Two nonlinear conjugate gradient-type methods for solving unconstrained optimization problems are proposed. An attractive property of the methods, is that, without any line search, the generated directions always descend. Under some mild conditions, global convergence results for both methods are established. Preliminary numerical results show that these proposed methods are promising, and competitive with the well-known PRP method
The nonlinear conjugate gradient algorithms are a very effective way in solving large-scale unconstr...
The conjugate gradient method is very effective in solving large-scale unconstrained optimal problem...
AbstractAlthough the Liu–Storey (LS) nonlinear conjugate gradient method has a similar structure as ...
In this paper, a new nonlinear conjugate gradient method is proposed for large-scale unconstrained o...
In this paper, a new conjugate gradient method is proposed for large-scale unconstrained o...
Abstract In this paper, an efficient modified nonlinear conjugate gradient method for solving uncons...
This thesis focuses on solving conjugate gradient methods for large-scale uncon- strained optimiza...
The conjugate gradient (CG) method has played a special role in solving large-scale nonlinear optimi...
AbstractA modified conjugate gradient method is presented for solving unconstrained optimization pro...
A new nonlinear conjugate gradient formula, which satisfies the sufficient descent condition, for so...
In this paper, a modified conjugate gradient method is presented for solving large-scale unconstrain...
In this paper, we propose preconditioned conjugate gradient method by applying preconditioning techn...
Conjugate gradient methods (CG) are an important class of methods for solving unconstrained optimiza...
It is well known that the sufficient descent condition is very important to the global convergence o...
The conjugate gradient methods are noted to be exceedingly valuable for solving large-scale unconstr...
The nonlinear conjugate gradient algorithms are a very effective way in solving large-scale unconstr...
The conjugate gradient method is very effective in solving large-scale unconstrained optimal problem...
AbstractAlthough the Liu–Storey (LS) nonlinear conjugate gradient method has a similar structure as ...
In this paper, a new nonlinear conjugate gradient method is proposed for large-scale unconstrained o...
In this paper, a new conjugate gradient method is proposed for large-scale unconstrained o...
Abstract In this paper, an efficient modified nonlinear conjugate gradient method for solving uncons...
This thesis focuses on solving conjugate gradient methods for large-scale uncon- strained optimiza...
The conjugate gradient (CG) method has played a special role in solving large-scale nonlinear optimi...
AbstractA modified conjugate gradient method is presented for solving unconstrained optimization pro...
A new nonlinear conjugate gradient formula, which satisfies the sufficient descent condition, for so...
In this paper, a modified conjugate gradient method is presented for solving large-scale unconstrain...
In this paper, we propose preconditioned conjugate gradient method by applying preconditioning techn...
Conjugate gradient methods (CG) are an important class of methods for solving unconstrained optimiza...
It is well known that the sufficient descent condition is very important to the global convergence o...
The conjugate gradient methods are noted to be exceedingly valuable for solving large-scale unconstr...
The nonlinear conjugate gradient algorithms are a very effective way in solving large-scale unconstr...
The conjugate gradient method is very effective in solving large-scale unconstrained optimal problem...
AbstractAlthough the Liu–Storey (LS) nonlinear conjugate gradient method has a similar structure as ...