We consider the problem of unconstrained minimization of a smooth function in the derivative-free setting using. In particular, we propose and study a simplified variant of the direct search method (of direction type), which we call simplified direct search (SDS). Unlike standard direct search methods, which depend on a large number of parameters that need to be tuned, SDS depends on a single scalar parameter only. Despite relevant research activity in direct search methods spanning several decades, com-plexity guarantees—bounds on the number of function evaluations needed to find an approximate solution—were not established until very recently. In this paper we give a surprisingly brief and unified analysis of SDS for nonconvex, convex and...
AbstractWe discuss direct search methods for unconstrained optimization. We give a modern perspectiv...
International audienceIn this paper it is proposed to equip direct-search methods with a general pro...
This paper focuses on a subclass of box-constrained, non-linear optimization problems. We are partic...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
In the context of the derivative-free optimization of a smooth objective function, it has been shown...
In this paper, we prove that the broad class of direct-search methods of directional type based on i...
In this paper, we prove that the broad class of direct-search methods of directional type based on i...
The worst case complexity of direct-search methods has been recently analyzed when they use positive...
A direct search algorithm for unconstrained minimization of smooth functions is described. The algor...
The worst case complexity of direct-search methods has been recently analyzed when they use positive...
International audienceDirect Multisearch is a well-established class of algorithms, suited for multi...
Funding support for Ana Luisa Custodio and Rohollah Garmanjani was provided by national funds throug...
Abstract The worst case complexity of direct-search methods has been recently analyzed when they use...
An efficient and rapid heuristic local search method is dealt with, which can be applied for a wide ...
AbstractWe discuss direct search methods for unconstrained optimization. We give a modern perspectiv...
International audienceIn this paper it is proposed to equip direct-search methods with a general pro...
This paper focuses on a subclass of box-constrained, non-linear optimization problems. We are partic...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
In the context of the derivative-free optimization of a smooth objective function, it has been shown...
In this paper, we prove that the broad class of direct-search methods of directional type based on i...
In this paper, we prove that the broad class of direct-search methods of directional type based on i...
The worst case complexity of direct-search methods has been recently analyzed when they use positive...
A direct search algorithm for unconstrained minimization of smooth functions is described. The algor...
The worst case complexity of direct-search methods has been recently analyzed when they use positive...
International audienceDirect Multisearch is a well-established class of algorithms, suited for multi...
Funding support for Ana Luisa Custodio and Rohollah Garmanjani was provided by national funds throug...
Abstract The worst case complexity of direct-search methods has been recently analyzed when they use...
An efficient and rapid heuristic local search method is dealt with, which can be applied for a wide ...
AbstractWe discuss direct search methods for unconstrained optimization. We give a modern perspectiv...
International audienceIn this paper it is proposed to equip direct-search methods with a general pro...
This paper focuses on a subclass of box-constrained, non-linear optimization problems. We are partic...