In this paper, we proposed a new hybrid conjugate gradient algorithm for solving unconstrained optimization problems as a convex combination of the Dai-Yuan algorithm, conjugate-descent algorithm, and Hestenes-Stiefel algorithm. This new algorithm is globally convergent and satisfies the sufficient descent condition by using the strong Wolfe conditions. The numerical results show that the proposed nonlinear hybrid conjugate gradient algorithm is efficient and robust
A hybrid method combining the FR conjugate gradient method and the WYL conjugate gradient method is ...
Conjugate gradient methods are widely used for unconstrained opti-mization, especially large scale p...
In solving large scale problems, the quasi-Newton method is known as the most efficient method in so...
In this paper, we proposed a new hybrid conjugate gradient algorithm for solving unconstrained optim...
The conjugate gradient method an efficient technique for solving the unconstrained optimization prob...
Nonlinear conjugate gradient (CG) method holds an important role in solving large-scale unconstraine...
The nonlinear conjugate gradient algorithms are a very effective way in solving large-scale unconstr...
On some studies a conjugate parameter plays an important role for the conjugate gradient methods. In...
Conjugate gradient methods (CG) are an important class of methods for solving unconstrained optimiza...
In this paper, we propose a new hybrid conjugate gradient method for unconstrained optimization prob...
Many researchers are interested for developed and improved the conjugate gradient method for solving...
The conjugate gradient (CG) and Davidon, Fletcher and Powell (DFP) method are both well known solver...
In this study, we tend to propose a replacement hybrid algorithmic rule which mixes the search direc...
In this paper, a new search direction vectors are defined for BFGS-CG proposed by Ibrahim et al. by ...
The conjugate gradient (CG) scheme is regarded as among the efficient methods for large-scale optimi...
A hybrid method combining the FR conjugate gradient method and the WYL conjugate gradient method is ...
Conjugate gradient methods are widely used for unconstrained opti-mization, especially large scale p...
In solving large scale problems, the quasi-Newton method is known as the most efficient method in so...
In this paper, we proposed a new hybrid conjugate gradient algorithm for solving unconstrained optim...
The conjugate gradient method an efficient technique for solving the unconstrained optimization prob...
Nonlinear conjugate gradient (CG) method holds an important role in solving large-scale unconstraine...
The nonlinear conjugate gradient algorithms are a very effective way in solving large-scale unconstr...
On some studies a conjugate parameter plays an important role for the conjugate gradient methods. In...
Conjugate gradient methods (CG) are an important class of methods for solving unconstrained optimiza...
In this paper, we propose a new hybrid conjugate gradient method for unconstrained optimization prob...
Many researchers are interested for developed and improved the conjugate gradient method for solving...
The conjugate gradient (CG) and Davidon, Fletcher and Powell (DFP) method are both well known solver...
In this study, we tend to propose a replacement hybrid algorithmic rule which mixes the search direc...
In this paper, a new search direction vectors are defined for BFGS-CG proposed by Ibrahim et al. by ...
The conjugate gradient (CG) scheme is regarded as among the efficient methods for large-scale optimi...
A hybrid method combining the FR conjugate gradient method and the WYL conjugate gradient method is ...
Conjugate gradient methods are widely used for unconstrained opti-mization, especially large scale p...
In solving large scale problems, the quasi-Newton method is known as the most efficient method in so...