Recently, Neumaier and Azmi gave a comprehensive convergence theory for a generic algorithm for bound constrained optimization problems with a continuously differentiable objective function. The algorithm combines an active set strategy with a gradient-free line search CLS along a piecewise linear search path defined by directions chosen to reduce zigzagging. This paper describes LMBOPT, an efficient implementation of this scheme. It employs new limited memory techniques for computing the search directions, improves CLS by adding various safeguards relevant when finite precision arithmetic is used, and adds many practical enhancements in other details. The paper compares LMBOPT and several other solvers on the unconstrained and bound constr...
An optimization algorithm for minimizing a smooth function over a convex set is de-scribed. Each ite...
International audienceBacktrack search is a classical complete approach for exploring the search spa...
We extend pattern search methods to linearly constrained minimization. We develop a general class of...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
Abstract. We present a convergence theory for pattern search methods for solving bound constrained n...
AbstractThis paper describes an accurate and reliable new algorithm (LFOPC) for solving constrained ...
AbstractIn this paper, a subspace limited memory BFGS algorithm for solving large-scale bound constr...
Abstract An active set limited memory BFGS algorithm for large-scale bound con-strained optimization...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
In this data article, we report data and experiments related to the research article entitled “A Two...
The optimization problems arising in modern engineering practice are increasingly simulation-based, ...
In this paper, an algorithm for constrained minimax problems is presented which is globally converge...
A new algorithm for solving smooth large-scale minimization problems with bound constraints is intro...
A constrained minimax problem is converted to minimization of a sequence of unconstrained and contin...
We present a convergence theory for pattern search methods for solving bound constrained nonlinear p...
An optimization algorithm for minimizing a smooth function over a convex set is de-scribed. Each ite...
International audienceBacktrack search is a classical complete approach for exploring the search spa...
We extend pattern search methods to linearly constrained minimization. We develop a general class of...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
Abstract. We present a convergence theory for pattern search methods for solving bound constrained n...
AbstractThis paper describes an accurate and reliable new algorithm (LFOPC) for solving constrained ...
AbstractIn this paper, a subspace limited memory BFGS algorithm for solving large-scale bound constr...
Abstract An active set limited memory BFGS algorithm for large-scale bound con-strained optimization...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
In this data article, we report data and experiments related to the research article entitled “A Two...
The optimization problems arising in modern engineering practice are increasingly simulation-based, ...
In this paper, an algorithm for constrained minimax problems is presented which is globally converge...
A new algorithm for solving smooth large-scale minimization problems with bound constraints is intro...
A constrained minimax problem is converted to minimization of a sequence of unconstrained and contin...
We present a convergence theory for pattern search methods for solving bound constrained nonlinear p...
An optimization algorithm for minimizing a smooth function over a convex set is de-scribed. Each ite...
International audienceBacktrack search is a classical complete approach for exploring the search spa...
We extend pattern search methods to linearly constrained minimization. We develop a general class of...