Large scale quadratic problems arise in many real world applications. It is quite often that the coefficient matrices in these problems are ill-conditioned. Thus, if the problem data are available even with small error, then solving them using classical algorithms might result to meaningless solutions. In this short paper, we propose an efficient generalized Newton-penalty algorithm for solving these problems. Our computational results show that our new simple algorithm is much faster and better than the approach of Rojas, et al. (2000), which requires parameter tuning for different problems
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
Abstract In this paper, the algorithm for large-scale nonlinear equations is designed by the followi...
Large scale quadratic problems arise in many real world applications. It is quite often that the coe...
We describe a method for solving large-scale general quadratic programming problems. Our method is b...
AbstractRecent efforts in differentiable non-linear programming have been focused on interior point ...
Recent efforts in differentiable non-linear programming have been focused on interior point methods,...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
A fast Newton method is proposed for solving linear programs with a very large (# 10 ) number of...
this paper we define Newton-type algorithms for the solution of box constrained quadratic programmin...
Thesis (Ph.D.)--University of Washington, 2015Sequential quadratic optimization (SQP) methods are wi...
Thesis (Ph.D.)--University of Washington, 2015Sequential quadratic optimization (SQP) methods are wi...
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
Abstract In this paper, the algorithm for large-scale nonlinear equations is designed by the followi...
Large scale quadratic problems arise in many real world applications. It is quite often that the coe...
We describe a method for solving large-scale general quadratic programming problems. Our method is b...
AbstractRecent efforts in differentiable non-linear programming have been focused on interior point ...
Recent efforts in differentiable non-linear programming have been focused on interior point methods,...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
In this paper, we develop an exterior point algorithm for convex quadratic programming using a penal...
A fast Newton method is proposed for solving linear programs with a very large (# 10 ) number of...
this paper we define Newton-type algorithms for the solution of box constrained quadratic programmin...
Thesis (Ph.D.)--University of Washington, 2015Sequential quadratic optimization (SQP) methods are wi...
Thesis (Ph.D.)--University of Washington, 2015Sequential quadratic optimization (SQP) methods are wi...
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
Abstract In this paper, the algorithm for large-scale nonlinear equations is designed by the followi...