We study a generalized version of the method of alternating directions as applied to the minimization of the sum of two convex functions subject to linear constraints. The method consists of solving consecutively in each iteration two optimization problems which contain in the objective function both Lagrangian and proximal terms. The minimizers determine the new proximal terms and a simple update of the Lagrangian terms follows. We prove a convergence theorem which extends existing results by relaxing the assumption of uniqueness of minimizers. Another novelty is that we allow penalty matrices, and these may vary per iteration. This can be beneficial in applications, since it allows additional tuning of the method to the problem and can le...
We consider the problem of minimizing a smooth nonconvex function over a structured convex feasible ...
© 2019, Allerton Press, Inc. We propose a penalty method for general convex constrained optimization...
Being one of the most effective methods, Alternating Direction Method (ADM) has been extensively stu...
We study a generalized version of the method of alternating directions as applied to the minimizatio...
AbstractThe alternating direction method is an attractive approach for large problems. The convergen...
Abstract. In this paper, we propose an alternating proximal gradient method that solves convex minim...
We consider alternating minimization procedures for convex and non-convex optimization problems with...
AbstractThe alternating direction method is an attractive approach for large problems. The convergen...
Abstract. The alternating direction method of multipliers (ADMM) is now widely used in many fields, ...
We consider alternating minimization procedures for convex optimization problems with variable divid...
We propose a Newton-type alternating minimization algorithm (NAMA) for solving structured nonsmooth ...
© 2014, Springer-Verlag Berlin Heidelberg and Mathematical Optimization Society. The alternating di...
Abstract. The alternating direction method of multipliers (ADMM) is a benchmark for solving a linear...
Nonsmooth convex optimization problems with two blocks of variables subject to linear constraints ar...
© 2019, Allerton Press, Inc. We propose a penalty method for general convex constrained optimization...
We consider the problem of minimizing a smooth nonconvex function over a structured convex feasible ...
© 2019, Allerton Press, Inc. We propose a penalty method for general convex constrained optimization...
Being one of the most effective methods, Alternating Direction Method (ADM) has been extensively stu...
We study a generalized version of the method of alternating directions as applied to the minimizatio...
AbstractThe alternating direction method is an attractive approach for large problems. The convergen...
Abstract. In this paper, we propose an alternating proximal gradient method that solves convex minim...
We consider alternating minimization procedures for convex and non-convex optimization problems with...
AbstractThe alternating direction method is an attractive approach for large problems. The convergen...
Abstract. The alternating direction method of multipliers (ADMM) is now widely used in many fields, ...
We consider alternating minimization procedures for convex optimization problems with variable divid...
We propose a Newton-type alternating minimization algorithm (NAMA) for solving structured nonsmooth ...
© 2014, Springer-Verlag Berlin Heidelberg and Mathematical Optimization Society. The alternating di...
Abstract. The alternating direction method of multipliers (ADMM) is a benchmark for solving a linear...
Nonsmooth convex optimization problems with two blocks of variables subject to linear constraints ar...
© 2019, Allerton Press, Inc. We propose a penalty method for general convex constrained optimization...
We consider the problem of minimizing a smooth nonconvex function over a structured convex feasible ...
© 2019, Allerton Press, Inc. We propose a penalty method for general convex constrained optimization...
Being one of the most effective methods, Alternating Direction Method (ADM) has been extensively stu...