In this work, a new stabilization scheme for the Gauss-Newton method is defined, where the minimum norm solution of the linear least-squares problem is normally taken as search direction and the standard Gauss-Newton equation is suitably modified only at a subsequence of the iterates. Moreover, the stepsize is computed by means of a nonmonotone line search technique. The global convergence of the proposed algorithm model is proved under standard assumptions and the superlinear rate of convergence is ensured for the zero-residual case. A specific implementation algorithm is described, where the use of the pure Gauss-Newton iteration is conditioned to the progress made in the minimization process by controlling the stepsize. The results of a ...
In this paper, an unconstrained minimization algorithm is defined in which a nonmonotone line search...
In this paper, by using a modified BFGS (MBFGS) update, we propose a structured MBFGS update for the...
Abstract. In this paper, an unconstrained minimization algorithm is defined in which a nonmonotone l...
This paper describes a fall-back procedure for use with the Gauss-Newton method for non-linear least...
Abstract. In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear...
This work addresses a spectral correction for the Gauss-Newton model in the solution of nonlinear le...
In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear least-squ...
In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear least-squ...
In this paper, we define an unconstrained optimization algorithm employing only first-order derivati...
Abstract. In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear...
Abstract. In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear...
When a physical system is modeled by a nonlinear function, the unknown parameters can be estimated b...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
This paper deals with the solution of smooth unconstrained minimization problems by Newton-type meth...
This work presents a novel version of recently developed Gauss--Newton method for solving systems of...
In this paper, an unconstrained minimization algorithm is defined in which a nonmonotone line search...
In this paper, by using a modified BFGS (MBFGS) update, we propose a structured MBFGS update for the...
Abstract. In this paper, an unconstrained minimization algorithm is defined in which a nonmonotone l...
This paper describes a fall-back procedure for use with the Gauss-Newton method for non-linear least...
Abstract. In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear...
This work addresses a spectral correction for the Gauss-Newton model in the solution of nonlinear le...
In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear least-squ...
In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear least-squ...
In this paper, we define an unconstrained optimization algorithm employing only first-order derivati...
Abstract. In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear...
Abstract. In this paper, a Gauss-Newton method is proposed for the solution of large-scale nonlinear...
When a physical system is modeled by a nonlinear function, the unknown parameters can be estimated b...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
This paper deals with the solution of smooth unconstrained minimization problems by Newton-type meth...
This work presents a novel version of recently developed Gauss--Newton method for solving systems of...
In this paper, an unconstrained minimization algorithm is defined in which a nonmonotone line search...
In this paper, by using a modified BFGS (MBFGS) update, we propose a structured MBFGS update for the...
Abstract. In this paper, an unconstrained minimization algorithm is defined in which a nonmonotone l...