In this paper, we propose an improved multi-step diagonal updating method for large scale unconstrained optimization. Our approach is based on constructing a new gradient-type method by means of interpolating curves. We measure the distances required to parameterize the interpolating polynomials via a norm defined by a positive-definite matrix. By developing on implicit updating approach we can obtain an improved version of Hessian approximation in diagonal matrix form, while avoiding the computational expenses of actually calculating the improved version of the approximation matrix. The effectiveness of our proposed method is evaluated by means of computational comparison with the BB method and its variants. We show that our method is glob...
This paper presents a diagonal-secant modification of the successive element correction method, a fi...
In this paper, we present a generalized Symmetric Rank-one (SR1) method by employing interpolatory p...
In this work, we present a new class of diagonal quasi-Newton methods for solving large-scale uncons...
AbstractIn this paper, we propose an improved multi-step diagonal updating method for large scale un...
The main focus of this paper is to derive new diagonal updating scheme via the direct weak secant eq...
AbstractIn this paper, we propose an improved multi-step diagonal updating method for large scale un...
In this paper, we propose some improvements on a new gradient-type method for solving large-scale un...
We present a new gradient method that uses scaling and extra updating within the diagonal updating f...
We present a new gradient method that uses scaling and extra updating within the diagonal updating f...
AbstractIn this paper, we propose some improvements on a new gradient-type method for solving large-...
AbstractIn this paper, we propose some improvements on a new gradient-type method for solving large-...
We study the convergence properties of a class of low memory methods for solving large-scale unconst...
AbstractMulti-step quasi-Newton methods for optimisation (using data from more than one previous ste...
In this paper, we aim to propose some spectral gradient methods via variational technique under log-...
The conjugate gradient methods are noted to be exceedingly valuable for solving large-scale unconstr...
This paper presents a diagonal-secant modification of the successive element correction method, a fi...
In this paper, we present a generalized Symmetric Rank-one (SR1) method by employing interpolatory p...
In this work, we present a new class of diagonal quasi-Newton methods for solving large-scale uncons...
AbstractIn this paper, we propose an improved multi-step diagonal updating method for large scale un...
The main focus of this paper is to derive new diagonal updating scheme via the direct weak secant eq...
AbstractIn this paper, we propose an improved multi-step diagonal updating method for large scale un...
In this paper, we propose some improvements on a new gradient-type method for solving large-scale un...
We present a new gradient method that uses scaling and extra updating within the diagonal updating f...
We present a new gradient method that uses scaling and extra updating within the diagonal updating f...
AbstractIn this paper, we propose some improvements on a new gradient-type method for solving large-...
AbstractIn this paper, we propose some improvements on a new gradient-type method for solving large-...
We study the convergence properties of a class of low memory methods for solving large-scale unconst...
AbstractMulti-step quasi-Newton methods for optimisation (using data from more than one previous ste...
In this paper, we aim to propose some spectral gradient methods via variational technique under log-...
The conjugate gradient methods are noted to be exceedingly valuable for solving large-scale unconstr...
This paper presents a diagonal-secant modification of the successive element correction method, a fi...
In this paper, we present a generalized Symmetric Rank-one (SR1) method by employing interpolatory p...
In this work, we present a new class of diagonal quasi-Newton methods for solving large-scale uncons...