In this paper, we describe a two-stage method for solving optimization problems with bound constraints. It combines the active-set estimate described in Facchinei and Lucidi (J Optim Theory Appl 85(2):265\u2013289, 1995) with a modification of the non-monotone line search framework recently proposed in De Santis et al. (Comput Optim Appl 53(2):395\u2013423, 2012). In the first stage, the algorithm exploits a property of the active-set estimate that ensures a significant reduction in the objective function when setting to the bounds all those variables estimated active. In the second stage, a truncated-Newton strategy is used in the subspace of the variables estimated non-active. In order to properly combine the two phases, a proximity check...
Recently, Neumaier and Azmi gave a comprehensive convergence theory for a generic algorithm for boun...
For solving nonlinear optimization problems, two competing iterative approaches are available: activ...
This paper describes an active-set algorithm for large-scale nonlinear programming based on the succ...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
In this data article, we report data and experiments related to the research article entitled “A Two...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
We are concerned with the solution of the bound constrained minimization problem {minf(x), la parts ...
summary:We employ the active set strategy which was proposed by Facchinei for solving large scale bo...
AbstractWe analyze an active set quasi-Newton method for large scale bound constrained problems. Our...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
In this paper, we describe a new active-set algorithmic framework for minimizing a non-convex functi...
An algorithm for solving linearly constrained optimization problems is proposed. The search directio...
In this article we present an algorithm for solving bound constrained optimization problems without ...
A new active-set method for smooth box-constrained minimization is introduced. The algorithm combin...
We analyze an abridged version of the active-set algorithm FPC_AS for solving the L1-regularized lea...
Recently, Neumaier and Azmi gave a comprehensive convergence theory for a generic algorithm for boun...
For solving nonlinear optimization problems, two competing iterative approaches are available: activ...
This paper describes an active-set algorithm for large-scale nonlinear programming based on the succ...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
In this data article, we report data and experiments related to the research article entitled “A Two...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
We are concerned with the solution of the bound constrained minimization problem {minf(x), la parts ...
summary:We employ the active set strategy which was proposed by Facchinei for solving large scale bo...
AbstractWe analyze an active set quasi-Newton method for large scale bound constrained problems. Our...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
In this paper, we describe a new active-set algorithmic framework for minimizing a non-convex functi...
An algorithm for solving linearly constrained optimization problems is proposed. The search directio...
In this article we present an algorithm for solving bound constrained optimization problems without ...
A new active-set method for smooth box-constrained minimization is introduced. The algorithm combin...
We analyze an abridged version of the active-set algorithm FPC_AS for solving the L1-regularized lea...
Recently, Neumaier and Azmi gave a comprehensive convergence theory for a generic algorithm for boun...
For solving nonlinear optimization problems, two competing iterative approaches are available: activ...
This paper describes an active-set algorithm for large-scale nonlinear programming based on the succ...