In this paper, a new combined extended Conjugate-Gradient (CG) and Variable-Metric (VM) methods is proposed for solving unconstrained large-scale numerical optimization problems. The basic idea is to choose a combination of the current gradient and some pervious search directions as a new search direction updated by Al-Bayati\u27s SCVM-method to fit a new step-size parameter using Armijo Inexact Line Searches (ILS). This method is based on the ILS and its numerical properties are discussed using different non-linear test functions with various dimensions. The global convergence property of the new algorithm is investigated under few weak conditions. Numerical experiments show that the new algorithm seems to converge faster and is superior t...
AbstractIn this paper we develop a new class of conjugate gradient methods for unconstrained optimiz...
The conjugate gradient (CG) method has played a special role in solving large-scale nonlinear optimi...
AbstractFor solving large-scale unconstrained minimization problems, the nonlinear conjugate gradien...
AbstractIn this paper, a new gradient-related algorithm for solving large-scale unconstrained optimi...
Conjugate gradient (CG) methods have been widely used as schemes to solve large-scale unconstrained ...
A new scaled conjugate gradient (SCG) method is proposed throughout this paper, the SCG technique ma...
The nonlinear conjugate gradient (CG) method is essential in solving large-scale unconstrained optim...
One of the open problems known to researchers on the application of nonlinear conjugate gradient met...
This thesis focuses on solving conjugate gradient methods for large-scale uncon- strained optimiza...
The conjugate gradient method provides a very powerful tool for solving unconstrained optimization p...
In this paper, a new conjugate gradient method is proposed for large-scale unconstrained o...
In this paper, a modified conjugate gradient method is presented for solving large-scale unconstrain...
Conjugate Gradient (CG) methods are widely used for solving unconstrained optimization problems. The...
AbstractA new family of numerically efficient full-memory variable metric or quasi-Newton methods fo...
This paper gives a modified Hestenes and Stiefel (HS) conjugate gradient algorithm under the Yuan-We...
AbstractIn this paper we develop a new class of conjugate gradient methods for unconstrained optimiz...
The conjugate gradient (CG) method has played a special role in solving large-scale nonlinear optimi...
AbstractFor solving large-scale unconstrained minimization problems, the nonlinear conjugate gradien...
AbstractIn this paper, a new gradient-related algorithm for solving large-scale unconstrained optimi...
Conjugate gradient (CG) methods have been widely used as schemes to solve large-scale unconstrained ...
A new scaled conjugate gradient (SCG) method is proposed throughout this paper, the SCG technique ma...
The nonlinear conjugate gradient (CG) method is essential in solving large-scale unconstrained optim...
One of the open problems known to researchers on the application of nonlinear conjugate gradient met...
This thesis focuses on solving conjugate gradient methods for large-scale uncon- strained optimiza...
The conjugate gradient method provides a very powerful tool for solving unconstrained optimization p...
In this paper, a new conjugate gradient method is proposed for large-scale unconstrained o...
In this paper, a modified conjugate gradient method is presented for solving large-scale unconstrain...
Conjugate Gradient (CG) methods are widely used for solving unconstrained optimization problems. The...
AbstractA new family of numerically efficient full-memory variable metric or quasi-Newton methods fo...
This paper gives a modified Hestenes and Stiefel (HS) conjugate gradient algorithm under the Yuan-We...
AbstractIn this paper we develop a new class of conjugate gradient methods for unconstrained optimiz...
The conjugate gradient (CG) method has played a special role in solving large-scale nonlinear optimi...
AbstractFor solving large-scale unconstrained minimization problems, the nonlinear conjugate gradien...