We propose the use of controlled perturbations to address the challenging question of optimal active-set prediction for interior point methods. Namely, in the context of linear programming, we consider perturbing the inequality constraints/bounds so as to enlarge the feasible set. We show that if the perturbations are chosen appropriately, the solution of the original problem lies on or close to the central path of the perturbed problem. We also find that a primal-dual path-following algorithm applied to the perturbed problem is able to accurately predict the optimal active set of the original problem when the duality gap for the perturbed problem is not too small; furthermore, depending on problem conditioning, this prediction can happen s...
summary:We employ the active set strategy which was proposed by Facchinei for solving large scale bo...
We present an approach to couple the resolution of Combinatorial Optimization problems with methods ...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
prediction for interior point methods using controlled perturbations Coralia Cartis∗and Yiming Yan† ...
We propose the use of controlled perturbations to address the challenging question of optimal active...
This research studies how to efficiently predict optimal active constraints of an inequality constr...
We will present a potential reduction method for linear programming where only the constraints with ...
It is now well established that, especially on large linearprogramming problems, the simplex method ...
For solving nonlinear optimization problems, two competing iterative approaches are available: activ...
AbstractAn approach is proposed to generate a vertex solution while using a primal-dual interior poi...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
Constraint removal accelerates model predictive control by detecting inactive constraints at the yet...
This paper describes an active-set algorithm for large-scale nonlinear programming based on the succ...
It is now well established that, especially on large linear programming problems, the simplex method...
A new initialization or `Phase I' strategy for feasible interior point methods for linear programmin...
summary:We employ the active set strategy which was proposed by Facchinei for solving large scale bo...
We present an approach to couple the resolution of Combinatorial Optimization problems with methods ...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
prediction for interior point methods using controlled perturbations Coralia Cartis∗and Yiming Yan† ...
We propose the use of controlled perturbations to address the challenging question of optimal active...
This research studies how to efficiently predict optimal active constraints of an inequality constr...
We will present a potential reduction method for linear programming where only the constraints with ...
It is now well established that, especially on large linearprogramming problems, the simplex method ...
For solving nonlinear optimization problems, two competing iterative approaches are available: activ...
AbstractAn approach is proposed to generate a vertex solution while using a primal-dual interior poi...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
Constraint removal accelerates model predictive control by detecting inactive constraints at the yet...
This paper describes an active-set algorithm for large-scale nonlinear programming based on the succ...
It is now well established that, especially on large linear programming problems, the simplex method...
A new initialization or `Phase I' strategy for feasible interior point methods for linear programmin...
summary:We employ the active set strategy which was proposed by Facchinei for solving large scale bo...
We present an approach to couple the resolution of Combinatorial Optimization problems with methods ...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...