AbstractWe propose a Generalized Pattern Search (GPS) method to solve a class of nonsmooth minimization problems, where the set of nondifferentiability is included in the union of known hyperplanes and, therefore, is highly structured. Both unconstrained and linearly constrained problems are considered. At each iteration the set of poll directions is enforced to conform to the geometry of both the nondifferentiability set and the boundary of the feasible region, near the current iterate. This is the key issue to guarantee the convergence of certain subsequences of iterates to points which satisfy first-order optimality conditions. Numerical experiments on some classical problems validate the method
Abstract. The convergence theory of generalized pattern search algorithms for unconstrained optimiza...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
In this paper, we propose new linesearch-based methods for nonsmooth optimization problems when firs...
Abstract. This paper addresses the problem of minimization of a nonsmooth function under general non...
This paper deals with generalized pattern search (GPS) algorithms for linearly constrained optimizat...
Abstract. This paper contains a new convergence analysis for the Lewis and Torczon GPS class of patt...
This thesis considers the practical problem of constrained and unconstrained local optimization. Thi...
This paper introduces the Mesh Adaptive Direct Search (MADS) class of algorithms for nonlinear optim...
This paper formulates and analyzes a pattern search method for general constrained optimization base...
This paper contains a new convergence analysis for the Lewis and Torczon generalized pattern search ...
The definition of pattern search methods for solving nonlinear unconstrained optimization problems i...
A common question asked by users of direct search algorithms is how to use derivative information at...
In this paper, we propose new linesearch-based methods for nonsmooth constrained optimization proble...
A derivative free frame based method for minimizing~$C^1$ and non-smooth functions is described. A ...
We extend pattern search methods to linearly constrained minimization. We develop a general class of...
Abstract. The convergence theory of generalized pattern search algorithms for unconstrained optimiza...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
In this paper, we propose new linesearch-based methods for nonsmooth optimization problems when firs...
Abstract. This paper addresses the problem of minimization of a nonsmooth function under general non...
This paper deals with generalized pattern search (GPS) algorithms for linearly constrained optimizat...
Abstract. This paper contains a new convergence analysis for the Lewis and Torczon GPS class of patt...
This thesis considers the practical problem of constrained and unconstrained local optimization. Thi...
This paper introduces the Mesh Adaptive Direct Search (MADS) class of algorithms for nonlinear optim...
This paper formulates and analyzes a pattern search method for general constrained optimization base...
This paper contains a new convergence analysis for the Lewis and Torczon generalized pattern search ...
The definition of pattern search methods for solving nonlinear unconstrained optimization problems i...
A common question asked by users of direct search algorithms is how to use derivative information at...
In this paper, we propose new linesearch-based methods for nonsmooth constrained optimization proble...
A derivative free frame based method for minimizing~$C^1$ and non-smooth functions is described. A ...
We extend pattern search methods to linearly constrained minimization. We develop a general class of...
Abstract. The convergence theory of generalized pattern search algorithms for unconstrained optimiza...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
In this paper, we propose new linesearch-based methods for nonsmooth optimization problems when firs...