In this paper, we propose a new class of adaptive trust region methods for unconstrained optimization problems and develop some convergence properties. In the new algorithms, we use the current iterative information to define a suitable initial trust region radius at each iteration. The initial trust region radius is more reasonable in the sense that the trust region model and the objective function are more consistent at the current iterate. The global convergence, super-linear and quadratic convergence rate are analyzed under some mild conditions. Numerical results show that some special adaptive trust region methods are available and efficient in practical computation
the convergence of a wide range of trust region methods for unconstrained optimization
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...
AbstractIn this paper, we propose a new trust region method for unconstrained optimization problems....
In this paper, we propose a nonmonotone adaptive trust region method for unconstrained optimization ...
AbstractIn this paper, we combine the new trust region subproblem proposed in [1] with the nonmonoto...
An improved trust region method for unconstrained optimization Jun Liu In this paper, a new trust re...
AbstractIn this paper, we incorporate a nonmonotone technique with the new proposed adaptive trust r...
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...
A new self-adaptive rule of trust region radius is introduced, which is given by a piecewise functio...
Abstract. This paper extends the known excellent global convergence properties of trust region algor...
summary:We propose a new and efficient nonmonotone adaptive trust region algorithm to solve unconstr...
summary:We propose a new and efficient nonmonotone adaptive trust region algorithm to solve unconstr...
In this study, we propose a trust-region-based procedure to solve unconstrained optimization problem...
In this paper, we present a new trust region method for unconstrained nonlinear programming in which...
the convergence of a wide range of trust region methods for unconstrained optimization
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...
AbstractIn this paper, we propose a new trust region method for unconstrained optimization problems....
In this paper, we propose a nonmonotone adaptive trust region method for unconstrained optimization ...
AbstractIn this paper, we combine the new trust region subproblem proposed in [1] with the nonmonoto...
An improved trust region method for unconstrained optimization Jun Liu In this paper, a new trust re...
AbstractIn this paper, we incorporate a nonmonotone technique with the new proposed adaptive trust r...
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...
A new self-adaptive rule of trust region radius is introduced, which is given by a piecewise functio...
Abstract. This paper extends the known excellent global convergence properties of trust region algor...
summary:We propose a new and efficient nonmonotone adaptive trust region algorithm to solve unconstr...
summary:We propose a new and efficient nonmonotone adaptive trust region algorithm to solve unconstr...
In this study, we propose a trust-region-based procedure to solve unconstrained optimization problem...
In this paper, we present a new trust region method for unconstrained nonlinear programming in which...
the convergence of a wide range of trust region methods for unconstrained optimization
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...
summary:Trust region methods are a class of effective iterative schemes in numerical optimization. I...