Numerous scientific applications across a variety of fields depend on box-constrained convex optimization. Box-constrained problems therefore continue to attract research interest. We address box-constrained (strictly convex) problems by deriving two new quasi-Newton algorithms. Our algorithms are positioned between the projected-gradient [J. B. Rosen, J. SIAM, 8 (1960), pp. 181–217] and projected-Newton [D. P. Bertsekas, SIAM J. Control Optim., 20 (1982), pp. 221–246] methods. We also prove their convergence under a simple Armijo step-size rule. We provide experimental results for two particular box-constrained problems: nonnegative least squares (NNLS), and nonnegative Kullback–Leibler (NNKL) minimization. For both NNLS and NNKL our algor...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
This paper describes a method for solving smooth nonconvex minimization problems subject to bound co...
Numerous scientific applications across a variety of fields depend on box-constrained convex optimiz...
Box-constrained convex optimization problems are central to several applications in a variety of fie...
Box-constrained convex optimization problems are central to several applications in a variety of fie...
AbstractBased on the identification technique of active constraints, we propose a Newton-like algori...
Many algorithms used in unconstrained minimization are line-search methods. Given an initial point x...
An optimization algorithm for minimizing a smooth function over a convex set is de-scribed. Each ite...
A method for the solution of minimization problems with simple bounds is presented. Global convergen...
AbstractBased on the identification technique of active constraints, we propose a Newton-like algori...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
In this paper, we investigate quasi-Newton methods for solving unconstrained optimization problems. ...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
This paper describes a method for solving smooth nonconvex minimization problems subject to bound co...
Numerous scientific applications across a variety of fields depend on box-constrained convex optimiz...
Box-constrained convex optimization problems are central to several applications in a variety of fie...
Box-constrained convex optimization problems are central to several applications in a variety of fie...
AbstractBased on the identification technique of active constraints, we propose a Newton-like algori...
Many algorithms used in unconstrained minimization are line-search methods. Given an initial point x...
An optimization algorithm for minimizing a smooth function over a convex set is de-scribed. Each ite...
A method for the solution of minimization problems with simple bounds is presented. Global convergen...
AbstractBased on the identification technique of active constraints, we propose a Newton-like algori...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
In this paper, we investigate quasi-Newton methods for solving unconstrained optimization problems. ...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
This paper describes a method for solving smooth nonconvex minimization problems subject to bound co...