We generalize the subgradient optimization method for nondifferentiable convex programming to utilize conditional subgradients. Firstly, we derive the new method and establish its convergence by generalizing convergence results for traditional subgradient optimization. Secondly, we consider a particular choice of conditional subgradients, obtained by projections, which leads to an easily implementable modification of traditional subgradient optimization schemes. To evaluate the subgradient projection method we consider its use in three applications: uncapacitated facility location, two-person zero-sum matrix games, and multicommodity network flows. Computational experiments show that the subgradient projection method performs better than tr...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Abstract—We consider dual subgradient methods for solving (nonsmooth) convex constrained optimizatio...
The subgradient projector plays an important role in convex optimization, since the subgradient proj...
We study subgradient methods for convex optimization that use projections onto successive approximat...
The topic of the thesis is subgradient optimization methods in convex, nonsmooth optimization. These...
xvi, 152 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P AMA 2013 HuThe purpose of this ...
We study the subgradient projection method for convex optimization with Brannlund 's level cont...
Subgradient methods for constrained nondifferentiable problems benefit from projection of the search...
Subgradient methods for nondifferentiable optimization benefit from deflection, i.e., defining the s...
The goal of this work is describe the State of the Art about Subgradients Methods for optimization ...
We study some methods of subgradient projections for solving a convex feasibility problem with gener...
A method, called an augmented subgradient method, is developed to solve unconstrained nonsmooth diff...
A dual subgradient method is proposed for solving convex optimization problems with linear constrain...
AbstractUsing only easily computable portions of certain ε-subdifferentials an implementable converg...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Abstract—We consider dual subgradient methods for solving (nonsmooth) convex constrained optimizatio...
The subgradient projector plays an important role in convex optimization, since the subgradient proj...
We study subgradient methods for convex optimization that use projections onto successive approximat...
The topic of the thesis is subgradient optimization methods in convex, nonsmooth optimization. These...
xvi, 152 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P AMA 2013 HuThe purpose of this ...
We study the subgradient projection method for convex optimization with Brannlund 's level cont...
Subgradient methods for constrained nondifferentiable problems benefit from projection of the search...
Subgradient methods for nondifferentiable optimization benefit from deflection, i.e., defining the s...
The goal of this work is describe the State of the Art about Subgradients Methods for optimization ...
We study some methods of subgradient projections for solving a convex feasibility problem with gener...
A method, called an augmented subgradient method, is developed to solve unconstrained nonsmooth diff...
A dual subgradient method is proposed for solving convex optimization problems with linear constrain...
AbstractUsing only easily computable portions of certain ε-subdifferentials an implementable converg...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Abstract—We consider dual subgradient methods for solving (nonsmooth) convex constrained optimizatio...
The subgradient projector plays an important role in convex optimization, since the subgradient proj...