooth criteria {J_i} (i = 1, . . . , n). The novel algorithm is based on the following observation: consider a finite set of vectors {u_i} (u_i ∈ R^N, n ≤ N); in the convex hull of this family, there exists a unique element of minimal norm, say ω ∈ R^N; then, the scalar product of ω with any vector in the convex hull, and in particular, with any u_i, is at least equal to |...
In multiobjective optimization, the knowledge of the Pareto set provides valuable information on the...
In multiobjective optimization, the knowledge of the Pareto set provides valuable information on the...
International audienceMany engineering sectors are challenged by multi-objective optimization proble...
Voir aussi article : http://dx.doi.org/10.1016/j.crma.2012.03.014International audienceThe steepest-...
Le texte inclut une version abrégée en français.International audienceOne considers the context of t...
AbstractIn this work we propose a Cauchy-like method for solving smooth unconstrained vector optimiz...
In this paper a notion of descent direction for a vector function defined on a box is introduced. Th...
In this paper we consider the classical unconstrained nonlinear multiobjective optimization problem....
International audienceThe Multiple-Gradient Descent Algorithm (MGDA) has been proposed and tested fo...
International audienceThe Multiple-Gradient Descent Algorithm (MGDA) has been proposed and tested fo...
International audienceThis article compounds and extends several publications in which aMultiple-Gra...
In this report, the problem of minimizing simultaneously n smooth and unconstrained criteria is cons...
In practical applications of optimization it is common to have several conflicting objective functi...
Book dedicated to Professor P. Neittaanmaki on His 60th BithdayInternational audienceIn multi-object...
Many modern machine learning applications, such as multi-task learning, require finding optimal mode...
In multiobjective optimization, the knowledge of the Pareto set provides valuable information on the...
In multiobjective optimization, the knowledge of the Pareto set provides valuable information on the...
International audienceMany engineering sectors are challenged by multi-objective optimization proble...
Voir aussi article : http://dx.doi.org/10.1016/j.crma.2012.03.014International audienceThe steepest-...
Le texte inclut une version abrégée en français.International audienceOne considers the context of t...
AbstractIn this work we propose a Cauchy-like method for solving smooth unconstrained vector optimiz...
In this paper a notion of descent direction for a vector function defined on a box is introduced. Th...
In this paper we consider the classical unconstrained nonlinear multiobjective optimization problem....
International audienceThe Multiple-Gradient Descent Algorithm (MGDA) has been proposed and tested fo...
International audienceThe Multiple-Gradient Descent Algorithm (MGDA) has been proposed and tested fo...
International audienceThis article compounds and extends several publications in which aMultiple-Gra...
In this report, the problem of minimizing simultaneously n smooth and unconstrained criteria is cons...
In practical applications of optimization it is common to have several conflicting objective functi...
Book dedicated to Professor P. Neittaanmaki on His 60th BithdayInternational audienceIn multi-object...
Many modern machine learning applications, such as multi-task learning, require finding optimal mode...
In multiobjective optimization, the knowledge of the Pareto set provides valuable information on the...
In multiobjective optimization, the knowledge of the Pareto set provides valuable information on the...
International audienceMany engineering sectors are challenged by multi-objective optimization proble...