We consider dual coordinate ascent methods for minimizing a strictly convex (possibly nondifferentiable) function subject to linear constraints. Such methods are useful in large-scale applications (e.g., entropy maximization, quadratic programming, network flows), because they are simple, can exploit sparsity and in certain cases are highly parallelizable. We establish their global convergence under weak conditions and a free-steering order of relaxation. Previous comparable results were restricted to special problems with separable costs and equality constraints. Our convergence framework unifies to a certain extent the approaches of Bregman, Censor and Lent, De Pierro and Iusem, and Luo and Tseng, and complements that of Bertsekas and Tse...
The focus of this dissertation is in the development and application of relaxation techniques that e...
Bibliography: p. 38-39.Supported in part by the National Science Foundation. NSF-ECS-8519058 Support...
Title from cover.Bibliography: p. 55-57.National Science Foundation Grant NSF-ECS-8217668.by Dimitri...
We consider dual coordinate ascent methods for minimizing a strictly convex (possibly nondifferentia...
Cover title.Includes bibliographical references.Supported by the National Science Foundation. NSF-EC...
Caption title. "July 1988."Includes bibliographical references.Work supported by the National Scienc...
In this paper we consider the problem of minimizing a strictly convex, possibly nondifferentiable co...
Bibliography: p. 36-37.Supported in part by the National Science Foundation. NSF-ECS-8519058 Support...
Bibliography: p. 25-26.National Science Foundation grant NSF-ECS-3217668by Paul Tseng, Dimitri P. Be...
Bibliography: p. 44-45.National Science Foundation grant NSF-ECS-3217668by Paul Tseng, Dimitri P. Be...
Cover title. "This paper is based in part on the technical report [17]."Includes bibliographical ref...
Cover title.Includes bibliographical references (p. 33-38).Partially supported by the U.S. Army Rese...
2018-02-07In this thesis, we develop new Lagrangian methods with fast convergence for constrained co...
Non-convex optimization problems can be approximately solved via relaxation or local algorithms. For...
The focus of this dissertation is in the development and application of relaxation techniques that e...
The focus of this dissertation is in the development and application of relaxation techniques that e...
Bibliography: p. 38-39.Supported in part by the National Science Foundation. NSF-ECS-8519058 Support...
Title from cover.Bibliography: p. 55-57.National Science Foundation Grant NSF-ECS-8217668.by Dimitri...
We consider dual coordinate ascent methods for minimizing a strictly convex (possibly nondifferentia...
Cover title.Includes bibliographical references.Supported by the National Science Foundation. NSF-EC...
Caption title. "July 1988."Includes bibliographical references.Work supported by the National Scienc...
In this paper we consider the problem of minimizing a strictly convex, possibly nondifferentiable co...
Bibliography: p. 36-37.Supported in part by the National Science Foundation. NSF-ECS-8519058 Support...
Bibliography: p. 25-26.National Science Foundation grant NSF-ECS-3217668by Paul Tseng, Dimitri P. Be...
Bibliography: p. 44-45.National Science Foundation grant NSF-ECS-3217668by Paul Tseng, Dimitri P. Be...
Cover title. "This paper is based in part on the technical report [17]."Includes bibliographical ref...
Cover title.Includes bibliographical references (p. 33-38).Partially supported by the U.S. Army Rese...
2018-02-07In this thesis, we develop new Lagrangian methods with fast convergence for constrained co...
Non-convex optimization problems can be approximately solved via relaxation or local algorithms. For...
The focus of this dissertation is in the development and application of relaxation techniques that e...
The focus of this dissertation is in the development and application of relaxation techniques that e...
Bibliography: p. 38-39.Supported in part by the National Science Foundation. NSF-ECS-8519058 Support...
Title from cover.Bibliography: p. 55-57.National Science Foundation Grant NSF-ECS-8217668.by Dimitri...