In (NAR 08/18 and 08/21, Oxford University Computing Laboratory, 2008) we introduced a second-derivative SQP method (S2QP) for solving nonlinear nonconvex optimization problems. We proved that the method is globally convergent and locally superlinearly convergent under standard assumptions. A critical component of the algorithm is the so-called predictor step, which is computed from a strictly convex quadratic program with a trust-region constraint. This step is essential for proving global convergence, but its propensity to identify the optimal active set is Paramount for recovering fast local convergence. Thus the global and local efficiency of the method is intimately coupled with the quality of the predictor step.\ud \ud In this paper w...
Line searches and trust regions are two techniques to globalize nonlinear optimization algorithms. W...
Global convergence to first-order critical points is proved for a variant of the trust-region SQP-fi...
AbstractIn this paper, we combine the new trust region subproblem proposed in [1] with the nonmonoto...
In (NAR 08/18 and 08/21, Oxford University Computing Laboratory, 2008) we introduced a second-deriva...
introduced a second-derivative sequential quadratic programming method (S2QP) for solving nonlinear ...
In [19], we gave global convergence results for a second-derivative SQP method for minimizing the ex...
Sequential quadratic programming (SQP) methods form a class of highly efficient algorithms for solvi...
In [19], we gave global convergence results for a second-derivative SQP method for minimizing the ex...
AbstractWe present a class of trust region algorithms without using a penalty function or a filter f...
In [19], we gave global convergence results for a second-derivative SQP method for minimizing the ex...
results for a second-derivative SQP method for minimizing the exact ℓ1-merit function for a fixed va...
AbstractWe present a class of trust region algorithms without using a penalty function or a filter f...
In NA 08/18, we gave global convergence results for a second-derivative SQP method for minimizing th...
The trust region subproblem (TRS) is to minimize a possibly nonconvex quadratic function over a Eucl...
This thesis extends the design and the global convergence analysis of a class of trust-region sequen...
Line searches and trust regions are two techniques to globalize nonlinear optimization algorithms. W...
Global convergence to first-order critical points is proved for a variant of the trust-region SQP-fi...
AbstractIn this paper, we combine the new trust region subproblem proposed in [1] with the nonmonoto...
In (NAR 08/18 and 08/21, Oxford University Computing Laboratory, 2008) we introduced a second-deriva...
introduced a second-derivative sequential quadratic programming method (S2QP) for solving nonlinear ...
In [19], we gave global convergence results for a second-derivative SQP method for minimizing the ex...
Sequential quadratic programming (SQP) methods form a class of highly efficient algorithms for solvi...
In [19], we gave global convergence results for a second-derivative SQP method for minimizing the ex...
AbstractWe present a class of trust region algorithms without using a penalty function or a filter f...
In [19], we gave global convergence results for a second-derivative SQP method for minimizing the ex...
results for a second-derivative SQP method for minimizing the exact ℓ1-merit function for a fixed va...
AbstractWe present a class of trust region algorithms without using a penalty function or a filter f...
In NA 08/18, we gave global convergence results for a second-derivative SQP method for minimizing th...
The trust region subproblem (TRS) is to minimize a possibly nonconvex quadratic function over a Eucl...
This thesis extends the design and the global convergence analysis of a class of trust-region sequen...
Line searches and trust regions are two techniques to globalize nonlinear optimization algorithms. W...
Global convergence to first-order critical points is proved for a variant of the trust-region SQP-fi...
AbstractIn this paper, we combine the new trust region subproblem proposed in [1] with the nonmonoto...