Two basic disadvantages of the symmetric rank one (SR1) update are that the SR1 update may not preserve positive definiteness when starting with a positive definite approximation and the SR1 update can be undefined. A simple remedy to these problems is to restart the update with the initial approximation, mostly the identity matrix, whenever these difficulties arise. However, numerical experience shows that restart with the identity matrix is not a good choice. Instead of using the identity matrix we used a positive multiple of the identity matrix. The used positive scaling factor is the optimal solution of the measure defined by the problem—maximize the determinant of the update subject to a bound of one on the largest eigenvalue. This mea...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
Problem statement: Memoryless QN methods have been regarded effective techniques for solving large-s...
A basic disadvantage to the symmetric rank one (SR1) update is that the SRI update may not preserve ...
A basic disadvantage to the symmetric rank one (SR1) update is that the SR1 update may not preserve ...
AbstractIn this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstr...
AbstractQuasi-Newton (QN) methods are generally held to be the most efficient minimization methods f...
In this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstrained op...
Measures of deviation of a symmetric positive definite matrix from the identity are derived. They gi...
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...
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...
Measures of deviation of a symmetric positive denite matrix from the identity are derived. They give...
The attention of this thesis is on the theoretical and experimental behaviors of some modifications...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
Problem statement: Memoryless QN methods have been regarded effective techniques for solving large-s...
A basic disadvantage to the symmetric rank one (SR1) update is that the SRI update may not preserve ...
A basic disadvantage to the symmetric rank one (SR1) update is that the SR1 update may not preserve ...
AbstractIn this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstr...
AbstractQuasi-Newton (QN) methods are generally held to be the most efficient minimization methods f...
In this paper, we present a new symmetric rank-one (SR1) method for the solution of unconstrained op...
Measures of deviation of a symmetric positive definite matrix from the identity are derived. They gi...
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...
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...
Measures of deviation of a symmetric positive denite matrix from the identity are derived. They give...
The attention of this thesis is on the theoretical and experimental behaviors of some modifications...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
In this paper we investigate on convergence rate of a modified symmetric rank-one (SR1) method for u...
Problem statement: Memoryless QN methods have been regarded effective techniques for solving large-s...