Given an algorithm A for solving some mathematical problem based on the iterative solution of simpler subproblems, an outer trust-region (OTR) modification of A is the result of adding a trust-region constraint to each subproblem. The trust-region size is adaptively updated according to the behavior of crucial variables. The new subproblems should not be more complex than the original ones, and the convergence properties of the OTR algorithm should be the same as those of Algorithm A. In the present work, the OTR approach is exploited in connection with the ""greediness phenomenon"" of nonlinear programming. Convergence results for an OTR version of an augmented Lagrangian method for nonconvex constrained optimization are proved, and numeri...
The aim of this text is to highlight recent advances of trust-region-based methods for nonlinear pro...
An algorithm for minimizing a nonlinear function subject to nonlinear equality and inequality constr...
This work presents a global convergence theory for a broad class of trust-region algorithms for the ...
Given an algorithm A for solving some mathematical problem based on the iterative solution of simple...
An algorithm for solving the problem of minimizing a non-linear function subject to equality constra...
We review the main techniques used in trust region algorithms for nonlinear constrained optimization...
This work is concerned with the theoretical study and the implementation of algorithms for solving t...
AbstractIn this paper, we propose a new trust region method for unconstrained optimization problems....
Trust-region methods are amongst the most commonly used methods in unconstrained mathematical optimi...
An improved trust region method for unconstrained optimization Jun Liu In this paper, a new trust re...
In this research we present a trust region algorithm for solving the equality constrained optimizati...
AbstractIn this paper, we present a nonmonotone trust-region algorithm with nonmonotone penalty para...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
Abstract. We consider methods for large-scale unconstrained minimization based on finding an approxi...
A class of trust region based algorithms is presented for the solution of nonlinear optimization pro...
The aim of this text is to highlight recent advances of trust-region-based methods for nonlinear pro...
An algorithm for minimizing a nonlinear function subject to nonlinear equality and inequality constr...
This work presents a global convergence theory for a broad class of trust-region algorithms for the ...
Given an algorithm A for solving some mathematical problem based on the iterative solution of simple...
An algorithm for solving the problem of minimizing a non-linear function subject to equality constra...
We review the main techniques used in trust region algorithms for nonlinear constrained optimization...
This work is concerned with the theoretical study and the implementation of algorithms for solving t...
AbstractIn this paper, we propose a new trust region method for unconstrained optimization problems....
Trust-region methods are amongst the most commonly used methods in unconstrained mathematical optimi...
An improved trust region method for unconstrained optimization Jun Liu In this paper, a new trust re...
In this research we present a trust region algorithm for solving the equality constrained optimizati...
AbstractIn this paper, we present a nonmonotone trust-region algorithm with nonmonotone penalty para...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
Abstract. We consider methods for large-scale unconstrained minimization based on finding an approxi...
A class of trust region based algorithms is presented for the solution of nonlinear optimization pro...
The aim of this text is to highlight recent advances of trust-region-based methods for nonlinear pro...
An algorithm for minimizing a nonlinear function subject to nonlinear equality and inequality constr...
This work presents a global convergence theory for a broad class of trust-region algorithms for the ...