Title of article
Diagonal Preconditioned Conjugate Gradient Algorithm for Unconstrained Optimization
Author/Authors
Ng, Choong Boon Universiti Putra Malaysia - Faculty of Science - Department of Mathematics, Malaysia , Leong, Wah June Universiti Putra Malaysia - Faculty of Science - Department of Mathematics, Malaysia , Monsi, Mansor Universiti Putra Malaysia - Faculty of Science - Department of Mathematics, Malaysia
From page
213
To page
224
Abstract
The nonlinear conjugate gradient (CG) methods have widely been used in solving unconstrained optimization problems. They are well-suited for large-scale optimization problems due to their low memory requirements and least computational costs. In this paper, a new diagonal preconditioned conjugate gradient (PRECG) algorithm is designed, and this is motivated by the fact that a pre-conditioner can greatly enhance the performance of the CG method. Under mild conditions, it is shown that the algorithm is globally convergent for strongly convex functions. Numerical results are presented to show that the new diagonal PRECG method works better than the standard CG method.
Keywords
Unconstrained optimization , conjugate gradient method , preconditioning , diagonal approximation for Hessian
Journal title
Pertanika Journal of Science and Technology ( JST)
Journal title
Pertanika Journal of Science and Technology ( JST)
Record number
2651022
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