The attention of this thesis is on the theoretical and experimental behaviors of some modifications of the symmetric rank-one method, one of the quasi-Newton update for finding the minimum of real valued function f over all vectors x ∈ Rn. Symmetric rank-one update (SR1) is known to have good numerical performance among the quasi-Newton methods for solving unconstrained optimization problems. However, it is well known that the SR1 update may not preserve positive definiteness even when updated from a positive definite approximation and can be undefined with zero denominator. Thus, it is our aim in this thesis to provide effective remedies aimed toward dealing with these well known shortcomings and improve the performance of the upd...
Problem statement: Memoryless QN methods have been regarded effective techniques for solving large-s...
Memoryless quasi-Newton method is exactly the quasi-Newton method for which the approximation to the...
In this paper, we propose a three-term conjugate gradient method via the symmetric rank-one update. ...
AbstractIn this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstr...
In this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstrained op...
AbstractQuasi-Newton (QN) methods are generally held to be the most efficient minimization methods f...
In this paper, we investigate a symmetric rank-one (SR1) quasi-Newton (QN) formula in which the Hess...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
AbstractQuasi-Newton (QN) methods are generally held to be the most efficient minimization methods f...
AbstractIn this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstr...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
AbstractThis paper proposes a new robust and quickly convergent pattern search method based on an im...
In this paper, we present a generalized Symmetric Rank-one (SR1) method by employing interpolatory p...
A stabilized version of the symmetric rank-one updating method for solving unconstrained optimizatio...
The focus of this thesis is on analyzing the theoretical and computational aspects of some quasi-New...
Problem statement: Memoryless QN methods have been regarded effective techniques for solving large-s...
Memoryless quasi-Newton method is exactly the quasi-Newton method for which the approximation to the...
In this paper, we propose a three-term conjugate gradient method via the symmetric rank-one update. ...
AbstractIn this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstr...
In this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstrained op...
AbstractQuasi-Newton (QN) methods are generally held to be the most efficient minimization methods f...
In this paper, we investigate a symmetric rank-one (SR1) quasi-Newton (QN) formula in which the Hess...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
AbstractQuasi-Newton (QN) methods are generally held to be the most efficient minimization methods f...
AbstractIn this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstr...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
AbstractThis paper proposes a new robust and quickly convergent pattern search method based on an im...
In this paper, we present a generalized Symmetric Rank-one (SR1) method by employing interpolatory p...
A stabilized version of the symmetric rank-one updating method for solving unconstrained optimizatio...
The focus of this thesis is on analyzing the theoretical and computational aspects of some quasi-New...
Problem statement: Memoryless QN methods have been regarded effective techniques for solving large-s...
Memoryless quasi-Newton method is exactly the quasi-Newton method for which the approximation to the...
In this paper, we propose a three-term conjugate gradient method via the symmetric rank-one update. ...