Gradient projection methods represent effective tools for solving large-scale constrained optimization problems thanks to their simple implementation and low computational cost per iteration. Despite these good properties, a slow convergence rate can affect gradient projection schemes, especially when high accurate solutions are needed. A strategy to mitigate this drawback consists in properly selecting the values for the steplength along the negative gradient. In this paper, we consider the class of gradient projection methods with line search along the projected arc for box-constrained minimization problems and we analyse different strategies to define the steplength. It is well known in the literature that steplength selection ru...
Many algorithms used in unconstrained minimization are line-search methods. Given an initial point x...
The gradient projection algorithm plays an important role in solving constrained convex minimization...
A method for linearly constrained optimization which modifies and generalizes recent box-constraint ...
Gradient projection methods represent effective tools for solving large-scale constrained optimizat...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
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...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
The role of the steplength selection strategies in gradient methods has been widely investigated in ...
The role of the steplength selection strategies in gradient methods has been widely investigated in ...
The role of the steplength selection strategies in gradient methods has been widely in- vestigated i...
The role of the steplength selection strategies in gradient methods has been widely in- vestigated i...
The role of the steplength selection strategies in gradient methods has been widely in- vestigated i...
Many algorithms used in unconstrained minimization are line-search methods. Given an initial point x...
The gradient projection algorithm plays an important role in solving constrained convex minimization...
A method for linearly constrained optimization which modifies and generalizes recent box-constraint ...
Gradient projection methods represent effective tools for solving large-scale constrained optimizat...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
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...
Gradient Projection (GP) methods are a very popular tool to address box-constrained quadratic proble...
The role of the steplength selection strategies in gradient methods has been widely investigated in ...
The role of the steplength selection strategies in gradient methods has been widely investigated in ...
The role of the steplength selection strategies in gradient methods has been widely in- vestigated i...
The role of the steplength selection strategies in gradient methods has been widely in- vestigated i...
The role of the steplength selection strategies in gradient methods has been widely in- vestigated i...
Many algorithms used in unconstrained minimization are line-search methods. Given an initial point x...
The gradient projection algorithm plays an important role in solving constrained convex minimization...
A method for linearly constrained optimization which modifies and generalizes recent box-constraint ...