Inspired by the success of the projected Barzilai-Borwein (PBB) method for large-scale box-constrained quadratic programming, we propose and analyze the monotone projected gradient methods in this paper. We show by experiments and analyses that for the new methods, it is generally a bad option to compute steplengths based on the negative gradients. Thus in our algorithms, some continuous or discontinuous projected gradients are used instead to compute the steplengths. Numerical experiments on a wide variety of test problems are presented, indicating that the new methods usually outperform the PBB method.Mathematics, AppliedMathematicsSCI(E)EI0ARTICLE5688-7024
The numerical solution of many engineering problems leads to the problem of minimizing a strictly co...
Motivated by the superlinear behavior of the Barzilai-Borwein (BB) method for two-dimensional quadra...
In order to solve constrained optimization problems on convex sets, the class of scaled gradient pro...
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...
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...
Abstract-This paper considers some aspects of a gradient projection method proposed by Goldstein [l]...
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...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
The numerical solution of many engineering problems leads to the problem of minimizing a strictly co...
Motivated by the superlinear behavior of the Barzilai-Borwein (BB) method for two-dimensional quadra...
In order to solve constrained optimization problems on convex sets, the class of scaled gradient pro...
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...
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...
Abstract-This paper considers some aspects of a gradient projection method proposed by Goldstein [l]...
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...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
Gradient projection methods represent effective tools for solving large-scale constrained optimizati...
The numerical solution of many engineering problems leads to the problem of minimizing a strictly co...
Motivated by the superlinear behavior of the Barzilai-Borwein (BB) method for two-dimensional quadra...
In order to solve constrained optimization problems on convex sets, the class of scaled gradient pro...