xvi, 152 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P AMA 2013 HuThe purpose of this thesis is to propose some new types of subgradient methods, investigate convergence properties of the proposed algorithms, and illustrate the high efficiency and wide applicability by numerical experiments for both convex and quasi-convex optimization problems. In the part of convex programming, we propose a primal subgradient method and a dual subgradient method, based on the gradient sampling technique, to solve a non-differentiable convex (constrained) optimization problem. The motivation comes from the fact that the gradient is cheap to compute comparing with the subgradient in many applications. The proposed algorithms consist of perturb...
Abstract In this paper, we present a brief review on the central results of two generalizations of a...
We survey incremental methods for minimizing a sum ∑m i=1 fi(x) consisting of a large number of conv...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
Abstract—We consider dual subgradient methods for solving (nonsmooth) convex constrained optimizatio...
We generalize the subgradient optimization method for nondifferentiable convex programming to utiliz...
We study subgradient methods for convex optimization that use projections onto successive approximat...
We discuss non-Euclidean deterministic and stochastic algorithms for optimization problems with stro...
In this paper, we develop new subgradient methods for solving nonsmooth convex optimization problems...
We study the subgradient projection method for convex optimization with Brannlund 's level cont...
The topic of the thesis is subgradient optimization methods in convex, nonsmooth optimization. These...
In this paper we present a new approach for constructing subgradient schemes for different types of ...
International audienceWe discuss non-Euclidean stochastic approximation algorithms for optimization ...
Convex optimization, the study of minimizing convex functions over convex sets, is host to a multit...
Subgradient methods for constrained nondifferentiable problems benefit from projection of the search...
We discuss non-Euclidean deterministic and stochastic algorithms for optimization problems with stro...
Abstract In this paper, we present a brief review on the central results of two generalizations of a...
We survey incremental methods for minimizing a sum ∑m i=1 fi(x) consisting of a large number of conv...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
Abstract—We consider dual subgradient methods for solving (nonsmooth) convex constrained optimizatio...
We generalize the subgradient optimization method for nondifferentiable convex programming to utiliz...
We study subgradient methods for convex optimization that use projections onto successive approximat...
We discuss non-Euclidean deterministic and stochastic algorithms for optimization problems with stro...
In this paper, we develop new subgradient methods for solving nonsmooth convex optimization problems...
We study the subgradient projection method for convex optimization with Brannlund 's level cont...
The topic of the thesis is subgradient optimization methods in convex, nonsmooth optimization. These...
In this paper we present a new approach for constructing subgradient schemes for different types of ...
International audienceWe discuss non-Euclidean stochastic approximation algorithms for optimization ...
Convex optimization, the study of minimizing convex functions over convex sets, is host to a multit...
Subgradient methods for constrained nondifferentiable problems benefit from projection of the search...
We discuss non-Euclidean deterministic and stochastic algorithms for optimization problems with stro...
Abstract In this paper, we present a brief review on the central results of two generalizations of a...
We survey incremental methods for minimizing a sum ∑m i=1 fi(x) consisting of a large number of conv...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...