Many real applications can be formulated as nonlinear minimization problems with a single linear equality constraint and box constraints. We are interested in solving problems where the number of variables is so huge that basic operations, such as the evaluation of the objective function or the updating of its gradient, are very time consuming. Thus, for the considered class of problems (including dense quadratic programs), traditional optimization methods cannot be applied directly. In this paper, we define a decomposition algorithm model which employs, at each iteration, a descent search direction selected among a suitable set of sparse feasible directions. The algorithm is characterized by an acceptance rule of the updated point which on...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
Many engineering and economic applications can be formulated by a minimization problem subject to a...
We present a globally and superlinearly convergent algorithm for solving convex quadratic programs ...
We consider the convex quadratic linearly constrained problem with bounded variables and with huge ...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
Large-scale optimization problems arise in many scientific, engineering, and financial applications....
Large-scale optimization problems arise in many scientific, engineering, and financial applications....
We present a general decomposition algorithm that is uniformly applicable to every (suitably normali...
Optimization problems with many more inequality constraints than variables arise in support-vector m...
AbstractThe decomposition method is currently one of the major methods for solving the convex quadra...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
Many engineering and economic applications can be formulated by a minimization problem subject to a...
We present a globally and superlinearly convergent algorithm for solving convex quadratic programs ...
We consider the convex quadratic linearly constrained problem with bounded variables and with huge ...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
Large-scale optimization problems arise in many scientific, engineering, and financial applications....
Large-scale optimization problems arise in many scientific, engineering, and financial applications....
We present a general decomposition algorithm that is uniformly applicable to every (suitably normali...
Optimization problems with many more inequality constraints than variables arise in support-vector m...
AbstractThe decomposition method is currently one of the major methods for solving the convex quadra...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...