© 2017 Springer Science+Business Media, LLC The proximal point algorithm (PPA) has been well studied in the literature. In particular, its linear convergence rate has been studied by Rockafellar in 1976 under certain condition. We consider a generalized PPA in the generic setting of finding a zero point of a maximal monotone operator, and show that the condition proposed by Rockafellar can also sufficiently ensure the linear convergence rate for this generalized PPA. Indeed we show that these linear convergence rates are optimal. Both the exact and inexact versions of this generalized PPA are discussed. The motivation of considering this generalized PPA is that it includes as special cases the relaxed versions of some splitting methods tha...
The Proximal Point Algorithm (PPA) is a method for solving inclusions of the form 0 2 T (z) where T ...
This paper concerns with convergence properties of the classical proximal point algorithm for findin...
AbstractWe analyze some generalized proximal point algorithms which include the previously known pro...
Copyright © by SIAM. Unauthorized reproduction of this article is prohibited. We propose a generali...
We compare the linear rate of convergence estimates for two inexact proximal point methods. The firs...
The alternating direction method of multipliers (ADMM) is a benchmark for solving convex programming...
Recently, a worst-case convergence rate was established for the Douglas-Rachford alternating direct...
AbstractWe examine the linear convergence rates of variants of the proximal point method for finding...
During the last years, different modifications were introduced in the proximal point algorithm devlo...
During the last years, different modifications were introduced in the proximal point algorithm devel...
Abstract The proximal alternating direction method of multipliers (P-ADMM) is an efficient first-ord...
AbstractWe analyze some generalized proximal point algorithms which include the previously known pro...
We propose a modification of the classical extragradient and proximal point algorithms for finding a...
This paper establishes convergence of generalized Bregman-function-based proximal point algorithms w...
This paper establishes convergence of generalized Bregman-function-based proximal point algorithms w...
The Proximal Point Algorithm (PPA) is a method for solving inclusions of the form 0 2 T (z) where T ...
This paper concerns with convergence properties of the classical proximal point algorithm for findin...
AbstractWe analyze some generalized proximal point algorithms which include the previously known pro...
Copyright © by SIAM. Unauthorized reproduction of this article is prohibited. We propose a generali...
We compare the linear rate of convergence estimates for two inexact proximal point methods. The firs...
The alternating direction method of multipliers (ADMM) is a benchmark for solving convex programming...
Recently, a worst-case convergence rate was established for the Douglas-Rachford alternating direct...
AbstractWe examine the linear convergence rates of variants of the proximal point method for finding...
During the last years, different modifications were introduced in the proximal point algorithm devlo...
During the last years, different modifications were introduced in the proximal point algorithm devel...
Abstract The proximal alternating direction method of multipliers (P-ADMM) is an efficient first-ord...
AbstractWe analyze some generalized proximal point algorithms which include the previously known pro...
We propose a modification of the classical extragradient and proximal point algorithms for finding a...
This paper establishes convergence of generalized Bregman-function-based proximal point algorithms w...
This paper establishes convergence of generalized Bregman-function-based proximal point algorithms w...
The Proximal Point Algorithm (PPA) is a method for solving inclusions of the form 0 2 T (z) where T ...
This paper concerns with convergence properties of the classical proximal point algorithm for findin...
AbstractWe analyze some generalized proximal point algorithms which include the previously known pro...