AbstractThis paper presents a family of improved secant algorithms via two preconditional curvilinear paths, the preconditional modified gradient path and preconditional optimal path, for solving general nonlinear optimization problems with nonlinear equality constraints. We employ the stable Bunch–Parlett factorization method of symmetric matrices so that two preconditional curvilinear paths are very easily formed. The nonmonotone curvilinear search technique, by introducing a nonsmooth merit function and adopting a dogleg-typed movement, is used to speed up the convergence progress in the contours of objective function with large curvature. Global convergence of the proposed algorithms is obtained under some reasonable conditions. Further...
The limited memory steepest descent method (Fletcher, 2012) for unconstrained optimization problems ...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
AbstractIn this paper, the nonlinear minimax problems with inequality constraints are discussed, and...
AbstractThis paper presents a family of improved secant algorithms via two preconditional curvilinea...
AbstractAn algorithm is presented that minimizes a nonlinear function in many variables under equali...
AbstractIn this paper a class of algorithms is presented for minimizing a nonlinear function subject...
This paper proposes an algorithm for minimizing a function f on R^n in the presence of m equality co...
A gradient-secant algorithm for unconstrained optimization problems is presented. The algorithm uses...
AbstractAn algorithm is presented that minimizes a continuously differentiable function in several v...
AbstractIn this paper we combine a reduced Hessian method with a mixed strategy using both trust reg...
AbstractA curvilinear method is proposed to solve an unconstrained nonlinear optimization problem. B...
A new algorithm for solving smooth large-scale minimization problems with bound constraints is intro...
In this work some interesting relations between results on basic optimization and algorithms for non...
We present a new algorithmic framework for solving unconstrained minimization problems that incorpor...
AbstractFollowing the approach proposed by Dai and Liao, we introduce two nonlinear conjugate gradie...
The limited memory steepest descent method (Fletcher, 2012) for unconstrained optimization problems ...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
AbstractIn this paper, the nonlinear minimax problems with inequality constraints are discussed, and...
AbstractThis paper presents a family of improved secant algorithms via two preconditional curvilinea...
AbstractAn algorithm is presented that minimizes a nonlinear function in many variables under equali...
AbstractIn this paper a class of algorithms is presented for minimizing a nonlinear function subject...
This paper proposes an algorithm for minimizing a function f on R^n in the presence of m equality co...
A gradient-secant algorithm for unconstrained optimization problems is presented. The algorithm uses...
AbstractAn algorithm is presented that minimizes a continuously differentiable function in several v...
AbstractIn this paper we combine a reduced Hessian method with a mixed strategy using both trust reg...
AbstractA curvilinear method is proposed to solve an unconstrained nonlinear optimization problem. B...
A new algorithm for solving smooth large-scale minimization problems with bound constraints is intro...
In this work some interesting relations between results on basic optimization and algorithms for non...
We present a new algorithmic framework for solving unconstrained minimization problems that incorpor...
AbstractFollowing the approach proposed by Dai and Liao, we introduce two nonlinear conjugate gradie...
The limited memory steepest descent method (Fletcher, 2012) for unconstrained optimization problems ...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
AbstractIn this paper, the nonlinear minimax problems with inequality constraints are discussed, and...