We propose two projection-type methods for solving large quadratic programs. The main feature of these iterative schemes consists in using, at each iteration, a variable projection parameter instead of a fixed one as in the classical projection methods. The convergence may be obtained without restrictive conditions on the projection parameters by using appropriate correction rules that imply, at each iteration, a sufficient decrease in the objective function. The first method uses a correction rule on the descent direction produced by the projection step, while in the second method, the correction formula works adaptively on the value of the variable projection parameter. We give convergence results for the general case of inexact solution ...
We analyse the efficiency of a class of iterative methods for solving large scale convex quadratic p...
We analyse the efficiency of a class of iterative methods for solving large scale convex quadratic p...
Variable projection solves structured optimization problems by completely minimizing over a subset o...
We propose two projection-type methods for solving large quadratic programs. The main feature of the...
A well-known approach for solving large and sparse linearly constrained quadratic programming (QP) p...
A well-known approach for solving large and sparse linearly constrained quadratic programming (QP) p...
A well-known approach to the solution of large and sparse linearly constrained quadratic programming...
A well-known approach to the solution of large and sparse linearly constrained quadratic programming...
In this paper we analyse the behaviour of the classical splitting and projection methods for solving...
In this paper we analyse the behaviour of the classical splitting and projection methods for solving...
In this paper, we propose a modified projection-type method for solving strictly-convex quadratic pr...
In this paper we analyse the variable projection methods for the solution of the convex quadratic pr...
In this paper we analyse the variable projection methods for the solution of the convex quadratic pr...
This paper concerns with the numerical evaluation of the variable projection method for quadratic pr...
This paper concerns with the numerical evaluation of the variable projection method for quadratic pr...
We analyse the efficiency of a class of iterative methods for solving large scale convex quadratic p...
We analyse the efficiency of a class of iterative methods for solving large scale convex quadratic p...
Variable projection solves structured optimization problems by completely minimizing over a subset o...
We propose two projection-type methods for solving large quadratic programs. The main feature of the...
A well-known approach for solving large and sparse linearly constrained quadratic programming (QP) p...
A well-known approach for solving large and sparse linearly constrained quadratic programming (QP) p...
A well-known approach to the solution of large and sparse linearly constrained quadratic programming...
A well-known approach to the solution of large and sparse linearly constrained quadratic programming...
In this paper we analyse the behaviour of the classical splitting and projection methods for solving...
In this paper we analyse the behaviour of the classical splitting and projection methods for solving...
In this paper, we propose a modified projection-type method for solving strictly-convex quadratic pr...
In this paper we analyse the variable projection methods for the solution of the convex quadratic pr...
In this paper we analyse the variable projection methods for the solution of the convex quadratic pr...
This paper concerns with the numerical evaluation of the variable projection method for quadratic pr...
This paper concerns with the numerical evaluation of the variable projection method for quadratic pr...
We analyse the efficiency of a class of iterative methods for solving large scale convex quadratic p...
We analyse the efficiency of a class of iterative methods for solving large scale convex quadratic p...
Variable projection solves structured optimization problems by completely minimizing over a subset o...