AbstractA family of algorithms for approximate solution of the bound-constrained minimization problem was introduced in [K.A. Ariyawansa, W.L. Tabor, A class of collinear scaling algorithms for bound-constrained optimization: Derivation and computational results, Technical Report 2003-1, Department of Mathematics, Washington State University, Pullman, WA, 2003, submitted for publication. Available at http://www.math.wsu.edu/math/TRS/2003-1.pdf]. These algorithms employ the standard barrier method, with the inner iteration based on trust region methods. Local models are conic functions rather than the usual quadratic functions, and are required to match first and second derivatives of the barrier function at the current iterate. The various ...
In this paper, we propose a trust-region algorithm to minimize a nonlinear function f: R^n -> R subj...
Abstract. We consider the problem of finding an approximate minimizer of a general quadratic functio...
This work presents a global convergence theory for a broad class of trust-region algorithms for the ...
A family of algorithms for approximate solution of the bound-constrained minimization problem was in...
AbstractA family of algorithms for the approximate solution of the bound-constrained minimization pr...
In this research we present a trust region algorithm for solving the equality constrained optimizati...
Global Convergence of a Class of Collinear Scaling Algorithms with Inexact Line Searches on Convex F...
A global convergence theory for a class of trust region algorithms for solving the equality constrai...
The performance of branch-and-bound algorithms for deterministic global optimization is strongly dep...
A trust-region algorithm for solving the equality constrained optimization problem is presented. Thi...
An algorithm for solving the problem of minimizing a non-linear function subject to equality constra...
. A nonlinearly constrained optimization problem can be solved by the exact penalty approach involvi...
In this paper we introduce a Newton-type algorithm model for solving smooth nonlinear optimization p...
Abstract. The convergence behaviour of a class of iterative methods for solving the constrained mini...
Most reduced Hessian methods for equality constrained problems use a basis for the null space of th...
In this paper, we propose a trust-region algorithm to minimize a nonlinear function f: R^n -> R subj...
Abstract. We consider the problem of finding an approximate minimizer of a general quadratic functio...
This work presents a global convergence theory for a broad class of trust-region algorithms for the ...
A family of algorithms for approximate solution of the bound-constrained minimization problem was in...
AbstractA family of algorithms for the approximate solution of the bound-constrained minimization pr...
In this research we present a trust region algorithm for solving the equality constrained optimizati...
Global Convergence of a Class of Collinear Scaling Algorithms with Inexact Line Searches on Convex F...
A global convergence theory for a class of trust region algorithms for solving the equality constrai...
The performance of branch-and-bound algorithms for deterministic global optimization is strongly dep...
A trust-region algorithm for solving the equality constrained optimization problem is presented. Thi...
An algorithm for solving the problem of minimizing a non-linear function subject to equality constra...
. A nonlinearly constrained optimization problem can be solved by the exact penalty approach involvi...
In this paper we introduce a Newton-type algorithm model for solving smooth nonlinear optimization p...
Abstract. The convergence behaviour of a class of iterative methods for solving the constrained mini...
Most reduced Hessian methods for equality constrained problems use a basis for the null space of th...
In this paper, we propose a trust-region algorithm to minimize a nonlinear function f: R^n -> R subj...
Abstract. We consider the problem of finding an approximate minimizer of a general quadratic functio...
This work presents a global convergence theory for a broad class of trust-region algorithms for the ...