نتایج جستجو برای: fuzzy subgradient

تعداد نتایج: 90857  

2007
Dimitri P. Bertsekas

In this paper, we study the influence of noise on subgradient methods for convex constrained optimization. The noise may be due to various sources, and is manifested in inexact computation of the subgradients and function values. Assuming that the noise is deterministic and bounded, we discuss the convergence properties for two cases: the case where the constraint set is compact, and the case w...

2007
Dimitri P. Bertsekas Angelia Nedić

We consider a class of subgradient methods for minimizing a convex function that consists of the sum of a large number of component functions. This type of minimization arises in a dual context from Lagrangian relaxation of the coupling constraints of large scale separable problems. The idea is to perform the subgradient iteration incrementally, by sequentially taking steps along the subgradien...

Journal: :SIAM Journal on Optimization 1996
Werner Römisch Rüdiger Schultz

This paper investigates the stability of optimal solution sets to stochastic programs with complete recourse, where the underlying probability measure is understood as a parameter varying in some space of probability measures.piro proved Lipschitz upper semicontinuity of the solution set mapping. Inspired by this result, we introduce a subgradient distance for probability distributions and esta...

Journal: :Math. Program. 2010
Angelia Nedic Dimitri P. Bertsekas

In this paper, we study the influence of noise on subgradient methods for convex constrained optimization. The noise may be due to various sources, and is manifested in inexact computation of the subgradients and function values. Assuming that the noise is deterministic and bounded, we discuss the convergence properties for two cases: the case where the constraint set is compact, and the case w...

Journal: :J. Global Optimization 2002
Rafail N. Gasimov

Abstract. In this paper we present augmented Lagrangians for nonconvex minimization problems with equality constraints. We construct a dual problem with respect to the presented here Lagrangian, give the saddle point optimality conditions and obtain strong duality results. We use these results and modify the subgradient and cutting plane methods for solving the dual problem constructed. Algorit...

Journal: :European Journal of Operational Research 2016
Hideaki Iiduka

The problem of minimizing the sum of nonsmooth, convex objective functions defined on a real Hilbert space over the intersection of fixed point sets of nonexpansive mappings, onto which the projections cannot be efficiently computed, is considered. The use of proximal point algorithms that use the proximity operators of the objective functions and incremental optimization techniques is proposed...

Journal: :CoRR 2010
Dimitri P. Bertsekas

We survey incremental methods for minimizing a sum ∑m i=1 fi(x) consisting of a large number of convex component functions fi. Our methods consist of iterations applied to single components, and have proved very effective in practice. We introduce a unified algorithmic framework for a variety of such methods, some involving gradient and subgradient iterations, which are known, and some involvin...

Journal: :CoRR 2011
Sangkyun Lee Stephen J. Wright

Subgradient algorithms for training support vector machines have been quite successful for solving largescale and online learning problems. However, they have been restricted to linear kernels and strongly convex formulations. This paper describes efficient subgradient approaches without such limitations. Our approaches make use of randomized low-dimensional approximations to nonlinear kernels,...

2010
Peter Wolenski Padmanabhan Sundar Robert Perlis Stephen Shipman

In this thesis, we have two distinct but related subjects: optimal control and nonlinear programming. In the first part of this thesis, we prove that the value function, propagated from initial or terminal costs, and constraints, in the form of a differential equation, satisfy a subgradient form of the Hamilton-Jacobi equation in which the Hamiltonian is measurable with respect to time. In the ...

Journal: :CoRR 2016
Kaihong Lu Gangshan Jing Long Wang

In this paper, a class of convex feasibility problems (CFPs) are studied for multi-agent systems through local interactions. The objective is to search a feasible solution to the convex inequalities with some set constraints in a distributed manner. The distributed control algorithms, involving subgradient and projection, are proposed for both continuousand discrete-time systems, respectively. ...

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